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Machine Learning-based Fall Characteristics Monitoring System for Strategic Plan of Falls Prevention

机译:基于机器学习的秋季预防战略计划的秋季特色监测系统

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The occurrence of fall increases with age and level of physical frailty. Due to the fact that falls are unexpected and inevitable events, the fall characteristics recording to collect the related circumstance and characteristics of occurred fall events are important for strategic plan of falls prevention. However, typical clinical recording approaches suffers issues in objective and continuous assessment. In this study, a fall characteristic monitoring system is proposed to support the clinical professionals to assess the causes of fall events for fall prevention strategies, which consists of high accuracy fall event detection algorithm and fall direction identification. Eight males are recruited in this experiment and asked to perform the seven types of fall and six types of ADL. A waist-based tri-axial accelerometer is used to measure motion acceleration with 128 Hz sampling rate. The sensitivity, specificity, precision, negative predictive value, and accuracy using the hierarchical fall event detection algorithm are 99.83%, 98.44%, 98.67%, 98.44, and 99.19%, respectively. Furthermore, the overall average performances of the sensitivity, precision, and accuracy using the fall direction identification are 98.52%, 97.49%, and 97.34%, respectively, the results demonstrated that the proposed approach is fulfilled the requirements of fall characteristics monitoring system.
机译:随着年龄和身体体验的年龄和水平,跌倒的发生。由于落下是意想不到的,不可避免的事件,秋季特征记录收集相关情况和发生的秋季事件的特点对于预防终止的战略计划很重要。然而,典型的临床记录方法遭受客观和不断评估的问题。在这项研究中,提出了一个秋季特征监测系统,以支持临床专业人员,以评估秋季预防策略的秋季事件的原因,这包括高精度的下降事件检测算法和下降方向识别。在这个实验中招募了八个男性,并要求执行七种类型的秋季和六种类型的ADL。基于腰部的三轴加速度计用于测量具有128 Hz采样率的运动加速度。使用分层秋季事件检测算法的灵敏度,特异性,精度,负预测值和准确性分别为99.83%,98.44%,98.67%,98.44和99.19%。此外,使用秋季方向鉴定的敏感性,精度和精度的总体平均性能分别为98.52%,97.49%和97.34%,结果表明,该方法符合秋季特色监测系统的要求。

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