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Prospective Fall-Risk Prediction Models for Older Adults Based on Wearable Sensors

机译:基于可穿戴传感器的老年人前瞻性跌倒风险预测模型

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摘要

Wearable sensors can provide quantitative, gait-based assessments that can translate to point-of-care environments. This investigation generated elderly fall-risk predictive models based on wearable-sensor-derived gait data and prospective fall occurrence, and identified the optimal sensor type, location, and combination for single and dual-task walking. 75 individuals who reported six month prospective fall occurrence (75.2 ± 6.6 years; 47 non-fallers and 28 fallers) walked 7.62 m under single-task and dual-task conditions while wearing pressure-sensing insoles and tri-axial accelerometers at the head, pelvis, and left and right shanks. Fall-risk classification models were assessed for all sensor combinations and three model types: neural network, naïve Bayesian, and support vector machine. The best performing model used a neural network, dual-task gait data, and input parameters from head, pelvis, and left shank accelerometers (accuracy = 57%, sensitivity = 43%, and specificity = 65%). The best single-sensor model used a neural network, dual-task gait data, and pelvis accelerometer parameters (accuracy = 54%, sensitivity = 35%, and specificity = 67%). Single-task and dual-task gait assessments provided similar fall-risk model performance. Fall-risk predictive models developed for point-of-care environments should use multi-sensor dual-task gait assessment with the pelvis location considered if assessment is limited to a single sensor.
机译:可穿戴式传感器可以提供基于步态的定量评估,这些评估可以转化为现场护理环境。这项研究基于可穿戴传感器得出的步态数据和预期的跌倒事件生成了老年人跌倒风险预测模型,并确定了用于单任务和双任务步行的最佳传感器类型,位置和组合。报告有六个月预期坠落事件(75.2±6.6年; 47名非跌倒者和28名跌倒者)的75个人在单任务和双任务条件下行走7.62 m,同时头戴压力感应鞋垫和三轴加速度计,骨盆和左右小腿。针对所有传感器组合和三种模型类型评估了跌落风险分类模型:神经网络,朴素贝叶斯和支持向量机。表现最佳的模型使用神经网络,双任务步态数据以及头部,骨盆和左胫骨加速度计的输入参数(精度= 57%,灵敏度= 43%,特异性= 65%)。最好的单传感器模型使用神经网络,双任务步态数据和骨盆加速度计参数(精度= 54%,灵敏度= 35%和特异性= 67%)。单任务和双任务步态评估提供了类似的下降风险模型性能。针对现场护理环境开发的跌倒风险预测模型应使用多传感器双任务步态评估,并且如果评估仅限于单个传感器,则应考虑骨盆位置。

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