Abstract
This study aimed to identify the optimal features of gait parameters to predict the fall risk level in older adults. The study included 746 older adults (age: 63–89 years). Gait tests (20 m walkway) included speed modification (slower, preferred, and faster-walking) while wearing the inertial measurement unit sensors embedded in the shoe-type data loggers on both outsoles. A metric was defined to classify the fall risks, determined based on a set of questions determining the history of falls and fear of falls. The extreme gradient boosting (XGBoost) model was built from gait features to predict the factor affecting the risk of falls. Moreover, the definition of the fall levels was classified into high- and low-risk groups. At all speeds, three gait features were identified with the XGBoost (stride length, walking speed, and stance phase) that accurately classified the fall risk levels. The model accuracy in classifying fall risk levels ranged between 67–70% with 43–53% sensitivity and 77–84% specificity. Thus, we identified the optimal gait features for accurate fall risk level classification in older adults. The XGBoost model could inspire future works on fall prevention and the fall-risk assessment potential through the gait analysis of older adults.
Highlights
This study aimed to identify the optimal features of gait parameters to predict the fall risk level in older adults
The machine learning (ML) algorithm can be used to extract the optimal features affecting the risk of falls from the gait features, which measured a more continuative state for longer durations using the inertial measurement unit (IMU) sensors
The XGBoost algorithm was used to extract the optimal features affecting the risk of falls from a total of 34 features
Summary
This study aimed to identify the optimal features of gait parameters to predict the fall risk level in older adults. The extreme gradient boosting (XGBoost) model was built from gait features to predict the factor affecting the risk of falls. We identified the optimal gait features for accurate fall risk level classification in older adults. No studies have used the XGBoost algorithm to classify high and low fall risk levels objectively based on their gait spatiotemporal features. This study was focused on identifying the optimal features of gait parameters to predict the fall risk level in older adults. We used the XGBoost algorithm of ML on gait performance tests with speed modification to identify fall risk levels in older adults and define optimal gait parameters
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