脑卒中康复训练定量评价技术的探索性研究

Min Hun Lee, D. Siewiorek, A. Smailagic, A. Bernardino, S. Badia
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引用次数: 12

摘要

监测和评估康复练习的技术辅助系统有机会通过自动收集患者的定量表现数据来加强康复实践。然而,即使使用复杂的算法(如神经网络),由于患者的身体状况不同,开发这样的系统仍然具有挑战性。具有复杂算法的系统只能是一个无法对其预测提供解释的黑箱系统。为了解决这些挑战,本文提出了一种混合模型,该模型将机器学习(ML)模型与基于规则的(RB)模型相结合,作为一种可解释的人工智能(AI)技术,用于脑卒中康复训练的定量评估。为了进行评估,我们通过对治疗师的访谈收集了治疗师关于评估的知识,作为15条规则,并使用Kinect传感器收集了15名中风后和11名健康受试者的三次上肢中风康复训练数据集。实验结果表明,混合模型可以达到与使用神经网络的ML模型相当的性能,并且可以对使用RB模型的模型预测提供解释。结果表明,混合模型作为一种可解释的人工智能技术的潜力,可以支持模型的解释,并使用用户特定的个性化规则对模型进行微调。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Exploratory Study on Techniques for Quantitative Assessment of Stroke Rehabilitation Exercises
Technology-assisted systems to monitor and assess rehabilitation exercises have an opportunity of enhancing rehabilitation practices by automatically collecting patient's quantitative performance data. However, even if a complex algorithm (e.g. Neural Network) is applied, it is still challenging to develop such a system due to patients with various physical conditions. The system with a complex algorithm is limited to be a black-box system that cannot provide explanations on its predictions. To address these challenges, this paper presents a hybrid model that integrates a machine learning (ML) model with a rule-based (RB) model as an explainable artificial intelligence (AI) technique for quantitative assessment of stroke rehabilitation exercises. For evaluation, we collected therapist's knowledge on assessment as 15 rules from interviews with therapists and the dataset of three upper-limb stroke rehabilitation exercises from 15 post-stroke and 11 healthy subjects using a Kinect sensor. Experimental results show that a hybrid model can achieve comparable performance with a ML model using Neural Network, but also provide explanations on a model prediction with a RB model. The results indicate the potential of a hybrid model as an explainable AI technique to support the interpretation of a model and fine-tune a model with user-specific rules for personalization.
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