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基于静息态功能连接预测中风后体感功能:一项可行性研究。

Predicting Post-Stroke Somatosensory Function from Resting-State Functional Connectivity: A Feasibility Study.

作者信息

Liang Xiaoyun, Koh Chia-Lin, Yeh Chun-Hung, Goodin Peter, Lamp Gemma, Connelly Alan, Carey Leeanne M

机构信息

Neurorehabilitation and Recovery, Florey Institute of Neuroscience and Mental Health, Melbourne, VIC 3084, Australia.

Victorian Infant Brain Studies (VIBeS) Group, Murdoch Children's Research Institute, Melbourne, VIC 3052, Australia.

出版信息

Brain Sci. 2021 Oct 22;11(11):1388. doi: 10.3390/brainsci11111388.

Abstract

Accumulating evidence shows that brain functional deficits may be impacted by damage to remote brain regions. Recent advances in neuroimaging suggest that stroke impairment can be better predicted based on disruption to brain networks rather than from lesion locations or volumes only. Our aim was to explore the feasibility of predicting post-stroke somatosensory function from brain functional connectivity through the application of machine learning techniques. Somatosensory impairment was measured using the Tactile Discrimination Test. Functional connectivity was employed to model the global brain function. Behavioral measures and MRI were collected at the same timepoint. Two machine learning models (linear regression and support vector regression) were chosen to predict somatosensory impairment from disrupted networks. Along with two feature pools (i.e., low-order and high-order functional connectivity, or low-order functional connectivity only) engineered, four predictive models were built and evaluated in the present study. Forty-three chronic stroke survivors participated this study. Results showed that the regression model employing both low-order and high-order functional connectivity can predict outcomes based on correlation coefficient of = 0.54 ( = 0.0002). A machine learning predictive approach, involving high- and low-order modelling, is feasible for the prediction of residual somatosensory function in stroke patients using functional brain networks.

摘要

越来越多的证据表明,大脑功能缺陷可能会受到远处脑区损伤的影响。神经影像学的最新进展表明,基于脑网络的破坏而非仅根据病变位置或体积,能够更好地预测中风损伤。我们的目的是通过应用机器学习技术,探索从脑功能连接预测中风后体感功能的可行性。使用触觉辨别测试来测量体感损伤。采用功能连接来模拟全脑功能。在同一时间点收集行为测量数据和磁共振成像(MRI)。选择两种机器学习模型(线性回归和支持向量回归),从受损网络预测体感损伤。本研究构建并评估了四个预测模型,同时构建了两个特征库(即低阶和高阶功能连接,或仅低阶功能连接)。43名慢性中风幸存者参与了本研究。结果表明,采用低阶和高阶功能连接的回归模型能够以相关系数R = 0.54(p = 0.0002)预测结果。一种涉及高阶和低阶建模的机器学习预测方法,对于使用功能性脑网络预测中风患者的残余体感功能是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0b2e/8615819/5782aa308e37/brainsci-11-01388-g001.jpg

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