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全脑动态和静态功能连接指纹图谱在基于机器学习的重度抑郁症分类中的表现

Performances of whole-brain dynamic and static functional connectivity fingerprinting in machine learning-based classification of major depressive disorder.

作者信息

Niu Heng, Li Weirong, Wang Guiquan, Hu Qiong, Hao Rui, Li Tianliang, Zhang Fan, Cheng Tao

机构信息

Department of MRI, Shanxi Cardiovascular Hospital, Taiyuan, China.

Department of Neurology, Shanxi Cardiovascular Hospital, Taiyuan, China.

出版信息

Front Psychiatry. 2022 Jul 26;13:973921. doi: 10.3389/fpsyt.2022.973921. eCollection 2022.

Abstract

BACKGROUND

Alterations in static and dynamic functional connectivity during resting state have been widely reported in major depressive disorder (MDD). The objective of this study was to compare the performances of whole-brain dynamic and static functional connectivity combined with machine learning approach in differentiating MDD patients from healthy controls at the individual subject level. Given the dynamic nature of brain activity, we hypothesized that dynamic connectivity would outperform static connectivity in the classification.

METHODS

Seventy-one MDD patients and seventy-one well-matched healthy controls underwent resting-state functional magnetic resonance imaging scans. Whole-brain dynamic and static functional connectivity patterns were calculated and utilized as classification features. Linear kernel support vector machine was employed to design the classifier and a leave-one-out cross-validation strategy was used to assess classifier performance.

RESULTS

Experimental results of dynamic functional connectivity-based classification showed that MDD patients could be discriminated from healthy controls with an excellent accuracy of 100% irrespective of whether or not global signal regression (GSR) was performed (permutation test with < 0.0002). Brain regions with the most discriminating dynamic connectivity were mainly and reliably located within the default mode network, cerebellum, and subcortical network. In contrast, the static functional connectivity-based classifiers exhibited unstable classification performances, i.e., a low accuracy of 38.0% without GSR ( = 0.9926) while a high accuracy of 96.5% with GSR ( < 0.0002); moreover, there was a considerable variability in the distribution of brain regions with static connectivity most informative for classification.

CONCLUSION

These findings suggest the superiority of dynamic functional connectivity in machine learning-based classification of depression, which may be helpful for a better understanding of the neural basis of MDD as well as for the development of effective computer-aided diagnosis tools in clinical settings.

摘要

背景

在重度抑郁症(MDD)中,静息状态下的静态和动态功能连接改变已被广泛报道。本研究的目的是在个体水平上比较全脑动态和静态功能连接结合机器学习方法区分MDD患者与健康对照的性能。鉴于大脑活动的动态性质,我们假设动态连接在分类方面将优于静态连接。

方法

71例MDD患者和71例匹配良好的健康对照接受静息态功能磁共振成像扫描。计算全脑动态和静态功能连接模式并将其用作分类特征。采用线性核支持向量机设计分类器,并使用留一法交叉验证策略评估分类器性能。

结果

基于动态功能连接的分类实验结果表明,无论是否进行全局信号回归(GSR),MDD患者均可与健康对照区分开来,准确率高达100%(置换检验P<0.0002)。具有最显著区分性动态连接的脑区主要且可靠地位于默认模式网络、小脑和皮层下网络内。相比之下,基于静态功能连接的分类器表现出不稳定的分类性能,即未进行GSR时准确率低至38.0%(P = 0.9926),而进行GSR时准确率高达96.5%(P<0.0002);此外,对分类最具信息量的具有静态连接的脑区分布存在相当大的变异性。

结论

这些发现表明动态功能连接在基于机器学习的抑郁症分类中具有优势,这可能有助于更好地理解MDD的神经基础以及开发临床环境中有效的计算机辅助诊断工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7545/9360427/d69b72444cef/fpsyt-13-973921-g001.jpg

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