Univ Rennes, Inserm, LTSI UMR 1099, Rennes, France.
Univ Rennes, CNRS, ARENES UMR6051, Rennes, France.
PLoS One. 2023 Jan 30;18(1):e0274306. doi: 10.1371/journal.pone.0274306. eCollection 2023.
The use of telemonitoring solutions via wearable sensors is believed to play a major role in the prevention and therapy of physical weakening in older adults. Despite the various studies found in the literature, some elements are still not well addressed, such as the study cohort, the experimental protocol, the type of research design, as well as the relevant features in this context. To this end, the objective of this pilot study was to investigate the efficacy of data-driven systems to characterize older individuals over 80 years of age with impaired physical function, during their daily routine and under unsupervised conditions. We propose a fully automated process which extracts a set of heterogeneous time-domain features from 24-hour files of acceleration and barometric data. After being statistically tested, the most discriminant features fed a group of machine learning classifiers to distinguish frail from non-frail subjects, achieving an accuracy up to 93.51%. Our analysis, conducted over 570 days of recordings, shows that a longitudinal study is important while using the proposed features, in order to ensure a highly specific diagnosis. This work may serve as a basis for the paradigm of future monitoring systems.
使用可穿戴传感器的远程监测解决方案被认为在预防和治疗老年人身体虚弱方面发挥着重要作用。尽管文献中有各种研究,但仍有一些因素没有得到很好的解决,例如研究对象、实验方案、研究设计类型以及相关特征等。为此,本试点研究旨在调查数据驱动系统在日常无监督条件下对 80 岁以上身体功能受损的老年人进行特征描述的功效。我们提出了一种完全自动化的过程,该过程从加速度和气压数据的 24 小时文件中提取一组异构时域特征。经过统计检验后,最具判别力的特征被输入一组机器学习分类器,以区分虚弱和非虚弱的个体,准确率高达 93.51%。我们的分析结果显示,在使用所提出的特征进行长达 570 天的记录中,进行纵向研究非常重要,以确保高度特异性诊断。这项工作可以作为未来监测系统范例的基础。