Geng Xiangfei, Xu Junhai, Liu Baolin, Shi Yonggang
Tianjin Key Laboratory of Cognitive Computing and Application, School of Computer Science and Technology, Tianjin University, Tianjin, China.
Laboratory of Neural Imaging, Keck School of Medicine, USC Stevens Neuroimaging and Informatics Institute, University of Southern California, Los Angeles, CA, United States.
Front Neurosci. 2018 Feb 19;12:38. doi: 10.3389/fnins.2018.00038. eCollection 2018.
Major depressive disorder (MDD) is a mental disorder characterized by at least 2 weeks of low mood, which is present across most situations. Diagnosis of MDD using rest-state functional magnetic resonance imaging (fMRI) data faces many challenges due to the high dimensionality, small samples, noisy and individual variability. To our best knowledge, no studies aim at classification with effective connectivity and functional connectivity measures between MDD patients and healthy controls. In this study, we performed a data-driving classification analysis using the whole brain connectivity measures which included the functional connectivity from two brain templates and effective connectivity measures created by the default mode network (DMN), dorsal attention network (DAN), frontal-parietal network (FPN), and silence network (SN). Effective connectivity measures were extracted using spectral Dynamic Causal Modeling (spDCM) and transformed into a vectorial feature space. Linear Support Vector Machine (linear SVM), non-linear SVM, k-Nearest Neighbor (KNN), and Logistic Regression (LR) were used as the classifiers to identify the differences between MDD patients and healthy controls. Our results showed that the highest accuracy achieved 91.67% ( < 0.0001) when using 19 effective connections and 89.36% when using 6,650 functional connections. The functional connections with high discriminative power were mainly located within or across the whole brain resting-state networks while the discriminative effective connections located in several specific regions, such as posterior cingulate cortex (PCC), ventromedial prefrontal cortex (vmPFC), dorsal cingulate cortex (dACC), and inferior parietal lobes (IPL). To further compare the discriminative power of functional connections and effective connections, a classification analysis only using the functional connections from those four networks was conducted and the highest accuracy achieved 78.33% ( < 0.0001). Our study demonstrated that the effective connectivity measures might play a more important role than functional connectivity in exploring the alterations between patients and health controls and afford a better mechanistic interpretability. Moreover, our results showed a diagnostic potential of the effective connectivity for the diagnosis of MDD patients with high accuracies allowing for earlier prevention or intervention.
重度抑郁症(MDD)是一种精神障碍,其特征是在大多数情况下至少持续两周情绪低落。由于数据的高维度、小样本、噪声和个体变异性,使用静息态功能磁共振成像(fMRI)数据诊断MDD面临许多挑战。据我们所知,尚无研究旨在通过MDD患者与健康对照之间的有效连接和功能连接测量进行分类。在本研究中,我们使用全脑连接测量进行了数据驱动的分类分析,其中包括来自两个脑模板的功能连接以及由默认模式网络(DMN)、背侧注意网络(DAN)、额顶网络(FPN)和静息网络(SN)创建的有效连接测量。使用频谱动态因果模型(spDCM)提取有效连接测量,并将其转换为矢量特征空间。使用线性支持向量机(线性SVM)、非线性SVM、k近邻(KNN)和逻辑回归(LR)作为分类器来识别MDD患者与健康对照之间的差异。我们的结果表明,使用19个有效连接时最高准确率达到91.67%(<0.0001),使用6650个功能连接时最高准确率达到89.36%。具有高判别力的功能连接主要位于全脑静息态网络内部或之间,而具有判别力的有效连接位于几个特定区域,如后扣带回皮质(PCC)、腹内侧前额叶皮质(vmPFC)、背侧扣带回皮质(dACC)和顶下小叶(IPL)。为了进一步比较功能连接和有效连接的判别力,我们仅使用来自这四个网络的功能连接进行了分类分析,最高准确率达到78.33%(<0.0001)。我们的研究表明,在探索患者与健康对照之间的改变方面,有效连接测量可能比功能连接发挥更重要的作用,并提供更好的机制解释性。此外,我们的结果显示了有效连接在诊断MDD患者方面的诊断潜力,具有高准确率,可实现早期预防或干预。