Chen Xitian, Dai Zhengjia, Lin Ying
Department of Psychology, Sun Yat-sen University, Guangzhou 510006, China.
Department of Psychology, Sun Yat-sen University, Guangzhou 510006, China.
J Affect Disord. 2023 May 15;329:257-272. doi: 10.1016/j.jad.2023.02.118. Epub 2023 Feb 28.
The advances in resting-state functional magnetic resonance imaging techniques motivate parsing heterogeneity in major depressive disorder (MDD) through neurophysiological subtypes (i.e., biotypes). Based on graph theories, researchers have observed the functional organization of the human brain as a complex system with modular structures and have found wide-spread but variable MDD-related abnormality regarding the modules. The evidence implies the possibility of identifying biotypes using high-dimensional functional connectivity (FC) data in ways that suit the potentially multifaceted biotypes taxonomy.
We proposed a multiview biotype discovery framework that involves theory-driven feature subspace partition (i.e., "view") and independent subspace clustering. Six views were defined using intra- and intermodule FC regarding three MDD focal modules (i.e., the sensory-motor system, default mode network, and subcortical network). For robust biotypes, the framework was applied to a large multisite sample (805 MDD participants and 738 healthy controls).
Two biotypes were stably obtained in each view, respectively characterized by significantly increased and decreased FC compared to healthy controls. These view-specific biotypes promoted the diagnosis of MDD and showed different symptom profiles. By integrating the view-specific biotypes into biotype profiles, a broad spectrum in the neural heterogeneity of MDD and its separation from symptom-based subtypes was further revealed.
The power of clinical effects is limited and the cross-sectional nature cannot predict the treatment effects of the biotypes.
Our findings not only contribute to the understanding of heterogeneity in MDD, but also provide a novel subtyping framework that could transcend current diagnostic boundaries and data modality.
静息态功能磁共振成像技术的进步促使通过神经生理亚型(即生物型)来剖析重度抑郁症(MDD)的异质性。基于图论,研究人员将人类大脑的功能组织视为一个具有模块化结构的复杂系统,并发现与模块相关的广泛但可变的MDD相关异常。这一证据表明,有可能使用高维功能连接(FC)数据以适合潜在多方面生物型分类法的方式识别生物型。
我们提出了一个多视图生物型发现框架,该框架涉及理论驱动的特征子空间划分(即“视图”)和独立子空间聚类。使用关于三个MDD焦点模块(即感觉运动系统、默认模式网络和皮质下网络)的模块内和模块间FC定义了六个视图。为了获得稳健的生物型,该框架应用于一个大型多站点样本(805名MDD参与者和738名健康对照)。
在每个视图中分别稳定获得了两种生物型,与健康对照相比,其特征分别为FC显著增加和减少。这些特定于视图的生物型促进了MDD的诊断,并显示出不同的症状特征。通过将特定于视图的生物型整合到生物型概况中,进一步揭示了MDD神经异质性的广泛范围及其与基于症状的亚型的分离。
临床效应的效力有限,且横断面性质无法预测生物型的治疗效果。
我们的研究结果不仅有助于理解MDD的异质性,还提供了一个新颖的亚型分类框架,该框架可以超越当前的诊断界限和数据模式。