IEEE J Biomed Health Inform. 2021 Sep;25(9):3649-3658. doi: 10.1109/JBHI.2021.3067931. Epub 2021 Sep 3.
Faced with the rapidly aging world population, frailty has emerged as a major health burden among the elderly. This study aimed to investigate the feasibility of using temporal gait characteristics and a long short-term memory network for assessing frailty. Seventy-four community-dwelling elderly individuals participated in this study. The participants were categorized into three groups by their FRAIL scale: robust, pre-frail, and frail groups. The participants completed a 7-meter walking at the self-selected pace with a gyroscope on each foot. Analyzing the gyroscopic data produced seven temporal gait parameters per each gait cycle. Enumerating six consecutive values of each gait parameter produced the gait sequence features which were used as frailty predictors along with the demographic features. Five-fold cross-validation was applied to 70% of the data, and the remaining 30% were used as test data. An F-score of 0.931 was achieved in classifying the robust, pre-frail, and frail groups by the random forest model trained with age, sex, and the outputs of the long short-term memory network-based classifier that used the initial and terminal double-limb support, step, and stride times as inputs. The proposed approach of assessing frailty using the arrhythmic gait pattern of the elderly and machine learning technique is novel and promising. Pioneering a way that self-monitor frailty at home without any help from experts, the study can contribute toearly diagnosis of frailty and make timely medical intervention possible.
面对世界人口的快速老龄化,虚弱已成为老年人的主要健康负担。本研究旨在探讨利用时间步态特征和长短期记忆网络评估虚弱的可行性。74 名居住在社区的老年人参与了这项研究。参与者根据 FRAIL 量表分为三组:强壮、虚弱前期和虚弱组。参与者以自己选择的速度在每只脚上使用陀螺仪完成 7 米步行。分析陀螺仪数据,每个步态周期产生七个时间步态参数。对每个步态参数的连续六个值进行计数,生成步态序列特征,这些特征与人口统计学特征一起作为虚弱预测因子。将数据的 70%应用于五折交叉验证,其余 30%用于测试数据。通过随机森林模型对强壮、虚弱前期和虚弱组进行分类,该模型使用初始和末端双足支撑、步长和步幅时间作为输入,使用基于长短期记忆网络的分类器的输出,实现了 0.931 的 F 分数。本研究提出了一种利用老年人不规则步态模式和机器学习技术评估虚弱的新方法,具有创新性和广阔的应用前景。该方法无需专家帮助即可在家中进行自我监测虚弱,有助于早期诊断虚弱并及时进行医学干预。