A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty

Background: The Centers for Medicare and Medicaid Services removed total hip arthroplasty (THA) from the inpatient-only list. This has created significant confusion regarding which patients qualify for an inpatient designation. The purpose of this study is to develop and validate a novel predictive...

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Main Authors: David N. Kugelman, MD, Greg Teo, MD, Shengnan Huang, MS, Michael G. Doran, MD, Vivek Singh, MD, William J. Long, MD, FRCSC
Format: Article
Language:English
Published: Elsevier 2021-04-01
Series:Arthroplasty Today
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2352344121000376
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spelling doaj-da00f03f2dd646f4910420474173d52e2021-05-16T04:24:03ZengElsevierArthroplasty Today2352-34412021-04-018194199A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip ArthroplastyDavid N. Kugelman, MD0Greg Teo, MD1Shengnan Huang, MS2Michael G. Doran, MD3Vivek Singh, MD4William J. Long, MD, FRCSC5New York University Langone Orthopaedic Hospital, New York, NYNew York University Langone Orthopaedic Hospital, New York, NYNew York University Langone Orthopaedic Hospital, New York, NYNew York University Langone Orthopaedic Hospital, New York, NYNew York University Langone Orthopaedic Hospital, New York, NYCorresponding author. 301 East 17 St, Manhattan, New York 10003. Tel.: 212-598-6000.; New York University Langone Orthopaedic Hospital, New York, NYBackground: The Centers for Medicare and Medicaid Services removed total hip arthroplasty (THA) from the inpatient-only list. This has created significant confusion regarding which patients qualify for an inpatient designation. The purpose of this study is to develop and validate a novel predictive tool for preoperatively objectively determining “outpatient” vs “inpatient” status for THA in the Medicare population. Methods: A cohort of Medicare patients undergoing primary THA between January 2017 and September 2019 was retrospectively reviewed. A machine learning model was trained using 80% of the THA patients, and the remaining 20% was used for testing the model performance in terms of accuracy and the average area under the receiver operating characteristic curve. Feature importance was obtained for each feature used in the model. Results: One thousand ninety-one patients had outpatient stays, and 318 qualified for inpatient designation. Significant associations were demonstrated between inpatient designations and the following: higher BMI, increased patient age, better preoperative functional scores, higher American Society of Anesthesiologist Physical Status Classification, higher Modified Frailty Index, higher Charlson Comorbidity Index, female gender, and numerous comorbidities. The XGBoost model for predicting an inpatient or outpatient stay was 78.7% accurate with the area under the receiver operating characteristic curve to be 81.5%. Conclusions: Using readily available key baseline characteristics, functional scores and comorbidities, this machine-learning model accurately predicts an “outpatient” or “inpatient” stay after THA in the Medicare population. BMI, age, functional scores, and American Society of Anesthesiologist Physical Status Classification had the highest influence on this predictive model.http://www.sciencedirect.com/science/article/pii/S2352344121000376Total hip arthroplastyMedicare total hipMedicare bundle paymentMedicare inpatient only listArthroplasty inpatient onlyPredictive model
collection DOAJ
language English
format Article
sources DOAJ
author David N. Kugelman, MD
Greg Teo, MD
Shengnan Huang, MS
Michael G. Doran, MD
Vivek Singh, MD
William J. Long, MD, FRCSC
spellingShingle David N. Kugelman, MD
Greg Teo, MD
Shengnan Huang, MS
Michael G. Doran, MD
Vivek Singh, MD
William J. Long, MD, FRCSC
A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
Arthroplasty Today
Total hip arthroplasty
Medicare total hip
Medicare bundle payment
Medicare inpatient only list
Arthroplasty inpatient only
Predictive model
author_facet David N. Kugelman, MD
Greg Teo, MD
Shengnan Huang, MS
Michael G. Doran, MD
Vivek Singh, MD
William J. Long, MD, FRCSC
author_sort David N. Kugelman, MD
title A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
title_short A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
title_full A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
title_fullStr A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
title_full_unstemmed A Novel Machine Learning Predictive Tool Assessing Outpatient or Inpatient Designation for Medicare Patients Undergoing Total Hip Arthroplasty
title_sort novel machine learning predictive tool assessing outpatient or inpatient designation for medicare patients undergoing total hip arthroplasty
publisher Elsevier
series Arthroplasty Today
issn 2352-3441
publishDate 2021-04-01
description Background: The Centers for Medicare and Medicaid Services removed total hip arthroplasty (THA) from the inpatient-only list. This has created significant confusion regarding which patients qualify for an inpatient designation. The purpose of this study is to develop and validate a novel predictive tool for preoperatively objectively determining “outpatient” vs “inpatient” status for THA in the Medicare population. Methods: A cohort of Medicare patients undergoing primary THA between January 2017 and September 2019 was retrospectively reviewed. A machine learning model was trained using 80% of the THA patients, and the remaining 20% was used for testing the model performance in terms of accuracy and the average area under the receiver operating characteristic curve. Feature importance was obtained for each feature used in the model. Results: One thousand ninety-one patients had outpatient stays, and 318 qualified for inpatient designation. Significant associations were demonstrated between inpatient designations and the following: higher BMI, increased patient age, better preoperative functional scores, higher American Society of Anesthesiologist Physical Status Classification, higher Modified Frailty Index, higher Charlson Comorbidity Index, female gender, and numerous comorbidities. The XGBoost model for predicting an inpatient or outpatient stay was 78.7% accurate with the area under the receiver operating characteristic curve to be 81.5%. Conclusions: Using readily available key baseline characteristics, functional scores and comorbidities, this machine-learning model accurately predicts an “outpatient” or “inpatient” stay after THA in the Medicare population. BMI, age, functional scores, and American Society of Anesthesiologist Physical Status Classification had the highest influence on this predictive model.
topic Total hip arthroplasty
Medicare total hip
Medicare bundle payment
Medicare inpatient only list
Arthroplasty inpatient only
Predictive model
url http://www.sciencedirect.com/science/article/pii/S2352344121000376
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