Adverse Outcomes Prediction for Congenital Heart Surgery: A Machine Learning Approach.
Dimitris BertsimasDaisy ZhuoJack DunnJordan LevineEugenio ZuccarelliNikos SmyrnakisZdzislaw TobotaBohdan J MaruszewskiJose FragataGeorgios SarrisPublished in: World journal for pediatric & congenital heart surgery (2021)
The nonlinear ML-based models of OCTs are intuitively interpretable and provide superior predictive power. The associated risk calculator allows easy, accurate, and understandable estimation of individual patient risks, in the theoretical framework of the average performance of all centers represented in the database. This methodology has the potential to facilitate decision-making and resource optimization in CHS, enabling total quality management and precise benchmarking initiatives.
Keyphrases
- machine learning
- decision making
- human health
- quality improvement
- minimally invasive
- coronary artery bypass
- case report
- risk assessment
- high resolution
- artificial intelligence
- surgical site infection
- emergency department
- big data
- climate change
- adverse drug
- percutaneous coronary intervention
- deep learning
- acute coronary syndrome
- mass spectrometry
- electronic health record