Dai Peishan, Huang Kaineng, Shi Yun, Xiong Tong, Zhou Xiaoyan, Liao Shenghui, Huang Zhongchao, Yi Xiaoping, Grecucci Alessandro, Chen Bihong T
School of Computer Science and Engineering, Central South University, Changsha 410083, Hunan, PR China.
School of Computer Science and Engineering, Central South University, Changsha 410083, Hunan, PR China.
J Affect Disord. 2025 Jul 1;390:119783. doi: 10.1016/j.jad.2025.119783.
Major Depressive Disorder (MDD) diagnosis mainly relies on subjective self-reporting and clinical assessments. Resting-state functional magnetic resonance imaging (rs-fMRI) and its analysis of Effective Connectivity (EC) offer a quantitative approach to understand the directional interactions between brain regions, presenting a potential objective method for MDD classification.
Granger causality analysis was used to extract EC features from a large, multi-site rs-fMRI dataset of MDD patients. The ComBat algorithm was applied to adjust for site differences, while multivariate linear regression was employed to control for age and sex differences. Discriminative EC features for MDD were identified using two-sample t-tests and model-based feature selection, with the LightGBM algorithm being used for classification. The performance and generalizability of the model was evaluated using nested five-fold cross-validation and tested for generalizability on an independent dataset.
Ninety-seven EC features belonging to the cerebellum and front-temporal regions were identified as highly discriminative for MDD. The classification model using these features achieved an accuracy of 94.35 %, with a sensitivity of 93.52 % and specificity of 95.25 % in cross-validation. Generalization of the model to an independent dataset resulted in an accuracy of 94.74 %, sensitivity of 90.59 %, and specificity of 96.75 %.
The study demonstrates that EC features from rs-fMRI can effectively discriminate MDD from healthy controls, suggesting that EC analysis could be a valuable tool in assisting the clinical diagnosis of MDD. This method shows promise in enhancing the objectivity of MDD diagnosis through the use of neuroimaging biomarkers.
重度抑郁症(MDD)的诊断主要依赖于主观的自我报告和临床评估。静息态功能磁共振成像(rs-fMRI)及其有效连接性(EC)分析提供了一种定量方法来理解脑区之间的定向相互作用,为MDD分类提供了一种潜在的客观方法。
采用格兰杰因果分析从一个大型多中心MDD患者rs-fMRI数据集中提取EC特征。应用ComBat算法调整站点差异,同时采用多元线性回归控制年龄和性别差异。使用双样本t检验和基于模型的特征选择来识别MDD的判别性EC特征,并使用LightGBM算法进行分类。使用嵌套五折交叉验证评估模型的性能和泛化能力,并在独立数据集上测试其泛化能力。
97个属于小脑和额颞叶区域的EC特征被确定为对MDD具有高度判别性。使用这些特征的分类模型在交叉验证中的准确率为94.35%,敏感性为93.52%,特异性为95.25%。该模型在独立数据集上的泛化准确率为94.74%,敏感性为90.59%,特异性为96.75%。
该研究表明,rs-fMRI的EC特征能够有效地区分MDD患者与健康对照,提示EC分析可能是辅助MDD临床诊断的有价值工具。该方法有望通过使用神经影像学生物标志物提高MDD诊断的客观性。