Accelerometer-Based Gait Analysis as a Predictive Tool for Mild Cognitive Impairment in Older Adults.
Junwei Shen, Yoshiko Nagata, Toshiya Shimamoto, Shigehito Matsubara, Masato Nakamura, Fumiya Sato, Takuya Motoshima, Katsuhisa Uchino, Akira Mori, Miwa Nogami, Yuki Harada, Makoto Uchino, Shinichiro Nakamura
Abstract
Open AccessThis study explores the potential of accelerometer-based gait analysis as a non-invasive approach for predicting cognitive impairment in older adults. A total of 75 participants (61.3% female; mean age: 78.9 years), including cognitively normal individuals and patients with dementia, were enrolled. Walking data were collected using a six-axis waist-worn accelerometer during self-paced locomotion. Allan variance (AVAR), a robust statistical measure of frequency stability, was applied to characterize gait dynamics. AVAR-derived features, combined with participant age, were used as inputs to machine learning models, logistic regression and Light Gradient Boosting Machine (LightGBM) for classifying cognitive status based on Mini-Mental State Examination (MMSE) scores. LightGBM achieved superior performance (AUC = 0.92) compared to logistic regression (AUC = 0.85). Although mild cognitive impairment (MCI) cases were grouped with cognitively normal participants, gait-based classification revealed that MCI individuals exhibited patterns more similar to those with cognitive impairment. These results suggest that AVAR-based gait features are promising for early detection of cognitive decline in older adults.