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Classification of Older Adults with/without a Fall History using Machine Learning Methods

机译:使用机器学习方法对更老成人的分类/没有秋季历史

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Falling is a serious problem in an aged society such that assessment of the risk of falls for individuals is imperative for the research and practice of falls prevention. This paper introduces an application of several machine learning methods for training a classifier which is capable of classifying individual older adults into a high risk group and a low risk group (distinguished by whether or not the members of the group have a recent history of falls). Using a 3D motion capture system, significant gait features related to falls risk are extracted. By training these features, classification hypotheses are obtained based on machine learning techniques (K Nearestneighbour, Naive Bayes, Logistic Regression, Neural Network, and Support Vector Machine). Training and test accuracies with sensitivity and specificity of each of these techniques are assessed. The feature adjustment and tuning of the machine learning algorithms are discussed. The outcome of the study will benefit the prediction and prevention of falls.
机译:堕落是一个老年社中的一个严重问题,使得对个人的堕落风险的评估对于预防下降的研究和实践是必不可少的。本文介绍了几种机器学习方法的应用,用于培训一个分类器,该分类器能够将个别老年人分类为高风险组和低风险组(包括本集团的成员是否有最近的瀑布历史) 。使用3D运动捕获系统,提取与跌倒风险相关的重要步态功能。通过培训这些特征,基于机器学习技术(K最近乎的NeiveGegbour,Naive Bayes,Logistic回归,神经网络和支持向量机)获得分类假设。评估具有敏感性的培训和测试精度和这些技术中的每种技术的特异性。讨论了机器学习算法的特征调整和调整。该研究的结果将有利于跌倒预测和预防。

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