Fang Keke, Niu Lianjie, Wen Baohong, Liu Liang, Tian Ya, Yang Huiting, Hou Ying, Han Shaoqiang, Sun Xianfu, Zhang Wenzhou
Department of Pharmacy, Affiliated Cancer Hospital of Zhengzhou University and Henan Cancer Hospital, Zhengzhou, China.
Henan Engineering Research Center for Tumor Precision Medicine and Comprehensive Evaluation, Henan Cancer Hospital, Zhengzhou, China.
Transl Psychiatry. 2025 Feb 6;15(1):45. doi: 10.1038/s41398-025-03268-9.
Modern neuroimaging research has recognized that major depressive disorder (MDD) is a connectome disorder, characterized by altered functional connectivity across large-scale brain networks. However, the clinical heterogeneity, likely stemming from diverse neurobiological disturbances, complicates findings from standard group comparison methods. This variability has driven the search for MDD subtypes using objective neuroimaging markers. In this study, we sought to identify potential MDD subtypes from subject-level abnormalities in functional connectivity, leveraging a large multi-site dataset of resting-state MRI from 1276 MDD patients and 1104 matched healthy controls. Subject-level extreme functional connections, determined by comparing against normative ranges derived from healthy controls using tolerance intervals, were used to identify biological subtypes of MDD. We identified a set of extreme functional connections that were predominantly between the visual network and the frontoparietal network, the default mode network and the ventral attention network, with the key regions in the anterior cingulate cortex, bilateral orbitofrontal cortex, and supramarginal gyrus. In MDD patients, these extreme functional connections were linked to age of onset and reward-related processes. Using these features, we identified two subtypes with distinct patterns of functional connectivity abnormalities compared to healthy controls (p < 0.05, Bonferroni correction). When considering all patients together, no significant differences were found. These subtypes significantly enhanced case-control discriminability and showed strong internal discriminability between subtypes. Furthermore, the subtypes were reproducible across varying parameters, study sites, and in untreated patients. Our findings provide new insights into the taxonomy and have potential implications for both diagnosis and treatment of MDD.
现代神经影像学研究已经认识到,重度抑郁症(MDD)是一种连接组疾病,其特征是大规模脑网络之间的功能连接发生改变。然而,临床异质性可能源于多种神经生物学干扰,这使得标准组比较方法的研究结果变得复杂。这种变异性推动了使用客观神经影像学标记物来寻找MDD亚型。在本研究中,我们试图从功能连接的个体水平异常中识别潜在的MDD亚型,利用来自1276名MDD患者和1104名匹配健康对照的静息态MRI大型多中心数据集。通过使用容差区间与健康对照得出的规范范围进行比较来确定个体水平的极端功能连接,用于识别MDD的生物学亚型。我们确定了一组主要存在于视觉网络和额顶叶网络、默认模式网络和腹侧注意网络之间的极端功能连接,关键区域在前扣带回皮质、双侧眶额皮质和缘上回。在MDD患者中,这些极端功能连接与发病年龄和奖励相关过程有关。利用这些特征,我们识别出两种与健康对照相比具有不同功能连接异常模式的亚型(p < 0.05,Bonferroni校正)。当将所有患者一起考虑时,未发现显著差异。这些亚型显著提高了病例对照的可辨别性,并在亚型之间显示出很强的内部可辨别性。此外,这些亚型在不同参数、研究地点以及未治疗患者中均可重复。我们的研究结果为分类学提供了新的见解,并对MDD的诊断和治疗具有潜在意义。