Clinical Trial: Development and Validation of Interpretable Machine Learning Models Incorporating Paraspinal Muscle Quality for to Predict Cage Subsidence Risk Followingposterior Lumbar Interbody Fusion
Study Status: COMPLETED
Recruit Status: COMPLETED
Condition: Degenerative Lumbar Diseases
Study Type: OBSERVATIONAL
Official Title: Development and Validation of Interpretable Machine Learning Models Incorporating Paraspinal Muscle Quality for to Predict Cage Subsidence Risk Followingposterior Lumbar Interbody Fusion
Brief Summary:
The study focuses on identifying risk factors for cage subsidence after posterior lumbar interbody fusion (PLIF) and developing an interpretable machine learning model to predict these risks.It analyzes patients from two large teaching hospitals, using clinical, radiographic, and surgical parameters, including paraspinal muscle indices and bone density markers.A web-based application was developed to facilitate real-time clinical risk assessments using the machine learning model, enhancing surgical planning and…
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