Hostname: page-component-586b7cd67f-vdxz6 Total loading time: 0 Render date: 2024-11-27T20:26:04.122Z Has data issue: false hasContentIssue false

A systematic review and meta-analysis of diagnostic test accuracy studies of self-report screening instruments for common mental disorders in Arabic-speaking adults

Published online by Cambridge University Press:  23 November 2021

Anne M. de Graaff*
Affiliation:
Department of Clinical, Neuro- and Developmental Psychology, WHO Collaborating Center for Research and Dissemination of Psychological Interventions, Amsterdam Public Health Institute, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands
Pim Cuijpers
Affiliation:
Department of Clinical, Neuro- and Developmental Psychology, WHO Collaborating Center for Research and Dissemination of Psychological Interventions, Amsterdam Public Health Institute, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands
Mariska Leeflang
Affiliation:
Department of Epidemiology and Data Science, Amsterdam University Medical Centers, Amsterdam Public Health, University of Amsterdam, Amsterdam, The Netherlands
Irene Sferra
Affiliation:
Department of Human Neurosciences, Sapienza University of Rome, Rome, Italy
Jana R. Uppendahl
Affiliation:
Department of Clinical, Neuro- and Developmental Psychology, WHO Collaborating Center for Research and Dissemination of Psychological Interventions, Amsterdam Public Health Institute, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands
Ralph de Vries
Affiliation:
Medical Library, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands
Marit Sijbrandij
Affiliation:
Department of Clinical, Neuro- and Developmental Psychology, WHO Collaborating Center for Research and Dissemination of Psychological Interventions, Amsterdam Public Health Institute, Vrije Universiteit Amsterdam, Amsterdam, The Netherlands
*
Author for correspondence: Anne M. de Graaff, E-mail: [email protected]
Rights & Permissions [Opens in a new window]

Abstract

Background

Self-report screening instruments are frequently used as scalable methods to detect common mental disorders (CMDs), but their validity across cultural and linguistic groups is unclear. We summarized the diagnostic accuracy of brief questionnaires on symptoms of depression, anxiety and posttraumatic stress disorder (PTSD) among Arabic-speaking adults.

Methods

Five databases were searched from inception to 22 January 2021 (PROSPERO: CRD42018070645). Studies were included when diagnostic accuracy of brief (maximally 25 items) psychological questionnaires was assessed in Arabic-speaking populations and the reference standard was a clinical interview. Data on sensitivity/specificity, area under the curve, and data to generate 2 × 2 tables at various thresholds were extracted. Meta-analysis was performed using the diagmeta package in R. Quality of studies was assessed with QUADAS-2.

Results

Thirty-two studies (Nparticipants = 4042) reporting on 17 questionnaires with 5–25 items targeting depression/anxiety (n = 14), general distress (n = 2), and PTSD (n = 1) were included. Seventeen studies (53%) scored high risk on at least two QUADAS-2 domains. The meta-analysis identified an optimal threshold of 11 (sensitivity 76.9%, specificity 85.1%) for the Edinburgh Postnatal Depression Scale (EPDS) (nstudies = 7, nparticipants = 711), 7 (sensitivity 81.9%, specificity 87.6%) for the Hospital Anxiety and Depression Scale (HADS) anxiety subscale and 6 (sensitivity 73.0%, specificity 88.6%) for the depression subscale (nstudies = 4, nparticipants = 492), and 8 (sensitivity 86.0%, specificity 83.9%) for the Self-Reporting Questionnaire (SRQ-20) (nstudies = 4, nparticipants = 459).

Conclusion

We present optimal thresholds to screen for perinatal depression with the EPDS, anxiety/depression with the HADS, and CMDs with the SRQ-20. More research on Arabic-language questionnaires, especially those targeting PTSD, is needed.

Type
Review
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
Copyright © The Author(s), 2021. Published by Cambridge University Press

Introduction

Common mental disorders (CMDs) such as depression, anxiety, and posttraumatic stress disorder (PTSD) affect millions of people globally. A meta-analysis across 39 countries indicated a lifetime prevalence of 29.2%, although this estimate varies across subgroups (Demyttenaere et al., Reference Demyttenaere, Bruffaerts, Posada-Villa, Gasquet, Kovess, Lepine and Al2004; Steel et al., Reference Steel, Marnane, Iranpour, Chey, Jackson, Patel and Silove2014). Particularly high prevalence rates have been estimated for specific populations, such as refugees and asylum seekers (Steel et al., Reference Steel, Chey, Silove, Marnane, Bryant and Van Ommeren2009; Charlson et al., Reference Charlson, van Ommeren, Flaxman, Cornett, Whiteford and Saxena2019). Some disorders may be more prevalent because of specific circumstances or group characteristics, however these differences could also reflect the performance of questionnaires across cultures (Gureje and Stein, Reference Gureje and Stein2012).

There is a large variety of brief, self-report screening instruments for symptoms of CMDs, such as the Hopkins Symptoms Checklist (HSCL), the Hospital Anxiety and Depression Scale (HADS), and the PTSD Checklist (PCL). Brief instruments can be useful for routine screening in primary and stepped care (Kagee et al., Reference Kagee, Tsai, Lund and Tomlinson2013; Olin et al., Reference Olin, Mccord, Kerker, Weiss, Hoagwood and Horwitz2017), especially where the application of time-consuming, clinician-administered structured interviews is not feasible, such as in low-resource settings (Kohrt et al., Reference Kohrt, Jordans, Tol, Luitel, Maharjan and Upadhaya2011). Furthermore, the ease of administration of most self-report measures makes them attractive for use in research (Kagee et al., Reference Kagee, Tsai, Lund and Tomlinson2013). However, these instruments are usually developed and evaluated in specific (Western, Anglo-Saxon) settings (Saxena et al., Reference Saxena, Paraje, Sharan, Karam and Sadana2006; Ali et al., Reference Ali, Ryan and DeSilva2016), while psychometric properties may vary across settings, cultures, and languages. For example, in a study on the validity of the HSCL-25 in Lebanon, the optimal cut-off score for anxiety and depression was found to be higher (2.00–2.10) than the widely accepted threshold of 1.75 (Mahfoud et al., Reference Mahfoud, Kobeissi, Peters, Araya, Ghantous and Khoury2013). This example illustrates the importance of cross-cultural validation of screening tools. The use of thresholds determined in other populations may lead to misclassification and misinterpretation (Steel et al., Reference Steel, Chey, Silove, Marnane, Bryant and Van Ommeren2009). However, literature on the psychometric properties of screening instruments in cultural contexts outside those for which they were developed is limited (Mutumba et al., Reference Mutumba, Tomlinson and Tsai2014; Carroll et al., Reference Carroll, Hook, Perez, Denckla, Vince, Ghebrehiwet, Ando, Touma, Borba, Fricchione and Henderson2020; Donnelly and Leavey, Reference Donnelly and Leavey2021).

The ability of a questionnaire (‘index test’) to identify individuals with a CMD compared to individuals without a disorder is called diagnostic accuracy (Leeflang et al., Reference Leeflang, Deeks, Takwoingi and Macaskill2013). Diagnostic accuracy is determined by comparing the outcomes of the index test with the outcomes of a reference standard in the same research subjects. The reference standard is regarded as the best available method to establish the presence or absence of the target condition (Rutjes, Reference Rutjes2017). A (semi-structured) clinical interview is the standard for diagnosing mental disorders in clinical practice and mental health research (De Joode et al., Reference De Joode, Van Dijk, Walburg, Bosmans, Van Marwijk, de Boer, Van Tulder and Adriaanse2019).

Previous systematic reviews on the validity of screening instruments have focused on a specific instrument (e.g. Edinburgh Postnatal Depression Scale; EPDS) (Gibson et al., Reference Gibson, McKenzie-Mcharg, Shakespeare, Price and Gray2009), outcome (e.g. depression) (Chorwe-Sungani and Chipps, Reference Chorwe-Sungani and Chipps2017), or income group (e.g. low- and middle-income countries; LAMIC) (Ali et al., Reference Ali, Ryan and DeSilva2016), but to our knowledge, no systematic review on test performance of brief screening instruments for CMDs in Arabic-speaking populations has been published. Despite the fact that Arabic is one of the most spoken languages in the world, with over 30 dialects and 274 million people that speak Arabic, research on Arabic-language questionnaires is limited (Easton et al., Reference Easton, Safadi, Wang and Hasson2017; Karnouk et al., Reference Karnouk, Boge, Lindheimer, Churbaji, Abdelmagid, Mohamad, Hahn and Bajbouj2021). Furthermore, last decades have known a steep increase in the number of Arabic-speaking refugees into other parts of the world, such as the Horn of Africa and Europe (UNHCR, 2019, 2021). Psychometrically sound and brief case-finding instruments are vital to scale-up mental health services for an adequate response to the mental health needs of Arabic-speaking refugees worldwide (Jefee-Bahloul et al., Reference Jefee-Bahloul, Bajbouj, Alabdullah, Hassan and Barkil-Oteo2016).

In this systematic review and meta-analysis, we provide an overview of the diagnostic accuracy of Arabic-language psychological distress screening instruments, based on all available evidence in Arabic-speaking adult populations.

Methods

This review was pre-registered in the International Prospective Register of Systematic Reviews (PROSPERO ID: CRD42018070645). We followed the Preferred Reporting Items for Systematic reviews and Meta-Analyses (PRISMA-DTA) checklist (McInnes et al., Reference McInnes, Moher, Thombs, McGrath and Bossuyt2018); see online Supplementary Appendix 1.

Search strategy

We systematically searched EBSCO/APA PsycINFO, PubMed, Embase.com, Cochrane Library, and Scopus from inception until 22 January 2021, without language restrictions. The search was carried out by a medical information specialist. The following terms were used (including synonyms and closely related words) as index terms or free-text words: ‘Sensitivity and Specificity’, ‘Reference Standards’, ‘Diagnostic Self Evaluation’, ‘Common Mental Disorders’, and ‘Arabic speaking populations’. The full search strategy is attached as online Supplementary Appendix 2. We restricted the search to articles, proceeding papers, conference papers, and electronic collections. We also identified studies by screening literature lists of included studies (Prinsen et al., Reference Prinsen, Mokkink, Bouter, Alonso, Patrick, de Vet and Terwee2018).

Inclusion criteria

The full search yield was reviewed for inclusion by two independent reviewers (AdG/JU) on the basis of title and abstract. Both reviewers assessed full-texts of the remaining articles. Discrepancies were resolved by discussion, and remaining queries were discussed with a third reviewer (MS). The following inclusion criteria had to be met: Population – Arabic-speaking adults with no restrictions on setting. Index test – brief self-report questionnaires in Arabic on psychological distress, with no restrictions in terms of administration mode or administrator. We defined ‘brevity’ as 25 items or less, based on commonly used screening instruments (e.g. HSCL-25). We did not base our definition on, e.g. ‘time of administration’, given that time to complete a measure might vary among groups and literacy levels. Reference standard – a diagnosis made through a structured clinical interview or by a clinician based on the criteria of the Diagnostic and Statistical Manual of Mental Disorders (DSM) (American Psychiatric Association, 2013) or International Statistical Classification of Diseases and Related Health Problems (ICD) (WHO, 2019). Outcome – any CMD. CMDs refer to DSM/ICD diagnoses of anxiety, depressive (excluding bipolar), and stress-related disorders. Anxiety disorders include generalized anxiety disorder (GAD), panic disorder, phobia, agoraphobia, or social anxiety disorder. PTSD and acute stress disorder are included (as anxiety disorders in DSM-IV or as trauma- and stress-related disorders in DSM-5). We excluded papers in which the diagnosis was based on a questionnaire, observation checklist, chart review, or self-reported diagnosis. We also excluded studies that did not provide data to calculate sensitivity/specificity.

Data extraction

Data were extracted independently from each study by two reviewers (AdG/IS) using a coding scheme (The Cochrane Collaboration, 2020). Extracted data included study design (design and study dates), participant characteristics (eligibility criteria, setting, sample size, age, gender, nationality, and comorbidities), index test characteristics (description, time points, mode of administration, setting, translation, scale properties, and psychometric properties), reference test characteristics (description, time points, mode of administration, blinding, setting, translation, prevalence, and psychometric properties), and relevant outcomes measured (target condition, thresholds with corresponding diagnostic accuracy properties, i.e. sensitivity, specificity, area under the receiver-operating characteristic (ROC) curve (AUC), PPV and NPV, and data to generate 2 × 2 tables). Discrepancies were resolved by discussion.

Quality assessment

Risk of bias was independently assessed by two reviewers (AdG/IS) using the quality assessment tool of diagnostic accuracy studies (QUADAS-2) (Whiting et al., Reference Whiting, Rutjes, Westwood, Mallett, Deeks, Reitsma, Leeflang, Sterne and Bossuyt2011). QUADAS-2 is a generic set of criteria consisting of four key domains: patient selection, index test, reference standard, and flow of patients through the study and timing of the index test and reference standard. Signaling questions are included to judge risk of bias across all domains (Whiting et al., Reference Whiting, Rutjes, Westwood, Mallett, Deeks, Reitsma, Leeflang, Sterne and Bossuyt2011). We added three items to account for biases specific to the use of (semi-)structured clinical interviews. These extra items concerned (1) whether studies used a semi-structured interview v. clinician diagnosis (domain 3), (2) whether data on interviewer variation (e.g. inter-rater reliability) for the (semi)structured interview fell within an acceptable range (domain 3), and (3) whether all participants received a reference standard (domain 4). See online Supplementary Appendix 3 for item specifications.

Data synthesis and statistical analysis

We provided a narrative synthesis structured around the type of index test (i.e. questionnaire) and type of outcome. For every study, we tabulated the questionnaire, reported cut-off scores and outcome measures. In this review, we present cut-off scores as rounded numbers (e.g. ‘5’), whereby individuals are considered positive cases if they have that score at minimum (e.g. 5 or above). Meta-analysis was performed when at least three studies with a comparable outcome for a specific questionnaire were included. Multiple thresholds were modelled for studies reporting a range of cut-off scores (Steinhauser et al., Reference Steinhauser, Schumacher and Rücker2016) using the diagmeta package (Rucker et al., Reference Rucker, Steinhauser, Kolampally and Schwarzer2020) in R v3.6.1 (R Core Team, Reference R Core Team2019). This approach incorporates the following issues relevant for diagnostic reviews: (1) imprecision by which the sensitivity or specificity has been measured within each study, (2) variation beyond chance in the sensitivity and specificity between studies, and (3) correlation that might exist between sensitivity and specificity. It also estimates the sensitivity and specificity for a range of cut-off scores and determines the optimal threshold, based on the cut-off with the highest combination of sensitivity and specificity using the Youden index. We plotted the estimates of sensitivity and specificity for each reported cut-off and the optimal threshold of all studies in the meta-analysis in ROC space.

Results

Study inclusion and characteristics of included studies

The search yielded 3246 unique references (Fig. 1). Of these, 704 were identified as potentially relevant based on title/abstract screening. The full-text articles were obtained and assessed for inclusion. Thirty-two studies reporting on 30 unique datasets met the inclusion criteria. Of those, 17 studies were eligible for meta-analysis.

Fig. 1. PRISMA-DTA Flow-chart.

Seventeen different questionnaires on depression, anxiety, PTSD, and general distress were identified (Table 1). The number of items ranged from 5 to 25. Online Supplementary Appendix 4 provides a brief description of each questionnaire.

Table 1. Study Characteristics

a A lower score indicates less wellbeing, and participants with a cut-off score of 12 or below are considered case positives; AUC = area under the Receiver Operating Curve; CI = Confidence Interval; PPV = positive predictive value; NPV = negative predictive value; EPDS = Edinburgh Postnatal Depression Scale; PHQ-9 = Patient Health Questionnaire; GDS-15 = Geriatric Depression Scale; BDI-II = Beck Depression Inventory; CES-D = Center for Epidemiological Studies Depression Scale; MDI = Major Depression Inventory; AES = Apathy Evaluation Scale; WHO-5 = WHO Well-being Index; PSST = Premenstrual Symptoms Screening Tool; GAD-7 = Generalized Anxiety Disorder-7; HADS = Hamilton Anxiety and Depression Scale; HSCL-25 = Hopkins Symptoms Checklist; PCAD = Primary Care Anxiety and Depression; SPTSS = Screen for Posttraumatic Stress Symptoms; SRQ-20 = Self-Reporting Questionnaire; GHQ-12 = General Health Questionnaire

One study was conducted among a sub-sample of Arabic-speaking migrants in Australia (Barnett et al., Reference Barnett, Matthey and Gyaneshwar1999), while all other studies (n = 31) were conducted in Arab countries. Participants (N = 4042; range 26–407), with mean age range 28–82 years, were selected from clinical settings (n = 21, 65.6%), community settings (n = 5, 15.6%), or both (n = 4, 12.5%). Nine (28.1%) studies included only women, two (6.3%) only men, 17 (53.1%) mixed samples, and two (6.9%) did not report gender (6.9%). None of the questionnaires were locally developed, but all were translations of English-language instruments: in the majority of studies, questionnaires (n = 20, 62.5%) were locally translated, five (15.6%) used/adapted already existing translations, and seven (21.9%) did not report on translation. In 20 studies (62.5%), questionnaires were administered by interviewers.

Twenty-two studies (68.7%) used a (semi-)structured clinical interview as reference standard. Seven studies used the Mini International Neuropsychiatry Inventory (MINI), five the Structured Clinical Interview for DSM (SCID), four the Composite International Diagnostic Interview (CIDI), three the Clinical Interview Schedule (CIS), two the Present State Examination (PSE), and one the Diagnostic Interview Schedule (DIS). These (semi-)structured interviews were conducted by a clinician (n = 13) or lay-interviewer (n = 3); six studies did not report on the type of interviewer. In the other 10 studies (31.3%), a clinician diagnosis according to the DSM/ICD was made. El-Hachem et al. (Reference El-Hachem, Rohayem, Bou, Richa, Kesrouani, Gemayel, Aouad, Hatab, Zaccak, Yaghi, Salameh and Attieh2014) combined the clinical interview with (readministration of) the index test.

Results of the systematic review

Nine depression-specific questionnaires were compared to a depression diagnosis (Table 1). The sensitivity in seven studies evaluating the EPDS ranged from 73% to 92%; its specificity ranged from 48% to 96%. The nine-item Patient Health Questionnaire (PHQ-9) was evaluated in four studies, with sensitivity ranging from 62% to 88%, and specificity from 46% to 96%. Three studies evaluated the Geriatric Depression Scale (GDS-15), with sensitivity ranging from 80% to 84%, and specificity from 87% to 91%. The other depression-specific instruments were evaluated by single studies. The Beck Depression Inventory-II (BDI-II) had a sensitivity of 96% and a specificity of 73%, the Center for Epidemiologic Studies Depression Scale (CES-D) had a sensitivity of 82% and a specificity of 83%, the Major Depression Inventory (MDI) had a sensitivity of 88% and a specificity of 79%, the Apathy Evaluation Scale (AES) had a sensitivity of 65% and a specificity of 63%, and the five-item WHO Well-being Index (WHO-5) had a sensitivity of 78% and a specificity of 83%. The Premenstrual Symptoms Screening Tool (PSST) was compared to a diagnosis of premenstrual dysphoric disorder and had a sensitivity of 27% and a specificity of 96%.

We found two anxiety-specific questionnaires. One study compared the seven-item Generalized Anxiety Disorder (GAD-7) to any anxiety disorder, with a sensitivity of 57% and a specificity of 53%, and one study compared the PHQ modules panic, with a sensitivity of 47% and a specificity of 96%, and GAD, with a sensitivity of 37% and a specificity of 96%, to corresponding DSM-IV criteria.

We found three instruments targeting combined anxiety/depression that were compared to a diagnosis of anxiety and/or depression. The HADS was evaluated in four studies. The sensitivity of the anxiety subscale ranged from 62% to 85%, and its specificity from 62% to 91%. The sensitivity range of the depression subscale was 54–90%, and specificity range 70–99%. One study evaluated the HSCL-25. The sensitivity of the anxiety subscale was 84%, and its specificity 59%. The sensitivity of the depression subscale was 82%, and its specificity 70%. The Primary Care Anxiety and Depression scale was evaluated in one study, which found a sensitivity of 82% and a specificity of 77%.

We found one instrument targeting PTSD symptoms. The Screen for Posttraumatic Stress Symptoms (SPTSS) had a sensitivity of 89% and a specificity of 89% compared to a PTSD diagnosis.

Lastly, we identified two general distress instruments that were compared to a diagnosis of any CMD. The 20-item Self-Reporting Questionnaire (SRQ-20) was investigated in six studies, of which one study also included a psychosis item. The sensitivity range was 71–100%; the specificity range 70–95%. The 12-item General Health Questionnaire (GHQ-12) was evaluated in one study and had a sensitivity of 83% and a specificity of 80%.

Online Supplementary Appendix 5 presents a visual representation for all instruments for which we included at least three studies.

Quality of studies

The QUADAS-2 results are evaluated at item-level and do not incorporate an overall quality score (Table 2). Eleven studies scored high risk of bias on one domain, 14 on two domains, three on three domains, and none on all four domains. Four studies did not score high risk on any of the domains.

Table 2 Risk of bias (QUADAS-2)

Quality of studies rated as ☺ = low risk, ☹ = high risk, ? = unclear.

EPDS, Edinburgh Postnatal Depression Scale; PHQ-9, Patient Health Questionnaire; GDS-15, Geriatric Depression Scale; BDI-II, Beck Depression Inventory; CES-D, Center for Epidemiological Studies Depression Scale; MDI, Major Depression Inventory; AES, Apathy Evaluation Scale; WHO-5, WHO Well-being Index; PSST, Premenstrual Symptoms Screening Tool; GAD-7, Generalized Anxiety Disorder-7; HADS, Hamilton Anxiety and Depression Scale; HSCL-25, Hopkins Symptoms Checklist; PCAD, Primary Care Anxiety and Depression; SPTSS, Screen for Posttraumatic Stress Symptoms; SRQ-20, Self-Reporting Questionnaire; GHQ-12, General Health Questionnaire.

a Part of Arabic-speaking sub-sample completed test in English.

Risk of bias for Patient Selection was low in the majority of studies. Studies scored high risk if a case-control design was used (Fawzi et al., Reference Fawzi, Fawzi and Abu-Hindi2012) if participants were not recruited at random (Ghubash et al., Reference Ghubash, Daradkeh, Al Naseri, Al Bloushi and Al Daheri2000; Caspi et al., Reference Caspi, Carlson and Klein2007; Mahfoud et al., Reference Mahfoud, Kobeissi, Peters, Araya, Ghantous and Khoury2013), or in case of inappropriate exclusions (Al-Adawi et al., Reference Al-Adawi, Dorvlo, Burke, Huynh, Jacob, Knight, Shah and Al-Hussaini2004, Reference Al-Adawi, Dorvlo, Al-Naamani, Glenn, Karamouz, Chae, Zaidan and Burke2007; Alsuwaida and Alwahhabi, Reference Alsuwaida and Alwahhabi2006; Al-Asmi et al., Reference Al-Asmi, Dorvlo, Burke, Al-Adawi, Al-Zaabi, Al-Zadjali, Al-Sharbati, Al-Sharbati and Al-Adawi2012; Mahfoud et al., Reference Mahfoud, Kobeissi, Peters, Araya, Ghantous and Khoury2013, Reference Mahfoud, Emam, Anchassi, Omran, Alhaj, Al-Abdulla, El-Amin, Shehata, Aly, Al Emadi, Al-Meer and Al-Amin2019; Shaheen et al., Reference Shaheen, AlAtiq, Thomas, Alanazi, AlZahrani, Younis and Hussein2019). Risk was unclear in three studies, because the method of recruitment was unclear (Chaaya et al., Reference Chaaya, Sibai, El Roueiheb, Chemaitelly, Chahine, Al-Amin and Mahfoud2008; Sibai et al., Reference Sibai, Chaaya, Tohme, Mahfoud and Al-Amin2009; Hashim, Reference Hashim2018).

Studies were rated high risk for Index Test, because the questionnaire was completed after the reference standard and/or because the threshold was not pre-defined (El-Rufaie and Absood, Reference El-Rufaie and Absood1994, Reference El-Rufaie and Absood1995; El-Rufaie and Daradkeh, Reference El-Rufaie and Daradkeh1996; El-Rufaie et al., Reference El-Rufaie, Absood and Abou-Saleh1997; Al-Subaie et al., Reference Al-Subaie, Mohammed and Al-Malik1998, Reference Al-Arabi, Rahim, Al-Bar, AbuMadiny and Karim1999; Barnett et al., Reference Barnett, Matthey and Gyaneshwar1999; Ghubash et al., Reference Ghubash, Daradkeh, Al Naseri, Al Bloushi and Al Daheri2000; Agoub et al., Reference Agoub, Moussaoui and Battas2005; Alsuwaida and Alwahhabi, Reference Alsuwaida and Alwahhabi2006; Caspi et al., Reference Caspi, Carlson and Klein2007; Chaaya et al., Reference Chaaya, Sibai, El Roueiheb, Chemaitelly, Chahine, Al-Amin and Mahfoud2008; Sibai et al., Reference Sibai, Chaaya, Tohme, Mahfoud and Al-Amin2009; Al-Asmi et al., Reference Al-Asmi, Dorvlo, Burke, Al-Adawi, Al-Zaabi, Al-Zadjali, Al-Sharbati, Al-Sharbati and Al-Adawi2012; Fawzi et al., Reference Fawzi, Fawzi and Abu-Hindi2012; Mahfoud et al., Reference Mahfoud, Kobeissi, Peters, Araya, Ghantous and Khoury2013; El-Hachem et al., Reference El-Hachem, Rohayem, Bou, Richa, Kesrouani, Gemayel, Aouad, Hatab, Zaccak, Yaghi, Salameh and Attieh2014; Karam et al., Reference Karam, Khandakji, Sarkis Sahakian, Dandan and Karam2018; Naja et al., Reference Naja, Al-Kubaisi, Chehab, Al-Dahshan, Abuhashem and Bougmiza2019; Alzahrani et al., Reference Alzahrani, Demiroz, Alabdulwahab, Alshareef, Badri, Alharbi, Tawakkul and Aljaed2020).

Fourteen studies were rated high risk for Reference Test, because an unstructured clinician diagnosis rather than a semi-structured interview was used (El-Rufaie et al., Reference El-Rufaie, Absood and Abou-Saleh1997; Al-Subaie et al., Reference Al-Subaie, Mohammed and Al-Malik1998; Al-Arabi et al., Reference Al-Arabi, Rahim, Al-Bar, AbuMadiny and Karim1999; Chaaya et al., Reference Chaaya, Sibai, El Roueiheb, Chemaitelly, Chahine, Al-Amin and Mahfoud2008; Sibai et al., Reference Sibai, Chaaya, Tohme, Mahfoud and Al-Amin2009; El-Hachem et al., Reference El-Hachem, Rohayem, Bou, Richa, Kesrouani, Gemayel, Aouad, Hatab, Zaccak, Yaghi, Salameh and Attieh2014; Sawaya et al., Reference Sawaya, Atoui, Hamadeh, Zeinoun and Nahas2016; Hashim, Reference Hashim2018; Shaheen et al., Reference Shaheen, AlAtiq, Thomas, Alanazi, AlZahrani, Younis and Hussein2019), and/or because interviewers were not blinded (Agoub et al., Reference Agoub, Moussaoui and Battas2005; Ghubash et al., Reference Ghubash, Abou-Saleh and Daradkeh1997; Barnett et al., Reference Barnett, Matthey and Gyaneshwar1999). None of the studies reported interrater reliability.

In Flow and Timing, risk was high in eight studies, because of an inappropriate time interval between index and reference test (Ghubash et al., Reference Ghubash, Abou-Saleh and Daradkeh1997), and/or because not all participants were included in the analysis (El-Hachem et al., Reference El-Hachem, Rohayem, Bou, Richa, Kesrouani, Gemayel, Aouad, Hatab, Zaccak, Yaghi, Salameh and Attieh2014; Khalifa et al., Reference Khalifa, Glavin, Bjertness and Lien2015; Sawaya et al., Reference Sawaya, Atoui, Hamadeh, Zeinoun and Nahas2016; Karam et al., Reference Karam, Khandakji, Sarkis Sahakian, Dandan and Karam2018; Shaheen et al., Reference Shaheen, AlAtiq, Thomas, Alanazi, AlZahrani, Younis and Hussein2019).

Supplementary data and clarification were provided for three studies (Becker et al., Reference Becker, Al Zaid and Al Faris2002; Alsuwaida and Alwahhabi, Reference Alsuwaida and Alwahhabi2006; Al-Asmi et al., Reference Al-Asmi, Dorvlo, Burke, Al-Adawi, Al-Zaabi, Al-Zadjali, Al-Sharbati, Al-Sharbati and Al-Adawi2012) after correspondence with authors.

Results of the meta-analysis

We meta-analyzed studies (if at least three per questionnaire) reporting on the same questionnaire and comparable target condition. Optimal thresholds for the EPDS, HADS anxiety and depression subscales (HADS-A and HADS-D), and SRQ-20 could be estimated. Two studies on the SRQ-20 were excluded from meta-analysis, because of missing data to calculate the 2 × 2 table (El-Rufaie and Absood, Reference El-Rufaie and Absood1994), and because a 21-item version was used (Alsuwaida and Alwahhabi, Reference Alsuwaida and Alwahhabi2006). We also performed meta-analysis on the GDS-15, but results were unreliable due to limited data and therefore only presented in online Supplementary Appendix 6. Pooled AUC statistics were >0.80 for all questionnaires. The summary operating points per questionnaire at different thresholds are provided in Table 3 and visually presented in summary ROC (SROC) plots in Fig. 2. We also included the Youden index and ROC/SROC curves, and 2 × 2 tables in online Supplementary Appendix 6.

Fig. 2. SROC plots for the EPDS (A), HADS-A (B), HADS-D (C) and SRQ-20 (D).

Table 3 Summary operating points of sensitivity and specificity by questionnaire

EPDS, Edinburgh Postnatal Depression Scale; SRQ-20, Self-Reporting Questionnaire.

a We reported the 95% CI of the AUC for sensitivity given specificity.

b The model estimated an optimal threshold for the EPDS of 11.08 (sensitivity = 76.5% and specificity = 85.5%).

c The model estimated an optimal threshold for the HADS-A of 7.17 (sensitivity = 70.3% and specificity = 80.1%).

d The model estimated an optimal threshold for the HADS-D of 5.97 (sensitivity = 73.2% and specificity = 88.4%).

e The model estimated an optimal threshold for the SRQ-20 of 8.36 (sensitivity = 86.0% and specificity = 83.9%).

Bold values signifies the best cut-off.

Our model identified 11.08 as optimal threshold for the EPDS (n = 7); resulting in a practically relevant optimal cut-off score of 11, with a pooled sensitivity of 76.9% (95% confidence interval [CI] 60.6–87.7) and a specificity of 85.2% (95% CI 78.4–90.1).

The HADS-A model (n = 4) identified 7.17 as an optimal threshold, indicating a practically relevant cut-off score of 7 with a pooled sensitivity of 71.9% (95% CI 41.9–90.1) and a specificity of 78.5% (95% CI 67.3–86.6). The HADS-D model (n = 4) identified 5.97 as an optimal threshold, with 6 as the closest, practically relevant cut-off score, having a pooled sensitivity of 73.0% (95% CI 48.9–88.4) and a specificity of 88.6% (95% CI 75.7–95.1). CIs for the sensitivity/specificity estimates of the HADS subscales were wide, also illustrated by widely varying ROC curves in Fig. 2, indicating low discriminative ability.

Finally, the SRQ-20 model (n = 4) identified 8.36 as an optimal threshold, indicating a practically relevant cut-off score of 8 with a pooled sensitivity of 86.0% (95% CI 78.0–91.4) and a specificity of 83.9% (95% CI 58.1–95.1). The questionnaire's CIs associated with the pooled specificity were particularly wide.

Discussion

Brief psychological screening instruments are commonly used in research and clinical practice for the measurement of symptom severity, but also as inexpensive, easy-to-administer tools for case-finding (Kagee et al., Reference Kagee, Tsai, Lund and Tomlinson2013; Olin et al., Reference Olin, Mccord, Kerker, Weiss, Hoagwood and Horwitz2017). This systematic review and meta-analysis investigated the diagnostic performance of brief, Arabic-language screening instruments in detecting the symptoms of CMDs.

We synthesized the current evidence of 17 questionnaires, including instruments targeting depression, anxiety, general distress, and PTSD. A first finding is that, while the majority of studies reported on depression-specific questionnaires, the evidence for PTSD-specific instruments is limited. We must note, however, that we excluded several papers on the validity of PTSD screening tools in mixed-language populations (Söndergaard et al., Reference Söndergaard, Ekblad and Theorell2003; Jakobsen et al., Reference Jakobsen, Thoresen and Johansen2011; Ibrahim et al., Reference Ibrahim, Ertl, Catani, Ismail and Neuner2018), since they did not separately report data on Arabic-speaking sub-samples. Another general finding is that we did not identify locally developed screening tools, and this review only synthesized evidence on Arabic translations of screeners originally developed in other settings.

The studies included in this review differed in many ways from each other. Studies varied with regard to target condition (e.g. major depressive disorder v. any mood disorder), population (e.g. pregnant women v. elderly), and setting (e.g. clinical sample in Sudan v. community sample in Lebanon). Although this review focused on Arabic-speaking populations, the global Arabic-speaking community cannot be considered as one monolithic cultural group with identical idioms of distress or manifestations of psychological distress (e.g. Hassan et al., Reference Hassan, Ventevogel, Jefee-Bahloul, Barkil-Oteo and Kirmayer2016). Modern Standard Arabic (formal Arabic) is the only standardized form of written Arabic and is commonly understood among Arabic-speakers. Questionnaires in written form should thus be applicable across Arabic-speaking populations. However, in the majority of studies, questionnaires were administered by an interviewer, and thus read aloud. Even if questionnaires were written in formal Arabic, interviewers and participants may have communicated (or clarified) using their local dialects. Furthermore, most screening instruments were locally translated, and this might have introduced minor linguistic differences between translations. All but one study were conducted in Arabic countries, and covered Arabic-speaking populations in both high-income countries (e.g. Saudi Arabia) and LAMICs (e.g. Egypt).

Meta-analytic evidence was provided for the EPDS, HADS, and SRQ-20. Although AUCs were high, this statistic summarizes overall model performance over all possible thresholds. In practice, however, a specific threshold is used to discriminate between cases and non-cases, and determines the number of false-negative and false-positive cases. Thus, a single cut-off score may not perform as good as expected by overall test performance.

The present review found that a cut-off of 11 on the EPDS maximized combined sensitivity (76.9%)/specificity (85.2%). This threshold is lower compared to the original cut-off of 13 in English-speaking populations (Cox et al., Reference Cox, Holden and Sagovsky1987). A recent meta-analysis of individual participant data (IPDMA) on the EPDS also found that a threshold of 11 maximized combined sensitivity (81%)/specificity (88%) (Levis et al., Reference Levis, Negeri, Sun, Benedetti and Thombs2020). Earlier reviews found the EPDS to be valid for non-English-speaking populations (Zubaran et al., Reference Zubaran, Schumacher, Roxo and Foresti2010; Russell et al., Reference Russell, Chikkala, Earnest, Viswanathan, Russell and Mammen2020). The EPDS is one of the most frequently studied instruments in perinatal populations in LAMICs (Chorwe-Sungani and Chipps, Reference Chorwe-Sungani and Chipps2017). Ali et al. (Reference Ali, Ryan and DeSilva2016) conclude that the instrument generally performs well in LAMICs, while a systematic review in low- and lower-middle income countries, without Arabic-speaking samples, found that none of the studies had an accuracy of >80% on all three accuracy parameters (sensitivity/specificity/PPV) (Shrestha et al., Reference Shrestha, Pradhan, Tran, Gualano and Fisher2016). The optimal cut-off score in our meta-analysis would miss almost a quarter of individuals with depression. Clinicians may therefore consider using a lower cut-off to identify potential cases for the purpose of triage (e.g. positive cases will be further assessed with a clinical interview). For example, a cut-off score of 9 would miss 15.6% of individuals with depression, but at the cost of screening 26.2% of non-cases as cases. However, in low-resourced settings where there is no capacity to assess all positive cases with a clinical interview, a high number of false positives (resulting from low specificity), is likely to overburden local health systems (Andersen et al., Reference Andersen, Joska, Magidson, O'Cleirigh, Lee, Kagee, Witten and Safren2020). In these settings, a higher cut-off with improved specificity might be preferable.

We found substantial heterogeneity in the test performance of the HADS. A cut-off of 7 was optimal for the HADS-A based on maximized combined sensitivity (71.9%) and specificity (78.5%), and of 6 for the HADS-D (sensitivity: 73.0%/specificity: 88.6%). CIs for HADS were wide, indicating uncertainty about the estimated psychometric properties. In a recent IPDMA on the accuracy of the HADS-D to estimate depression prevalence, Brehaut et al. (Reference Brehaut, Neupane, Levis, Wu, Sun, Krishnan, He, Bhandari, Negeri, Riehm, Rice, Azar, Yan, Imran, Chiovitti, Saadat, Cuijpers, Ioannidis, Markham, Patten, Ziegelstein, Henry, Ismail, Loiselle, Mitchell, Tonelli, Boruff, Kloda, Beraldi, Braeken, Carter, Clover, Conroy, Cukor, da Rocha e Silva, De Souza, Downing, Feinstein, Ferentinos, Fischer, Flint, Fujimori, Gallagher, Goebel, Jetté, Julião, Keller, Kjærgaard, Love, Löwe, Martin-Santos, Michopoulos, Navines, O'Rourke, Öztürk, Pintor, Ponsford, Rooney, Sánchez-González, Schwarzbold, Sharpe, Simard, Singer, Stone, Tung, Turner, Walker, Walterfang, White, Benedetti and Thombs2020) found the commonly used cut-off of 8 (‘doubtful cases’) significantly overestimated depression prevalence, while a cut-off of 11 (‘definite cases’) may either over- or underestimate depression prevalence. Ali et al. (Reference Ali, Ryan and DeSilva2016) conclude that the HADS-A is an adequate screener in LAMICs, but reported strong to very strong validity for primary studies that used the English (with Yoruba) version of HADS-A, and weak to strong validity for other language versions (Portuguese and Chinese) (Ali et al., Reference Ali, Ryan and DeSilva2016). Based on our meta-analyses and in line with Brehaut et al. (Reference Brehaut, Neupane, Levis, Wu, Sun, Krishnan, He, Bhandari, Negeri, Riehm, Rice, Azar, Yan, Imran, Chiovitti, Saadat, Cuijpers, Ioannidis, Markham, Patten, Ziegelstein, Henry, Ismail, Loiselle, Mitchell, Tonelli, Boruff, Kloda, Beraldi, Braeken, Carter, Clover, Conroy, Cukor, da Rocha e Silva, De Souza, Downing, Feinstein, Ferentinos, Fischer, Flint, Fujimori, Gallagher, Goebel, Jetté, Julião, Keller, Kjærgaard, Love, Löwe, Martin-Santos, Michopoulos, Navines, O'Rourke, Öztürk, Pintor, Ponsford, Rooney, Sánchez-González, Schwarzbold, Sharpe, Simard, Singer, Stone, Tung, Turner, Walker, Walterfang, White, Benedetti and Thombs2020), the evidence for the validity of the Arabic HADS is questionable.

The SRQ-20 as a screener for CMDs maximized combined sensitivity/specificity at a cut-off of 8 (86.0% and 83.9%, respectively). In other words, 14% of individuals with a disorder will remain undetected, while 16.1% of individuals without a disorder screen positive. The CIs for specificity were relatively wide. We therefore suggest that the SRQ-20 cut-off of 8 is useful for screening purposes to rule out the presence of any CMD, but that the questionnaire might be less reliable for ruling in because of uncertainty about the pooled specificity. A cut-off of 8 is commonly used (Harpham et al., Reference Harpham, Reichenheim, Oser, Thomas, Hamid, Jaswal, Ludermir and Aidoo2003), although prior research has shown that optimal thresholds for the SRQ-20 differ considerably across settings, languages, cultures, and gender (e.g. Harding et al. Reference Harding, De Arango, Baltazar, Climent, Ibrahim, Ladrido-Ignacio and Wig1980; Ventevogel et al. Reference Ventevogel, De Vries, Scholte, Shinwari, Faiz, Nassery, van den Brink, van den Brink and Olff2007). For example, a cut-off score of 6 gave the best sensitivity/specificity balance in two studies in low-resource primary care settings in Eritrea and South Africa. Both studies also found that performance improved among men by using an even lower cut-off (Van der Westhuizen et al., Reference Van der Westhuizen, Wyatt, Williams, Stein and Sorsdahl2017; Netsereab et al., Reference Netsereab, Kifle, Tesfagiorgis, Habteab, Weldeabzgi and Tesfamariam2018).

This review has several strengths and limitations. A strength is that it provides researchers and clinicians working with Arabic-speaking populations with an overview of the validity of brief screening tools, and empirically grounded recommendations for thresholds. We provided the results of multi-threshold models, rather than bivariate models in which only one threshold per study can be pooled. In doing so, we were able to provide the pooled accuracy statistics at different cut-off scores, allowing researchers and clinicians to decide which threshold is most suitable (e.g. for epidemiological studies v. screening in stepped care).

A limitation of this paper concerns the wide range of reference standards used, including both (semi-)structured interviews and (unstructured) clinician diagnoses. Clinician diagnoses may be less reliable than (semi-)structured interviews (Segal and Williams, Reference Segal, Williams, Beidel, Frueh and Hersen2014). The literature, however, also highlights the limitations of structured interviews. For example, the MINI may overestimate the presence of mental disorders (Levis et al., Reference Levis, Benedetti, Riehm, Saadat, Levis, Azar, Rice, Chiovitti, Sanchez, Cuijpers, Gilbody, Ioannidis, Kloda, McMillan, Patten, Shrier, Steele, Ziegelstein, Akena, Arroll, Ayalon, Baradaran, Baron, Beraldi, Bombardier, Butterworth, Carter, Chagas, Chan, Cholera, Chowdhary, Clover, Conwell, de Man-van Ginkel, Delgadillo, Fann, Fischer, Fischler, Fung, Gelaye, Goodyear-Smith, Greeno, Hall, Hambridge, Harrison, Hegerl, Hides, Hobfoll, Hudson, Hyphantis, Inagaki, Ismail, Jetté, Khamseh, Kiely, Lamers, Liu, Lotrakul, Loureiro, Löwe, Marsh, McGuire, Sidik, Munhoz, Muramatsu, Osório, Patel, Pence, Persoons, Picardi, Rooney, Santos, Shaaban, Sidebottom, Simning, Stafford, Sung, Tan, Turner, van der Feltz-Cornelis, van Weert, Vöhringer, White, Whooley, Winkley, Yamada, Zhang and Thombs2018; Wu et al., Reference Wu, Levis, Sun, Krishnan, He, Riehm, Rice, Azar, Yan, Neupane, Bhandari, Imran, Chiovitti, Saadat, Boruff, Cuijpers, Gilbody, McMillan, Ioannidis, Kloda, Patten, Shrier, Ziegelstein, Henry, Ismail, Loiselle, Mitchell, Tonelli, Al-Adawi, Beraldi, Braeken, Büel-Drabe, Bunevicius, Carter, Chen, Cheung, Clover, Conroy, Cukor, da Rocha e Silva, Dabscheck, Daray, Douven, Downing, Feinstein, Ferentinos, Fischer, Flint, Fujimori, Gallagher, Gandy, Goebel, Grassi, Härter, Jenewein, Jetté, Julião, Kim, Kim, Kjærgaard, Köhler, Loosman, Löwe, Martin-Santos, Massardo, Matsuoka, Mehnert, Michopoulos, Misery, Navines, O'Donnell, Öztürk, Peceliuniene, Pintor, Ponsford, Quinn, Reme, Reuter, Rooney, Sánchez-González, Schwarzbold, Cankorur, Shaaban, Sharpe, Sharpe, Simard, Singer, Stafford, Stone, Sultan, Teixeira, Tiringer, Turner, Walker, Walterfang, Wang, White, Wong, Benedetti and Thombs2020). Another limitation is related to the quality of studies, with 17 studies scoring high risk of bias on at least two QUADAS-2 domains. The majority of studies did not pre-specify a cut-off score, which may lead to overestimation of the accuracy estimates (Whiting et al., Reference Whiting, Rutjes, Westwood, Mallett, Deeks, Reitsma, Leeflang, Sterne and Bossuyt2011). Furthermore, for some questionnaires, primary studies differed with respect to target condition and reported thresholds, due to which we could not meta-analyze those studies (e.g. PHQ-9). Due to low numbers of studies per questionnaire, we could not perform further subgroup analyses. Consequently, we included both antenatal and postnatal, as well as female-only and male-only samples in our meta-analysis on the EPDS, while these sub-samples may require different thresholds (Matthey et al., Reference Matthey, Henshaw, Elliott and Barnett2006; Gibson et al., Reference Gibson, McKenzie-Mcharg, Shakespeare, Price and Gray2009; Ali et al., Reference Ali, Ryan and DeSilva2016). We were also not able to investigate differences across Arabic-speaking populations (e.g. by country).

The clinical implications of this review are that a cut-off of 11 on the Arabic-language EPDS could be used as a screener for depression in perinatal populations to optimize a balance between sensitivity/specificity. For ruling out the presence of any CMD with the SRQ-20, we recommend using a cut-off score of 8. The evidence for the HADS to screen for depression and/or anxiety was not convincing as results were substantially heterogeneous.

This review also stresses the paucity of evidence on anxiety and PTSD screeners. Future studies are needed to investigate the diagnostic accuracy of questionnaires to detect anxiety and PTSD in Arabic-speaking populations given the amount of Arabic-speaking refugees at risk for developing stress-related disorders (Peconga and Høgh Thøgersen, Reference Peconga and Høgh Thøgersen2020). According to our QUADAS-2 assessment, future studies can be improved by using semi-structured interviews as reference standard, such as the SCID, and report on the interrater reliability. We recommend pre-defining thresholds to prevent the overestimation of accuracy estimates.

Conclusions

This review identified 17 brief questionnaires in the Arabic language that were investigated on diagnostic performance, with limited availability of evidence for PTSD instruments. The meta-analysis provided optimal cut-off scores for the EPDS, HADS, and SRQ-20.

Supplementary material

The supplementary material for this article can be found at https://doi.org/10.1017/gmh.2021.39

Data

The data that support the findings of the meta-analysis are available in the online Supplementary material of this article.

Financial support

This review was funded by ZonMw (The Netherlands Organisation for Health Research and Development; project number 636601004) and Horizon 2020 the Framework Programme for Research and Innovation (2014–2020). The content of this article reflects only the authors’ views and the European Community is not liable for any use that may be made of the information contained therein.

Conflict of interest

None.

References

Agoub, M, Moussaoui, D and Battas, O (2005) Prevalence of postpartum depression in a Moroccan sample. Archives of Women's Mental Health 8, 3743.CrossRefGoogle Scholar
Al-Adawi, S, Dorvlo, ASS, Burke, DT, Huynh, CC, Jacob, L, Knight, R, Shah, MK and Al-Hussaini, A (2004) Apathy and depression in cross-cultural survivors of traumatic brain injury. Journal of Neuropsychiatry and Clinical Neurosciences 16, 435442.CrossRefGoogle ScholarPubMed
Al-Adawi, S, Dorvlo, ASS, Al-Naamani, A, Glenn, MB, Karamouz, N, Chae, H, Zaidan, ZAJ and Burke, DT (2007) The ineffectiveness of the Hospital Anxiety and Depression Scale for diagnosis in an Omani traumatic brain injured population. Brain Injury 21, 385393.CrossRefGoogle Scholar
Al-Arabi, AM, Rahim, SI, Al-Bar, AA, AbuMadiny, MS and Karim, AA (1999) Validity of self-reporting questionnaire and Rahim anxiety depression scale. Saudi Medical Journal 20, 711716.Google ScholarPubMed
Al-Asmi, A, Dorvlo, ASS, Burke, DT, Al-Adawi, S, Al-Zaabi, A, Al-Zadjali, HAM, Al-Sharbati, Z, Al-Sharbati, Z and Al-Adawi, S (2012) The detection of mood and anxiety in people with epilepsy using two-phase designs: experiences from a tertiary care centre in Oman. Epilepsy Research 98, 174181.CrossRefGoogle ScholarPubMed
Al-Subaie, AS, Mohammed, K and Al-Malik, T (1998) The Arabic self-reporting questionnaire (SRQ) as a psychiatric screening instrument in medical patients. Annals of Saudi Medicine 18, 308310.CrossRefGoogle ScholarPubMed
AlHadi, AN, AlAteeq, DA, Al-Sharif, E, Bawazeer, HM, Alanazi, H, AlShomrani, AT, Shuqdar, RM and AlOwaybil, R (2017) An Arabic translation, reliability, and validation of Patient Health Questionnaire in a Saudi sample. Annals of General Psychiatry 16(1), 190. http://dx.doi.org/10.1186/s12991-017-0155-1CrossRefGoogle Scholar
Ali, G, Ryan, G and DeSilva, MJ (2016) Validated screening tools for common mental disorders in low and middle income countries: a systematic review. PLoS ONE 11, e0156939.CrossRefGoogle ScholarPubMed
Alsuwaida, A and Alwahhabi, F (2006) The diagnostic utility of Self-Reporting Questionnaire (SRQ) as a screening tool for major depression in hemodialysis patients. Saudi Journal of Kidney Diseases and Transplantation 17, 503510.Google ScholarPubMed
Alzahrani, AS, Demiroz, YY, Alabdulwahab, AS, Alshareef, RA, Badri, AS, Alharbi, BA, Tawakkul, HS and Aljaed, KM (2020) The diagnostic accuracy of the 9-item patient health questionnaire as a depression screening instrument in Arabic-speaking cancer patients. Neurology Psychiatry and Brain Research 37, 110115.CrossRefGoogle Scholar
American Psychiatric Association (2013) Diagnostic and Statistical Manual of Mental Disorders, 5th Edn. Washington, DC: American Psychiatric Association.Google Scholar
Andersen, LS, Joska, JA, Magidson, JF, O'Cleirigh, C, Lee, JS, Kagee, A, Witten, JA and Safren, SA (2020) Detecting depression in people living with HIV in South Africa: the factor structure and convergent validity of the South African Depression Scale (SADS). AIDS and Behavior 24, 22822289.CrossRefGoogle Scholar
Barnett, B, Matthey, S and Gyaneshwar, R (1999) Screening for postnatal depression in women of non-English speaking background. Archives of Women's Mental Health 2, 6774.CrossRefGoogle Scholar
Becker, S, Al Zaid, K and Al Faris, E (2002) Screening for somatization and depression in Saudi Arabia: a validation study of the PHQ in primary care. Journal of Psychiatry in Medicine 32, 271283.CrossRefGoogle ScholarPubMed
Brehaut, E, Neupane, D, Levis, B, Wu, Y, Sun, Y, Krishnan, A, He, C, Bhandari, PM, Negeri, Z, Riehm, KE, Rice, DB, Azar, M, Yan, XW, Imran, M, Chiovitti, MJ, Saadat, N, Cuijpers, P, Ioannidis, JPA, Markham, S, Patten, SB, Ziegelstein, RC, Henry, M, Ismail, Z, Loiselle, CG, Mitchell, ND, Tonelli, M, Boruff, JT, Kloda, LA, Beraldi, A, Braeken, APBM, Carter, G, Clover, K, Conroy, RM, Cukor, D, da Rocha e Silva, CE, De Souza, J, Downing, MG, Feinstein, A, Ferentinos, PP, Fischer, FH, Flint, AJ, Fujimori, M, Gallagher, P, Goebel, S, Jetté, N, Julião, M, Keller, M, Kjærgaard, M, Love, AW, Löwe, B, Martin-Santos, R, Michopoulos, I, Navines, R, O'Rourke, SJ, Öztürk, A, Pintor, L, Ponsford, JL, Rooney, AG, Sánchez-González, R, Schwarzbold, ML, Sharpe, M, Simard, S, Singer, S, Stone, J, Tung, K, Turner, A, Walker, J, Walterfang, M, White, J, Benedetti, A and Thombs, BD (2020) Depression prevalence using the HADS-D compared to SCID major depression classification: an individual participant data meta-analysis. Journal of Psychosomatic Research 139, 110256.CrossRefGoogle ScholarPubMed
Carroll, HA, Hook, K, Perez, OFR, Denckla, C, Vince, CC, Ghebrehiwet, S, Ando, K, Touma, M, Borba, CPC, Fricchione, GL and Henderson, DC (2020) Establishing reliability and validity for mental health screening instruments in resource-constrained settings: systematic review of the PHQ-9 and key recommendations. Psychiatry Research 291, 113236.CrossRefGoogle ScholarPubMed
Caspi, Y, Carlson, EB and Klein, E (2007) Validation of a screening instrument for posttraumatic stress disorder in a community sample of Bedouin men serving in the Israeli Defense Forces. Journal of Traumatic Stress 20, 517527.CrossRefGoogle Scholar
Chaaya, M, Sibai, AM, El Roueiheb, Z, Chemaitelly, H, Chahine, LM, Al-Amin, H and Mahfoud, Z (2008) Validation of the Arabic version of the short Geriatric Depression Scale (GDS-15). International Psychogeriatrics 20, 571581.CrossRefGoogle Scholar
Charlson, F, van Ommeren, M, Flaxman, A, Cornett, J, Whiteford, H and Saxena, S (2019) New WHO prevalence estimates of mental disorders in conflict settings: a systematic review and meta-analysis. The Lancet 394, 240248.CrossRefGoogle ScholarPubMed
Chorwe-Sungani, G and Chipps, J (2017) A systematic review of screening instruments for depression for use in antenatal services in low resource settings. BMC Psychiatry 17, 110.CrossRefGoogle ScholarPubMed
Climent CE, Hardin TW, Ibrahim HH, Wig N (1989) El cuestionario de sintomas para la detección de problemas en adultos. Acta psiquiátr. psicol. Am. Lat. 35, 124131.Google Scholar
Cox, JL, Holden, JM and Sagovsky, R (1987) Detection of postnatal depression: development of the 10-item Edinburgh Postnatal Depression Scale. British Journal of Psychiatry 150, 782786.CrossRefGoogle ScholarPubMed
De Joode, JW, Van Dijk, SEM, Walburg, FS, Bosmans, JE, Van Marwijk, HWJ, de Boer, MR, Van Tulder, MW and Adriaanse, MC (2019) Diagnostic accuracy of depression questionnaires in adult patients with diabetes: a systematic review and meta-analysis. PLoS ONE 14, 116.CrossRefGoogle ScholarPubMed
Demyttenaere, K, Bruffaerts, R, Posada-Villa, J, Gasquet, I, Kovess, V, Lepine, JP and Al, E (2004) Prevalence, severity, and unmet need for treatment of mental disorders in the World Health Organization World Mental Health Surveys. Journal of the American Medical Association 291, 25812590.Google ScholarPubMed
Donnelly, O and Leavey, G (2021) Screening tools for mental disorders among female refugees: a systematic review. Journal of Child & Adolescent Trauma. https://doi.org/10.1007/s40653-021-00375-9.CrossRefGoogle Scholar
Easton, SD, Safadi, NS, Wang, Y and Hasson, RG (2017) The Kessler psychological distress scale: translation and validation of an Arabic version. Health and Quality of Life Outcomes 15, 17.CrossRefGoogle ScholarPubMed
El-Hachem, C, Rohayem, J, Bou, KR, Richa, S, Kesrouani, A, Gemayel, R, Aouad, N, Hatab, N, Zaccak, E, Yaghi, N, Salameh, S and Attieh, E (2014) Early identification of women at risk of postpartum depression using the Edinburgh Postnatal Depression Scale (EPDS) in a sample of Lebanese women. BMC Psychiatry 14, 242.CrossRefGoogle Scholar
El-Rufaie, OEF and Absood, GH (1994) Validity study of the Self-Reporting Questionnaire (SRQ-20) in primary health care in the United Arab Emirates. International Journal of Methods in Psychiatric Research 4, 4553.Google Scholar
El-Rufaie, OEF and Absood, GH (1995) Retesting the validity of the Arabic version of the Hospital Anxiety and Depression (HAD) scale in primary health care. Social Psychiatry and Psychiatric Epidemiology 30, 2631.CrossRefGoogle ScholarPubMed
El-Rufaie, OEF and Daradkeh, TK (1996) Validation of the Arabic versions of the thirty- and twelve-item General Health Questionnaires in primary care patients. British Journal of Psychiatry 169, 662664.CrossRefGoogle ScholarPubMed
El-Rufaie, OEFA, Albar, AA and Al-Dabal, BK (1988) Identifying anxiety and depressive disorders among primary care patients: A pilot study. Acta Psychiatrica Scandinavica 77(3), 280282. doi: http://dx.doi.org/10.1111/acp.1988.77.issue-3CrossRefGoogle ScholarPubMed
El-Rufaie, OEF, Absood, GH and Abou-Saleh, MT (1997) The primary care anxiety and depression (PCAD) scale: a culture-oriented screening scale. Acta Psychiatrica Scandinavica 95, 119124.CrossRefGoogle ScholarPubMed
Fawzi, MH, Fawzi, MM and Abu-Hindi, W (2012) Arabic version of the Major Depression Inventory as a diagnostic tool: reliability and concurrent and discriminant validity. Eastern Mediterranean Health Journal 18, 304310.CrossRefGoogle ScholarPubMed
Ghubash, R, Abou-Saleh, MT and Daradkeh, TK (1997) The validity of the Arabic Edinburgh Postnatal Depression Scale. Social Psychiatry and Psychiatric Epidemiology 32, 474476.Google ScholarPubMed
Ghubash, R, Daradkeh, TK, Al Naseri, KS, Al Bloushi, NBA and Al Daheri, AM (2000) The performance of the center for epidemiologic study depression scale (CES-D) in an Arab female community. International Journal of Social Psychiatry 46, 241249.CrossRefGoogle Scholar
Gibson, J, McKenzie-Mcharg, K, Shakespeare, J, Price, J and Gray, R (2009) A systematic review of studies validating the Edinburgh Postnatal Depression Scale in antepartum and postpartum women. Acta Psychiatrica Scandinavica 119, 350364.CrossRefGoogle ScholarPubMed
Gureje, O and Stein, DJ (2012) Classification of mental disorders: the importance of inclusive decision-making. International Review of Psychiatry 24, 606612.CrossRefGoogle ScholarPubMed
Harding, T, De Arango, V, Baltazar, J, Climent, C, Ibrahim, H, Ladrido-Ignacio, L and Wig, N (1980) Mental disorders in primary health care: a study of their frequency and diagnosis in four developing countries. Psychological Medicine 10, 231241.CrossRefGoogle ScholarPubMed
Harpham, T, Reichenheim, M, Oser, R, Thomas, E, Hamid, N, Jaswal, S, Ludermir, A and Aidoo, M (2003) Measuring mental health in a cost-effective manner. Health Policy and Planning 18, 344349.CrossRefGoogle Scholar
Hashim, AA (2018) Arabic version Geriatric Depressive Scale-15 for Iraqi elderly dwellers in Al-Najaf city: validity and reliability. Indian Journal of Public Health Research and Development 9, 12021206.CrossRefGoogle Scholar
Hassan, G, Ventevogel, P, Jefee-Bahloul, H, Barkil-Oteo, A and Kirmayer, LJ (2016) Mental health and psychosocial wellbeing of Syrians affected by armed conflict. Epidemiology and Psychiatric Sciences 25, 129141.CrossRefGoogle ScholarPubMed
Hobfoll, SE, Canetti, D, Hall, BJ, Brom, D, Palmieri, PA, Johnson, RJ, Pat-Horenczyk, R and Galea, S (2011) Are community studies of psychological trauma's impact accurate? A study among Jews and Palestinians. Psychological Assessment 23, 599605.CrossRefGoogle ScholarPubMed
Ibrahim, H, Ertl, V, Catani, C, Ismail, AA and Neuner, F (2018) The validity of Posttraumatic Stress Disorder Checklist for DSM-5 (PCL-5) as screening instrument with Kurdish and Arab displaced populations living in the Kurdistan region of Iraq. BMC Psychiatry 18, 259.CrossRefGoogle ScholarPubMed
Jakobsen, M, Thoresen, S and Johansen, LEE (2011) The validity of screening for post-traumatic stress disorder and other mental health problems among asylum seekers from different countries. Journal of Refugee Studies 24, 171186.CrossRefGoogle Scholar
Jefee-Bahloul, H, Bajbouj, M, Alabdullah, J, Hassan, G and Barkil-Oteo, A (2016) Mental health in Europe's Syrian refugee crisis. The Lancet Psychiatry 3, 315317.CrossRefGoogle ScholarPubMed
Kagee, A, Tsai, AC, Lund, C and Tomlinson, M (2013) Screening for common mental disorders in low resource settings: reasons for caution and a way forward. International Health 5, 1114.CrossRefGoogle Scholar
Karam, GE, Khandakji, MN, Sarkis Sahakian, N, Dandan, JC and Karam, EG (2018) Diagnostic assessment and prognosis validation of geriatric depression and anxiety rating scales into Arabic. Alzheimer's & Dementia: Diagnosis, Assessment & Disease Monitoring 10, 791795.CrossRefGoogle Scholar
Karnouk, C, Boge, K, Lindheimer, N, Churbaji, D, Abdelmagid, S, Mohamad, S, Hahn, E and Bajbouj, M (2021) Development of a culturally sensitive Arabic version of the Mini International Neuropsychiatric Interview (M.I.N.I.-AR) and validation of the depression module. International Journal of Mental Health Systems 15, 24.CrossRefGoogle ScholarPubMed
Khalifa, DS, Glavin, K, Bjertness, E and Lien, L (2015) Postnatal depression among Sudanese women: prevalence and validation of the Edinburgh Postnatal Depression Scale at 3 months postpartum. International Journal of Women's Health 7, 677684.CrossRefGoogle ScholarPubMed
Kohrt, BA, Jordans, MJD, Tol, WA, Luitel, NP, Maharjan, SM and Upadhaya, N (2011) Validation of cross-cultural child mental health and psychosocial research instruments: adapting the Depression Self-Rating Scale and Child PTSD Symptom Scale in Nepal. BMC Psychiatry 11, 117.CrossRefGoogle ScholarPubMed
Leeflang, MMG, Deeks, JJ, Takwoingi, Y and Macaskill, P (2013) Cochrane diagnostic test accuracy reviews. Systematic Reviews 2, 82.CrossRefGoogle ScholarPubMed
Levis, B, Benedetti, A, Riehm, KE, Saadat, N, Levis, AW, Azar, M, Rice, DB, Chiovitti, MJ, Sanchez, TA, Cuijpers, P, Gilbody, S, Ioannidis, JPA, Kloda, LA, McMillan, D, Patten, SB, Shrier, I, Steele, RJ, Ziegelstein, RC, Akena, DH, Arroll, B, Ayalon, L, Baradaran, HR, Baron, M, Beraldi, A, Bombardier, CH, Butterworth, P, Carter, G, Chagas, MH, Chan, JCN, Cholera, R, Chowdhary, N, Clover, K, Conwell, Y, de Man-van Ginkel, JM, Delgadillo, J, Fann, JR, Fischer, FH, Fischler, B, Fung, D, Gelaye, B, Goodyear-Smith, F, Greeno, CG, Hall, BJ, Hambridge, J, Harrison, PA, Hegerl, U, Hides, L, Hobfoll, SE, Hudson, M, Hyphantis, T, Inagaki, M, Ismail, K, Jetté, N, Khamseh, ME, Kiely, KM, Lamers, F, Liu, S, Lotrakul, M, Loureiro, SR, Löwe, B, Marsh, L, McGuire, A, Sidik, SM, Munhoz, TN, Muramatsu, K, Osório, FL, Patel, V, Pence, BW, Persoons, P, Picardi, A, Rooney, AG, Santos, IS, Shaaban, J, Sidebottom, A, Simning, A, Stafford, L, Sung, S, Tan, PLL, Turner, A, van der Feltz-Cornelis, CM, van Weert, HC, Vöhringer, PA, White, J, Whooley, MA, Winkley, K, Yamada, M, Zhang, Y and Thombs, BD (2018) Probability of major depression diagnostic classification using semi-structured versus fully structured diagnostic interviews. British Journal of Psychiatry 212, 377385.CrossRefGoogle ScholarPubMed
Levis, B, Negeri, Z, Sun, Y, Benedetti, A, Thombs, BD on behalf of the DEPRESsion Screening Data (DEPRESSD) EPDS Group (2020) Accuracy of the Edinburgh Postnatal Depression Scale (EPDS) for screening to detect major depression among pregnant and postpartum women: systematic review and meta-analysis of individual participant data. British Medical Journal 371, m4022.CrossRefGoogle ScholarPubMed
Llosa, AE, Van Ommeren, M, Kolappa, K, Ghantous, Z, Souza, R, Bastin, P, Slavuckij, A and Grais, RF (2017) A two-phase approach for the identification of refugees with priority need for mental health care in Lebanon: a validation study. BMC Psychiatry 17, 28.CrossRefGoogle ScholarPubMed
Mahfoud, Z, Kobeissi, L, Peters, TJ, Araya, R, Ghantous, Z and Khoury, B (2013) The Arabic validation of the Hopkins Symptoms Checklist-25 against MINI in a disadvantaged suburb of Beirut, Lebanon. International Journal of Educational and Psychological Assessment 13, 1733.Google Scholar
Mahfoud, Z, Emam, R, Anchassi, D, Omran, S, Alhaj, N, Al-Abdulla, S, El-Amin, A, Shehata, M, Aly, S, Al Emadi, N, Al-Meer, F and Al-Amin, H (2019) Premenstrual dysphoric disorder in Arab women: validation and cultural adaptation of the Arabic version of the premenstrual screening tool. Women and Health 59, 631645.CrossRefGoogle ScholarPubMed
Matthey, S, Henshaw, C, Elliott, S and Barnett, B (2006) Variability in use of cut-off scores and formats on the Edinburgh Postnatal Depression Scale – implications for clinical and research practice. Archives of Women's Mental Health 9, 309315.CrossRefGoogle ScholarPubMed
McInnes, MDF, Moher, D, Thombs, BD, McGrath, TA , Bossuyt, PM and the PRISMA-DTA Group (2018) Preferred reporting items for a systematic review and meta-analysis of diagnostic test accuracy studies The PRISMA-DTA statement. Journal of the American Medical Associaton 319, 388396.CrossRefGoogle ScholarPubMed
Mutumba, M, Tomlinson, M and Tsai, AC (2014) Psychometric properties of instruments for assessing depression among African youth: a systematic review. Journal of Child and Adolescent Mental Health 26, 139156.CrossRefGoogle ScholarPubMed
Naja, S, Al-Kubaisi, N, Chehab, M, Al-Dahshan, A, Abuhashem, N and Bougmiza, I (2019) Psychometric properties of the Arabic version of EPDS and BDI-II as a screening tool for antenatal depression: evidence from Qatar. BMJ Open 9, 17.CrossRefGoogle ScholarPubMed
Netsereab, TB, Kifle, MM, Tesfagiorgis, RB, Habteab, SG, Weldeabzgi, YK and Tesfamariam, OZ (2018) Validation of the WHO self-reporting questionnaire-20 (SRQ-20) item in primary health care settings in Eritrea. International Journal of Mental Health Systems 12, 61.CrossRefGoogle ScholarPubMed
Olin, SS, Mccord, M, Kerker, BD, Weiss, D, Hoagwood, KE and Horwitz, SM (2017) Beyond screening : a stepped care pathway for managing postpartum depression in pediatric settings. Journal of Women's Health 26, 966975.CrossRefGoogle ScholarPubMed
Peconga, EK and Høgh Thøgersen, M (2020) Post-traumatic stress disorder, depression, and anxiety in adult Syrian refugees: what do we know? Scandinavian Journal of Public Health 48, 677687.CrossRefGoogle ScholarPubMed
Prinsen, CAC, Mokkink, LB, Bouter, LM, Alonso, J, Patrick, DL, de Vet, HCW and Terwee, CB (2018) COSMIN guideline for systematic reviews of patient-reported outcome measures. Quality of Life Research 27, 11471157.CrossRefGoogle ScholarPubMed
R Core Team, (2019) R: A language and environment for statistical computing. R Foundation for Statistical Computing.Google Scholar
Rucker, G, Steinhauser, S, Kolampally, S and Schwarzer, G (2020) Diagmeta: meta-analysis of diagnostic accuracy studies with several cutpoints. R package version 0.4-0. Available at https://cran.r-project.org/package=diagmeta (Accessed 26 November 2021).Google Scholar
Russell, PSS, Chikkala, SM, Earnest, R, Viswanathan, SA, Russell, S and Mammen, PM (2020) Diagnostic accuracy and clinical utility of non-English versions of Edinburgh Post-Natal Depression Scale for screening post-natal depression in India: a meta-analysis. World J Psychiatr 10, 7180.CrossRefGoogle ScholarPubMed
Rutjes, AWS (2017) Sources of bias and variation in diagnostic accuracy studies. Available at https://hdl.handle.net/11245/1.242222.Google Scholar
Sawaya, H, Atoui, M, Hamadeh, A, Zeinoun, P and Nahas, Z (2016) Adaptation and initial validation of the Patient Health Questionnaire-9 (PHQ-9) and the Generalized Anxiety Disorder-7 Questionnaire (GAD-7) in an Arabic speaking Lebanese psychiatric outpatient sample. Psychiatry Research 239, 245252.CrossRefGoogle Scholar
Saxena, S, Paraje, G, Sharan, P, Karam, G and Sadana, R (2006) The 10/90 divide in mental health research: trends over a 10-year period. The British Journal of Psychiatry 188, 8182.CrossRefGoogle ScholarPubMed
Segal, DL and Williams, KN (2014) Structured and semistructured interviews for differential diagnosis: fundamental issues, applications, and features. In Beidel, DC, Frueh, BC and Hersen, M (eds), Adult Psychopathology and Diagnosis. Hoboken, NJ: John Wiley & Sons Inc., pp. 103129.Google Scholar
Shaheen, NA, AlAtiq, Y, Thomas, A, Alanazi, HA, AlZahrani, ZE, Younis, SAR and Hussein, MA (2019) Paternal postnatal depression among fathers of newborn in Saudi Arabia. American Journal of Men's Health 13, 112.CrossRefGoogle ScholarPubMed
Shrestha, SD, Pradhan, R, Tran, TD, Gualano, RC and Fisher, JRW (2016) Reliability and validity of the Edinburgh Postnatal Depression Scale (EPDS) for detecting perinatal common mental disorders (PCMDs) among women in low-and lower-middle-income countries: a systematic review. BMC Pregnancy and Childbirth 16, 72.CrossRefGoogle ScholarPubMed
Sibai, AM, Chaaya, M, Tohme, RA, Mahfoud, Z and Al-Amin, H (2009) Validation of the Arabic version of the 5-item WHO Well Being Index in elderly population. International Journal of Geriatric Psychiatry 24, 106107.CrossRefGoogle ScholarPubMed
Söndergaard, HP, Ekblad, S and Theorell, T (2003) Screening for post-traumatic stress disorder among refugees in Stockholm. Nordic Journal of Psychiatry 57, 185190.CrossRefGoogle ScholarPubMed
Steel, Z, Chey, T, Silove, D, Marnane, C, Bryant, RA and Van Ommeren, M (2009) Association of torture and other potentially traumatic events with mental health outcomes among populations exposed to mass conflict and displacement: a systematic review and meta-analysis. Journal of the American Medical Associaton 302, 537549.CrossRefGoogle ScholarPubMed
Steel, Z, Marnane, C, Iranpour, C, Chey, T, Jackson, JW, Patel, V and Silove, D (2014) The global prevalence of common mental disorders: a systematic review and meta-analysis 1980–2013. International Journal of Epidemiology 43, 476493.CrossRefGoogle ScholarPubMed
Steinhauser, S, Schumacher, M and Rücker, G (2016) Modelling multiple thresholds in meta-analysis of diagnostic test accuracy studies. BMC Medical Research Methodology 16, 115.CrossRefGoogle ScholarPubMed
The Cochrane Collaboration (2020) Handbook DTA reviews. Available at https://methods.cochrane.org/sdt/handbook-dta-reviews (Accessed 16 April 2021).Google Scholar
UNHCR (2019) Mid-year trends 2018. Available at https://www.unhcr.org/statistics/unhcrstats/5c52ea084/mid-year-trends-2018.html (Accessed 16 April 2021).Google Scholar
UNHCR (2021) Regional overview of the South Sudanse refugee population, 2021 South Sudan regional RRRP as of 30 June 2021. Available at https://data2.unhcr.org/en/dataviz/62?sv=&geo=0 (Accessed 31 July 2021).Google Scholar
Van der Westhuizen, C, Wyatt, GE, Williams, JK, Stein, DJ and Sorsdahl, K (2017) Validation of the Self Reporting Questionnaire 20-item (SRQ-20) for use in a low- and middle-income country emergency centre setting. International Journal of Mental Health and Addiction 14, 3748.CrossRefGoogle Scholar
Ventevogel, P, De Vries, G, Scholte, WF, Shinwari, NR, Faiz, H, Nassery, R, van den Brink, W, van den Brink, W and Olff, M (2007) Properties of the Hopkins symptom checklist-25 (HSCL-25) and the Self-Reporting Questionnaire (SRQ-20) as screening instruments used in primary care in Afghanistan. Social Psychiatry and Psychiatric Epidemiology 42, 328335.CrossRefGoogle ScholarPubMed
Whiting, PF, Rutjes, AWS, Westwood, ME, Mallett, S, Deeks, JJ, Reitsma, JB, Leeflang, MMG, Sterne, JAC, Bossuyt, PMM and on behalf of the QUADAS-2 group (2011) QUADAS-2: a revised tool for the quality assessment of diagnostic accuracy studies. Annals of Internal Medicine 155, 529536.CrossRefGoogle ScholarPubMed
WHO (2019) International Statistical Classification of Diseases and Related Health Problems. Available at https://icd.who.int/ (Accessed 16 April 2021).Google Scholar
Wu, Y, Levis, B, Sun, Y, Krishnan, A, He, C, Riehm, KE, Rice, DB, ,Azar, M, Yan, XY, Neupane, D, Bhandari, PM, Imran, M, Chiovitti, MJ, Saadat, N, Boruff, JT, Cuijpers, P, Gilbody, S, McMillan, D, Ioannidis, JPA, Kloda, LA, Patten, SB, Shrier, I, Ziegelstein, RC, Henry, M, Ismail, Z, Loiselle, CG, Mitchell, ND, Tonelli, M, Al-Adawi, S, Beraldi, A, Braeken, APBM, Büel-Drabe, N, Bunevicius, A, Carter, G, Chen, C, Cheung, G, Clover, K, Conroy, RM, Cukor, D, da Rocha e Silva, CE, Dabscheck, E, Daray, FM, Douven, E, Downing, MG, Feinstein, A, Ferentinos, PP, Fischer, FH, Flint, AJ, Fujimori, M, Gallagher, P, Gandy, M, Goebel, S, Grassi, L, Härter, M, Jenewein, J, Jetté, N, Julião, M, Kim, J, Kim, S, Kjærgaard, M, Köhler, S, Loosman, WL, Löwe, B, Martin-Santos, R, Massardo, l, Matsuoka, Y, Mehnert, A, Michopoulos, I, Misery, L, Navines, R, O'Donnell, ML, Öztürk, A, Peceliuniene, J, Pintor, L, Ponsford, JL, Quinn, TJ, Reme, SE, Reuter, K, Rooney, AG, Sánchez-González, R, Schwarzbold, ML, Cankorur, VS, Shaaban, J, Sharpe, L, Sharpe, M, Simard, S, Singer, S, Stafford, L, Stone, J, Sultan, S, Teixeira, AL, Tiringer, I, Turner, A, Walker, J, Walterfang, M, Wang, L, White, J, Wong, DK, Benedetti, A and Thombs, BD (2020) Probability of major depression diagnostic classification based on the SCID, CIDI and MINI diagnostic interviews controlling for Hospital Anxiety and Depression Scale – Depression subscale scores: an individual participant data meta-analysis of 73 primary. Journal of Psychosomatic Research 129, 109892.CrossRefGoogle ScholarPubMed
Zubaran, C, Schumacher, M, Roxo, MR and Foresti, K (2010) Screening tools for postpartum depression: validity and cultural dimensions. African Journal of Psychiatry 13, 357365.Google ScholarPubMed
Figure 0

Fig. 1. PRISMA-DTA Flow-chart.

Figure 1

Table 1. Study Characteristics

Figure 2

Table 2 Risk of bias (QUADAS-2)

Figure 3

Fig. 2. SROC plots for the EPDS (A), HADS-A (B), HADS-D (C) and SRQ-20 (D).

Figure 4

Table 3 Summary operating points of sensitivity and specificity by questionnaire

Supplementary material: File

de Graaff et al. supplementary material

Appendices 1-6

Download de Graaff et al. supplementary material(File)
File 559.3 KB