Aziz Omar, Klenk Jochen, Schwickert Lars, Chiari Lorenzo, Becker Clemens, Park Edward J, Mori Greg, Robinovitch Stephen N
Injury Prevention and Mobility Laboratory, Simon Fraser University, Burnaby, British Columbia, Canada.
School of Engineering Science, Simon Fraser University, Burnaby, British Columbia, Canada.
PLoS One. 2017 Jul 5;12(7):e0180318. doi: 10.1371/journal.pone.0180318. eCollection 2017.
Falls are a major cause of injuries and deaths in older adults. Even when no injury occurs, about half of all older adults who fall are unable to get up without assistance. The extended period of lying on the floor often leads to medical complications, including muscle damage, dehydration, anxiety and fear of falling. Wearable sensor systems incorporating accelerometers and/or gyroscopes are designed to prevent long lies by automatically detecting and alerting care providers to the occurrence of a fall. Research groups have reported up to 100% accuracy in detecting falls in experimental settings. However, there is a lack of studies examining accuracy in the real-world setting. In this study, we examined the accuracy of a fall detection system based on real-world fall and non-fall data sets. Five young adults and 19 older adults went about their daily activities while wearing tri-axial accelerometers. Older adults experienced 10 unanticipated falls during the data collection. Approximately 400 hours of activities of daily living were recorded. We employed a machine learning algorithm, Support Vector Machine (SVM) classifier, to identify falls and non-fall events. We found that our system was able to detect 8 out of the 10 falls in older adults using signals from a single accelerometer (waist or sternum). Furthermore, our system did not report any false alarm during approximately 28.5 hours of recorded data from young adults. However, with older adults, the false positive rate among individuals ranged from 0 to 0.3 false alarms per hour. While our system showed higher fall detection and substantially lower false positive rate than the existing fall detection systems, there is a need for continuous efforts to collect real-world data within the target population to perform fall validation studies for fall detection systems on bigger real-world fall and non-fall datasets.
跌倒是老年人受伤和死亡的主要原因。即使没有受伤,约一半跌倒的老年人在无人协助的情况下也无法自行起身。长时间躺在地上往往会引发医疗并发症,包括肌肉损伤、脱水、焦虑以及对跌倒的恐惧。集成了加速度计和/或陀螺仪的可穿戴传感器系统旨在通过自动检测跌倒事件并向护理人员发出警报,以防止长时间躺卧。研究团队报告称,在实验环境中检测跌倒的准确率高达100%。然而,缺乏在现实环境中检验准确率的研究。在本研究中,我们基于现实世界中的跌倒和非跌倒数据集,检验了一种跌倒检测系统的准确率。五名年轻人和19名老年人佩戴三轴加速度计进行日常活动。在数据收集期间,老年人经历了10次意外跌倒。记录了大约400小时的日常生活活动。我们采用机器学习算法——支持向量机(SVM)分类器,来识别跌倒和非跌倒事件。我们发现,我们的系统能够利用来自单个加速度计(腰部或胸骨处)的信号,检测出10次跌倒中的8次。此外,在来自年轻人的大约28.5小时的记录数据中,我们的系统未报告任何误报。然而,对于老年人,个体之间的误报率为每小时0至0.3次误报。虽然我们的系统显示出比现有跌倒检测系统更高的跌倒检测率和更低的误报率,但仍需要持续努力,在目标人群中收集现实世界数据,以便在更大的现实世界跌倒和非跌倒数据集上对跌倒检测系统进行跌倒验证研究。