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Elderly Fall Risk Prediction with Plantar Center of Force Using ConvLSTM Algorithm

机译:基于ConvLSTM算法的足底力中心老年人跌倒风险预测

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Elderly people are vulnerable to falls due to the decline of balance ability, resulting in physical injury, so early detection is essential for fall prevention and reduction in the elderly. Biomechanical sensor data can provide valuable insight into fall risk. However, extracting features from raw time series is a tough task for traditional machine learning methods. In this paper, an end-to-end trainable model named ConvLSTM was proposed to assess fall risk, which works directly on raw plantar force data. 85 elderly people (46 High-risk and 39 low-risk) were recruited for this study. A Footscan® system was used to collect force data of the whole plantar area when each subject walked at normal and steady speed. Firstly, we use t-test to verify the differences between the two risk groups. And then we compared the performance of ConvLSTM model to a baseline model called DTW-KNN. Experimental results show that the classification sensitivity, specificity and accuracy of the ConvLSTM model are optimally 93%, 94% and 94% respectively, which outperforms the DTW-KNN model. The successful application of this model can accurately assess the risk of falls in the elderly, thus providing an early warning basis for fall intervention.
机译:老年人由于平衡能力下降而容易跌倒,从而导致人身伤害,因此,早期发现对于防止和减少老人跌倒至关重要。生物力学传感器数据可以提供有关跌倒风险的宝贵见解。但是,对于传统的机器学习方法而言,从原始时间序列中提取特征是一项艰巨的任务。在本文中,提出了一种名为ConvLSTM的端到端可训练模型来评估跌倒风险,该模型直接作用于原始足底力数据。这项研究招募了85位老年人(46位高危人群和39位低危人群)。当每个受试者以正常和稳定的速度行走时,使用Footscan®系统收集整个足底区域的力数据。首先,我们使用t检验来验证两个风险组之间的差异。然后,我们将ConvLSTM模型的性能与称为DTW-KNN的基准模型进行了比较。实验结果表明,ConvLSTM模型的分类灵敏度,特异性和准确性分别达到93%,94%和94%最佳,优于DTW-KNN模型。该模型的成功应用可以准确评估老年人跌倒的风险,从而为跌倒干预提供预警依据。

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