Literature DB >> 33010437

Development of supervised machine learning algorithms for prediction of satisfaction at 2 years following total shoulder arthroplasty.

Evan M Polce1, Kyle N Kunze1, Michael C Fu1, Grant E Garrigues1, Brian Forsythe1, Gregory P Nicholson1, Brian J Cole1, Nikhil N Verma2.   

Abstract

BACKGROUND: Patient satisfaction after primary anatomic and reverse total shoulder arthroplasty (TSA) represents an important metric for gauging patients' perception of their care and surgical outcomes. Although TSA confers improvement in pain and function for most patients, inevitably some will remain unsatisfied postoperatively. The purpose of this study was to (1) train supervised machine learning (SML) algorithms to predict satisfaction after TSA and (2) develop a clinical tool for individualized assessment of patient-specific risk factors.
METHODS: We performed a retrospective review of primary anatomic and reverse TSA patients between January 2014 and February 2018. A total of 16 demographic, clinical, and patient-reported outcomes were evaluated for predictive value. Five SML algorithms underwent 3 iterations of 10-fold cross-validation on a training set (80% of cohort). Assessment by discrimination, calibration, Brier score, and decision-curve analysis was performed on an independent testing set (remaining 20% of cohort). Global and local model behaviors were evaluated with global variable importance plots and local interpretable model-agnostic explanations, respectively.
RESULTS: The study cohort consisted of 413 patients, of whom 331 (82.6%) were satisfied at 2 years postoperatively. The support vector machine model demonstrated the best relative performance on the independent testing set not used for model training (concordance statistic, 0.80; calibration intercept, 0.20; calibration slope, 2.32; Brier score, 0.11). The most important factors for predicting satisfaction were baseline Single Assessment Numeric Evaluation score, exercise and activity, workers' compensation status, diagnosis, symptom duration prior to surgery, body mass index, age, smoking status, anatomic vs. reverse TSA, and diabetes. The support vector machine algorithm was incorporated into an open-access digital application for patient-level explanations of risk and predictions, available at https://orthopedics.shinyapps.io/SatisfactionTSA/.
CONCLUSION: The best-performing SML model demonstrated excellent discrimination and adequate calibration for predicting satisfaction following TSA and was used to create an open-access, clinical decision-making tool. However, rigorous external validation in different geographic locations and patient populations is essential prior to assessment of clinical utility. Given that this tool is based on partially modifiable risk factors, it may enhance shared decision making and allow for periods of targeted preoperative health-optimization efforts.
Copyright © 2020 Journal of Shoulder and Elbow Surgery Board of Trustees. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Total shoulder arthroplasty; classification; cross-validation; feature selection; satisfaction; supervised machine learning (SML); support vector machine (SVM)

Year:  2020        PMID: 33010437     DOI: 10.1016/j.jse.2020.09.007

Source DB:  PubMed          Journal:  J Shoulder Elbow Surg        ISSN: 1058-2746            Impact factor:   3.019


  4 in total

1.  Violation of expectations is correlated with satisfaction following hip arthroscopy.

Authors:  Shai Factor; Yair Neuman; Matias Vidra; Moshe Shalom; Adi Lichtenstein; Eyal Amar; Ehud Rath
Journal:  Knee Surg Sports Traumatol Arthrosc       Date:  2022-10-01       Impact factor: 4.114

2.  Online Education Satisfaction Assessment Based on Machine Learning Model in Wireless Network Environment.

Authors:  Jing Qin
Journal:  Comput Math Methods Med       Date:  2022-06-29       Impact factor: 2.809

3.  Validation and performance of a machine-learning derived prediction guide for total knee arthroplasty component sizing.

Authors:  Kyle N Kunze; Evan M Polce; Arpan Patel; P Maxwell Courtney; Brett R Levine
Journal:  Arch Orthop Trauma Surg       Date:  2021-07-13       Impact factor: 3.067

4.  Development of a Machine Learning Algorithm for Prediction of Complications and Unplanned Readmission Following Reverse Total Shoulder Arthroplasty.

Authors:  Sai K Devana; Akash A Shah; Changhee Lee; Varun Gudapati; Andrew R Jensen; Edward Cheung; Carlos Solorzano; Mihaela van der Schaar; Nelson F SooHoo
Journal:  J Shoulder Elb Arthroplast       Date:  2021-10-28
  4 in total

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