Machine Learning-Based Predictive Model of Aortic Valve Replacement Modality Selection in Severe Aortic Stenosis Patients.
Ronpichai ChokesuwattanaskulAisawan PetchlorlianPiyoros LertsanguansinchaiParamaporn SuttirutNarut PrasitlumkumSuphot SrimahachotaWacin BuddhariPublished in: Medical sciences (Basel, Switzerland) (2023)
The current recommendation for bioprosthetic valve replacement in severe aortic stenosis (AS) is either surgical aortic valve replacement (SAVR) or transcatheter aortic valve replacement (TAVR). We evaluated the performance of a machine learning-based predictive model using existing periprocedural variables for valve replacement modality selection. We analyzed 415 patients in a retrospective longitudinal cohort of adult patients undergoing aortic valve replacement for aortic stenosis. A total of 72 clinical variables including demographic data, patient comorbidities, and preoperative investigation characteristics were collected on each patient. We fit models using LASSO (least absolute shrinkage and selection operator) and decision tree techniques. The accuracy of the prediction on confusion matrix was used to assess model performance. The most predictive independent variable for valve selection by LASSO regression was frailty score. Variables that predict SAVR consisted of low frailty score (value at or below 2) and complex coronary artery diseases (DVD/TVD). Variables that predicted TAVR consisted of high frailty score (at or greater than 6), history of coronary artery bypass surgery (CABG), calcified aorta, and chronic kidney disease (CKD). The LASSO-generated predictive model achieved 98% accuracy on valve replacement modality selection from testing data. The decision tree model consisted of fewer important parameters, namely frailty score, CKD, STS score, age, and history of PCI. The most predictive factor for valve replacement selection was frailty score. The predictive models using different statistical learning methods achieved an excellent concordance predictive accuracy rate of between 93% and 98%.
Keyphrases
- aortic stenosis
- aortic valve replacement
- ejection fraction
- transcatheter aortic valve replacement
- aortic valve
- transcatheter aortic valve implantation
- chronic kidney disease
- end stage renal disease
- coronary artery bypass
- left ventricular
- machine learning
- coronary artery disease
- coronary artery
- patients undergoing
- percutaneous coronary intervention
- peritoneal dialysis
- big data
- atrial fibrillation
- newly diagnosed
- minimally invasive
- electronic health record
- mitral valve
- decision making
- acute coronary syndrome
- case report
- patient reported outcomes
- deep learning