Worasak Rueangsirarak, Chayuti Mekurai, Surapong Uttama, R. Chaisricharoen, Hubert P. H. Shum, Kitchana Kaewkaen
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引用次数: 3
摘要
本文研究了使用一种名为Wii Fit Balance Board®的低成本游戏设备来测量老年人的静态平衡以诊断平衡障碍的可行性,这是由中风患者的肌肉无力引起的。60名参与者被邀请参加包括临床测试在内的风险评估。对参与者进行了四种生物反馈测试模式的测试。选择两种机器学习算法进行10倍交叉验证场景的实验。结果表明,在4种生物反馈测试模式中,人工神经元网络在3种模式下的评价性能最佳,分别为86.67%、80%和80%。这表明静态平衡测量与Wii Fit平衡板®的应用可以作为一种工具来取代高成本的力板系统。
Biofeedback assessment for older people with balance impairment using a low-cost balance board
This paper studies the feasibility of using a low-cost game device called Wii Fit Balance Board® to measure the static balance of older people for diagnosing a balance impairment, which is caused by muscle weakness in stroke patients. Sixty participants were invited to attend the risk assessment that included a clinical test. Four biofeedback testing patterns were tested with the participants. Two machine learning algorithms were selected to experiment using 10-fold cross validation scenario. The results show that Artificial Neuron Network has the best evaluation performance of 86.67%, 80%, and 80% in three out of four biofeedback testing patterns. This demonstrates that the application of static balance measurement together with Wii Fit Balance Board® could be implemented as a tool to replace high-cost force plate systems.