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Machine Learning Classification to Identify the Stage of Brain-Computer Interface Therapy for Stroke Rehabilitation Using Functional Connectivity

机译:机器学习分类,以识别使用功能连通性的中风康复脑电器界面治疗阶段

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摘要

Interventional therapy using brain-computer interface (BCI) technology has shown promise in facilitating motor recovery in stroke survivors; however, the impact of this form of intervention on functional networks outside of the motor network specifically is not well-understood. Here, we investigated resting-state functional connectivity (rs-FC) in stroke participants undergoing BCI therapy across stages, namely pre- and post-intervention, to identify discriminative functional changes using a machine learning classifier with the goal of categorizing participants into one of the two therapy stages. Twenty chronic stroke participants with persistent upper-extremity motor impairment received neuromodulatory training using a closed-loop neurofeedback BCI device, and rs-functional MRI (rs-fMRI) scans were collected at four time points: pre-, mid-, post-, and 1 month post-therapy. To evaluate the peak effects of this intervention, rs-FC was analyzed from two specific stages, namely pre- and post-therapy. In total, 236 seeds spanning both motor and non-motor regions of the brain were computed at each stage. A univariate feature selection was applied to reduce the number of features followed by a principal component-based data transformation used by a linear binary support vector machine (SVM) classifier to classify each participant into a therapy stage. The SVM classifier achieved a cross-validation accuracy of 92.5% using a leave-one-out method. Outside of the motor network, seeds from the fronto-parietal task control, default mode, subcortical, and visual networks emerged as important contributors to the classification. Furthermore, a higher number of functional changes were observed to be strengthening from the pre- to post-therapy stage than the ones weakening, both of which involved motor and non-motor regions of the brain. These findings may provide new evidence to support the potential clinical utility of BCI therapy as a form of stroke rehabilitation that not only benefits motor recovery but also facilitates recovery in other brain networks. Moreover, delineation of stronger and weaker changes may inform more optimal designs of BCI interventional therapy so as to facilitate strengthened and suppress weakened changes in the recovery process.
机译:使用脑电脑界面(BCI)技术的介入治疗表明了促进行程幸存者中的电机恢复;然而,这种形式的干预对电机网络之外的功能网络的影响特别是不太理解的。在这里,我们调查了在跨阶段接受BCI治疗的中风参与者的休息状态连接(RS-FC),即使用机器学习分类器识别使用机器学习分类器的判断功能变化,其目标是将参与者分类为其中一个两个治疗阶段。二十个慢性中风参与者具有持久的上肢电机损伤,使用闭环神经融合BCI器件接受了神经调节训练,并且在四个时间点收集了RS-Functional MRI(RS-FMRI)扫描:预先,中,后,和治疗后1个月。为了评估该干预的峰值效应,从两种特定阶段分析RS-FC,即预期和治疗后。在每个阶段计算总共236种跨越大脑电动机和非运动区域的种子。应用单变量特征选择来减少由线性二进制支持向量机(SVM)分类器使用的基于基于组件的数据变换的特征数,以将每个参与者分类为治疗阶段。 SVM分类器使用休假方法实现了92.5%的交叉验证精度。在电机网络之外,来自前景任务控制的种子,默认模式,子质度和视觉网络成为分类的重要贡献者。此外,观察到较高数量的功能性变化,以加强从预治疗前阶段的弱化阶段,其中涉及大脑的电动机和非运动区域。这些发现可以提供新的证据,以支持BCI治疗的潜在临床效用,作为中风康复的形式,不仅益处电机恢复,还可以促进在其他脑网络中的恢复。此外,更强和较弱的变化划定了更强的变化可以为BCI介入治疗提供更优化的设计,以便于加强和抑制恢复过程的弱化变化。

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