IEEE J Biomed Health Inform. 2021 Jun;25(6):1975-1984. doi: 10.1109/JBHI.2020.3041035. Epub 2021 Jun 3.
Falls are a major health problem with one in three people over the age of 65 falling each year, oftentimes causing hip fractures, disability, reduced mobility, hospitalization and death. A major limitation in fall detection algorithm development is an absence of real-world falls data. Fall detection algorithms are typically trained on simulated fall data that contain a well-balanced number of examples of falls and activities of daily living. However, real-world falls occur infrequently, making them difficult to capture and causing severe data imbalance. People with multiple sclerosis (MS) fall frequently, and their risk of falling increases with disease progression. Because of their high fall incidence, people with MS provide an ideal model for studying falls. This paper describes the development of a context-aware fall detection system based on inertial sensors and time of flight sensors that is robust to imbalance, which is trained and evaluated on real-world falls in people with MS. The algorithm uses an auto-encoder that detects fall candidates using reconstruction error of accelerometer signals followed by a hyper-ensemble of balanced random forests trained using both acceleration and movement features. On a clinical dataset obtained from 25 people with MS monitored over eight weeks during free-living conditions, 54 falls were observed and our system achieved a sensitivity of 92.14%, and false-positive rate of 0.65 false alarms per day.
跌倒对健康危害极大,65 岁以上人群中每 3 人就有 1 人每年跌倒,常导致髋部骨折、残疾、活动能力下降、住院和死亡。在跌倒检测算法的开发中,一个主要的限制是缺乏真实世界的跌倒数据。跌倒检测算法通常在模拟跌倒数据上进行训练,这些数据包含了均衡数量的跌倒和日常生活活动的例子。然而,真实世界的跌倒发生频率较低,难以捕捉,导致数据严重失衡。多发性硬化症(MS)患者经常跌倒,而且随着疾病的进展,他们跌倒的风险会增加。由于他们的高跌倒发生率,MS 患者为研究跌倒提供了一个理想的模型。本文描述了一种基于惯性传感器和飞行时间传感器的上下文感知跌倒检测系统的开发,该系统对不平衡具有鲁棒性,它是在 MS 患者的真实世界跌倒数据上进行训练和评估的。该算法使用自动编码器,通过加速度计信号的重建误差来检测跌倒候选者,然后使用加速和运动特征训练的平衡随机森林超集合进行检测。在一个从 25 名 MS 患者在自由生活条件下监测 8 周获得的临床数据集上,观察到 54 次跌倒,我们的系统实现了 92.14%的敏感性和 0.65 次假警报/天的假阳性率。