Machine learning-based prediction of adverse events following an acute coronary syndrome (PRAISE): a modelling study of pooled datasets
Articolo
Data di Pubblicazione:
2021
Abstract:
Background The accuracy of current prediction tools for ischaemic and bleeding events after an acute coronary syndrome (ACS) remains insufficient for individualised patient management strategies. We developed a machine learning-based risk stratification model to predict all-cause death, recurrent acute myocardial infarction, and major bleeding after ACS.Methods Different machine learning models for the prediction of 1-year post-discharge all-cause death, myocardial infarction, and major bleeding (defined as Bleeding Academic Research Consortium type 3 or 5) were trained on a cohort of 19 826 adult patients with ACS (split into a training cohort [80%] and internal validation cohort [20%]) from the BleeMACS and RENAMI registries, which included patients across several continents. 25 clinical features routinely assessed at discharge were used to inform the models. The best-performing model for each study outcome (the PRAISE score) was tested in an external validation cohort of 3444 patients with ACS pooled from a randomised controlled trial and three prospective registries. Model performance was assessed according to a range of learning metrics including area under the receiver operating characteristic curve (AUC).Findings The PRAISE score showed an AUC of 0.82 (95% CI 0.78-0.85) in the internal validation cohort and 0.92 (0.90-0.93) in the external validation cohort for 1-year all-cause death; an AUC of 0.74 (0.70-0.78) in the internal validation cohort and 0.81 (0.76-0.85) in the external validation cohort for 1-year myocardial infarction; and an AUC of 0.70 (0.66-0.75) in the internal validation cohort and 0.86 (0.82-0.89) in the external validation cohort for 1-year major bleeding.Interpretation A machine learning-based approach for the identification of predictors of events after an ACS is feasible and effective. The PRAISE score showed accurate discriminative capabilities for the prediction of all-cause death, myocardial infarction, and major bleeding, and might be useful to guide clinical decision making. Copyright (C) 2021 Elsevier Ltd. All rights reserved.
Tipologia CRIS:
1.1 Articolo in rivista
Elenco autori:
F, D'Ascenzo; O, De Filippo; G, Gallone; G, Mittone; Ma, Deriu; M, Iannaccone; A, Ariza-Sole; C, Liebetrau; S, Manzano-Fernandez; G, Quadri; T, Kinnaird; G, Campo; Jps, Henriques; Jm, Hughes; A, Dominguez-Rodriguez; M, Aldinucci; U, Morbiducci; G, Patti; S, Raposeiras-Roubin; E, Abu-Assi; Ferrari, De; PRAISE study group: Francesco Piroli, Gm; Saglietto, Andrea; Conrotto, Federico; Omedé, Pierluigi; Montefusco, Antonio; Pennone, Mauro; Bruno, Francesco; Paolo Bocchino, Pier; Boccuzzi, Giacomo; Cerrato, Enrico; Varbella, Ferdinando; Sperti, Michela; B Wilton, Stephen; Velicki, Lazar; Xanthopoulou, Ioanna; Cequier, Angel; Iniguez-Romo, Andres; Munoz Pousa, Isabel; Cespon Fernandez, Maria; Caneiro Queija, Berenice; Cobas-Paz, Rafael; Lopez-Cuenca, Angel; Garay, Alberto; Flores Blanco, Pedro; Rognoni, Andrea; Biondi Zoccai, Giuseppe; Biscaglia, Simone; Nunez-Gil, Ivan; Fujii, Toshiharu; Durante, Alessandro; Song, Xiantao; Kawaji, Tetsuma; Alexopoulos, Dimitrios; Huczek, Zenon; Ramon Gonzalez Juanatey, Jose; Nie, Shao-Ping; Kawashiri, Masa-Aki; Colonnelli, Iacopo; Cantalupo, Barbara; Esposito, Roberto; Leonardi, Sergio; Grosso Marra, Walter; Chieffo, Alaide; Michelucci, Umberto; Piga, Dario; Malavolta, Marta; Gili, Sebastiano; Mennuni, Marco; Montalto, Claudio; Oltrona Visconti, Luigi; Arfat, Yasir
Link alla scheda completa:
Pubblicato in: