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Optimal inputs for machine learning models in predicting total joint arthroplasty outcomes: a systematic review.

Parshva A SanghviAakash K ShahChristian J HechtAmir H KarimiTarun K Jella
Published in: European journal of orthopaedic surgery & traumatology : orthopedie traumatologie (2024)
These studies demonstrate the predictive capabilities of these models for anticipating complications and outcomes. Furthermore, these studies also highlight ML models' ability to identify non-classical variables not commonly considered in addition to confirming variables known to be crucial. To advance the field, forthcoming research should adhere to established guidelines for model development and training, employ industry-standard input parameters, and subject their models to external validity assessments.
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