Machine learning model outperforms the ACS Risk Calculator in predicting non‐home discharge following primary total knee arthroplasty
Blake M. Bacevich,
Tony Lin‐Wei Chen,
Anirudh Buddhiraju
et al.
Abstract:PurposeDespite the increase in outpatient total knee arthroplasty (TKA) procedures, many patients are still discharged to non‐home locations following index surgery. The ability to accurately predict non‐home discharge (NHD) following TKAs has the potential to promote a reduction in associated adverse events and excess healthcare costs. This study aimed to evaluate whether a machine learning (ML) model could outperform the American College of Surgeons (ACS) Risk Calculator in predicting NHD following TKA, usin… Show more
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