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What are the best strategies for stratification of clinical cohorts with depression and other mood disorders?

Published online by Cambridge University Press:  08 February 2024

Ian B. Hickie*
Affiliation:
Brain and Mind Centre, The University of Sydney, Sydney, Australia
Michael Berk
Affiliation:
Deakin University, IMPACT, The Institute for Mental and Physical Health and Clinical Translation, School of Medicine, Barwon Health, Geelong, Australia Orygen, The National Centre of Excellence in Youth Mental Health, Parkville, Australia Department of Psychiatry, and the Florey Institute of Neuroscience and Mental Health, The University of Melbourne, Melbourne, Australia
Jan Scott
Affiliation:
Institute of Neuroscience, Newcastle University, Newcastle, UK
Jacob Crouse
Affiliation:
Brain and Mind Centre, The University of Sydney, Sydney, Australia
Elizabeth Scott
Affiliation:
Brain and Mind Centre, The University of Sydney, Sydney, Australia
Naomi Wray
Affiliation:
Department of Psychiatry, University of Oxford, Oxford, UK
Frank Iorfino
Affiliation:
Brain and Mind Centre, The University of Sydney, Sydney, Australia
*
Corresponding author: Ian B. Hickie; Email: [email protected]
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Extract

The recognised heterogeneity of clinical cohorts of people with depression and other mood disorders has been held to be one of the central reasons why so many studies of causation, neurobiological or psychological correlates, or the effectiveness of treatments have failed to yield significant findings or be easily replicated by independent groups.

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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

Context

The recognised heterogeneity of clinical cohorts of people with depression and other mood disorders has been held to be one of the central reasons why so many studies of causation, neurobiological or psychological correlates, or the effectiveness of treatments have failed to yield significant findings or be easily replicated by independent groups.

It is a major problem across all of psychiatry that the heterogeneity within diagnostic groups often exceeds that between diagnostic categories. This is especially the case for depression and other mood disorders where some sub-groups share more in common with other diagnostic categories, and, most importantly, patterns of differential response to common pharmacological or psychological treatments (e.g. those with psychotic depression are more similar to those with other psychotic disorders than those with non-psychotic mood disorders; those with atypical depression are more similar to those with bipolar depression than those with unipolar depression; those with anxious major depression are more similar to those with post-traumatic stress disorder than those with major depression alone).

Despite the clinical utility and historical persistence of demographically-based (e.g. early-onset vs late-onset) or phenotypically-based distinctions (bipolar vs unipolar, typical vs atypical, melancholic vs non-melancholic, psychotic vs non-psychotic, episodic vs chronic and persistent and treatment-responsive vs treatment-resistant), and the inclusion of such sub-typing categories within diagnostic systems, this has not led to great progress in the field. Clinicians have a strong preference, and urgent need, to link more precisely observed behavioural phenomena with underlying pathophysiology to underpin optimal treatment selection.

Consequently, a range of new illness-onset, course and other observed systems have been proposed, including clinical staging or more tightly defined illness trajectories (anxious child to anxious-depressed teenager, circadian depression) as better potential markers (Hickie et al., Reference Hickie, Scott, Cross, Iorfino, Davenport, Guastella, Naismith, Carpenter, Rohleder, Crouse, Hermens, Koethe, Markus Leweke, Tickell, Sawrikar and Scott2019; Shah et al., Reference Shah, Scott, McGorry, Cross, Keshavan, Nelson, Wood, Marwaha, Yung, Scott, Öngür, Conus, Henry and Hickie2020; McGorry and Hickie, Reference McGorry and Hickie2019). However, these approaches still rely heavily on observed phenotypic, retrospective trajectories or longitudinal illness-course features. While they may propose underlying mechanisms (e.g Hypothalamic-Pituitary-Adrenal axis dysfunction; circadian pathophysiology) as the likely pathophysiology, they do not directly document such factors.

By contrast, others propose that we need to make much greater use of independent laboratory, brain, genetic or other observable markers – and determine their relationships with clinical phenotypes, illness stage, treatment response or illness course (McGorry et al., Reference McGorry, Keshavan, Goldstone, Amminger, Allott, Berk, Lavoie, Pantelis, Yung, Wood and Hickie2014). These include a wide range of existing and novel immune, metabolic, brain imaging and electrophysiological markers. Additionally, there is a wide range of cognitive and neuropsychological features that can be reliably recorded. Whether new genetic and other metabolic and proteomic markers will enhance the field is unknown. The extent to which these markers reflect underlying pathophysiological markers, genuine sub-types or predictors of illness course or treatment response as distinct from being markers of age, chronicity or prior treatment exposures remains controversial.

Another alternative approach is to focus on patterns of response versus non-response to established (typically SSRIs, SNRIs or Lithium) or novel (e.g. ketamine, melatonin-based agents) pharmacological, psychological or physical (e.g., ECT, rTMS) treatments. This approach has the capacity to work back to elucidate more fundamental biochemical, physiological or genetic factors that underpin the drivers of specific sub-groups of common mood disorders. However, this approach is limited by the range of current treatments available and our understanding of their actual mechanisms of action.

So, there is an urgent need to set an agenda for the ways in which stratification of depressive and other mood disorders may usefully proceed. An emphasis on development of new methods, agreed ways of assessing the validity of proposed markers (after controlling for relevant age, treatment and chronicity confounds) and linking to relevant clinical, population-based, developmental or other informative cohorts, are high priorities.

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Competing interests

Ian Hickie is the Co-Director of Health and Policy at the Brain and Mind Centre (BMC) University of Sydney. The BMC operates early-intervention youth services at Camperdown under contract to headspace. He is the Chief Scientific Advisor to, and a 3.2% equity shareholder in, InnoWell Pty Ltd, which aims to transform mental health services through the use of innovative tecnologies.

References

Hickie, IB, Scott, EM, Cross, SP, Iorfino, F, Davenport, TA, Guastella, AJ, Naismith, SL, Carpenter, JS, Rohleder, C, Crouse, JJ, Hermens, DF, Koethe, D, Markus Leweke, F, Tickell, AM, Sawrikar, V and Scott, J (2019) Right care, first time: a highly personalised and measurement-based care model to manage youth mental health. Medical Journal of Australia 211, S3S46.CrossRefGoogle Scholar
McGorry, P, Keshavan, M, Goldstone, S, Amminger, P, Allott, K, Berk, M, Lavoie, S, Pantelis, C, Yung, A, Wood, S and Hickie, I (2014) Biomarkers and clinical staging in psychiatry. World Psychiatry 13, 211223.CrossRefGoogle ScholarPubMed
McGorry, PD and Hickie, IB (2019) Clinical staging in psychiatry. Cambridge University Press.CrossRefGoogle Scholar
Shah, JL, Scott, J, McGorry, PD, Cross, SPM, Keshavan, MS, Nelson, B, Wood, SJ, Marwaha, S, Yung, AR, Scott, EM, Öngür, D, Conus, P, Henry, C and Hickie, IB (2020) Transdiagnostic clinical staging in youth mental health: a first international consensus statement. World Psychiatry 19, 233242.CrossRefGoogle ScholarPubMed