Data-driven point-of-care risk model in patients with acute myocardial infarction and cardiogenic shock
European Heart Journal - Acute CardioVascular Care

Abstract
Prognosis models based on stepwise regression methods show modest performance in patients with cardiogenic shock (CS). Automated variable selection allows data-driven risk evaluation by recognizing distinct patterns in data. We sought to evaluate an automated variable selection method (least absolute shrinkage and selection operator, LASSO) for predicting 30-day mortality in patients with acute myocardial infarction and CS (AMICS) receiving acute percutaneous coronary intervention (PCI) compared to two established scores.
Consecutive patients with AMICS receiving acute PCI at one of two tertiary heart centres in Denmark 2010–2017. Patients were divided according to treatment with mechanical circulatory support (MCS); PCI–MCS cohort (
Data-driven prognosis models outperformed established risk scores in patients with AMICS receiving acute PCI and exhibited good discriminative abilities. Observations indicate a potential use of machinelearning to facilitate individualized patient care and targeted interventions in the future.
Contributors

Henrik Schmidt
Author

Jacob E Møller
Author

Hanne B Ravn
Author

Ole K L Helgestad
Author

Sören Möller
Author

Lisette O Jensen
Author

Lene Holmvang
Author




