Papadopoulos Amy, Vivaldi Nicolas, Crump Cindy, Silvers Christine Tsien
AFrame Digital, Inc., 1889 Preston White Dr., Suite 101, Reston, VA 20191 USA.
Curr Aging Sci. 2015;8(3):266-75. doi: 10.2174/1874609808666150416121011.
There is a significant body of literature demonstrating that accelerometers placed at various locations on the body can provide the data necessary to recognize walking. Most of the literature, however, either does not consider accelerometers placed at the wrist, or suggests that the wrist is not the ideal location. The wrist, however, is probably the most socially-acceptable location for a monitoring device. This study evaluates the possibility of using wrist accelerometers to recognize walking in the elderly during everyday life to evaluate the amount of time spent walking and, moreover, potentially recognize changes in stability that might lead to falls. Thirty elderly individuals aged 65 years and older were asked to wear a wrist accelerometer for four hours each while simultaneously being video recorded as they went about their normal daily activities. Accelerometer data were then analyzed using both frequency- and time-domain analyses. Particular attention was given to methods capable of being calculated on the wrist device so that future work will not require streaming large amounts of data from the device to the central server. Frequency based analysis to characterize walking in the test set yielded results of 98% area under the receiver operating characteristic curve (AUC). Using a time-series algorithm limited to features calculable on the wrist device, moreover, achieved an AUC of 90%. A small, socially-acceptable, wrist-based device, therefore, can successfully be used to differentiate walking from other activities of daily living in older adults. These findings may enable improved gait monitoring and efforts in falls prevention.
有大量文献表明,放置在身体不同部位的加速度计能够提供识别行走所需的数据。然而,大多数文献要么没有考虑放置在手腕处的加速度计,要么认为手腕不是理想的位置。然而,手腕可能是监测设备在社交方面最容易被接受的位置。本研究评估了在日常生活中使用手腕加速度计识别老年人行走情况的可能性,以评估行走时间,并进一步潜在地识别可能导致跌倒的稳定性变化。30名65岁及以上的老年人被要求在进行日常活动时,每次佩戴手腕加速度计4小时,同时进行视频记录。然后使用频域和时域分析对手腕加速度计数据进行分析。特别关注能够在手腕设备上计算的方法,以便未来的工作无需将大量数据从设备传输到中央服务器。基于频率的分析用于表征测试集中的行走情况,在受试者工作特征曲线(AUC)下的面积结果为98%。此外,使用仅限于手腕设备可计算特征的时间序列算法,AUC达到了90%。因此,一种小型的、在社交方面可接受的、基于手腕的设备能够成功地用于区分老年人行走与其他日常活动。这些发现可能有助于改善步态监测和预防跌倒的工作。