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Quantitative Identification of Major Depression Based on Resting-State Dynamic Functional Connectivity: A Machine Learning Approach

机译:基于休息状态动态功能连通性的主要抑郁定量识别:机器学习方法

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Introduction Developing a machine learning-based approach which could provide quantitative identification of major depressive disorder (MDD) is essential for the diagnosis and intervention of this disorder. However, the performances of traditional algorithms using static functional connectivity (SFC) measures were unsatisfactory. In the present work, we exploit the hidden information embedded in dynamic functional connectivity (DFC) and developed an accurate and objective image-based diagnosis system for MDD. Methods MRI images were collected from 99 participants including 56 healthy controls and 43 MDD patients. DFC was calculated using a sliding-window algorithm. A non-linear support vector machine (SVM) approach was then used with the DFC matrices as features to distinguish MDD patients from healthy controls. The spatiotemporal characteristics of the most discriminative features were then investigated. Results The area under the curve (AUC) of the SVM classifier with DFC measures reached 0.9913, while this value is only 0.8685 for the algorithm using SFC measures. Spatially, the most discriminative 28 connections distributed in the visual network (VN), somatomotor network (SMN), dorsal attention network (DAN), ventral attention network (VAN), limbic network (LN), frontoparietal network (FPN), and default mode network (DMN), etc. Notably, a large portion of these connections were associated with the FPN, DMN, and VN. Temporally, the most discriminative connections transited from the cortex to deeper regions. Conclusion The results clearly suggested that DFC is superior to SFC and provide a reliable quantitative identification method for MDD. Our findings may furnish a better understanding of the neural mechanisms of MDD as well as improve accurate diagnosis and early intervention of this disorder.
机译:简介开发基于机器学习的方法,可以提供主要抑郁症(MDD)的定量鉴定(MDD)对于该疾病的诊断和干预至关重要。然而,使用静态功能连接(SFC)测量的传统算法的性能令人不安。在目前的工作中,我们利用了动态功能连接(DFC)中嵌入的隐藏信息,并为MDD开发了一种准确的基于图像的诊断系统。方法从99名参与者中收集MRI图像,包括56例健康对照和43名MDD患者。使用滑动窗口算法计算DFC。然后将非线性支持向量机(SVM)方法与DFC矩阵一起使用,作为区分MDD患者免受健康对照的特征。然后研究了最多辨别特征的时空特征。结果SVM分类器的曲线(AUC)下的区域达到0.9913,而使用SFC措施的算法仅为0.8685。空间,分布在视觉网络(VN),Somatomotor网络(SMN),背侧注意网络(DAN),腹部注意网络(VAN),肢体网络(LN),前迁移网络(FPN)中以及默认情况下的最多判别28个连接MODE网络(DMN)等。值得注意的是,这些连接的大部分与FPN,DMN和VN相关联。在暂时,从皮质转变为更深的区域的最辨别性连接。结论结果清楚地表明DFC优于SFC,为MDD提供可靠的定量识别方法。我们的调查结果可能会更好地理解MDD的神经机制,以及改善这种疾病的准确诊断和早期干预。

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