Aziz Omar, Park Edward J, Mori Greg, Robinovitch Stephen N
School of Engineering Science, Simon Fraser University, Burnaby, BC, V5A 1S6 Canada.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:5837-40. doi: 10.1109/EMBC.2012.6347321.
Falls are the number one cause of injury in older adults. An individual's risk for falls depends on his or her frequency of imbalance episodes, and ability to recover balance following these events. However, there is little direct evidence on the frequency and circumstances of imbalance episodes (near falls) in older adults. Currently, there is rapid growth in the development of wearable fall monitoring systems based on inertial sensors. The utility of these systems would be enhanced by the ability to detect near-falls. In the current study, we conducted laboratory experiments to determine how the number and location of wearable inertial sensors influences the accuracy of a machine learning algorithm in distinguishing near-falls from activities of daily living (ADLs).
跌倒是老年人受伤的首要原因。个体跌倒的风险取决于其失衡发作的频率,以及这些事件发生后恢复平衡的能力。然而,关于老年人失衡发作(险些跌倒)的频率和情况,几乎没有直接证据。目前,基于惯性传感器的可穿戴式跌倒监测系统发展迅速。若能检测到险些跌倒,这些系统的效用将得到提升。在本研究中,我们进行了实验室实验,以确定可穿戴惯性传感器的数量和位置如何影响机器学习算法区分险些跌倒与日常生活活动(ADL)的准确性。