Characterizing major depressive disorder and substance use disorder using heatmaps and variable interactions: The utility of operant behavior and brain structure relationships.

Journal: PloS one

Volume: 19

Issue: 3

Year of Publication: 2024

Affiliated Institutions:  Department of Computer Science, University of Cincinnati, Cincinnati, Ohio, United States of America. Department of Electrical and Computer Engineering, Northwestern University, Evanston, Illinois, United States of America. Department of Psychiatry, Mood and Motor Control Laboratory (MAML), Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts, United States of America.

Abstract summary 

Rates of depression and addiction have risen drastically over the past decade, but the lack of integrative techniques remains a barrier to accurate diagnoses of these mental illnesses. Changes in reward/aversion behavior and corresponding brain structures have been identified in those with major depressive disorder (MDD) and cocaine-dependence polysubstance abuse disorder (CD). Assessment of statistical interactions between computational behavior and brain structure may quantitatively segregate MDD and CD.Here, 111 participants [40 controls (CTRL), 25 MDD, 46 CD] underwent structural brain MRI and completed an operant keypress task to produce computational judgment metrics. Three analyses were performed: (1) linear regression to evaluate groupwise (CTRL v. MDD v. CD) differences in structure-behavior associations, (2) qualitative and quantitative heatmap assessment of structure-behavior association patterns, and (3) the k-nearest neighbor machine learning approach using brain structure and keypress variable inputs to discriminate groups.This study yielded three primary findings. First, CTRL, MDD, and CD participants had distinct structure-behavior linear relationships, with only 7.8% of associations overlapping between any two groups. Second, the three groups had statistically distinct slopes and qualitatively distinct association patterns. Third, a machine learning approach could discriminate between CTRL and CD, but not MDD participants.These findings demonstrate that variable interactions between computational behavior and brain structure, and the patterns of these interactions, segregate MDD and CD. This work raises the hypothesis that analysis of interactions between operant tasks and structural neuroimaging might aide in the objective classification of MDD, CD and other mental health conditions.

Authors & Co-authors:  Vike Bari Kim Katsaggelos Blood Breiter

Study Outcome 

Source Link: Visit source

Statistics
Citations :  Davis L, Uezato A, Newell JM, Frazier E (2008): Major depression and comorbid substance use disorders. Curr Opin Psychiatry 21: 14–18. doi: 10.1097/YCO.0b013e3282f32408
Authors :  7
Identifiers
Doi : e0299528
SSN : 1932-6203
Study Population
Male,Female
Mesh Terms
Humans
Other Terms
Study Design
Study Approach
Quantitative,Qualitative
Country of Study
Publication Country
United States