TY - JOUR
T1 - Prediction of All-Cause Mortality Following Percutaneous Coronary Intervention in Bifurcation Lesions Using Machine Learning Algorithms
AU - Burrello, Jacopo
AU - Gallone, Guglielmo
AU - Burrello, Alessio
AU - Pagliari, Daniele Jahier
AU - Ploumen, Eline H.
AU - Iannaccone, Mario
AU - De Luca, Leonardo
AU - Zocca, Paolo
AU - Patti, Giuseppe
AU - Cerrato, Enrico
AU - Wojakowski, Wojciech
AU - Venuti, Giuseppe
AU - De Filippo, Ovidio
AU - Mattesini, Alessio
AU - Ryan, Nicola
AU - Helft, Gérard
AU - Muscoli, Saverio
AU - Kan, Jing
AU - Sheiban, Imad
AU - Parma, Radoslaw
AU - Trabattoni, Daniela
AU - Giammaria, Massimo
AU - Truffa, Alessandra
AU - Piroli, Francesco
AU - Imori, Yoichi
AU - Cortese, Bernardo
AU - Omedè, Pierluigi
AU - Conrotto, Federico
AU - Chen, Shao Liang
AU - Escaned, Javier
AU - Buiten, Rosaly A.
AU - Von Birgelen, Clemens
AU - Mulatero, Paolo
AU - De Ferrari, Gaetano Maria
AU - Monticone, Silvia
AU - D’ascenzo, Fabrizio
N1 - Publisher Copyright:
© 2022 by the authors. Licensee MDPI, Basel, Switzerland.
PY - 2022/6
Y1 - 2022/6
N2 - Stratifying prognosis following coronary bifurcation percutaneous coronary intervention (PCI) is an unmet clinical need that may be fulfilled through the adoption of machine learning (ML) algorithms to refine outcome predictions. We sought to develop an ML-based risk stratification model built on clinical, anatomical, and procedural features to predict all-cause mortality following contemporary bifurcation PCI. Multiple ML models to predict all-cause mortality were tested on a cohort of 2393 patients (training, n = 1795; internal validation, n = 598) undergoing bifurcation PCI with contemporary stents from the real-world RAIN registry. Twenty-five commonly available patient-/lesion-related features were selected to train ML models. The best model was validated in an external cohort of 1701 patients undergoing bifurcation PCI from the DUTCH PEERS and BIO-RESORT trial cohorts. At ROC curves, the AUC for the prediction of 2-year mortality was 0.79 (0.74–0.83) in the overall population, 0.74 (0.62–0.85) at internal validation and 0.71 (0.62–0.79) at external validation. Performance at risk ranking analysis, k-center cross-validation, and continual learning confirmed the generalizability of the models, also available as an online interface. The RAIN-ML prediction model represents the first tool combining clinical, anatomical, and procedural features to predict all-cause mortality among patients undergoing contemporary bifurcation PCI with reliable performance.
AB - Stratifying prognosis following coronary bifurcation percutaneous coronary intervention (PCI) is an unmet clinical need that may be fulfilled through the adoption of machine learning (ML) algorithms to refine outcome predictions. We sought to develop an ML-based risk stratification model built on clinical, anatomical, and procedural features to predict all-cause mortality following contemporary bifurcation PCI. Multiple ML models to predict all-cause mortality were tested on a cohort of 2393 patients (training, n = 1795; internal validation, n = 598) undergoing bifurcation PCI with contemporary stents from the real-world RAIN registry. Twenty-five commonly available patient-/lesion-related features were selected to train ML models. The best model was validated in an external cohort of 1701 patients undergoing bifurcation PCI from the DUTCH PEERS and BIO-RESORT trial cohorts. At ROC curves, the AUC for the prediction of 2-year mortality was 0.79 (0.74–0.83) in the overall population, 0.74 (0.62–0.85) at internal validation and 0.71 (0.62–0.79) at external validation. Performance at risk ranking analysis, k-center cross-validation, and continual learning confirmed the generalizability of the models, also available as an online interface. The RAIN-ML prediction model represents the first tool combining clinical, anatomical, and procedural features to predict all-cause mortality among patients undergoing contemporary bifurcation PCI with reliable performance.
KW - coronary bifurcation
KW - machine learning
KW - percutaneous coronary intervention
KW - prognosis
UR - http://www.scopus.com/inward/record.url?scp=85132844710&partnerID=8YFLogxK
U2 - 10.3390/jpm12060990
DO - 10.3390/jpm12060990
M3 - Article
SN - 2075-4426
VL - 12
JO - Journal of Personalized Medicine
JF - Journal of Personalized Medicine
IS - 6
M1 - 990
ER -