Keywords: Diagnosis/Prediction, Machine Learning/Artificial Intelligence, Osteoarthritis
Motivation: The combination of deep learning, MRI, and clinical data for predicting the time to total knee replacement surgery in knee osteoarthritis patients has been investigated.
Goal(s): The 3D Resnet18 model was employed to extract features from MRI scans, and relevant clinical variables were integrated to establish a comprehensive predictive model.
Approach: Time-to-surgery probabilities were estimated using the ensemble random survival forest model. The model’s performance was evaluated across clinical variables, two MRI sequences, and their combinations.
Results: The proposed approach aims to help the precision of TKR surgery decision-making using artificial intelligence.
Impact: This study fuses deep learning, survival analysis, MRI, and clinical data to accurately predict time-to-TKR surgery. Our approach has the potential to enhance TKR surgery decision precision.
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