Zhao Na, Li Liang, Lock Matthew, Ai Yi-Fan, Liu Jian, Zhu Chun-Ying, Zang Yu-Feng, Wang Hua-Ning, Li Bao-Juan
Center for Cognition and Brain Disorders/Department of Neurology, The Affiliated Hospital of Hangzhou Normal University, Zhejiang, Hangzhou, China.
Institute of Psychological Sciences, Hangzhou Normal University, Zhejiang, Hangzhou, China.
CNS Neurosci Ther. 2025 Aug;31(8):e70533. doi: 10.1111/cns.70533.
Major depressive disorder (MDD) is a common psychiatric disorder whose causes and manifestations are diverse and numerous. To facilitate targeted therapeutic interventions, we characterized the abnormalities in effective connectivity within the cognitive-affective (CCN-AN) circuits to identify predictive biomarkers of TMS efficacy based on a large multicenter dataset and an independent dataset from patients receiving TMS.
Both functional and effective connectivity (FC, EC) were analyzed. As there was only one significant connection observed in FC, classification based on the differences in EC was performed using REST-meta-MDD. Furthermore, correlations between these abnormal connectivity and depression severity, as well as depression and suicidality alleviation, were calculated to determine their predictive implications for TMS efficacy using an independent dataset.
Overall increased connectivity from the AN to the CCN and decreased connectivity from the CCN to the AN in MDD were observed using EC. These disruptions drove the classification accuracy up to 79.1%. Furthermore, the connection from the right inferior parietal lobule (IPL. R) to the right amygdala (AMYG.R) was negatively correlated with depression scores. Notably, the IPL connectivity to the anterior cingulate cortex (ACC) and the AMYG.R were closely correlated with depression and suicidal ideation alleviation following TMS treatment.
These findings suggest that MDD is characterized by disruptions in both top-down and bottom-up emotion regulation systems. Notably, the key abnormal connectivities, particularly those from the IPL to ACC and AMYG, could predict the efficacy of TMS treatment. This insight refines MDD diagnosis and paves the way for more precise targeted interventions in the future.
重度抑郁症(MDD)是一种常见的精神疾病,其病因和表现多种多样。为了促进有针对性的治疗干预,我们基于一个大型多中心数据集以及接受经颅磁刺激(TMS)治疗患者的独立数据集,对认知 - 情感(CCN - AN)回路内有效连接的异常进行了特征分析,以识别TMS疗效的预测生物标志物。
对功能连接和有效连接(FC,EC)均进行了分析。由于在FC中仅观察到一个显著连接,因此使用REST - meta - MDD基于EC的差异进行分类。此外,计算这些异常连接与抑郁严重程度以及抑郁和自杀倾向缓解之间的相关性,以使用独立数据集确定它们对TMS疗效的预测意义。
使用EC观察到,MDD患者中从杏仁核网络(AN)到认知控制网络(CCN)的连接总体增加,而从CCN到AN的连接减少。这些干扰使分类准确率提高到79.1%。此外,右顶下小叶(IPL.R)与右杏仁核(AMYG.R)之间的连接与抑郁评分呈负相关。值得注意的是,IPL与前扣带回皮质(ACC)的连接以及与AMYG.R的连接与TMS治疗后抑郁和自杀观念的缓解密切相关。
这些发现表明,MDD的特征是自上而下和自下而上的情绪调节系统均受到破坏。值得注意的是,关键的异常连接,特别是从IPL到ACC和AMYG的连接,可以预测TMS治疗的疗效。这一见解完善了MDD的诊断,并为未来更精确的靶向干预铺平了道路。