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Machine Learning-Based Prediction of Changes in Behavioral Outcomes Using Functional Connectivity and Clinical Measures in Brain-Computer Interface Stroke Rehabilitation

机译:使用功能连接和脑-计算机界面卒中康复的临床措施,基于机器学习的行为结果变化预测

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The goal of this work is to evaluate if changes in brain connectivity can predict behavioral changes among subjects who have suffered stroke and have completed brain-computer interface (BCI) interventional therapy. A total of 23 stroke subjects, with persistent upper-extremity motor deficits, received the stroke rehabilitation therapy using a closed-loop neurofeedback BCI device. Over the course of the entire interventional therapy, resting-state fMRI were collected at two time points: prior to start and immediately upon completion of therapy. Behavioral assessments were administered at each time point via neuropsycho-logical testing to collect measures on Action Research Arm Test, Nine-Hole Peg Test, Barthel Index and Stroke Impact Scale. Resting-state functional connectivity changes in the motor network were computed from pre- to post-interventional therapy and were combined with clinical data corresponding to each subject to estimate the change in behavioral performance between the two time-points using a machine learning based predictive model. Inter-hemispheric correlations emerged as stronger predictors of changes across multiple behavioral measures in comparison to intra-hemispheric links. Additionally, age predicted behavioral changes better than other clinical variables such as gender, pre-stroke handedness, etc. Machine learning model serves as a valuable tool in predicting BCI therapy-induced behavioral changes on the basis of functional connectivity and clinical data.
机译:这项工作的目的是评估大脑连通性的变化是否可以预测患有中风并完成脑计算机接口(BCI)介入治疗的受试者的行为变化。共有23名患有持续性上肢运动缺陷的中风患者使用闭环神经反馈BCI设备接受了中风康复治疗。在整个介入治疗的过程中,在两个时间点收集静息功能磁共振成像:开始治疗前和治疗完成后立即进行。通过神经心理学测试在每个时间点进行行为评估,以收集关于动作研究手臂测验,九孔钉测验,Barthel指数和中风影响量表的量度。从干预前到干预后计算运动网络中的静止状态功能连接性变化,并将其与对应于每个受试者的临床数据相结合,以使用基于机器学习的预测模型估算两个时间点之间的行为表现变化。与半球内部的联系相比,半球之间的相关性作为更强的跨多种行为指标变化的预测指标而出现。此外,年龄预测的行为变化要好于其他临床变量,例如性别,中风前的手感等。机器学习模型在功能连接和临床数据的基础上,可作为预测BCI治疗引起的行为变化的有价值的工具。

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