A Machine Learning Model for Predicting Critical Minimum Foot Clearance (MFC) Heights

被引:0
|
作者
Nagano, Hanatsu [1 ]
Prokofieva, Maria [1 ]
Asogwa, Clement Ogugua [1 ]
Sarashina, Eri [2 ]
Begg, Rezaul [1 ]
机构
[1] Victoria Univ, Inst Hlth & Sport IHES, Melbourne, Vic 8001, Australia
[2] Univ Tsukuba, Fac Hlth & Sport Sci, Grad Sch Comprehens Human Sci, Tsukuba 3058577, Japan
来源
APPLIED SCIENCES-BASEL | 2024年 / 14卷 / 15期
基金
澳大利亚研究理事会;
关键词
minimum foot clearance (MFC); tripping prevention; falls prevention; machine learning; gait prediction; RISK-FACTORS; TOE CLEARANCE; PARKINSONS-DISEASE; FALL RISK; GAIT; PEOPLE; STROKE; CONSEQUENCES; PREVALENCE; STRATEGIES;
D O I
10.3390/app14156705
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Featured Application The machine learning model predicts Minimum Foot Clearance heights to prevent tripping falls. Integrated into exoskeletons or other assistive devices, it offers real-time interventions for vulnerable populations, enhancing safety with quick and accurate foot clearance adjustments.Abstract Tripping is the largest cause of falls, and low swing foot ground clearance during the mid-swing phase, particularly at the critical gait event known as Minimum Foot Clearance (MFC), is the major risk factor for tripping-related falls. Intervention strategies to increase MFC height can be effective if applied in real-time based on feed-forward prediction. The current study investigated the capability of machine learning models to classify the MFC into various categories using toe-off kinematics data. Specifically, three MFC sub-categories (less than 1.5 cm, between 1.5 and 2.0 cm, and higher than 2.0 cm) were predicted to apply machine learning approaches. A total of 18,490 swing phase gait cycles' data were extracted from six healthy young adults, each walking for 5 min at a constant speed of 4 km/h on a motorized treadmill. K-Nearest Neighbor (KNN), Random Forest, and XGBoost were utilized for prediction based on the data from toe-off for five consecutive frames (0.025 s duration). Foot kinematics data were obtained from an inertial measurement unit attached to the mid-foot, recording tri-axial linear accelerations and angular velocities of the local coordinate. KNN, Random Forest, and XGBoost achieved 84%, 86%, and 75% accuracy, respectively, in classifying MFC into the three sub-categories with run times of 0.39 s, 13.98 s, and 170.98 s, respectively. The KNN-based model was found to be more effective if incorporated into an active exoskeleton as the intelligent system to control MFC based on the preceding gait event, i.e., toe-off, due to its quicker computation time. The machine learning-based prediction model shows promise for the prediction of critical MFC data, indicating higher tripping risk.
引用
收藏
页数:19
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