Arthroplasty Today | |
Artificial Learning and Machine Learning Decision Guidance Applications in Total Hip and Knee Arthroplasty: A Systematic Review | |
Anastasia Gazgalis, BS1  Cesar D. Lopez, BS2  Venkat Boddapati, MD3  H. John Cooper, MD3  Roshan P. Shah, MD3  Jeffrey A. Geller, MD3  | |
[1] New York-Presbyterian/Columbia University Irving Medical Center, New York, NY;Corresponding author. 622 W. 168th St. PH-11, New York, NY 10032, USA. Tel.: (630) 399-4122.;New York-Presbyterian/Columbia University Irving Medical Center, New York, NY; | |
关键词: Machine learning; Artificial intelligence; Deep learning; Artificial neural networks; Orthopedic surgery; Hip and knee arthroplasty; | |
DOI : | |
来源: DOAJ |
【 摘 要 】
Background: Artificial intelligence (AI) and machine learning (ML) modeling in hip and knee arthroplasty (total joint arthroplasty [TJA]) is becoming more commonplace. This systematic review aims to quantify the accuracy of current AI- and ML-based application for cognitive support and decision-making in TJA. Methods: A comprehensive search of publications was conducted through the EMBASE, Medline, and PubMed databases using relevant keywords to maximize the sensitivity of the search. No limits were placed on level of evidence or timing of the study. Findings were reported according to the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) guidelines. Analysis of variance testing with post-hoc Tukey test was applied to compare the area under the curve (AUC) of the models. Results: After application of inclusion and exclusion criteria, 49 studies were included in this review. The application of AI/ML-based models and average AUC is as follows: cost prediction-0.77, LOS and discharges-0.78, readmissions and reoperations-0.66, preoperative patient selection/planning-0.79, adverse events and other postoperative complications-0.84, postoperative pain-0.83, postoperative patient-reported outcomes measures and functional outcome-0.81. Significant variability in model AUC across the different decision support applications was found (P < .001) with the AUC for readmission and reoperation models being significantly lower than that of the other decision support categories. Conclusions: AI/ML-based applications in TJA continue to expand and have the potential to optimize patient selection and accurately predict postoperative outcomes, complications, and associated costs. On average, the AI/ML models performed best in predicting postoperative complications, pain, and patient-reported outcomes and were less accurate in predicting hospital readmissions and reoperations.
【 授权许可】
Unknown