Predicting Return to Work after Cardiac Rehabilitation using Machine Learning Models

Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation.Subjects: Patients who were admitted to the University of Malaya Medical Centre due to cardiac events.Methods: Eight different machine learning models were evaluated. The models included 3 differ...

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Published inJournal of rehabilitation medicine Vol. 55; p. jrm00348
Main Authors Yuan, Choo Jia, Varathan, Kasturi Dewi, Suhaimi, Anwar, Ling, Lee Wan
Format Journal Article
LanguageEnglish
Published Sweden Journal of Rehabilitation Medicine 09.01.2023
Medical Journals Sweden
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ISSN1651-2081
1650-1977
1651-2081
DOI10.2340/jrm.v54.2432

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Abstract Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation.Subjects: Patients who were admitted to the University of Malaya Medical Centre due to cardiac events.Methods: Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared.Results: The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models.Conclusion: The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation. LAY ABSTRACTCardiac rehabilitation has proven beneficial effects for cardiac patients; it lowers patients’ risk of cardiac death and improves their health-related quality of life. Returning to work is one of the important goals of cardiac rehabilitation, as it prevents early retirement, and encourages social and financial sustainability. A few studies have focussed on predicting return to work among cardiac rehabilitation patients; however, these studies have only used statistical techniques in their prediction. This study showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
AbstractList Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation.Subjects: Patients who were admitted to the University of Malaya Medical Centre due to cardiac events.Methods: Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared.Results: The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models.Conclusion: The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation. LAY ABSTRACTCardiac rehabilitation has proven beneficial effects for cardiac patients; it lowers patients’ risk of cardiac death and improves their health-related quality of life. Returning to work is one of the important goals of cardiac rehabilitation, as it prevents early retirement, and encourages social and financial sustainability. A few studies have focussed on predicting return to work among cardiac rehabilitation patients; however, these studies have only used statistical techniques in their prediction. This study showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
To explore machine learning models for predicting return to work after cardiac rehabilitation.OBJECTIVETo explore machine learning models for predicting return to work after cardiac rehabilitation.Patients who were admitted to the University of Malaya Medical Centre due to cardiac events.SUBJECTSPatients who were admitted to the University of Malaya Medical Centre due to cardiac events.Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared.METHODSEight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared.The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models.RESULTSThe AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models.The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.CONCLUSIONThe findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
To explore machine learning models for predicting return to work after cardiac rehabilitation. Patients who were admitted to the University of Malaya Medical Centre due to cardiac events. Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared. The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models. The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation. Subjects: Patients who were admitted to the University of Malaya Medical Centre due to cardiac events. Methods: Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared. Results: The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models. Conclusion: The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation. Subjects: Patients who were admitted to the University of Malaya Medical Centre due to cardiac events. Methods: Eight different machine learning models were evaluated. The models included 3 different sets of features: full features; significant features from multiple logistic regression; and features selected from recursive feature extraction technique. The performance of the prediction models with each set of features was compared. Results: The AdaBoost model with the top 20 features obtained the highest performance score of 92.4% (area under the curve; AUC) compared with other prediction models. Conclusion: The findings showed the potential of using machine learning models to predict return to work after cardiac rehabilitation. LAY ABSTRACT Cardiac rehabilitation has proven beneficial effects for cardiac patients; it lowers patients’ risk of cardiac death and improves their health-related quality of life. Returning to work is one of the important goals of cardiac rehabilitation, as it prevents early retirement, and encourages social and financial sustainability. A few studies have focussed on predicting return to work among cardiac rehabilitation patients; however, these studies have only used statistical techniques in their prediction. This study showed the potential of using machine learning models to predict return to work after cardiac rehabilitation.
Author Ling, Lee Wan
Varathan, Kasturi Dewi
Suhaimi, Anwar
Yuan, Choo Jia
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Snippet Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation.Subjects: Patients who were admitted to the University...
To explore machine learning models for predicting return to work after cardiac rehabilitation. Patients who were admitted to the University of Malaya Medical...
Objective: To explore machine learning models for predicting return to work after cardiac rehabilitation. Subjects: Patients who were admitted to the...
To explore machine learning models for predicting return to work after cardiac rehabilitation.OBJECTIVETo explore machine learning models for predicting return...
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SubjectTerms Cardiac Rehabilitation
Cardiovascular disease
Cardiovascular diseases
Extraction
feature selection
Humans
Logistic Models
Machine Learning
Patient admissions
Prediction models
Rehabilitation
Return to Work
ROC Curve
Title Predicting Return to Work after Cardiac Rehabilitation using Machine Learning Models
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