Varma Vijay R, Ghosal Rahul, Hillel Inbar, Volfson Dmitri, Weiss Jordan, Urbanek Jacek, Hausdorff Jeffrey M, Zipunnikov Vadim, Watts Amber
Clinical and Translational Neuroscience Section Laboratory of Behavioral Neuroscience National Institute on Aging (NIA) National Institutes of Health (NIH) Baltimore Maryland USA.
Department of Biostatistics Johns Hopkins Bloomberg School of Public Health Baltimore Maryland USA.
Alzheimers Dement (N Y). 2021 Feb 5;7(1):e12131. doi: 10.1002/trc2.12131. eCollection 2021.
Few studies have explored whether gait measured continuously within a community setting can identify individuals with Alzheimer's disease (AD). This study tests the feasibility of this method to identify individuals at the earliest stage of AD.
Mild AD (n = 38) and cognitively normal control (CNC; n = 48) participants from the University of Kansas Alzheimer's Disease Center Registry wore a GT3x+ accelerometer continuously for 7 days to assess gait. Penalized logistic regression with repeated five-fold cross-validation followed by adjusted logistic regression was used to identify gait metrics with the highest predictive performance in discriminating mild AD from CNC.
Variability in step velocity and cadence had the highest predictive utility in identifying individuals with mild AD. Metrics were also associated with cognitive domains impacted in early AD.
Continuous gait monitoring may be a scalable method to identify individuals at-risk for developing dementia within large, population-based studies.
很少有研究探讨在社区环境中连续测量的步态是否能够识别出患有阿尔茨海默病(AD)的个体。本研究测试了这种方法在识别AD最早期个体方面的可行性。
来自堪萨斯大学阿尔茨海默病中心登记处的轻度AD患者(n = 38)和认知正常对照者(CNC;n = 48)连续7天佩戴GT3x +加速度计以评估步态。采用重复五折交叉验证的惩罚逻辑回归,随后进行调整逻辑回归,以识别在区分轻度AD和CNC方面具有最高预测性能的步态指标。
步速和步频的变异性在识别轻度AD个体方面具有最高的预测效用。这些指标也与早期AD中受影响的认知领域相关。
在基于人群的大型研究中,连续步态监测可能是一种可扩展的方法,用于识别有患痴呆症风险的个体。