Background Reverse total shoulder arthroplasty (rTSA) offers tremendous promise for the treatment of complex pathologies beyond the scope of anatomic total shoulder arthroplasty but is associated with a higher rate of major postoperative complications. We aimed to design and validate a machine learning (ML) model to predict major postoperative complications or readmission following rTSA. Methods We retrospectively reviewed California's Office of Statewide Health Planning and Development database for patients who underwent rTSA between 2015 and 2017. We implemented logistic regression (LR), extreme gradient boosting (XGBoost), gradient boosting machines, adaptive boosting, and random forest classifiers in Python and trained these models usin...
Objective: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastati...
Purpose: We aimed to develop a machine learning algorithm that can accurately predict discharge plac...
Introduction The effectiveness of rotator cuff tear repair surgery is influenced by multiple patient...
Background Reverse total shoulder arthroplasty (rTSA) offers tremendous promise for the treatment of...
BACKGROUND: Improvement in internal rotation (IR) after anatomic (aTSA) and reverse (rTSA) total sho...
BACKGROUND: Improvement in internal rotation (IR) after anatomic (aTSA) and reverse (rTSA) total sho...
Background: Machine learning has shown potential in accurately predicting outcomes after orthopedic ...
Introduction Despite technological advancements in recent years, glenoid component loosening remains...
Background: There remains a lack of accurate and validated outcome-prediction models in total knee a...
BACKGROUND: Predictive models could help clinicians identify risk factors that cause adverse events ...
BackgroundGiven the significant cost and morbidity of patients undergoing lumbar fusion, accurate pr...
OBJECTIVE: To predict intraoperative events (IOE) and postoperative events (POE) consequential to th...
BackgroundThe objective of this study is to develop predictive models for persistent opioid use foll...
© 2020 The American Association for Thoracic Surgery Objective: To establish a machine learning (ML)...
Background: Postoperative delirium is a challenging complication due to its adverse outcome such as ...
Objective: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastati...
Purpose: We aimed to develop a machine learning algorithm that can accurately predict discharge plac...
Introduction The effectiveness of rotator cuff tear repair surgery is influenced by multiple patient...
Background Reverse total shoulder arthroplasty (rTSA) offers tremendous promise for the treatment of...
BACKGROUND: Improvement in internal rotation (IR) after anatomic (aTSA) and reverse (rTSA) total sho...
BACKGROUND: Improvement in internal rotation (IR) after anatomic (aTSA) and reverse (rTSA) total sho...
Background: Machine learning has shown potential in accurately predicting outcomes after orthopedic ...
Introduction Despite technological advancements in recent years, glenoid component loosening remains...
Background: There remains a lack of accurate and validated outcome-prediction models in total knee a...
BACKGROUND: Predictive models could help clinicians identify risk factors that cause adverse events ...
BackgroundGiven the significant cost and morbidity of patients undergoing lumbar fusion, accurate pr...
OBJECTIVE: To predict intraoperative events (IOE) and postoperative events (POE) consequential to th...
BackgroundThe objective of this study is to develop predictive models for persistent opioid use foll...
© 2020 The American Association for Thoracic Surgery Objective: To establish a machine learning (ML)...
Background: Postoperative delirium is a challenging complication due to its adverse outcome such as ...
Objective: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastati...
Purpose: We aimed to develop a machine learning algorithm that can accurately predict discharge plac...
Introduction The effectiveness of rotator cuff tear repair surgery is influenced by multiple patient...