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Deep Learning to Predict Falls in Older Adults Based on Daily-Life Trunk Accelerometry

机译:深度学习基于日常生活躯干加速度计预测老年人跌倒

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摘要

Early detection of high fall risk is an essential component of fall prevention in older adults. Wearable sensors can provide valuable insight into daily-life activities; biomechanical features extracted from such inertial data have been shown to be of added value for the assessment of fall risk. Body-worn sensors such as accelerometers can provide valuable insight into fall risk. Currently, biomechanical features derived from accelerometer data are used for the assessment of fall risk. Here, we studied whether deep learning methods from machine learning are suited to automatically derive features from raw accelerometer data that assess fall risk. We used an existing dataset of 296 older adults. We compared the performance of three deep learning model architectures (convolutional neural network (CNN), long short-term memory (LSTM) and a combination of these two (ConvLSTM)) to each other and to a baseline model with biomechanical features on the same dataset. The results show that the deep learning models in a single-task learning mode are strong in recognition of identity of the subject, but that these models only slightly outperform the baseline method on fall risk assessment. When using multi-task learning, with gender and age as auxiliary tasks, deep learning models perform better. We also found that preprocessing of the data resulted in the best performance (AUC = 0.75). We conclude that deep learning models, and in particular multi-task learning, effectively assess fall risk on the basis of wearable sensor data.
机译:早期发现高跌倒风险是老年人预防跌倒的重要组成部分。可穿戴式传感器可以提供有关日常生活活动的宝贵见解;从这种惯性数据中提取的生物力学特征已被证明对跌倒风险的评估具有附加价值。诸如加速度计之类的穿戴式传感器可以提供有关跌倒风险的宝贵见解。当前,从加速度计数据导出的生物力学特征被用于跌倒风险的评估。在这里,我们研究了机器学习的深度学习方法是否适合自动从评估跌落风险的原始加速度计数据中得出特征。我们使用了296个老年人的现有数据集。我们将三种深度学习模型架构(卷积神经网络(CNN),长期短期记忆(LSTM)以及这两者的组合(ConvLSTM))的性能相互比较,并将其与具有相同生物力学特征的基线模型进行了比较数据集。结果表明,单任务学习模式中的深度学习模型对主体身份的识别能力强,但是这些模型在跌倒风险评估方面仅略胜于基线方法。使用性别和年龄作为辅助任务的多任务学习时,深度学习模型的性能更好。我们还发现,对数据进行预处理可获得最佳性能(AUC = 0.75)。我们得出结论,深度学习模型,尤其是多任务学习,可以基于可穿戴传感器数据有效评估跌倒风险。

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