Abstract

The application of machine learning techniques to psychiatric neuroimaging offers the possibility to identify robust, reliable and objective disease biomarkers both within and between contemporary syndromal diagnoses that could guide routine clinical practice. The use of quantitative methods to identify psychiatric biomarkers is consequently important, particularly with a view to making predictions relevant to individual patients, rather than at a group-level. Here, we describe predictions of treatment-refractory depression (TRD) diagnosis using structural T1-weighted brain scans obtained from twenty adult participants with TRD and 21 never depressed controls. We report 85% accuracy of individual subject diagnostic prediction. Using an automated feature selection method, the major brain regions supporting this significant classification were in the caudate, insula, habenula and periventricular grey matter. It was not, however, possible to predict the degree of ‘treatment resistance’ in individual patients, at least as quantified by the Massachusetts General Hospital (MGH-S) clinical staging method; but the insula was again identified as a region of interest. Structural brain imaging data alone can be used to predict diagnostic status, but not MGH-S staging, with a high degree of accuracy in patients with TRD.

Highlights

  • Based on the 2010 Global Burden of Diseases Study, Whiteford, Degenhardt

  • The average Massachusetts General Hospital (MGH-S) score of the treatment-refractory depression (TRD) participants was 13.3, which is consistent with a previous report of patients attending the Advanced Interventions Service (15.5) and should be noted as significantly higher than patients with depression treated in UK secondary care (5.3); and primary care (0.5) [34]

  • The average HDRS17, MADRS and BDI illness severity rating scores in the TRD group were 16.1, 22.5 and 32.2 respectively, reflecting group-level depression severity at time of scanning to be in the mild-moderate range

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Summary

Introduction

Based on the 2010 Global Burden of Diseases Study, Whiteford, Degenhardt This is due to the chronic nature of psychiatric disorders and the typical onset of symptoms at a young age. Depressive disorders were found to be the largest contributor to disability-adjusted life years, by some margin, within this grouping [1]. Major Depressive Disorder (MDD) is defined by persistent and disabling symptoms of low mood, anhedonia, hopelessness, guilt, low self-worth, poor concentration, lack of energy, suicidal thoughts and altered appetite and sleep [2, 3].

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