Tao Shuai, Hu Hongbin, Kong Liwen, Lyu Zeping, Wang Zumin, Zhao Jie, Liu Shuang
Dalian Key Laboratory of Smart Medical and Health, Dalian University, Dalian, Liaoning 116622, P. R. China.
Internal Medicine-Neurology, Rehabilitation Hospital Affiliated to National Rehabilitation Aids Research Center, Beijing 100176, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2024 Apr 25;41(2):281-287. doi: 10.7507/1001-5515.202305019.
Alzheimer's disease (AD) is a common and serious form of elderly dementia, but early detection and treatment of mild cognitive impairment can help slow down the progression of dementia. Recent studies have shown that there is a relationship between overall cognitive function and motor function and gait abnormalities. We recruited 302 cases from the Rehabilitation Hospital Affiliated to National Rehabilitation Aids Research Center and included 193 of them according to the screening criteria, including 137 patients with MCI and 56 healthy controls (HC). The gait parameters of the participants were collected during performing single-task (free walking) and dual-task (counting backwards from 100) using a wearable device. By taking gait parameters such as gait cycle, kinematics parameters, time-space parameters as the focus of the study, using recursive feature elimination (RFE) to select important features, and taking the subject's MoCA score as the response variable, a machine learning model based on quantitative evaluation of cognitive level of gait features was established. The results showed that temporal and spatial parameters of toe-off and heel strike had important clinical significance as markers to evaluate cognitive level, indicating important clinical application value in preventing or delaying the occurrence of AD in the future.
阿尔茨海默病(AD)是一种常见且严重的老年痴呆症,但对轻度认知障碍的早期检测和治疗有助于减缓痴呆症的进展。最近的研究表明,整体认知功能与运动功能及步态异常之间存在关联。我们从国家康复辅具研究中心附属康复医院招募了302例患者,根据筛查标准纳入其中193例,包括137例轻度认知障碍(MCI)患者和56例健康对照(HC)。使用可穿戴设备在参与者执行单任务(自由行走)和双任务(从100开始倒数)期间收集其步态参数。以步态周期、运动学参数、时空参数等步态参数为研究重点,采用递归特征消除(RFE)选择重要特征,并以受试者的蒙特利尔认知评估量表(MoCA)评分作为响应变量,建立了基于步态特征认知水平定量评估的机器学习模型。结果表明,足趾离地和足跟触地的时空参数作为评估认知水平的标志物具有重要临床意义,提示其在未来预防或延缓AD发生方面具有重要临床应用价值。