Neurovegetative symptom subtypes in young people with major depressive disorder and their structural brain correlates

被引:0
作者
Yara J. Toenders
Lianne Schmaal
Ben J. Harrison
Richard Dinga
Michael Berk
Christopher G. Davey
机构
[1] Orygen,Centre for Youth Mental Health
[2] The National Centre of Excellence in Youth Mental Health,Melbourne Neuropsychiatry Centre, Department of Psychiatry
[3] The University of Melbourne,Department of Psychiatry
[4] The University of Melbourne & Melbourne Health,Donders Institute for Brain, Cognition and Behaviour
[5] Amsterdam UMC,IMPACT SRC, School of Medicine, Barwon Health
[6] Radboud University,Department of Psychiatry
[7] Deakin University,undefined
[8] The University of Melbourne,undefined
[9] Florey Institute of Neuroscience and Mental Health,undefined
[10] The University of Melbourne,undefined
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Translational Psychiatry | / 10卷
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摘要
Depression is a leading cause of burden of disease among young people. Current treatments are not uniformly effective, in part due to the heterogeneous nature of major depressive disorder (MDD). Refining MDD into more homogeneous subtypes is an important step towards identifying underlying pathophysiological mechanisms and improving treatment of young people. In adults, symptom-based subtypes of depression identified using data-driven methods mainly differed in patterns of neurovegetative symptoms (sleep and appetite/weight). These subtypes have been associated with differential biological mechanisms, including immuno-metabolic markers, genetics and brain alterations (mainly in the ventral striatum, medial orbitofrontal cortex, insular cortex, anterior cingulate cortex amygdala and hippocampus). K-means clustering was applied to individual depressive symptoms from the Quick Inventory of Depressive Symptoms (QIDS) in 275 young people (15–25 years old) with MDD to identify symptom-based subtypes, and in 244 young people from an independent dataset (a subsample of the STAR*D dataset). Cortical surface area and thickness and subcortical volume were compared between the subtypes and 100 healthy controls using structural MRI. Three subtypes were identified in the discovery dataset and replicated in the independent dataset; severe depression with increased appetite, severe depression with decreased appetite and severe insomnia, and moderate depression. The severe increased appetite subtype showed lower surface area in the anterior insula compared to both healthy controls. Our findings in young people replicate the previously identified symptom-based depression subtypes in adults. The structural alterations of the anterior insular cortex add to the existing evidence of different pathophysiological mechanisms involved in this subtype.
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