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J Am Acad Orthop Surg · Jul 2020
A Novel Machine Learning Model Developed to Assist in Patient Selection for Outpatient Total Shoulder Arthroplasty.
- Dustin R Biron, Ishan Sinha, Justin E Kleiner, Dilum P Aluthge, Avi D Goodman, I Neil Sarkar, Eric Cohen, and Alan H Daniels.
- From the Warren Alpert Medical School of Brown University (Biron, Sinha, Dr. Kleiner, and Aluthge), Center for Biomedical Informatics (Biron, Sinha, Aluthge, and Dr. Sarkar), Brown University, and Department of Orthopaedic Surgery (Dr. Goodman, Dr. Cohen, and Dr. Daniels), The Warren Alpert Medical School of Brown University, Rhode Island Hospital, Providence, RI.
- J Am Acad Orthop Surg. 2020 Jul 1; 28 (13): e580-e585.
IntroductionPatient selection for outpatient total shoulder arthroplasty (TSA) is important to optimizing patient outcomes. This study aims to develop a machine learning tool that may aid in patient selection for outpatient total should arthroplasty based on medical comorbidities and demographic factors.MethodsPatients undergoing elective TSA from 2011 to 2016 in the American College of Surgeons National Surgical Quality Improvement Program were queried. A random forest machine learning model was used to predict which patients had a length of stay of 1 day or less (short stay). A multivariable logistic regression was then used to identify which variables were significantly correlated with a short or long stay.ResultsFrom 2011 to 2016, 4,500 patients were identified as having undergone elective TSA and having the necessary predictive features and outcomes recorded. The machine learning model was able to successfully identify short stay patients, producing an area under the receiver operator curve of 0.77. The multivariate logistic regression identified numerous variables associated with a short stay including age less than 70 years and male sex as well as variables associated with a longer stay including diabetes, chronic obstructive pulmonary disease, and American Society of Anesthesiologists class greater than 2.ConclusionsMachine learning may be used to predict which patients are suitable candidates for short stay or outpatient TSA based on their medical comorbidities and demographic profile.
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