旋回作用
精神病理学
心理学
神经影像学
分裂情感障碍
多元统计
多元分析
临床心理学
精神病
神经科学
精神科
医学
计算机科学
内科学
机器学习
大脑皮层
作者
Julia‐Katharina Pfarr,Tina Meller,Katharina Brosch,Frederike Stein,Florian Thomas‐Odenthal,Ulrika Evermann,Adrian Wroblewski,Kai G. Ringwald,Tim Hahn,Susanne Meinert,Alexandra Winter,Katharina Thiel,Kira Flinkenflügel,Andreas Jansen,Axel Krug,Udo Dannlowski,Tilo Kircher,Christian Gaser,Igor Nenadić
出处
期刊:NeuroImage
[Elsevier]
日期:2023-11-01
卷期号:281: 120349-120349
标识
DOI:10.1016/j.neuroimage.2023.120349
摘要
Multivariate data-driven statistical approaches offer the opportunity to study multi-dimensional interdependences between a large set of biological parameters, such as high-dimensional brain imaging data. For gyrification, a putative marker of early neurodevelopment, direct comparisons of patterns among multiple psychiatric disorders and investigations of potential heterogeneity of gyrification within one disorder and a transdiagnostic characterization of neuroanatomical features are lacking.In this study we used a data-driven, multivariate statistical approach to analyze cortical gyrification in a large cohort of N = 1028 patients with major psychiatric disorders (Major depressive disorder: n = 783, bipolar disorder: n = 129, schizoaffective disorder: n = 44, schizophrenia: n = 72) to identify cluster patterns of gyrification beyond diagnostic categories.Cluster analysis applied on gyrification data of 68 brain regions (DK-40 atlas) identified three clusters showing difference in overall (global) gyrification and minor regional variation (regions). Newly, data-driven subgroups are further discriminative in cognition and transdiagnostic disease risk factors.Results indicate that gyrification is associated with transdiagnostic risk factors rather than diagnostic categories and further imply a more global role of gyrification related to mental health than a disorder specific one. Our findings support previous studies highlighting the importance of association cortices involved in psychopathology. Explorative, data-driven approaches like ours can help to elucidate if the brain imaging data on hand and its a priori applied grouping actually has the potential to find meaningful effects or if previous hypotheses about the phenotype as well as its grouping have to be revisited.
科研通智能强力驱动
Strongly Powered by AbleSci AI