Hostname: page-component-586b7cd67f-2brh9 Total loading time: 0 Render date: 2024-11-22T21:37:48.389Z Has data issue: false hasContentIssue false

A muscle synergies-based controller to drive a powered upper-limb exoskeleton in reaching tasks

Published online by Cambridge University Press:  15 November 2024

Michele Francesco Penna*
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Luca Giordano
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Stefano Tortora
Affiliation:
Department of Information Engineering, University of Padova, Padova, Italy Padova Neuroscience Center, University of Padova, Padova, Italy
Davide Astarita
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Lorenzo Amato
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Filippo Dell’Agnello
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Emanuele Menegatti
Affiliation:
Department of Information Engineering, University of Padova, Padova, Italy Padova Neuroscience Center, University of Padova, Padova, Italy
Emanuele Gruppioni
Affiliation:
Centro Protesi Inail di Vigorso di Budrio, Bologna, Italy
Nicola Vitiello
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Simona Crea
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
Emilio Trigili
Affiliation:
The BioRobotics Institute, Scuola Superiore Sant’Anna, Pontedera, Italy Department of Excellence in Robotics & AI, Scuola Superiore Sant’Anna, Pisa, Italy
*
Corresponding author: Michele Francesco Penna; Email: [email protected]

Abstract

This work introduces a real-time intention decoding algorithm grounded in muscle synergies (Syn-ID). The algorithm detects the electromyographic (EMG) onset and infers the direction of the movement during reaching tasks to control a powered shoulder–elbow exoskeleton. Features related to muscle synergies are used in a Gaussian Mixture Model and probability accumulation-based logic to infer the user’s movement direction. The performance of the algorithm was verified by a feasibility study including eight healthy participants. The experiments comprised a transparent session, during which the exoskeleton did not provide any assistance, and an assistive session in which the Syn-ID strategy was employed. Participants were asked to reach eight targets equally spaced on a circumference of 25 cm radius (adjusted chance level: 18.1%). The results showed an average accuracy of 48.7% after 0.6 s from the EMG onset. Most of the confusion of the estimate was found along directions adjacent to the actual one (type 1 error: 33.4%). Effects of the assistance were observed in a statistically significant reduction in the activation of Posterior Deltoid and Triceps Brachii. The final positions of the movements during the assistive session were on average 1.42 cm far from the expected ones, both when the directions were estimated correctly and when type 1 errors occurred. Therefore, combining accurate estimates with type 1 errors, we computed a modified accuracy of 82.10±6.34%. Results were benchmarked with respect to a purely kinematics-based approach. The Syn-ID showed better performance in the first portion of the movement (0.14 s after EMG onset).

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2024. Published by Cambridge University Press

1. Introduction

Following a stroke, intensive motor training can improve the recovery of sensorimotor functionalities (Langhorne et al. Reference Langhorne, Bernhardt and Kwakkel2011). Robotic rehabilitation allows patients to actively participate during the exercises (Lo et al. Reference Lo, Guarino, Richards, Haselkorn, Wittenberg, Federman, Ringer, Wagner, Krebs, Volpe, Bever, Bravata, Duncan, Corn, Maffucci, Nadeau, Conroy, Powell, Huang and Peduzzi2010; Skidmore et al. Reference Skidmore, Whyte, Holm, Becker, Butters, Dew, Munin and Lenze2010), with adaptive and personalized level of support, fostering the engagement of the patients and enhancing the overall rehabilitation outcome. Additionally, robotic devices such as powered exoskeletons (Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2022; Zimmermann et al. Reference Zimmermann, Sommerhalder, Wolf, Riener and Hutter2023) can be useful to promote task-specific training, which is typically correlated with a superior improvement of the upper-limb motor functionalities with respect to the usual care (Klamroth-Marganska et al. Reference Klamroth-Marganska, Blanco, Campen, Curt, Dietz, Ettlin, Felder, Fellinghauer, Guidali, Kollmar, Luft, Nef, Schuster-Amft, Stahel and Riener2014; Winstein et al. Reference Winstein, Wolf, Dromerick, Lane, Nelsen, Lewthwaite, Cen and Azen2016).

To provide a natural and intuitive experience and promote neuroplasticity, exoskeletons must be controlled according and synchronously to the user’s motor intention, amplifying spontaneous residual movements (Balasubramanian et al. Reference Balasubramanian, Garcia-Cossio, Birbaumer, Burdet and Ramos-Murguialday2018; Li et al. Reference Li, Xu, Xie and Chen2018). To do so, intention decoding algorithms (IDAs) can rely on the kinematic or biosignal information acquired and processed by the exoskeleton’s sensory and control systems (Tucker et al. Reference Tucker, Olivier, Pagel, Bleuler, Bouri, Lambercy, Millán, Riener, Vallery and Gassert2015).

Kinematic signals can be used as inputs of IDAs to provide human augmentation during rhythmic or discrete tasks (Lanotte et al. Reference Lanotte, McKinney, Grazi, Chen, Crea and Vitiello2021; Penna et al. Reference Penna, Trigili, Amato, Eken, Dell’Agnello, Lanotte, Gruppioni, Vitiello and Crea2023; Ronsse et al. Reference Ronsse, Vitiello, Lenzi, van den Kieboom, Carrozza and Ijspeert2011; Sanz-Morère et al. Reference Sanz-Morère, Martini, Meoni, Arnetoli, Giffone, Doronzio, Fanciullacci, Parri, Conti, Giovacchini, Friðriksson, Romo, Crea, Molino-Lova and Vitiello2021). However, since these approaches rely on the observation of the user’s limb movement, they are not suitable for those subjects suffering from severe motor disorders, who would benefit from an external aid to initiate the movement. This problem can be addressed by monitoring the nervous system activities associated with the control of voluntary movements. Such an approach would provide additional time to the robot’s controller, leveraging the temporal gap between the generation of electrical signals by the nervous system and the subsequent generation of force in the muscles (and consequent limb movement), commonly referred to as electromechanical delay (Cavanagh and Komi Reference Cavanagh and Komi1979). Surface electromyography (EMG) can sense the peripheral nerve signals using a noninvasive technique that entails placing electrodes on the skin over the area of the muscle of interest. Despite inherent limitations related to noise caused by crosstalk, variability of the skin impedance, for example, due to sweat, and movement artifacts (Farina et al. Reference Farina, Merletti and Enoka2014), a great evidence has been gathered over the years demonstrating the effectiveness of using EMG signals as inputs of IDAs. EMG signals can be used to extract features both in the time and frequency domains (Bi et al. Reference Bi, Feleke and Guan2019; Englehart et al. Reference Englehart, Hudgins, Parker and Stevenson1999), which can serve as inputs to infer human motor intentions using model-based and/or machine learning techniques (Kiguchi and Hayashi Reference Kiguchi and Hayashi2012; Lotti et al. Reference Lotti, Xiloyannis, Durandau, Galofaro, Sanguineti, Masia and Sartori2020; Novak et al. Reference Novak, Omlin, Leins-Hess and Riener2013; Trigili et al. Reference Trigili, Grazi, Crea, Accogli, Carpaneto, Micera, Vitiello and Panarese2019).

EMG signals can be processed to extract muscle synergies, namely coordinated muscle activity patterns. According to this theory, the central nervous system controls the execution of movements through a reduced set of synergistic and coordinated muscle groups (d’Avella et al. Reference d’Avella, Saltiel and Bizzi2003). Synergies have several characteristics that make them good candidates for being input signals of IDAs. First, they are robust to high-variance changes typical of EMG acquisitions (Ison and Artemiadis Reference Ison and Artemiadis2014). Second, they allow to model EMG activations in a lower-dimensional features domain, by reducing the number of controlled variables (Berniker et al. Reference Berniker, Jarc, Bizzi and Tresch2009). Finally, upper-limb muscle synergies were shown to be robust to differences in motor performance and differences in cerebral lesion sizes and locations between poststroke patients (Cheung et al. Reference Cheung, Piron, Agostini, Silvoni, Turolla and Bizzi2009). Grounded on these considerations, several attempts were made to employ muscle synergies to classify single joint movements of the shoulder, the elbow (Antuvan et al. Reference Antuvan, Bisio, Marini, Yen, Cambria and Masia2016), and of the forearm (Tse et al. Reference Tse, Capsi-Morales, Castaneda and Piazza2023), as well as multi-joint reaching tasks (Israely et al. Reference Israely, Leisman, Machluf and Carmeli2018). However, to date, very limited attempts have been made to incorporate muscle synergies into exoskeleton controllers, with a few exceptions limited to the lower limbs, showing promising results (Alibeji et al. Reference Alibeji, Molazadeh, Moore-Clingenpeel and Sharma2018; Wei et al. Reference Wei, Li, Zhao, Kang and Su2020).

To overcome this knowledge gap, this work introduces and verifies a novel IDA exploiting muscle synergies, named Syn-ID algorithm. Starting from the observation of the subject’s EMG signals, the algorithm is able to (i) detect the muscle activation onset, (ii) infer the intended movement direction, and (iii) control an upper-limb exoskeleton to guide the subject’s hand toward eight different directions. The proposed approach was tested online with a shoulder–elbow exoskeleton (NEUROExos Shoulder-elbow Module- $ \gamma $ , NESM- $ \gamma $ ) for the use case of planar reaching tasks. The remainder of the paper is organized as follows: Section 2 presents the NESM- $ \gamma $ exoskeleton, the EMG acquisition system, the Syn-ID algorithm, and the design of the verification study. The results of the experiments are presented in Section 4; Section 5 discusses the results and draws the conclusions.

2. Materials and methods

2.1. NESM-γ upper-limb exoskeleton

The NESM- $ \gamma $ is a shoulder–elbow exoskeleton designed for neurorehabilitation applications, developed by the Wearable Robotics Lab (The BioRobotics Institute, Scuola Superiore Sant’Anna; Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2022). The exoskeleton (Figure 1(a)) is equipped with four active degrees of freedom (DOFs), allowing shoulder abduction/adduction (sAA), flexion/extension (sFE), internal external rotation (sIE), and elbow flexion extension (eFE). Each of the active DOFs has a reactive-force series elastic actuation architecture with custom torsional springs and embeds two absolute encoders measuring the joint position and torque (the latter measured via the spring deformation). The exoskeleton is mounted on a support column with lockable wheels. The kinematic chain of active DOFs is connected to the support column by four passive DOFs (P1–4). This passive chain accounts for scapulohumeral rhythm and trunk rotation, and it has self-alignment purposes (Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2023).

Figure 1. Experimental setup comprising (a) the NESM-γ exoskeleton with the user interface (UI) and (b) the EMG target muscles.

The control system of NESM- $ \gamma $ runs on two processors: (i) a field-programmable gate array (FPGA) processor, and (ii) a 667-MHz dual-core ARM processor running a National Instruments (NI, Austin, Texas, USA) RT operating system. The FPGA processor runs a low-level control layer at 1 kHz, which is responsible for the reading of the robot’s sensors and the execution of the closed-loop torque regulators, which translate the error between the reference and measured torque into a motor command for the current servoamplifiers driving the brushless DC motors. The digital input/output ports of the FPGA processor are configured to execute synchronous serial interface (SSI) and serial peripheral interface (SPI) communication protocols, facilitating the interaction of the robot with external data acquisition systems, for example, EMG acquisition systems. The ARM RT processor implements a control loop at a frequency of 100 Hz. This loop is responsible for the execution of the IDAs and the generation of the reference joint torques for each joint. These reference torques are computed as the sum of the desired torques resulting from the IDAs with a feed-forward gravity compensation term. This term compensates for the gravitational torques due to the exoskeleton’s weight and it is dependent from the exoskeleton’s pose. Using this control scheme, validated in (Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2022), the robot can either be “transparent” to the user’s spontaneous movements (transparent mode, when the desired torques are set to 0 Nm) or selectively provide joint torques to assist the user’s movements, for example, creating a convergent force field toward reference attraction points (assistive mode).

2.2. EMG acquisition system

We recorded EMG signals from six upper-limb muscles (Figure 1(b)), namely (i) biceps brachii, (ii) triceps brachii (long head), (iii) anterior deltoid, (iv) medial deltoid, (v) posterior deltoid, (vi) upper trapezius. The signals were recorded by an EMG acquisition system composed by the SeWi electromyograph (OTBioelettronica, Torino, Italy) and a dedicated electronic board (SbRIO-9561, NI, Austin, TX, USA). Raw EMG signals are processed at 1 kHZ, implementing a band-pass filter between 20 and 400 Hz, a notch-filter at 50 Hz, a rectification, and, finally, a low-pass filter at 4 Hz. The processed signals, that is, the linear envelopes, are used by the electronic board to run the Syn-ID high-level control algorithm at 100 Hz. Finally, the estimate of the movement direction, that is, the output of the Syn-ID control algorithm is transmitted to the NESM- $ \gamma $ electronic board, via an SSI communication protocol.

2.3. The Syn-ID control algorithm

The proposed approach grounds on the following steps, performed in RT: (i) the system acquires EMG signals from upper-limb superficial muscles and extract informative features on muscle synergies, (ii) after the onset of the reaching movement is detected, a Gaussian Mixture Model (GMM) estimates the direction of the movement based on the above features, and (iii) the control system of the exoskeleton generates assistive torque profiles at the different joints to guide the user’s hand toward the desired target. Before running the algorithm, an offline procedure is implemented to extract the muscle synergies and train the GMMs. The block diagram of the algorithm is shown in Figure 2.

Figure 2. Block diagram of the algorithm. When the onset of the EMG activation is detected, the signals are used to extract the activation coefficients of the muscle synergies. The activation coefficients are used as input to a Gaussian Mixture Model-based strategy, whose outputs allow inferring the direction of the reaching movement. Finally, the exoskeleton is actuated with an impedance control-based strategy to guide the hand of the user toward the inferred direction. In this figure, the dependency of the variables on the program iteration $ i $ has been eliminated to enhance readability.

In the remainder of the article, the following mathematical notation conventions will be employed: matrices will be denoted in bold (e.g., $ \mathbf{H} $ ), vectors will be represented as underlined (e.g., $ \overline{\tau} $ ), and scalars will maintain standard notation.

2.3.1. Offline muscle synergies computation and GMMs training

For the offline muscle synergies computation and GMMs training, first, EMG signals were recorded while users performed reaching movements toward $ {N}_{\mathrm{dir}} $ different directions, wearing the NESM- $ \gamma $ exoskeleton in transparent mode. Then, the procedures comprised the following steps:

  1. 1. Non-negative matrix factorization. The segmented envelopes were used as input to the non-negative matrix factorization (NMF) algorithm, which was implemented as described in Lee and Seung (Reference Lee and Seung2000), and hereafter briefly recapped. Given the matrix of envelopes $ \mathbf{X}\in {\mathbb{R}}^{N\times 6} $ , where $ N $ is the length of the acquisition, the NMF iteratively searches the matrices $ \mathbf{W} $ and $ \mathbf{H} $ that minimize the root-mean-squared residual between $ \mathbf{X} $ and $ \mathbf{W} $ $ \mathbf{H} $ . The matrix $ \mathbf{H}\in {\mathbb{R}}^{R\times 6} $ represents the synergies matrix, which accounts for the contribution of each muscle to the synergy modules (with $ R $ representing the number of muscle synergies to consider, that was set to four (Israely et al. Reference Israely, Leisman, Machluf and Carmeli2018)). The matrix $ \mathbf{W}\in {\mathbb{R}}^{N\times 4} $ represents the activation coefficients of each muscle synergy throughout the acquisition time.

  2. 2. Labeling. Training activation coefficients, contained in matrix $ \mathbf{W} $ , were labeled with respect to their directions of movements, $ d $ , considering the $ {N}_{\mathrm{dir}} $ possible directions.

  3. 3. GMMs training. The activation coefficients associated with each movement direction were modeled as a weighted sum of three Gaussian components, resulting in a set of $ {N}_{\mathrm{dir}} $ GMMs. Thus, the probability density function (PDF) of the GMM associated with the $ d $ -th direction was computed as:

    (1) $$ {\overline{f}}_{GMM}^{(d)}={\sum}_{g=1}^3{\pi}^{\left(g,d\right)}\cdot {\mathcal{N}}^{\left(g,d\right)}\left({\mathbf{W}}^{(d)}\right), $$
    where $ {\mathbf{W}}^{(d)} $ contained the activation coefficients of the movements toward the direction $ d $ , and $ {\mathcal{N}}^{\left(g,d\right)} $ was the PDF the $ g $ -th Gaussian component, and $ {\pi}^{\left(g,d\right)} $ were the mixing coefficients weighing the PDF and satisfying 0 $ <{\pi}^{\left(g,d\right)}< $ 1 and $ {\sum}_{g=1}^3{\pi}^{\left(g,d\right)}= $ 1. The GMMs parameters were first initialized through a $ k $ -means algorithm, with $ k $ equal to three, and then estimated iteratively through an expectation-maximization algorithm.

2.3.2. Onset detection algorithm

The onset of the reaching movements was recognized using a real-time EMG-based segmentation algorithm. The onset detection represented an extension of the threshold-based method described in Solnik et al. (Reference Solnik, Rider, Steinweg, DeVita and Hortobágyi2010), modified to accommodate the concurrent activation of multiple muscles of our case study. The algorithm computed the sum of the EMG envelopes of the six upper-limb muscles. A threshold $ \vartheta $ was then computed as:

(2) $$ \vartheta =\mu +{K}_s\cdot \sigma, $$

where $ {K}_s $ is a tunable gain, $ \mu $ is the mean, and $ \sigma $ is the standard deviation of the sum signal in a moving window of 150 ms. When the sum signal was greater than the threshold $ \vartheta $ , the onset of the EMG activation was detected.

2.3.3. Real-time high-level control

The real-time high-level controller computed an estimate of the reaching movement direction ( $ \hat{d} $ ) observing an initial portion of the EMG activation patterns, from the detected movement onset $ {i}_0 $ , to a given time instant $ T $ , called accumulation time. After the onset $ {i}_0 $ , at each program iteration $ i<T $ , the algorithm performs the following steps:

  1. 1. Online non-negative least squares. Given the observed linear envelopes $ {\overline{x}}^{\star }(i)\in {\mathbb{R}}^6 $ , the associated synergy activation coefficients $ {\overline{w}}^{\star }(i)\in {\mathbb{R}}^4 $ were estimated solving a non-negative least squares constraint problem:

    (3) $$ {\overline{w}}^{\star }(i)=\arg \underset{\overline{w}>0}{\min}\left\Vert \overline{w}\cdot \mathbf{H}-{x}^{\star }(i)\right\Vert $$
  2. 2. Conditional probability logics. The conditional probability density of each movement direction $ d $ , given the estimated activation coefficients $ {w}^{\star }(i) $ and the related PDF of the GMM obtained during the offline training $ \left({f}_{\mathrm{GMM}}^{(d)}\right) $ , is computed from the GMM as:

    (4) $$ \overline{P}\left(d\right|{\overline{w}}^{\star }(i)\Big)=\frac{f_{\mathrm{GMM}}^{(d)}}{{\sum \limits}_d{f}_{\mathrm{GMM}}^{(d)}\left({w}^{\star }(i)\right)}. $$

    The vector of conditional probability density $ \overline{P}\left(d\right|{\overline{w}}^{\star }(i)\Big)\in {\mathbb{R}}^{N_{\mathrm{dir}}} $ , was then normalized so that $ {\sum \limits}_dP\left(d\right|{w}^{\star }(i)\Big)= $ 1.

  3. 3. Evidence accumulation. An evidence accumulation approach was used to increase the confidence over the most probable direction; a cumulative conditional probability $ {\overline{P}}_c\left(d\right|{\overline{w}}^{\star }(i)\Big) $ was computed for each direction as:

    (5) $$ {\overline{P}}_c\left(d\right|{\overline{w}}^{\star }(i)\Big)=\frac{\sum_{\overline{t}={i}_0}^i\overline{P}\left(d|\;{\overline{w}}^{\star}\left(\overline{t}\right)\right)}{{\sum \limits}_{\overline{d}\in \overline{D}}{\sum}_{\overline{t}={i}_0}^i\overline{P}\left(\overline{d}|\;{\overline{w}}^{\star}\left(\overline{t}\right)\right)}. $$
    Again, the cumulative probabilities were normalized so that $ {\sum \limits}_d{\overline{P}}_c\left(d\right|{\overline{w}}^{\star }(i)\Big)= $ 1.
  4. 4. Direction estimate. The movement direction was estimated as the one with the highest cumulative probability, as:

    (6) $$ \hat{d}(i)=\arg \underset{d}{\max }{\overline{P}}_c\left(d\right|{\overline{w}}^{\star }(i)\Big). $$
    The estimate of the target $ \hat{\mathrm{d}} $ evolved according to (6) until the accumulation time $ T $ . Once the accumulation time was elapsed, the estimate was kept fixed as its value at $ i=T $ .

2.3.4. Assistive strategy

Along the movement, the NESM- $ \gamma $ exoskeleton was controlled to assist the reaching movement toward a target position ( $ \hat{\overline{\delta}}(i)\in {\mathbb{R}}^3 $ ) associated with the estimated direction $ \hat{d}(i) $ :

  1. 1. Virtual stiffness. A virtual stiffness control law was implemented to guide the movement of the user’s hand toward the estimated target position. At each iteration $ i $ , the position of the user’s hand, $ \overline{EE}(i)\in {\mathbb{R}}^3 $ in the global frame was computed through direct kinematics (Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2022). $ \overline{EE}(i) $ and $ \hat{\overline{\delta}}(i) $ were reported in the sAA frame (i.e., the first joint of the active kinematic chain) to account only for the active chain for the generation of the assistive force.

    A virtual stiffness $ \overline{K}\in {\mathbb{R}}^3 $ was used to compute the virtual force $ \overline{\gamma}(i)\in {\mathbb{R}}^3 $ , which was the force necessary to direct the hand $ \overline{EE}(i) $ toward the estimated target position, that is, the attraction point:

    (7) $$ \overline{\gamma}(i)=\overline{K}\cdot \left[{\mathbf{R}}_{\mathbf{0}}^{\mathbf{sAA}}\cdot \left(\overline{EE}(i)-\hat{\overline{\delta}}(i)\right)\right], $$
    where $ {\mathbf{R}}_{\mathbf{0}}^{\mathbf{sAA}}\in {\mathbb{R}}^{3\times 3} $ was the rotational matrix from the NESM- $ \gamma $ global frame to the sAA joint (Figure 1(a)), and it was a function of the passive degrees of freedom.
  2. 2. Reference torques computation. Finally, the joint reference torques $ {\overline{\tau}}_r(i)\in {\mathbb{R}}^4 $ were computed as:

    (8) $$ {\overline{\unicode{x03C4}}}_{\mathrm{r}}\left(\mathrm{i}\right)={\overline{\unicode{x03C4}}}_{\mathrm{d}}\left(\mathrm{i}\right)+{\overline{\unicode{x03C4}}}_{\mathrm{g}}\left(\mathrm{i}\right) $$
    where $ {\overline{\tau}}_g(i) $ were feed-forward, pose-dependent gravity compensation torques, and were a function of $ {\overline{q}}^a(i) $ (Pan et al. Reference Pan, Astarita, Baldoni, Dell’Agnello, Crea, Vitiello and Trigili2022), while $ {\overline{\tau}}_d(i) $ were the desired assistive torques, computed applying the statics equation of the active kinematic chain of the robot:
    (9) $$ {\overline{\unicode{x03C4}}}_{\mathrm{d}}\left(\mathrm{i}\right)={\mathbf{J}}^T\cdot \overline{\unicode{x03B3}}\left(\mathrm{i}\right) $$
    $ {\mathbf{J}}^T $ was the transposed Jacobian matrix of the active kinematic chain of the NESM- $ \unicode{x03B3} $ .

2.4. Study design

In order to verify the performance of the Syn-ID control algorithm, we conducted a pilot study with eight healthy participants (S1–S8, 5M/3F, height 173 $ \pm $ 8.8 cm, weight 71 $ \pm $ 13 kg). The experimental procedures were approved by the Ethics Committee of Scuola Superiore Sant’Anna, Pisa, Italy (approval no. 34/2021) and conducted in accordance with the principles stated in the Declaration of Helsinki. The participants signed written informed consent to participate in the study.

Upon recruitment, electrodes for EMG were attached to the six target upper-limb muscles (Figure 1(b)). The participant was asked to perform three repetitions of 5-second maximum voluntary isometric contractions (MVC) for each muscle (Burden Reference Burden2010). The MVC data were only used for offline data analysis, while the Syn-ID algorithm used the non-normalized linear envelopes. The protocol included two sessions, namely a transparent and an assistive session. During the transparent session, the subject was asked to perform eight reaching movements toward eight different targets marked on a table, while the NESM- $ \gamma $ was operated in transparent mode. The targets were equally spaced on a 25 cm diameter circumference on the four cardinal (north (N), east (E), south (S), and west (W)) and the four ordinal directions (north-west (NW), south-west (SW), south-east (SE), and north-east (NE)), so that the angular distance between adjacent targets was 45 deg. All the reaching movements started with the subject’s hand in a home position, which was marked on the table at the centre of the circumference and aligned along the sagittal plane with the subject’s shoulder joint. A representation of a subject with the hand in home position is shown in Figure 1. To guide the execution of the movements, the target positions were shown to the user via LEDs on a graphical user interface (LED UI; Figure 1(a)). The LEDs were programmed so that each one would turn on for 5 s, in a randomized sequence. Once the target LED turned off, the subject was asked to return to the home position, which was also indicated by a central LED. Throughout the movement execution, the subject was instructed to focus on the LED UI and maintain a consistent pose through the experiment while in the home position. Every 5 minutes, short breaks were allowed to reduce the effects of muscle fatigue. The processed EMG signals, segmented between $ {i}_0 $ and $ T $ , that is, the onset instant and the accumulation time, were used to compute the muscle synergies and train the GMMs classifiers, as explained in Section 2.3.1. The accumulation time $ T $ was fixed to 0.6 s. The transparent session lasted approximately 15 minutes.

During the assistive session, the subject performed the reaching movements while the exoskeleton was operated in assistive mode, implementing the Syn-ID algorithm. The exoskeleton was programmed to assist the reaching movement and support the arm in position after the task, until the LED turned off. At the beginning of the session, a quick calibration procedure was performed to identify the position of the targets in the workspace ( $ \hat{\overline{\delta}} $ ): with the robot in transparent mode, the subject was asked to keep a stable position on the home target and the $ \overline{EE} $ value was acquired. Then, the $ \overline{EE} $ positions on the other targets were obtained via geometrical considerations. After the calibration procedure, participants were instructed to perform some movements toward the eight targets in assistive mode, while the experimenter fine-tuned the value of $ \overline{K} $ , starting from a reference value ([0.01, 0.03, 0.01] N/m), until the participant felt comfortable with the level of assistance. Finally, a total of 20 reaching movements toward each target were performed in the assistive mode with the tuned stiffnesses. For these movements, the accumulation time $ T $ was fixed to 0.6 s. Every 5 min, short breaks were allowed to avoid muscle fatigue. The assistive session lasted approximately 30 minutes. A video representing the execution of the experiment from a representative subject can be found in Supplementary materials.

2.5. Data analysis

The data collected in the experimental sessions were analyzed offline using custom MATLAB routines. The performance of the Syn-ID algorithm was assessed computing the following key performance indicators.

  1. 1. Accuracy. Given the number of true positives $ {N}_{\mathrm{TP}} $ (i.e., movement directions correctly recognized at $ T= $ 0.6 s) and $ {N}_{\mathrm{tot}} $ the total number of movements, the accuracy of the algorithm was computed as:

    (10) $$ \mathrm{Accuracy}\;\left(\%\right)=100\left(\frac{N_{\mathrm{TP}}}{N_{\mathrm{tot}}}\right). $$
  2. 2. Error types. Considering the geometry of the problem, the possible estimate errors were categorized into four different error types, according to the location of the misclassified target relative to the expected one:

    1. a. type 1 error: misclassification to a direction adjacent to the expected one (e.g., N vs. NW);

    2. b. type 2 error: misclassification to a direction perpendicular to the expected one (e.g., N vs. W);

    3. c. type 3 error: misclassification to a direction near-opposite to the expected one (e.g., N vs. SW); and

    4. d. type 4 error: misclassification to a direction opposite to the expected one (e.g., N vs. S).

    5. For each type, an error percentage was computed as in equation (10).

  3. 3. Modified accuracy. A modified accuracy value was computed as the sum of accuracy and type 1 errors.

  4. 4. Movement repeatability. The repeatability of the movements was quantified computing two indicators in the home reference frame (EEhome, x home, y home, z home; Figure 1(a)), that is, the reference system parallel to the global frame and centered in the home position of the workspace, using polar coordinates. The final position of the hand at the end of the assisted movement and a reference centroid for each target, computed as the average final hand position of the transparent movements toward that target, were transformed into polar coordinates using:

    (11) $$ \left\{\hskip-1.3em ,\begin{array}{c}\theta =\mathrm{atan}\left(\frac{y}{x}\right)\\ {}\rho =\sqrt{x^2+{y}^2}\end{array}\right., $$
    resulting in $ \left({\theta}_{\mathrm{assist}}^{(d)},{\rho}_{\mathrm{assist}}^{(d)}\right) $ and $ \left({\theta}_{\mathrm{transp}}^{(d)},{\rho}_{\mathrm{transp}}^{(d)}\right) $ , respectively. Then, for each movement, we computed two error metrics, expressing the discrepancies between movements in assisted and transparent mode, in terms of angular value and hand advancement with respect to the targets $ d $ :
    (12) $$ {\epsilon}_{\theta }=\left|{\theta}_{\mathrm{assist}}^{(d)}-{\theta}_{\mathrm{transp}}^{(d)}\right|,{\epsilon}_{\rho }=\left|{\rho}_{\mathrm{assist}}^{(d)}-{\rho}_{\mathrm{transp}}^{(d)}\right|. $$
  5. 3. Muscle activations. The effects of the assistance were evaluated computing the integral of the EMG signals (iEMG) for the transparent and assistive sessions. Before computing the iEMG, the signals were normalized in time between 0% and 100% and in amplitude with the MVC of each muscle.

  6. 5. Manipulability indexes. The manipulability indexes for the movements of the transparent and assistive sessions toward each target was computed as:

    (13) $$ \omega =\sqrt{\det \left(\mathbf{J}\cdot {\mathbf{J}}^T\right)}, $$
    where $ \mathbf{J} $ is the Jacobian matrix of the active kinematic chain of NESM- $ \gamma $ and $ {\mathbf{J}}^T $ is its transpose. The manipulability index is bounded between 0 and 1 and it depends on the exoskeleton’s configuration. When $ \omega = $ 0, the exoskeleton is in a singular configuration, where small end-effector velocities cause large joint velocities; thus, higher values of $ \omega $ (i.e., closer to 1) are preferred. For each movement, a single manipulability index was computed as the mean of the $ \omega $ observed from the initial position toward the target. Before computing $ \omega $ , movements were normalized in time between 0% and 100%.

Finally, the performance of the muscle synergies-based ID algorithm in estimating the reaching movement direction was benchmarked offline with respect to a state-of-the-art kinematics-based ID algorithm. Given the end-effector position $ \overline{\mathrm{E}{\mathrm{E}}^h}=\left[{x}_{\mathrm{E}\mathrm{E}},{y}_{\mathrm{E}\mathrm{E}},{z}_{\mathrm{E}\mathrm{E}}\right] $ in the home reference frame, the angular polar coordinate $ \theta $ was computed at each time instant $ i\in \Big[{i}_0,T= $ 0.6 s $ \Big] $ as in (11).

Then, the direction $ \hat{d} $ was estimated as the one minimizing:

(14) $$ \hat{d}(i)=\arg \underset{d}{\min}\hskip0.1em \mid \hskip0.3em \theta (i)-\left({\overline{\Theta}}^{(d)}\pm 22.5\;\deg \right)\mid . $$

Where $ \overline{\Theta} $ $ \in {\mathbb{R}}^8 $ contains the angular polar coordinate of the actual targets, spaced at intervals of 45 deg. For example, a movement was classified toward the N direction ( $ {\Theta}^N= $ 90 deg) if 67.5 < $ \theta (i) $ < 112.5 deg.

2.6. Statistical analysis

Statistical significance changes in both iEMG values and manipulability coefficients across the transparent and assisted sessions were investigated. Moreover, the possible significant differences in the performance of the implemented muscle synergy-based ID algorithm and the offline benchmark were evaluated. Outlier detection was conducted using Tukey’s method. The indicators were tested for normality and homoscedasticity using the Kolmogorov–Smirnov test and Levene’s test, respectively. None of the tested indicators resulted normally distributed. Therefore, the following tests were performed:

  1. 1. A bidirectional Wilcoxon signed rank test was used to check for possible significant differences between transparent and assistive sessions, for iEMG values, and manipulability indexes.

  2. 2. A Friedman’s test was used to check for potential direction-dependent significant differences in the manipulability indices. For comparisons yielding significant differences among the tested conditions, a post-hoc analysis was performed using the Tukey’s honestly significant difference correction.

  3. 3. Two one-tailed Wilcoxon signed rank tests were used to assess possible statistically significant differences between the muscle synergy-based ID algorithm and the offline benchmark.

All statistical analyses were performed in MATLAB with a significance level $ \alpha = $ 0.05.

3 Results

Three movements of the assistive sessions (0.24% of the total) were excluded from the data analysis due to onset detection errors, that is, the onset was not timely detected for estimating the movement direction; moreover, a specific movement performed by S8 (assisted movement toward SE) was excluded from this analysis, due to signal noise on the Biceps Brachii reading, likely caused by a sudden movement of the subject against the NESM- $ \gamma $ upper-arm interface.

Figure 3 shows the hand trajectories of a representative subject (S4) toward the eight targets during the assistive session, along with the mean $ \pm $ standard deviation EMG activations of both transparent and assistive sessions. Trajectories were normalized in duration considering as 0% the instant detected by the EMG onset detection algorithm, and as 100% the instant detected by a state-of-the-art noncausal kinematics-based algorithm, that is, the time instant on which the $ z $ coordinate of $ \overline{\mathrm{EE}} $ , decreases to a value equal to 20% of its peak value during the movement, similarly to (Trigili et al. Reference Trigili, Grazi, Crea, Accogli, Carpaneto, Micera, Vitiello and Panarese2019). The $ z $ coordinate was chosen because it had a bell-shaped profile for all targets. Most of the hand trajectories reached the target end position, showing consistent patterns regardless of the error type. The direction that was estimated more accurately for S4 was SW (85% of accuracy), while the least accurate was SE (20% of accuracy), which was confused with S in 70% of instances. The final hand positions during movements toward adjacent targets were notably close one to each other. Among all, the centroids of N and NW targets were the closest ones (8.35 cm apart in the $ xy $ plane), while the centroids of S and SE were 14.92 cm apart in the $ xy $ plane. Notably, the Syn-ID algorithm confused N with NW 35% of cases, and NW with N the 21% of instances. Instead, S was confused with SE 28% of cases, while SE was confused with S 30% of instances. Consistent patterns could be observed in the EMG activations between transparent and assistive sessions. The action of the arm and forearm flexor muscles (i.e., Anterior Deltoid and Biceps Brachii) peaked for movements toward N, NE, and NW, while the extensor muscles (i.e., Posterior Deltoid and Triceps Brachii) activated mostly for movements toward S, SE and SW. Notably, the Posterior Deltoid exhibited the highest level of activation among all muscles for movements toward the S and SE directions. Finally, for both transparent and assistive movements toward all the directions, the Biceps Brachii kept a bell-shaped pattern of activation, with a peak around 50% from the EMG onset.

Figure 3. Data from a representative subject, grouped by movement direction. The first row shows the user hand trajectories from during the assistive session, where the orange dots represent the average initial and final positions during transparent session. The remainder rows of the figure show the mean $ \pm $ standard deviation EMG linear envelopes in the transparent and assistive sessions. Muscles activities are normalized in duration considering as onset the instant detected by the onset detection algorithm and as end of the movement the instant identified by a noncausal state-of-the-art algorithm using kinematic activities.

The confusion matrix for the ID algorithm based on muscle synergies is reported in Figure 4(a), resulting in an average accuracy of 48.6% and modified accuracy of 82.1%, at $ T= $ 0.6 s. The directions that, on average, were estimated more accurately were W and SW (61% and 58%, respectively), while those that have been estimated less accurately were S and N (39% and 41%, respectively). The directions with the highest modified accuracy were NE (88%) and NW (87%), while those with the lowest modified accuracies were E (65%) and SW (76%). Figure 4(b) shows the accuracies and the estimate errors at $ T= $ 0.6 s, averaged on the participants. Most of the tested movements were estimated accurately (48.6 $ \pm $ 8.5%), while most of the confusion was detected along adjacent directions, as reflected by the errors of type 1 being the most frequent errors (33.4 $ \pm $ 4.5%). Modified accuracy was 82.1 $ \pm $ 6.3%. Most severe errors, that is, type 4, were also the least frequent ones (2.5 $ \pm $ 1.6%).

Figure 4. Overall performance of the Syn-ID algorithm. (a) Confusion matrix of the direction estimate; (b) accuracies and estimate errors, averaged on subjects. Modified accuracy is computed as the sum of Accuracy and Type 1.

The iEMG values aggregated on participants are reported in Figure 5. Aggregating data over directions, four out of six muscles reduced their median iEMG between the transparent and assistive sessions, with the exception of Biceps Brachii and Anterior Deltoid (+6.21% and +8.45%, respectively, but without statistical significance). Triceps Brachii, Medial Deltoid, Posterior Deltoid, and Upper Trapezius exhibited a reduction in the assistive session (−5.39%, −4.75% −6.10%, −7.17%, respectively). The difference of the Triceps Brachii and of the Posterior Deltoid between the two sessions was found statistically significant ( $ p= $ .0391, and $ p= $ .0078, respectively).

Figure 5. Boxplots of the distribution of the integral EMG (iEMG) values aggregated on the eight participants. For each muscle, the iEMG distributions are shown orienting the boxplot according to the movement direction.

Figure 6(a, b) presents raincloud plots (Allen et al. Reference Allen, Poggiali, Whitaker, Marshall, Langen and Kievit2019) of the errors $ {\epsilon}_{\rho } $ and $ {\epsilon}_{\theta } $ , showing the PDF of the indicators, grouped by error types, as well as the different observations aggregated. Accurate estimates and type 1 errors showed the same median $ {\epsilon}_{\rho } $ (1.42 cm). Movements causing errors of type 3 and 4 showed the highest discrepancies in terms of hand advancement, showing median $ {\epsilon}_{\rho } $ of 4.91 cm and 3.07 cm, respectively. Consistently, the lowest angular errors occurred for accurate and type 1 movements showing a median $ {\epsilon}_{\theta } $ of 3.94 deg and 5.28 deg, respectively. Figure 6(c) shows the distribution of the manipulability coefficients aggregated on participants. On average, the SW direction resulted the one with the highest manipulability both in transparent and assistive sessions (0.62 $ \pm $ 0.08 transparent, 0.61 $ \pm $ 0.07 assistive). Analogously, the NE direction resulted the one with the lowest manipulability in both sessions (0.23 $ \pm $ 0.06 transparent, 0.22 $ \pm $ 0.06 assistive). A bidirectional Wilcoxon test did not show any significant difference in manipulability indices between transparent and assistive sessions (minimum $ p= $ .3125). On the other hand, several direction-dependent significant differences in the manipulability indices were found by the Friedman’s test, when analyzing the movements of the two sessions separately (Figure 6(d)). The strongest differences were found between the SW and NE directions, in both transparent and assistive sessions ( $ p= $ 1e−7 and $ p= $ 3e−6, respectively).

Figure 6. Information derived from NESM- $ \gamma $ kinematics measurements. (a, b) Raincloud plots of the errors $ {\epsilon}_{\rho } $ and $ {\epsilon}_{\theta } $ , showing discrepancies in terms of hand advancement and angle, between the final positions of the assisted movements and the targets, derived from transparent session. (c) Spider plot of the mean $ \pm $ standard deviation manipulability coefficients aggregated on subjects, for the transparent and assisted movements. (d) Direction-dependent statistically significant differences in the manipulability index (only differences with $ p< $ .01 are shown to improve readability).

Finally, Figure 7 shows the evolution over time of the modified accuracy for the Syn-ID and the kinematics-based algorithms, aggregated over subjects. These signals were computed from 0.05 s after the detected EMG onset and were averaged across the subjects. For both signals, the modified accuracy increased over time, reaching a maximum of 82.11 $ \pm $ 6.34% for the Syn-ID algorithm and 91.58 $ \pm $ 4.76% for kinematics-based benchmark at $ T= $ 0.6 s. The statistical analyses showed that the Syn-ID algorithm performed significantly better than the benchmark immediately after the onset detection (for 0.14 s; minimum–maximum $ p= $ .012–.027, nonsignificant results observed at 0.09 and 0.11 s). On the other hand, the kinematics-based algorithm performed statistically better from 0.29 s after the EMG onset up to the end of the inspected window (minimum–maximum $ p= $ .004–.039).

Figure 7. Pattern of the modified accuracy (sum of the accuracy and of the errors of type 1) over the accumulation time $ T $ for the proposed muscle synergies-based algorithm and the benchmark algorithm based on kinematics. Horizontal lines with a star highlight the portions of the curves that show significant differences (* $ p< $ .05).

4. Discussions

The choice of inferring the user movement intentions using features derived from muscle synergies is rooted on neuroscientific principles of motor control (d’Avella et al. Reference d’Avella, Saltiel and Bizzi2003). Incorporating concepts retrieved by physiological process into the control algorithms of exoskeletons could enhance the interaction between the robot and the user, creating a cognitive interface that is specifically tailored to user’s needs and residual functionalities (Catalán et al. Reference Catalán, Trigili, Nann, Blanco-Ivorra, Lauretti, Cordella, Ivorra, Armstrong, Crea, Alcañiz, Zollo, Soekadar, Vitiello and García-Aracil2023; Crea et al. Reference Crea, Nann, Trigili, Cordella, Baldoni, Badesa, Catalán, Zollo, Vitiello, Aracil and Soekadar2018; Lanotte et al. Reference Lanotte, McKinney, Grazi, Chen, Crea and Vitiello2021; Penna et al. Reference Penna, Trigili, Zollo, Cipriani, Cappello, Controzzi, Dalise, Chisari, Gruppioni, Crea, Vitiello, Miesenberger, Kouroupetroglou, Mavrou, Manduchi, Covarrubias Rodriguez and Penáz2022, Reference Penna, Trigili, Amato, Eken, Dell’Agnello, Lanotte, Gruppioni, Vitiello and Crea2023; Ronsse et al. Reference Ronsse, Vitiello, Lenzi, van den Kieboom, Carrozza and Ijspeert2011). Subject-specific customization of the exoskeleton behaviour could be particularly effective in poststroke rehabilitation, during which it is important to accommodate the subject’s residual movements (Balasubramanian et al. Reference Balasubramanian, Garcia-Cossio, Birbaumer, Burdet and Ramos-Murguialday2018). The results of this study highlight the feasibility of this approach and open new perspectives in poststroke upper-limb rehabilitation scenarios.

First, the accuracy in the classification of the movement direction based on muscle synergies (48.7%) was notably higher than the chance level adjusted for the number of trials per directions (18.1%, with 95% confidence; Müller-Putz et al. Reference Müller-Putz, Scherer, Brunner, Leeb and Pfurtscheller2008). This result is particularly remarkable considering that the eight movement targets were relatively close to each other in the space and muscle activations (and muscle synergies) were very similar when considering adjacent directions. In line with this, the analysis of error types underlined the prevalence of type 1 errors compared to other error types, showing that most of the confusion of the estimate algorithm resulted along directions adjacent to the actual one. Therefore, the modified accuracy may be considered as the accuracy of the algorithm in detecting movement direction when it is acceptable to identify a more generic direction, namely type 1 errors are acceptable to achieve effective assistance control. In this case, the accuracy reached 82% after 0.6 s from the iEMG onset. The proposed algorithm has comparable or ameliorative results in terms of overall accuracy to state-of-the-art works exploiting EMG-based features to estimate the reaching movement directions. (Irastorza-Landa et al. Reference Irastorza-Landa, Sarasola-Sanz, López-Larraz, Bibián, Shiman, Birbaumer and Ramos-Murguialday2017) obtained an accuracy of 78% using support vector machines to classify the directions of four forward and four backward reaching movements (chance level 25%), using time windows of 1 s for features extraction. (Novak et al. Reference Novak, Omlin, Leins-Hess and Riener2013) reached 90% of accuracy at the 75% of movement execution using linear discriminant analysis to classify reaching movements toward three objects (chance level 33%).

In addition to estimate performance, this study assessed the algorithm capability of providing a synchronous and repeatable assistance to the movements of the user through a shoulder-elbow exoskeleton. Overall, the assistive mode allowed participants to move toward the desired target and reach the final position with small errors in terms of hand advancement and angle. Indeed, highest median $ {\epsilon}_{\rho } $ was 4.91 cm, which was notably lower than the radius of the circumference on which the targets were placed (25 cm). Analogously, the highest median angular error was 7.40 deg, which was lower than the angular shift between different targets (45 deg). $ {\epsilon}_{\theta } $ and $ {\epsilon}_{\rho } $ errors were particularly small (median of 5.28 deg, 1.42 cm, respectively) when the classification algorithm classified the direction of movement correctly or with type 1 error. Notably, the median $ {\epsilon}_{\rho } $ was the same for accurate movements and type 1 error ones.

The effects of the assistance on the user were assessed through EMG activations. Although four out of six muscles showed a reduction of the iEMG values between the transparent and the assistive sessions, only Triceps Brachii and Posterior Deltoid, that is, the extensor muscles of forearm and shoulder, showed statistically significant reductions. This result could be correlated with the values of the manipulability coefficients ( $ \omega $ ) of the NESM- $ \gamma $ exoskeleton. Indeed, the values of $ \omega $ for the north directions (i.e., N, NW, and NE) were significantly lower than the ones for the south ones (i.e., S, SW, and SE). A lower value of the manipulability index results in greater angular displacements in the joint space for an equal displacement of the end effector in the Cartesian space, that is, hand trajectories, which is where the movement planning occurs. This could have caused unexpected muscle contractions that influenced the EMG values of movements toward north directions. For similar reasons, the lower values of $ \omega $ for the north directions could have hindered the classification performance, as reflected by poorer accuracies for N and NE directions (up to 41%). Analogously, the SW and W directions, which have among the highest manipulability coefficients, were also the best estimated directions. The S direction represented an exception, since it was the second highest $ \omega $ value, but the overall worst estimated direction. Since most of the estimate errors were toward SE (28% of instances), we hypothesized that these were caused by the similar muscle activation patterns of the movements toward these directions, as shown in Figures 3 and 5.

Finally, the performance of the muscle synergies-based algorithm was assessed with respect to a kinematics-based benchmark algorithm, implemented offline. This analysis showed, on average, significant better performance of the synergies-based approach immediately after the EMG onset (up to 0.14 s); subsequently, it followed a phase (from 0.15 to 0.29 s) where the performance of the two algorithms was analogous and no statistically significant differences were observed. The highest performance of the Syn-ID algorithm in these two subphases can be attributed to the electromechanical delay, that is, the time delay that occurs between the EMG and the kinematic onset. From the literature, this value is typically between 0.04 and 0.07 s for forearm free flexion/extension movements without constraints (Cavanagh and Komi Reference Cavanagh and Komi1979); however, it is conceivable that the mechanical coupling of the user with the exoskeleton required higher levels of EMG activations, and thus longer times, to initiate the movement (Irastorza-Landa et al. Reference Irastorza-Landa, Sarasola-Sanz, López-Larraz, Bibián, Shiman, Birbaumer and Ramos-Murguialday2017). Therefore, it is probable that in the initial time instants of the reaching task, the movement intentions of the subjects were not reflected to any detectable kinematic activity, leading to instabilities of the kinematic classification. Conversely, the information carried by the EMG synergies was significantly higher to infer the intended movement. This consideration is emphasized by the fact that, after the electromechanical delay, the kinematics-based algorithm performed better than the synergies-based one, showing statistically significant results until the limit observation time (from 0.3 to 0.6 s). However, considering the implemented assistive strategy, it is crucial to evaluate the potential impact of assistive torques on the kinematic activity of participants, which served as inputs for the benchmark analysis. Despite this potential influence, results suggest that the assistive torques did not disrupt the participants’ voluntary movement patterns. First, as discussed above, the errors in terms of hand advancement and angle in the polar plane were notably lower than the workspace geometries, with only eight movements showing $ {\epsilon}_{\theta }> $ 45 deg (0.65% of the assisted movements), suggesting that the assistive torques, despite sporadic severe errors, allowed the participants to complete their voluntary movements. Second, the absence of statistically significant increases in the muscle activities among the two sessions suggests that the participants’ movements were not constrained by the assistance. Finally, the absence of any significant difference in manipulability indices between transparent and assistive sessions (minimum $ p= $ .3125) underlines the coherence of kinematic patterns among the sessions. In this regard, it is noteworthy that the assistance was not tuned with the aim of implementing a user passive mobilization. Rather, the focus was placed on facilitating the subjects’ movements.

This study demonstrated that the observation of EMG-derived features could be useful to provide an initial assistance profile which is sufficiently accurate (50% after ∼ 0.15 s from EMG onset). Nevertheless, the adoption of the proposed approach in rehabilitation scenarios must be first assessed in terms of effectiveness and robustness considering the severely compromised EMG activations typical of poststroke individuals. Several studies reported altered coupling of the shoulder–elbow muscles (Roh et al. Reference Roh, Rymer, Perreault, Yoo and Beer2013) and abnormal contribution of the Deltoid heads in synergies (Tropea et al. Reference Tropea, Monaco, Coscia, Posteraro and Micera2013), following a stroke. However, there is evidence that supports the employment of muscle synergies in poststroke rehabilitative practice. First of all, studies have shown that four synergies are sufficient to capture the variability in altered EMG activations of poststroke individuals (Israely et al. Reference Israely, Leisman, Machluf and Carmeli2018; Tropea et al. Reference Tropea, Monaco, Coscia, Posteraro and Micera2013). Second, it was demonstrated that muscle synergies activation coefficients of poststroke individuals exhibit distinctive patterns during three-dimensional reaching tasks toward different targets (Israely et al. Reference Israely, Leisman, Machluf and Carmeli2018). Finally, (Pan et al. Reference Pan, Sun, Xie, Huang, Wu, Hou, Liu, Huang and Zhang2018) observed consistent activation coefficients between poststroke individuals and a control group of healthy participants during reaching tasks. These results pave the way for the application of a classification logic using muscle synergies-based features in some poststroke populations. The Syn-ID algorithm could be effective for the training of gross upper arm motor functions (e.g., reaching) in patients with limited movement capabilities, who can express muscle activity, but need an amplification to drive the upper-limb toward the desired direction.

The main limitation of the study lies in the assistive strategy, which currently does not include countermeasures in case of misdetections. Indeed, when error of type 3 or 4 occurred, the exoskeleton delivered an assistance that was contrary to the participant’s intended movement. Although the occurrence of these errors was low (8.83% of the total) and healthy participants were still able to execute the desired movements (median $ {\epsilon}_{\rho} $ of 2.05 cm and median $ {\epsilon}_{\theta} $ of 6.36 deg), this kind of behavior is not desirable in a rehabilitative scenario, where the participants may not be able to contrast the action of the exoskeleton. Our choice of the assistive strategy in this study was driven by the main objective of verifying the performance of the real-time IDA even when assistance is delivered in the initial instants of the movement. In order to mitigate potential safety concerns in rehabilitation scenarios, the assistive strategy could implement of a veto function, that is, a mechanism that allows the participant to voluntarily interrupt the assistance in presence of unintended behaviors of the system (Clausen et al. Reference Clausen, Fetz, Donoghue, Ushiba, Spörhase, Chandler, Birbaumer and Soekadar2017; Crea et al. Reference Crea, Nann, Trigili, Cordella, Baldoni, Badesa, Catalán, Zollo, Vitiello, Aracil and Soekadar2018). Alternatively, considering the target end users (i.e., people who can initiate the movement, but who need the assistance to accomplish the task), we could also envision a modification of the assistive strategy, in which the movement is initially performed in transparent mode, and the assistance is enabled only when the estimation has reached a certain cumulative probability level (Tortora et al. Reference Tortora, Michieletto, Stival and Menegatti2019).

The current algorithm structure could be improved investigating sensor fusion and sensor integration strategies, mixing the contributions of kinematics and electromyographic information for intention decoding purposes. Indeed, following the electromechanical delay, the kinematic information could be then used to correct the EMG estimate, to further increase the overall accuracy of the intention estimate (Novak et al. Reference Novak, Omlin, Leins-Hess and Riener2013). Moreover, classifiers different from GMMs will be tested aiming to improve the estimate accuracy. Additionally, the assistive strategy could be modified to include also compensation for the user’s arm gravitational torques, which could be beneficial for the training of poststroke individuals (Prange et al. Reference Prange, Jannink, Stienen, van der Kooij, IJzerman and Hermens2009). Finally, the robustness of the algorithm will be investigated in subject independent scenarios, aiming at increasing the generalizability of the approach.

Supplementary material

The supplementary material for this article can be found at http://doi.org/10.1017/wtc.2024.16.

Data availability statement

The datasets generated during and/or analyzed during the current study are available from the corresponding author on reasonable request.

Acknowledgments

The MATLAB routines implementing the raincloud and spider plots of Figure 6 employ open-source routines available on MATLAB File Exchange and GitHub (Allen et al. Reference Allen, Poggiali, Whitaker, Marshall, Langen and Kievit2019; NewGuy012, 2019/2024). The authors would like to thank Giulia di Salvo and Gabriele Santin for their helpful contribution in the preliminary implementations of the algorithm.

Authors contribution

Conceptualization of the algorithm, M.F.P., S.T., E.M., N.V., S.C., E.T.; Software development: M.F.P., D.A., L.A., F.D.A.; Data acquisition: M.F.P., L.G., D.A, L.A.; Data analysis, M.F.P., L.G.; Data discussion, All authors. Writing-original draft preparation, M.F.P. and L.G.; Writing-review & editing, All authors; Scientific supervision, E.M., E.G., N.V., S.C., E.T.; Funding acquisition, E.G., N.V., S.C., E.T. All authors have read and agreed to the published version of the manuscript.

Funding statement

This research was promoted by the Istituto Nazionale per l’Assicurazione contro gli Infortuni sul Lavoro (Inail), within the BioARM (grant no. PR19-RRP3) and BioARMnext (grant no. PR23-RR-P3) projects, and by the EU commission through the H2020 ReHyb project (Rehabilitation based on hybrid neuroprosthesis, Grant Agreement: 871767)‥

Competing interest

N.V. and S.C. have commercial interests in IUVO S.r.l., a spinoff company of Scuola Superiore Sant’Anna. Currently. Part of the IP protecting the NESM-𝛾 exoskeleton has been licensed to IUVO S.r.l. for commercial exploitation.

Ethical standard

The experimental procedures were approved by the Ethics Committee of Scuola Superiore Sant’Anna, Pisa, Italy (approval no. 34/2021) and conducted in accordance with the principles stated in the Declaration of Helsinki. The participants signed written informed consent to participate in the study.

References

Alibeji, NA, Molazadeh, V, Moore-Clingenpeel, F and Sharma, N (2018) A muscle synergy-inspired control design to coordinate functional electrical stimulation and a powered exoskeleton: Artificial generation of synergies to reduce input dimensionality. IEEE Control Systems Magazine 38(6), 3560. https://doi.org/10.1109/MCS.2018.2866603CrossRefGoogle Scholar
Allen, M, Poggiali, D, Whitaker, K, Marshall, TR, Langen, Jvan and Kievit, RA (2019) Raincloud plots: A multi-platform tool for robust data visualization. Wellcome Open Research 4. https://doi.org/10.12688/wellcomeopenres.15191.2CrossRefGoogle ScholarPubMed
Antuvan, CW, Bisio, F, Marini, F, Yen, SC, Cambria, E and Masia, L (2016) Role of muscle synergies in real-time classification of upper limb motions using extreme learning machines. Journal of NeuroEngineering and Rehabilitation 13(1), 76. https://doi.org/10.1186/s12984-016-0183-0CrossRefGoogle ScholarPubMed
Balasubramanian, S, Garcia-Cossio, E, Birbaumer, N, Burdet, E and Ramos-Murguialday, A (2018) Is EMG a viable alternative to BCI for detecting movement intention in severe stroke? IEEE Transactions on Biomedical Engineering 65(12), 27902797. https://doi.org/10.1109/TBME.2018.2817688CrossRefGoogle ScholarPubMed
Berniker, M, Jarc, A, Bizzi, E and Tresch, MC (2009) Simplified and effective motor control based on muscle synergies to exploit musculoskeletal dynamics. Proceedings of the National Academy of Sciences 106(18), 76017606. https://doi.org/10.1073/pnas.0901512106CrossRefGoogle ScholarPubMed
Bi, L, Feleke, AG and Guan, C (2019) A review on EMG-based motor intention prediction of continuous human upper limb motion for human-robot collaboration. Biomedical Signal Processing and Control 51, 113127. https://doi.org/10.1016/j.bspc.2019.02.011CrossRefGoogle Scholar
Burden, A (2010) How should we normalize electromyograms obtained from healthy participants? What we have learned from over 25 years of research. Journal of Electromyography and Kinesiology 20(6), 10231035. https://doi.org/10.1016/j.jelekin.2010.07.004CrossRefGoogle ScholarPubMed
Catalán, JM, Trigili, E, Nann, M, Blanco-Ivorra, A, Lauretti, C, Cordella, F, Ivorra, E, Armstrong, E, Crea, S, Alcañiz, M, Zollo, L, Soekadar, SR, Vitiello, N and García-Aracil, N (2023) Hybrid brain/neural interface and autonomous vision-guided whole-arm exoskeleton control to perform activities of daily living (ADLs). Journal of NeuroEngineering and Rehabilitation 20(1), 61. https://doi.org/10.1186/s12984-023-01185-wCrossRefGoogle ScholarPubMed
Cavanagh, PR and Komi, PV (1979) Electromechanical delay in human skeletal muscle under concentric and eccentric contractions. European Journal of Applied Physiology and Occupational Physiology 42(3), 159163. https://doi.org/10.1007/BF00431022CrossRefGoogle ScholarPubMed
Cheung, VCK, Piron, L, Agostini, M, Silvoni, S, Turolla, A, and Bizzi, E (2009) Stability of muscle synergies for voluntary actions after cortical stroke in humans. Proceedings of the National Academy of Sciences 106(46), 1956319568. https://doi.org/10.1073/pnas.0910114106CrossRefGoogle ScholarPubMed
Clausen, J, Fetz, E, Donoghue, J, Ushiba, J, Spörhase, U, Chandler, J, Birbaumer, N and Soekadar, SR (2017) Help, hope, and hype: Ethical dimensions of neuroprosthetics. Science 356(6345), 13381339. https://doi.org/10.1126/science.aam7731CrossRefGoogle ScholarPubMed
Crea, S, Nann, M, Trigili, E, Cordella, F, Baldoni, A, Badesa, FJ, Catalán, JM, Zollo, L, Vitiello, N, Aracil, NG and Soekadar, SR (2018) Feasibility and safety of shared EEG/EOG and vision-guided autonomous whole-arm exoskeleton control to perform activities of daily living. Scientific Reports 8(1), Article 1. https://doi.org/10.1038/s41598-018-29091-5CrossRefGoogle ScholarPubMed
d’Avella, A, Saltiel, P and Bizzi, E (2003) Combinations of muscle synergies in the construction of a natural motor behavior. Nature Neuroscience 6(3), Article 3. https://doi.org/10.1038/nn1010Google ScholarPubMed
Englehart, K, Hudgins, B, Parker, PA and Stevenson, M (1999) Classification of the myoelectric signal using time-frequency based representations. Medical Engineering & Physics 21(6), 431438. https://doi.org/10.1016/S1350-4533(99)00066-1CrossRefGoogle ScholarPubMed
Farina, D, Merletti, R and Enoka, RM (2014) The extraction of neural strategies from the surface EMG: An update. Journal of Applied Physiology 117(11), 12151230. https://doi.org/10.1152/japplphysiol.00162.2014CrossRefGoogle ScholarPubMed
Irastorza-Landa, N, Sarasola-Sanz, A, López-Larraz, E, Bibián, C, Shiman, F, Birbaumer, N and Ramos-Murguialday, A (2017) Design of continuous EMG classification approaches towards the control of a robotic exoskeleton in reaching movements. 2017 International Conference on Rehabilitation Robotics (ICORR), 128133. https://doi.org/10.1109/ICORR.2017.8009234CrossRefGoogle Scholar
Ison, M and Artemiadis, P (2014) The role of muscle synergies in myoelectric control: Trends and challenges for simultaneous multifunction control. Journal of Neural Engineering 11(5), 051001. https://doi.org/10.1088/1741-2560/11/5/051001CrossRefGoogle ScholarPubMed
Israely, S, Leisman, G, Machluf, CC, and Carmeli, E (2018) Muscle synergies control during hand-reaching tasks in multiple directions post-stroke. Frontiers in Computational Neuroscience 12. https://www.frontiersin.org/articles/10.3389/fncom.2018.00010CrossRefGoogle ScholarPubMed
Kiguchi, K and Hayashi, Y (2012) An EMG-based control for an upper-limb power-assist exoskeleton robot. IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics) 42(4), 10641071. https://doi.org/10.1109/TSMCB.2012.2185843CrossRefGoogle ScholarPubMed
Klamroth-Marganska, V, Blanco, J, Campen, K, Curt, A, Dietz, V, Ettlin, T, Felder, M, Fellinghauer, B, Guidali, M, Kollmar, A, Luft, A, Nef, T, Schuster-Amft, C, Stahel, W and Riener, R (2014) Three-dimensional, task-specific robot therapy of the arm after stroke: A multicentre, parallel-group randomised trial. The Lancet Neurology 13(2), 159166. https://doi.org/10.1016/S1474-4422(13)70305-3CrossRefGoogle ScholarPubMed
Langhorne, P, Bernhardt, J and Kwakkel, G (2011) Stroke rehabilitation. The Lancet 377(9778), 16931702. https://doi.org/10.1016/S0140-6736(11)60325-5CrossRefGoogle ScholarPubMed
Lanotte, F, McKinney, Z, Grazi, L, Chen, B, Crea, S and Vitiello, N (2021) Adaptive control method for dynamic synchronization of wearable robotic assistance to discrete movements: Validation for use case of lifting tasks. IEEE Transactions on Robotics 37(6), 21932209. https://doi.org/10.1109/TRO.2021.3073836CrossRefGoogle Scholar
Lee, D and Seung, HS (2000) Algorithms for non-negative matrix factorization. Advances in Neural Information Processing Systems 13. https://papers.nips.cc/paper_files/paper/2000/hash/f9d1152547c0bde01830b7e8bd60024c-Abstract.htmlGoogle Scholar
Li, M, Xu, G, Xie, J and Chen, C (2018) A review: Motor rehabilitation after stroke with control based on human intent. Proceedings of the Institution of Mechanical Engineers, Part H: Journal of Engineering in Medicine 232(4), 344360. https://doi.org/10.1177/0954411918755828CrossRefGoogle ScholarPubMed
Lo, AC, Guarino, PD, Richards, LG, Haselkorn, JK, Wittenberg, GF, Federman, DG, Ringer, RJ, Wagner, TH, Krebs, HI, Volpe, BT, Bever, CT, Bravata, DM, Duncan, PW, Corn, BH, Maffucci, AD, Nadeau, SE, Conroy, SS, Powell, JM, Huang, GD and Peduzzi, P (2010) Robot-assisted therapy for long-term upper-limb impairment after stroke. New England Journal of Medicine 362(19), 17721783. https://doi.org/10.1056/NEJMoa0911341CrossRefGoogle ScholarPubMed
Lotti, N, Xiloyannis, M, Durandau, G, Galofaro, E, Sanguineti, V, Masia, L and Sartori, M (2020) Adaptive model-based myoelectric control for a soft wearable arm exosuit: A new generation of wearable robot control. IEEE Robotics & Automation Magazine 27(1), 4353. https://doi.org/10.1109/MRA.2019.2955669CrossRefGoogle Scholar
Müller-Putz, GR, Scherer, R, Brunner, C, Leeb, R and Pfurtscheller, G (2008) Better than random? A closer look on BCI results. International Journal of Bioelectromagnetism 10(1), 5255.Google Scholar
NewGuy012. (2024) NewGuy012/spider_plot [MATLAB]. https://github.com/NewGuy012/spider_plot (Original work published 2019)Google Scholar
Novak, D, Omlin, X, Leins-Hess, R and Riener, R (2013) Predicting targets of human reaching motions using different sensing technologies. IEEE Transactions on Biomedical Engineering 60(9), 26452654. https://doi.org/10.1109/TBME.2013.2262455CrossRefGoogle ScholarPubMed
Pan, B, Sun, Y, Xie, B, Huang, Z, Wu, J, Hou, J, Liu, Y, Huang, Z and Zhang, Z (2018) Alterations of muscle synergies during voluntary arm reaching movement in subacute stroke survivors at different levels of impairment. Frontiers in Computational Neuroscience 12. https://doi.org/10.3389/fncom.2018.00069CrossRefGoogle ScholarPubMed
Pan, J, Astarita, D, Baldoni, A, Dell’Agnello, F, Crea, S, Vitiello, N and Trigili, E (2022) NESM-γ: An upper-limb exoskeleton with compliant actuators for clinical deployment. IEEE Robotics and Automation Letters 7(3), 77087715. https://doi.org/10.1109/LRA.2022.3183926CrossRefGoogle Scholar
Pan, J, Astarita, D, Baldoni, A, Dell’Agnello, F, Crea, S, Vitiello, N and Trigili, E (2023) A self-aligning upper-limb exoskeleton preserving natural shoulder movements: Kinematic compatibility analysis. IEEE Transactions on Neural Systems and Rehabilitation Engineering 31, 49544964. https://doi.org/10.1109/TNSRE.2023.3341219CrossRefGoogle ScholarPubMed
Penna, MF, Trigili, E, Amato, L, Eken, H, Dell’Agnello, F, Lanotte, F, Gruppioni, E, Vitiello, N and Crea, S (2023) Decoding upper-limb movement intention through adaptive dynamic movement primitives: A proof-of-concept study with a shoulder-elbow exoskeleton. 2023 International Conference on Rehabilitation Robotics (ICORR), 16. https://doi.org/10.1109/ICORR58425.2023.10304723CrossRefGoogle Scholar
Penna, MF, Trigili, E, Zollo, L, Cipriani, C, Cappello, L, Controzzi, M, Dalise, S, Chisari, C, Gruppioni, E, Crea, S and Vitiello, N (2022) Design and administration of a questionnaire for the user-centered design of a novel upper-limb assistive device for brachial plexus injury and post-stroke subjects. In Miesenberger, K, Kouroupetroglou, G, Mavrou, K, Manduchi, R,Covarrubias Rodriguez, M and Penáz, P (eds), Computers Helping People with Special Needs. Springer International Publishing, 420427. https://doi.org/10.1007/978-3-031-08645-8_49CrossRefGoogle Scholar
Prange, GB, Jannink, MJA, Stienen, AHA, van der Kooij, H, IJzerman, MJ and Hermens, HJ (2009) Influence of gravity compensation on muscle activation patterns during different temporal phases of arm movements of stroke patients. Neurorehabilitation and Neural Repair 23(5), 478485. https://doi.org/10.1177/1545968308328720CrossRefGoogle ScholarPubMed
Roh, J, Rymer, WZ, Perreault, EJ, Yoo, SB and Beer, RF (2013) Alterations in upper limb muscle synergy structure in chronic stroke survivors. Journal of Neurophysiology 109(3), 768781. https://doi.org/10.1152/jn.00670.2012CrossRefGoogle ScholarPubMed
Ronsse, R, Vitiello, N, Lenzi, T, van den Kieboom, J, Carrozza, MC, and Ijspeert, AJ (2011) Human–robot synchrony: Flexible assistance using adaptive oscillators. IEEE Transactions on Biomedical Engineering 58(4), 10011012. https://doi.org/10.1109/TBME.2010.2089629CrossRefGoogle ScholarPubMed
Sanz-Morère, CB, Martini, E, Meoni, B, Arnetoli, G, Giffone, A, Doronzio, S, Fanciullacci, C, Parri, A, Conti, R, Giovacchini, F, Friðriksson, Þ, Romo, D, Crea, S, Molino-Lova, R and Vitiello, N (2021) Robot-mediated overground gait training for transfemoral amputees with a powered bilateral hip orthosis: A pilot study. Journal of NeuroEngineering and Rehabilitation 18(1), 111. https://doi.org/10.1186/s12984-021-00902-7CrossRefGoogle ScholarPubMed
Skidmore, ER, Whyte, EM, Holm, MB, Becker, JT, Butters, MA, Dew, MA, Munin, MC and Lenze, EJ (2010) Cognitive and affective predictors of rehabilitation participation after stroke. Archives of Physical Medicine and Rehabilitation 91(2), 203207. https://doi.org/10.1016/j.apmr.2009.10.026CrossRefGoogle ScholarPubMed
Solnik, S, Rider, P, Steinweg, K, DeVita, P, and Hortobágyi, T (2010) Teager–Kaiser energy operator signal conditioning improves EMG onset detection. European Journal of Applied Physiology 110(3), 489498. https://doi.org/10.1007/s00421-010-1521-8CrossRefGoogle ScholarPubMed
Tortora, S, Michieletto, S, Stival, F and Menegatti, E (2019) Fast human motion prediction for human-robot collaboration with wearable interface. 2019 IEEE International Conference on Cybernetics and Intelligent Systems (CIS) and IEEE Conference on Robotics, Automation and Mechatronics (RAM), 457462. https://doi.org/10.1109/CIS-RAM47153.2019.9095779CrossRefGoogle Scholar
Trigili, E, Grazi, L, Crea, S, Accogli, A, Carpaneto, J, Micera, S, Vitiello, N and Panarese, A (2019) Detection of movement onset using EMG signals for upper-limb exoskeletons in reaching tasks. Journal of NeuroEngineering and Rehabilitation 16(1), 45. https://doi.org/10.1186/s12984-019-0512-1CrossRefGoogle ScholarPubMed
Tropea, P, Monaco, V, Coscia, M, Posteraro, F and Micera, S (2013) Effects of early and intensive neuro-rehabilitative treatment on muscle synergies in acute post-stroke patients: A pilot study. Journal of NeuroEngineering and Rehabilitation 10(1), 103. https://doi.org/10.1186/1743-0003-10-103CrossRefGoogle ScholarPubMed
Tse, KC, Capsi-Morales, P, Castaneda, TS and Piazza, C (2023) Exploring muscle synergies for performance enhancement and learning in myoelectric control maps. 2023 International Conference on Rehabilitation Robotics (ICORR), 16. https://doi.org/10.1109/ICORR58425.2023.10304809CrossRefGoogle Scholar
Tucker, MR, Olivier, J, Pagel, A, Bleuler, H, Bouri, M, Lambercy, O, Millán, JR, Riener, R, Vallery, H and Gassert, R (2015) Control strategies for active lower extremity prosthetics and orthotics: A review. Journal of NeuroEngineering and Rehabilitation 12(1), 1. https://doi.org/10.1186/1743-0003-12-1CrossRefGoogle ScholarPubMed
Wei, Q, Li, Z, Zhao, K, Kang, Y and Su, CY (2020) Synergy-based control of assistive lower-limb exoskeletons by skill transfer. IEEE/ASME Transactions on Mechatronics 25(2), 705715. https://doi.org/10.1109/TMECH.2019.2961567CrossRefGoogle Scholar
Winstein, CJ, Wolf, SL, Dromerick, AW, Lane, CJ, Nelsen, MA, Lewthwaite, R, Cen, SY and Azen, SP (2016) Effect of a task-oriented rehabilitation program on upper extremity recovery following motor stroke the ICARE randomized clinical trial. JAMA - Journal of the American Medical Association 315(6), 571581. https://doi.org/10.1001/jama.2016.0276CrossRefGoogle ScholarPubMed
Zimmermann, Y, Sommerhalder, M, Wolf, P, Riener, R and Hutter, M (2023) ANYexo 2.0: A fully actuated upper-limb exoskeleton for manipulation and joint-oriented training in all stages of rehabilitation. IEEE Transactions on Robotics 39(3), 21312150. https://doi.org/10.1109/TRO.2022.3226890CrossRefGoogle Scholar
Figure 0

Figure 1. Experimental setup comprising (a) the NESM-γ exoskeleton with the user interface (UI) and (b) the EMG target muscles.

Figure 1

Figure 2. Block diagram of the algorithm. When the onset of the EMG activation is detected, the signals are used to extract the activation coefficients of the muscle synergies. The activation coefficients are used as input to a Gaussian Mixture Model-based strategy, whose outputs allow inferring the direction of the reaching movement. Finally, the exoskeleton is actuated with an impedance control-based strategy to guide the hand of the user toward the inferred direction. In this figure, the dependency of the variables on the program iteration $ i $ has been eliminated to enhance readability.

Figure 2

Figure 3. Data from a representative subject, grouped by movement direction. The first row shows the user hand trajectories from during the assistive session, where the orange dots represent the average initial and final positions during transparent session. The remainder rows of the figure show the mean $ \pm $ standard deviation EMG linear envelopes in the transparent and assistive sessions. Muscles activities are normalized in duration considering as onset the instant detected by the onset detection algorithm and as end of the movement the instant identified by a noncausal state-of-the-art algorithm using kinematic activities.

Figure 3

Figure 4. Overall performance of the Syn-ID algorithm. (a) Confusion matrix of the direction estimate; (b) accuracies and estimate errors, averaged on subjects. Modified accuracy is computed as the sum of Accuracy and Type 1.

Figure 4

Figure 5. Boxplots of the distribution of the integral EMG (iEMG) values aggregated on the eight participants. For each muscle, the iEMG distributions are shown orienting the boxplot according to the movement direction.

Figure 5

Figure 6. Information derived from NESM-$ \gamma $ kinematics measurements. (a, b) Raincloud plots of the errors $ {\epsilon}_{\rho } $ and $ {\epsilon}_{\theta } $, showing discrepancies in terms of hand advancement and angle, between the final positions of the assisted movements and the targets, derived from transparent session. (c) Spider plot of the mean$ \pm $standard deviation manipulability coefficients aggregated on subjects, for the transparent and assisted movements. (d) Direction-dependent statistically significant differences in the manipulability index (only differences with $ p< $.01 are shown to improve readability).

Figure 6

Figure 7. Pattern of the modified accuracy (sum of the accuracy and of the errors of type 1) over the accumulation time $ T $ for the proposed muscle synergies-based algorithm and the benchmark algorithm based on kinematics. Horizontal lines with a star highlight the portions of the curves that show significant differences (*$ p< $.05).

Supplementary material: File

Penna et al. supplementary material

Penna et al. supplementary material
Download Penna et al. supplementary material(File)
File 28.7 MB