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Machine Learning Algorithms Predict Clinically Significant Improvements in Satisfaction After Hip Arthroscopy

Kyle N. Kunze, Evan M. Polce, Jonathan Rasio, Shane J. Nho

2020Arthroscopy The Journal of Arthroscopic and Related Surgery56 citationsDOI

Abstract

PURPOSE: To develop machine learning algorithms to predict failure to achieve clinically significant satisfaction after hip arthroscopy. METHODS: We queried a clinical repository for consecutive primary hip arthroscopy patients treated between January 2012 and January 2017. Five supervised machine learning algorithms were developed in a training set of patients and internally validated in an independent testing set of patients by discrimination, Brier score, calibration, and decision-curve analysis. The minimal clinically important difference (MCID) for the visual analog scale (VAS) score for satisfaction was derived by an anchor-based method and used as the primary outcome. RESULTS: A total of 935 patients were included, of whom 148 (15.8%) did not achieve the MCID for the VAS satisfaction score at a minimum of 2 years postoperatively. The best-performing algorithm was the neural network model (C statistic, 0.94; calibration intercept, -0.43; calibration slope, 0.94; and Brier score, 0.050). The 5 most important features to predict failure to achieve the MCID for the VAS satisfaction score were history of anxiety or depression, lateral center-edge angle, preoperative symptom duration exceeding 2 years, presence of 1 or more drug allergies, and Workers' Compensation. CONCLUSIONS: Supervised machine learning algorithms conferred excellent discrimination and performance for predicting clinically significant satisfaction after hip arthroscopy, although this analysis was performed in a single population of patients. External validation is required to confirm the performance of these algorithms. LEVEL OF EVIDENCE: Level III, therapeutic case-control study.

Topics & Concepts

Brier scoreMinimal clinically important differenceMedicineMachine learningAlgorithmHip arthroscopyArtificial intelligencePatient satisfactionAnxietyPhysical therapyReceiver operating characteristicArthroscopyRandomized controlled trialComputer scienceSurgeryPsychiatryHip disorders and treatmentsOrthopaedic implants and arthroplastyTotal Knee Arthroplasty Outcomes
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