Resolving heterogeneity in depression using individualized structural covariance network analysis

萧条(经济学) 神经科学 心理学 协方差 鉴别诊断 神经病理学 小脑 医学 病理 疾病 数学 统计 经济 宏观经济学
作者
Shaoqiang Han,Ruiping Zheng,Shuying Li,Bingqian Zhou,Yu Jiang,Keke Fang,Yarui Wei,Jianyue Pang,Hengfen Li,Yong Zhang,Yuan Chen,Jingliang Cheng
出处
期刊:Psychological Medicine [Cambridge University Press]
卷期号:53 (11): 5312-5321 被引量:38
标识
DOI:10.1017/s0033291722002380
摘要

BACKGROUND: Elucidating individual aberrance is a critical first step toward precision medicine for heterogeneous disorders such as depression. The neuropathology of depression is related to abnormal inter-regional structural covariance indicating a brain maturational disruption. However, most studies focus on group-level structural covariance aberrance and ignore the interindividual heterogeneity. For that reason, we aimed to identify individualized structural covariance aberrance with the help of individualized differential structural covariance network (IDSCN) analysis. METHODS: = 78) were acquired. We obtained IDSCN for each patient and identified subtypes of depression based on shared differential edges. RESULTS: As a result, patients with depression demonstrated tremendous heterogeneity in the distribution of differential structural covariance edges. Despite this heterogeneity, altered edges within subcortical-cerebellum network were often shared by most of the patients. Two robust neuroanatomical subtypes were identified. Specifically, patients in subtype 1 often shared decreased motor network-related edges. Patients in subtype 2 often shared decreased subcortical-cerebellum network-related edges. Functional annotation further revealed that differential edges in subtype 2 were mainly implicated in reward/motivation-related functional terms. CONCLUSIONS: In conclusion, we investigated individualized differential structural covariance and identified that decreased edges within subcortical-cerebellum network are often shared by patients with depression. The identified two subtypes provide new insights into taxonomy and facilitate potential clues to precision diagnosis and treatment of depression.
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