Machine Learning for Prediction of Adverse Cardiovascular Events in Adults With Repaired Tetralogy of Fallot Using Clinical and Cardiovascular Magnetic Resonance Imaging Variables.
Ayako IshikitaChristopher McIntoshKate HannemanMyunghyun M LeeTiffany LiangGauri R KarurS Lucy RocheEdward HickeyTal GevaDavid J BarronRachel M WaldPublished in: Circulation. Cardiovascular imaging (2023)
In this single-center study, a machine learning-based prediction model comprised of readily available clinical and cardiovascular magnetic resonance imaging variables performed well in an independent validation cohort. Further study will determine the value of this model for risk stratification in adults with repared tetralogy of Fallot.