Multivariate Analysis of Structural and Functional Neuroimaging Can Inform Psychiatric Differential Diagnosis

Author:

Stoyanov DrozdstoyORCID,Kandilarova SevdalinaORCID,Aryutova KatrinORCID,Paunova Rositsa,Todeva-Radneva Anna,Latypova Adeliya,Kherif FerathORCID

Abstract

Traditional psychiatric diagnosis has been overly reliant on either self-reported measures (introspection) or clinical rating scales (interviews). This produced the so-called explanatory gap with the bio-medical disciplines, such as neuroscience, which are supposed to deliver biological explanations of disease. In that context the neuro-biological and clinical assessment in psychiatry remained discrepant and incommensurable under conventional statistical frameworks. The emerging field of translational neuroimaging attempted to bridge the explanatory gap by means of simultaneous application of clinical assessment tools and functional magnetic resonance imaging, which also turned out to be problematic when analyzed with standard statistical methods. In order to overcome this problem our group designed a novel machine learning technique, multivariate linear method (MLM) which can capture convergent data from voxel-based morphometry, functional resting state and task-related neuroimaging and the relevant clinical measures. In this paper we report results from convergent cross-validation of biological signatures of disease in a sample of patients with schizophrenia as compared to depression. Our model provides evidence that the combination of the neuroimaging and clinical data in MLM analysis can inform the differential diagnosis in terms of incremental validity.

Publisher

MDPI AG

Subject

Clinical Biochemistry

Reference63 articles.

1. Estimating the true global burden of mental illness

2. Management of Physical Health Conditions in Adults with Severe Mental Disorders: WHO Guidelines,2018

3. Schizophrenia;Hany,2020

4. The human cost of not achieving full remission in depression;McIntyre;Can. J. Psychiatry,2004

5. Clinical Use of Neurophysiological Biomarkers and Self-Assessment Scales to Predict and Monitor Treatment Response for Psychotic and Affective disorders;Aryutova;Curr. Pharm. Des.

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