Machine Learning Based Analytics for the Significance of Gait Analysis in Monitoring and Managing Lower Extremity Injuries
Mostafa Rezapour, Rachel B. Seymour, Stephen H. Sims, Madhav A., Karunakar, Nahir Habet, Metin Nafi Gurcan

TL;DR
This study demonstrates that machine learning models, especially XGBoost, can effectively predict post-injury complications in lower extremity fracture patients using gait analysis data, enabling early intervention and improved orthopedic care.
Contribution
The paper introduces a novel methodology for analyzing gait data with machine learning to predict complications, emphasizing the importance of the Rate of Change in gait variables.
Findings
XGBoost achieved an average test AUC of 0.90.
Feature importance highlighted the injury-to-analysis duration.
Early gait analysis reveals physiological compensation phases.
Abstract
This study explored the potential of gait analysis as a tool for assessing post-injury complications, e.g., infection, malunion, or hardware irritation, in patients with lower extremity fractures. The research focused on the proficiency of supervised machine learning models predicting complications using consecutive gait datasets. We identified patients with lower extremity fractures at an academic center. Patients underwent gait analysis with a chest-mounted IMU device. Using software, raw gait data was preprocessed, emphasizing 12 essential gait variables. Machine learning models including XGBoost, Logistic Regression, SVM, LightGBM, and Random Forest were trained, tested, and evaluated. Attention was given to class imbalance, addressed using SMOTE. We introduced a methodology to compute the Rate of Change (ROC) for gait variables, independent of the time difference between gait…
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Taxonomy
TopicsHip and Femur Fractures · Bone fractures and treatments · Artificial Intelligence in Healthcare and Education
MethodsSupport Vector Machine · Synthetic Minority Over-sampling Technique. · Logistic Regression
