AN EVALUATION OF SURVIVAL MODELLING APPROACHES FOR PERSONALIZED RISK PREDICTION AFTER HIP ARTHROPLASTY FOR OSTEOARTHRITIS

2018 
Introduction The development of an algorithm that provides accurate individualised estimates of revision risk could help patients make informed surgical treatment choices. This requires building a survival model based on fixed and modifiable risk factors that predict outcome at the individual level. Here we compare different survival models for predicting prosthesis survivorship after hip replacement for osteoarthritis using data from the National Joint Registry for England, Wales, Northern Ireland and the Isle of Man (NJR). Methods In this comparative study we implemented parametric and flexible parametric (FP) methods and random survival forests (RSF). The overall performance of the parametric models was compared using Akaike information criterion (AIC). The preferred parametric model and the RSF algorithm were further compared in terms of the Brier score, concordance index and calibration via repeated five-fold cross-validation. Results The dataset contains 327 238 hip replacements for osteoarthritis c...
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