利用鞋垫传感器和机器学习对多种交互步态异常进行分类

Alexander Turner, David Scott, S. Hayes
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引用次数: 2

摘要

在这项工作中,我们研究了无线鞋内压力传感系统与一种被称为长短期记忆网络(LSTMs)的机器学习相结合的有效性,以分类多种相互作用的步态扰动。人工诱导的步态扰动包括膝关节伸展受限和足部压力中心(COP)下的改变。主要目的是评估通过使用技术来诊断步态异常的能力,而不需要参加步态实验室或拜访临床医疗保健专业人员。最终,这样的系统可以用于自主生成治疗指导,并为医疗保健专业人员提供有关患者步态的准确最新信息。结果表明,LSTMs能够利用鞋内压力数据对复杂的交互步态扰动进行分类。测试时,12个扰动条件中有11个总体正确分类,58.8%的数据实例正确分类(8.3%为随机分类)。这项工作表明,一种自动化的低成本、无创步态诊断系统可以用最小的传感器来识别个体的相互作用步态异常,并有进一步的潜力在医疗保健环境中使用。
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The Classification of Multiple Interacting Gait Abnormalities Using Insole Sensors and Machine Learning
In this work we investigate the effectiveness of a wireless in-shoe pressure sensing system used in combination with a type of machine learning referred to as long term short term memory networks (LSTMs) to classify multiple interacting gait perturbations. Artificially induced gait perturbations consisted of restricted knee extension and altered under foot centre of pressure (COP). The primary aim was to assess the capacity to diagnose gait abnormalities without the need to attend a gait laboratory or visit a clinical healthcare professional, through the use of technology. Ultimately, such a system could be used to autonomously generate therapeutic guidance and provide healthcare professionals with accurate up to date information about a patients gait. The results show that LSTMs are capable of classifying complex interacting gait perturbations using in-shoe pressure data. When testing, 11 of 12 perturbation conditions were correctly classified overall and 58.8% of all data instances were correctly classified (8.3% is random classification). This work illustrates that an automated low cost, non-invasive gait diagnosis system with minimal sensors can be used to identify interacting gait abnormalities in individuals and has further potential to be used in a healthcare setting.
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