Han Shaoqiang, Tian Ya, Zheng Ruiping, Wen Baohong, Liu Liang, Liu Hao, Wei Yarui, Chen Huafu, Zhao Zongya, Xia Mingrui, Sun Xiaoyi, Wang Xiaoqin, Wei Dongtao, Liu Bangshan, Huang Chu-Chung, Zheng Yanting, Wu Yankun, Chen Taolin, Cheng Yuqi, Xu Xiufeng, Gong Qiyong, Si Tianmei, Qiu Shijun, Lin Ching-Po, Tang Yanqing, Wang Fei, Qiu Jiang, Xie Peng, Li Lingjiang, He Yong, Chen Yuan, Zhang Yong, Cheng Jingliang
Department of Magnetic Resonance Imaging, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan Province, China.
The Clinical Hospital of Chengdu Brain Science Institute, School of Life Science and Technology, University of Electronic Science and Technology of China, Chengdu, China.
Psychol Med. 2024 Nov 26;54(15):1-19. doi: 10.1017/S0033291724002617.
In contemporary neuroimaging studies, it has been observed that patients with major depressive disorder (MDD) exhibit aberrant spontaneous neural activity, commonly quantified through the amplitude of low-frequency fluctuations (ALFF). However, the substantial individual heterogeneity among patients poses a challenge to reaching a unified conclusion.
To address this variability, our study adopts a novel framework to parse individualized ALFF abnormalities. We hypothesize that individualized ALFF abnormalities can be portrayed as a unique linear combination of shared differential factors. Our study involved two large multi-center datasets, comprising 2424 patients with MDD and 2183 healthy controls. In patients, individualized ALFF abnormalities were derived through normative modeling and further deconstructed into differential factors using non-negative matrix factorization.
Two positive and two negative factors were identified. These factors were closely linked to clinical characteristics and explained group-level ALFF abnormalities in the two datasets. Moreover, these factors exhibited distinct associations with the distribution of neurotransmitter receptors/transporters, transcriptional profiles of inflammation-related genes, and connectome-informed epicenters, underscoring their neurobiological relevance. Additionally, factor compositions facilitated the identification of four distinct depressive subtypes, each characterized by unique abnormal ALFF patterns and clinical features. Importantly, these findings were successfully replicated in another dataset with different acquisition equipment, protocols, preprocessing strategies, and medication statuses, validating their robustness and generalizability.
This research identifies shared differential factors underlying individual spontaneous neural activity abnormalities in MDD and contributes novel insights into the heterogeneity of spontaneous neural activity abnormalities in MDD.
在当代神经影像学研究中,人们观察到重度抑郁症(MDD)患者表现出自发神经活动异常,通常通过低频波动幅度(ALFF)进行量化。然而,患者之间存在的巨大个体异质性对得出统一结论构成了挑战。
为了解决这种变异性,我们的研究采用了一种新颖的框架来剖析个体ALFF异常。我们假设个体ALFF异常可以被描绘为共享差异因素的独特线性组合。我们的研究涉及两个大型多中心数据集,包括2424例MDD患者和2183例健康对照。在患者中,通过规范建模得出个体ALFF异常,并使用非负矩阵分解将其进一步解构为差异因素。
确定了两个正向和两个负向因素。这些因素与临床特征密切相关,并解释了两个数据集中的组水平ALFF异常。此外,这些因素与神经递质受体/转运体的分布、炎症相关基因的转录谱以及基于连接组的中心存在明显关联,强调了它们的神经生物学相关性。此外,因素组成有助于识别四种不同的抑郁亚型,每种亚型都具有独特的异常ALFF模式和临床特征。重要的是,这些发现在另一个具有不同采集设备、方案、预处理策略和用药状态的数据集上成功得到了重复,验证了它们的稳健性和普遍性。
本研究确定了MDD个体自发神经活动异常背后的共享差异因素,并为MDD自发神经活动异常的异质性提供了新的见解。