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Prediction of Elderly Falls Using the Degree of Cyclostationarity of Walk Pressure Signals

机译:使用步行压力信号的循环曲线曲线的程度预测老年瀑布

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There is an increasing interest in developing older adult fall-risk prediction models that can be used as a preventive approach to predict future risk of falling in the elderly community. This study's primary objective is to implement and compare supervised machine-learning methods to classify elderly subjects as fallers or non-fallers. Features used for building the models were extracted from the pressure signals of the innersoles of 520 elderly people who reported whether they had experienced previous falls or not. Two different types of feature sets were used as inputs to the classification models and were compared. The first feature set includes ten time-domain features, while the second set includes a single cyclostationary property, which is the degree of cyclostationarity of the average walk pressure signal. Our study showed that the use of the degree of cyclostationarity as a single feature improved the model prediction accuracy by 6.58%, compared to the use of the time-domain features. The results obtained prove that cyclostationary features are essential features for the development of classification models for identifying fallers in the elderly community.
机译:越来越兴趣发展较老的成人秋季风险预测模型,可以用作预防性方法来预测在老年社区落下的未来风险。本研究的主要目标是实施和比较监督的机器学习方法,以将老年人视为衰落或非衰落者。用于建立模型的功能是从520名老年人的内部的压力信号中提取的,举报了他们是否经历过以前的瀑布。将两种不同类型的特征集用作分类模型的输入并进行了比较。第一特征集包括十个时域特征,而第二组包括单个卷轴属性,这是平均步道压力信号的循环棘轮程度的程度。我们的研究表明,与使用时域特征的使用相比,使用作为单个特征的循环棘手程度的使用程度提高了6.58%的模型预测精度。获得的结果证明,睫状症特征是开发用于识别老年社区衰落的分类模型的基本特征。

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