慢性腰痛患者的步态模式评估:基于智能手机的方法

Herman Chan, Huiru Zheng, Haiying Wang, D. Newell
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引用次数: 3

摘要

慢性腰痛是一种常见且昂贵的疾病,并已被证明会影响步态。本文描述了在一组慢性腰痛受试者中使用智能手机测量的步态分析。采用基于互信息的最小冗余和最大相关性特征选择方法,对智能手机传感器提取的特征进行可靠性研究,以识别与腰痛相关的关键特征集。该分析使用KStar分类模型进行。结果表明,将步态特征减少到6个关键成分的可行性,同时仍然获得了非常有希望的分类准确率(92.50%)。结果还表明,在步态远程监测和远程评估中使用智能手机是可行的,这表明智能手机既是一种预后,也是一种潜在的治疗结果。此外,我们表明,使用智能手机预测年龄和性别等环境是可以实现的,这有可能提供个性化服务和与环境相关的监测和干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of gait patterns of chronic low back pain patients: A smart mobile phone based approach
Chronic low back pain is a common and costly condition and has been shown to affect gait. This paper describes the use of gait analysis as measured by a smart phone in a group of chronic low back pain subjects. Reliability of features extracted from the smart phone sensors was investigated using a mutual information based minimum redundancy and maximum relevance feature selection method to identify a key feature set related to lower back pain. This analysis was carried out using a KStar classification model. Results indicate the feasibility of reducing gait features to 6 key components while still achieving very promising classification accuracy (92.50%). The results also demonstrated that it is feasible to use a smart mobile phone in gait tele-monitoring and tele-assessment suggesting potential as both a prognostic and potential treatment outcome. In addition, we show that predicting context such as age and gender using smart mobile phones is achievable, which has potential to provide personalised services and context-related monitoring and intervention.
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