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Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models

AIMS: Central to the practice of precision medicine in percutaneous coronary intervention (PCI) is a risk-stratification tool to predict outcomes following the procedure. This study is intended to assess machine learning (ML)-based risk models to predict clinically relevant outcomes in PCI and to su...

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Autores principales: Mamas, Mamas A, Roffi, Marco, Fröbert, Ole, Chieffo, Alaide, Beneduce, Alessandro, Matetic, Andrija, Tonino, Pim A L, Paunovic, Dragica, Jacobs, Lotte, Debrus, Roxane, El Aissaoui, Jérémy, van Leeuwen, Frank, Kontopantelis, Evangelos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10689920/
https://www.ncbi.nlm.nih.gov/pubmed/38045434
http://dx.doi.org/10.1093/ehjdh/ztad051
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author Mamas, Mamas A
Roffi, Marco
Fröbert, Ole
Chieffo, Alaide
Beneduce, Alessandro
Matetic, Andrija
Tonino, Pim A L
Paunovic, Dragica
Jacobs, Lotte
Debrus, Roxane
El Aissaoui, Jérémy
van Leeuwen, Frank
Kontopantelis, Evangelos
author_facet Mamas, Mamas A
Roffi, Marco
Fröbert, Ole
Chieffo, Alaide
Beneduce, Alessandro
Matetic, Andrija
Tonino, Pim A L
Paunovic, Dragica
Jacobs, Lotte
Debrus, Roxane
El Aissaoui, Jérémy
van Leeuwen, Frank
Kontopantelis, Evangelos
author_sort Mamas, Mamas A
collection PubMed
description AIMS: Central to the practice of precision medicine in percutaneous coronary intervention (PCI) is a risk-stratification tool to predict outcomes following the procedure. This study is intended to assess machine learning (ML)-based risk models to predict clinically relevant outcomes in PCI and to support individualized clinical decision-making in this setting. METHODS AND RESULTS: Five different ML models [gradient boosting classifier (GBC), linear discrimination analysis, Naïve Bayes, logistic regression, and K-nearest neighbours algorithm) for the prediction of 1-year target lesion failure (TLF) were trained on an extensive data set of 35 389 patients undergoing PCI and enrolled in the global, all-comers e-ULTIMASTER registry. The data set was split into a training (80%) and a test set (20%). Twenty-three patient and procedural characteristics were used as predictive variables. The models were compared for discrimination according to the area under the receiver operating characteristic curve (AUC) and for calibration. The GBC model showed the best discriminative ability with an AUC of 0.72 (95% confidence interval 0.69–0.75) for 1-year TLF on the test set. The discriminative ability of the GBC model for the components of TLF was highest for cardiac death with an AUC of 0.82, followed by target vessel myocardial infarction with an AUC of 0.75 and clinically driven target lesion revascularization with an AUC of 0.68. The calibration was fair until the highest risk deciles showed an underestimation of the risk. CONCLUSION: Machine learning–derived predictive models provide a reasonably accurate prediction of 1-year TLF in patients undergoing PCI. A prospective evaluation of the predictive score is warranted. REGISTRATION: Clinicaltrial.gov identifier is NCT02188355.
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spelling pubmed-106899202023-12-02 Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models Mamas, Mamas A Roffi, Marco Fröbert, Ole Chieffo, Alaide Beneduce, Alessandro Matetic, Andrija Tonino, Pim A L Paunovic, Dragica Jacobs, Lotte Debrus, Roxane El Aissaoui, Jérémy van Leeuwen, Frank Kontopantelis, Evangelos Eur Heart J Digit Health Original Article AIMS: Central to the practice of precision medicine in percutaneous coronary intervention (PCI) is a risk-stratification tool to predict outcomes following the procedure. This study is intended to assess machine learning (ML)-based risk models to predict clinically relevant outcomes in PCI and to support individualized clinical decision-making in this setting. METHODS AND RESULTS: Five different ML models [gradient boosting classifier (GBC), linear discrimination analysis, Naïve Bayes, logistic regression, and K-nearest neighbours algorithm) for the prediction of 1-year target lesion failure (TLF) were trained on an extensive data set of 35 389 patients undergoing PCI and enrolled in the global, all-comers e-ULTIMASTER registry. The data set was split into a training (80%) and a test set (20%). Twenty-three patient and procedural characteristics were used as predictive variables. The models were compared for discrimination according to the area under the receiver operating characteristic curve (AUC) and for calibration. The GBC model showed the best discriminative ability with an AUC of 0.72 (95% confidence interval 0.69–0.75) for 1-year TLF on the test set. The discriminative ability of the GBC model for the components of TLF was highest for cardiac death with an AUC of 0.82, followed by target vessel myocardial infarction with an AUC of 0.75 and clinically driven target lesion revascularization with an AUC of 0.68. The calibration was fair until the highest risk deciles showed an underestimation of the risk. CONCLUSION: Machine learning–derived predictive models provide a reasonably accurate prediction of 1-year TLF in patients undergoing PCI. A prospective evaluation of the predictive score is warranted. REGISTRATION: Clinicaltrial.gov identifier is NCT02188355. Oxford University Press 2023-08-31 /pmc/articles/PMC10689920/ /pubmed/38045434 http://dx.doi.org/10.1093/ehjdh/ztad051 Text en © The Author(s) 2023. Published by Oxford University Press on behalf of the European Society of Cardiology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Original Article
Mamas, Mamas A
Roffi, Marco
Fröbert, Ole
Chieffo, Alaide
Beneduce, Alessandro
Matetic, Andrija
Tonino, Pim A L
Paunovic, Dragica
Jacobs, Lotte
Debrus, Roxane
El Aissaoui, Jérémy
van Leeuwen, Frank
Kontopantelis, Evangelos
Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title_full Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title_fullStr Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title_full_unstemmed Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title_short Predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
title_sort predicting target lesion failure following percutaneous coronary intervention through machine learning risk assessment models
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10689920/
https://www.ncbi.nlm.nih.gov/pubmed/38045434
http://dx.doi.org/10.1093/ehjdh/ztad051
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