Department of Kinesiology, Jeju National University, Jeju 63243, Korea.
Department of Management Information Systems, Dong-A University, Busan 49315, Korea.
Int J Environ Res Public Health. 2021 Oct 28;18(21):11347. doi: 10.3390/ijerph182111347.
Gait and physical fitness are related to cognitive function. A decrease in motor function and physical fitness can serve as an indicator of declining global cognitive function in older adults. This study aims to use machine learning (ML) to identify important features of gait and physical fitness to predict a decline in global cognitive function in older adults. A total of three hundred and six participants aged seventy-five years or older were included in the study, and their gait performance at various speeds and physical fitness were evaluated. Eight ML models were applied to data ranked by the -value (LP) of linear regression and the importance gain (XI) of XGboost. Five optimal features were selected using elastic net on the LP data for men, and twenty optimal features were selected using support vector machine on the XI data for women. Thus, the important features for predicting a potential decline in global cognitive function in older adults were successfully identified herein. The proposed ML approach could inspire future studies on the early detection and prevention of cognitive function decline in older adults.
步态和身体机能与认知功能有关。运动功能和身体机能的下降可以作为老年人整体认知功能下降的指标。本研究旨在使用机器学习(ML)来识别步态和身体机能的重要特征,以预测老年人整体认知功能的下降。共有 306 名 75 岁或以上的参与者纳入本研究,评估了他们在不同速度下的步态表现和身体机能。将线性回归的 - 值(LP)和 XGBoost 的重要增益(XI)对数据进行排序,然后应用 8 个 ML 模型。对男性 LP 数据使用弹性网络选择 5 个最优特征,对女性 XI 数据使用支持向量机选择 20 个最优特征。因此,成功地确定了预测老年人整体认知功能潜在下降的重要特征。所提出的 ML 方法可以为未来关于老年人认知功能下降的早期检测和预防的研究提供启示。