Classifying Residual Stroke Severity Using Robotics-Assisted Stroke Rehabilitation: Machine Learning Approach.

Russell Jeter, Raymond Greenfield, Stephen N Housley, Igor Belykh
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Abstract

Background: Stroke therapy is essential to reduce impairments and improve motor movements by engaging autogenous neuroplasticity. Traditionally, stroke rehabilitation occurs in inpatient and outpatient rehabilitation facilities. However, recent literature increasingly explores moving the recovery process into the home and integrating technology-based interventions. This study advances this goal by promoting in-home, autonomous recovery for patients who experienced a stroke through robotics-assisted rehabilitation and classifying stroke residual severity using machine learning methods.

Objective: Our main objective is to use kinematics data collected during in-home, self-guided therapy sessions to develop supervised machine learning methods, to address a clinician's autonomous classification of stroke residual severity-labeled data toward improving in-home, robotics-assisted stroke rehabilitation.

Methods: In total, 33 patients who experienced a stroke participated in in-home therapy sessions using Motus Nova robotics rehabilitation technology to capture upper and lower body motion. During each therapy session, the Motus Hand and Motus Foot devices collected movement data, assistance data, and activity-specific data. We then synthesized, processed, and summarized these data. Next, the therapy session data were paired with clinician-informed, discrete stroke residual severity labels: "no range of motion (ROM)," "low ROM," and "high ROM." Afterward, an 80%:20% split was performed to divide the dataset into a training set and a holdout test set. We used 4 machine learning algorithms to classify stroke residual severity: light gradient boosting (LGB), extra trees classifier, deep feed-forward neural network, and classical logistic regression. We selected models based on 10-fold cross-validation and measured their performance on a holdout test dataset using F1-score to identify which model maximizes stroke residual severity classification accuracy.

Results: We demonstrated that the LGB method provides the most reliable autonomous detection of stroke severity. The trained model is a consensus model that consists of 139 decision trees with up to 115 leaves each. This LGB model boasts a 96.70% F1-score compared to logistic regression (55.82%), extra trees classifier (94.81%), and deep feed-forward neural network (70.11%).

Conclusions: We showed how objectively measured rehabilitation training paired with machine learning methods can be used to identify the residual stroke severity class, with efforts to enhance in-home self-guided, individualized stroke rehabilitation. The model we trained relies only on session summary statistics, meaning it can potentially be integrated into similar settings for real-time classification, such as outpatient rehabilitation facilities.

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利用机器人辅助脑卒中康复对残余脑卒中严重程度进行分类:机器学习方法。
背景:脑卒中治疗对于通过调动自体神经可塑性来减少运动障碍和改善运动能力至关重要。传统上,脑卒中康复需要在住院和门诊康复设施中进行。然而,最近有越来越多的文献探讨将康复过程搬到家中,并整合基于技术的干预措施。本研究通过机器人辅助康复以及使用机器学习方法对中风残余严重程度进行分类,促进中风患者在家自主康复,从而推进这一目标的实现:我们的主要目标是利用在居家自我指导治疗过程中收集的运动学数据开发有监督的机器学习方法,解决临床医生对中风残余严重程度标记数据进行自主分类的问题,从而改善居家机器人辅助中风康复:共有 33 名中风患者参加了居家治疗课程,他们使用 Motus Nova 机器人康复技术来捕捉上半身和下半身的运动。在每次治疗过程中,Motus 手部和脚部设备都会收集运动数据、辅助数据和特定活动数据。然后,我们对这些数据进行综合、处理和总结。接下来,我们将治疗过程数据与临床医生提供的离散中风残余严重程度标签进行配对:"无活动范围 (ROM)"、"低活动范围 "和 "高活动范围"。然后,按 80%:20% 的比例将数据集分为训练集和保留测试集。我们使用了四种机器学习算法对中风残余严重程度进行分类:轻梯度提升(LGB)、额外树分类器、深度前馈神经网络和经典逻辑回归。我们在 10 倍交叉验证的基础上选择模型,并使用 F1 分数衡量它们在保留测试数据集上的性能,以确定哪个模型能最大限度地提高中风残余严重程度分类的准确性:结果:我们证明 LGB 方法能提供最可靠的中风严重程度自主检测。训练出的模型是一个共识模型,由 139 棵决策树组成,每棵决策树最多有 115 个树叶。与逻辑回归(55.82%)、额外树分类器(94.81%)和深度前馈神经网络(70.11%)相比,LGB 模型的 F1 分数高达 96.70%:我们展示了如何将客观测量的康复训练与机器学习方法相结合,用于识别残余中风严重程度等级,从而提高居家自我指导的个性化中风康复水平。我们训练的模型仅依赖于会话摘要统计,这意味着它有可能被整合到类似的环境中进行实时分类,如门诊康复设施。
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