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Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring

BACKGROUND: Precision estimation of cardiovascular risk remains the cornerstone of atherosclerotic cardiovascular disease (ASCVD) prevention. While coronary artery calcium (CAC) scoring is the best available non-invasive quantitative modality to evaluate risk of ASCVD, it excludes risk related to pr...

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Autores principales: Siva Kumar, Shruti, Al-Kindi, Sadeer, Tashtish, Nour, Rajagopalan, Varun, Fu, Pingfu, Rajagopalan, Sanjay, Madabhushi, Anant
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9580025/
https://www.ncbi.nlm.nih.gov/pubmed/36277775
http://dx.doi.org/10.3389/fcvm.2022.976769
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author Siva Kumar, Shruti
Al-Kindi, Sadeer
Tashtish, Nour
Rajagopalan, Varun
Fu, Pingfu
Rajagopalan, Sanjay
Madabhushi, Anant
author_facet Siva Kumar, Shruti
Al-Kindi, Sadeer
Tashtish, Nour
Rajagopalan, Varun
Fu, Pingfu
Rajagopalan, Sanjay
Madabhushi, Anant
author_sort Siva Kumar, Shruti
collection PubMed
description BACKGROUND: Precision estimation of cardiovascular risk remains the cornerstone of atherosclerotic cardiovascular disease (ASCVD) prevention. While coronary artery calcium (CAC) scoring is the best available non-invasive quantitative modality to evaluate risk of ASCVD, it excludes risk related to prior myocardial infarction, cardiomyopathy, and arrhythmia which are implicated in ASCVD. The high-dimensional and inter-correlated nature of ECG data makes it a good candidate for analysis using machine learning techniques and may provide additional prognostic information not captured by CAC. In this study, we aimed to develop a quantitative ECG risk score (eRiS) to predict major adverse cardiovascular events (MACE) alone, or when added to CAC. Further, we aimed to construct and validate a novel nomogram incorporating ECG, CAC and clinical factors for ASCVD. METHODS: We analyzed 5,864 patients with at least 1 cardiovascular risk factor who underwent CAC scoring and a standard ECG as part of the CLARIFY study (ClinicalTrials.gov Identifier: NCT04075162). Events were defined as myocardial infarction, coronary revascularization, stroke or death. A total of 649 ECG features, consisting of measurements such as amplitude and interval measurements from all deflections in the ECG waveform (53 per lead and 13 overall) were automatically extracted using a clinical software (GE Muse™ Cardiology Information System, GE Healthcare). The data was split into 4 training (S(tr)) and internal validation (S(v)) sets [S(tr) (1): S(v) (1): 50:50; S(tr) (2): S(v) (2): 60:40; S(tr) (3): S(v) (3): 70:30; S(tr) (4): S(v) (4): 80:20], and the results were compared across all the subsets. We used the ECG features derived from S(tr) to develop eRiS. A least absolute shrinkage and selection operator-Cox (LASSO-Cox) regularization model was used for data dimension reduction, feature selection, and eRiS construction. A Cox-proportional hazards model was used to assess the benefit of using an eRiS alone (M(ecg)), CAC alone (M(cac)) and a combination of eRiS and CAC (M(ecg+cac)) for MACE prediction. A nomogram (M(nom)) was further constructed by integrating eRiS with CAC and demographics (age and sex). The primary endpoint of the study was the assessment of the performance of M(ecg), M(cac), M(ecg+cac) and M(nom) in predicting CV disease-free survival in ASCVD. FINDINGS: Over a median follow-up of 14 months, 494 patients had MACE. The feature selection strategy preserved only about 18% of the features that were consistent across the various strata (S(tr)). The M(ecg) model, comprising of eRiS alone was found to be significantly associated with MACE and had good discrimination of MACE (C-Index: 0.7, p = <2e-16). eRiS could predict time-to MACE (C-Index: 0.6, p = <2e-16 across all S(v)). The M(ecg+cac) model was associated with MACE (C-index: 0.71). Model comparison showed that M(ecg+cac) was superior to M(ecg) (p = 1.8e-10) or M(cac) (p < 2.2e-16) alone. The M(nom), comprising of eRiS, CAC, age and sex was associated with MACE (C-index 0.71). eRiS had the most significant contribution, followed by CAC score and other clinical variables. Further, M(nom) was able to identify unique patient risk-groups based on eRiS, CAC and clinical variables. CONCLUSION: The use of ECG features in conjunction with CAC may allow for improved prognostication and identification of populations at risk. Future directions will involve prospective validation of the risk score and the nomogram across diverse populations with a heterogeneity of treatment effects.
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spelling pubmed-95800252022-10-20 Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring Siva Kumar, Shruti Al-Kindi, Sadeer Tashtish, Nour Rajagopalan, Varun Fu, Pingfu Rajagopalan, Sanjay Madabhushi, Anant Front Cardiovasc Med Cardiovascular Medicine BACKGROUND: Precision estimation of cardiovascular risk remains the cornerstone of atherosclerotic cardiovascular disease (ASCVD) prevention. While coronary artery calcium (CAC) scoring is the best available non-invasive quantitative modality to evaluate risk of ASCVD, it excludes risk related to prior myocardial infarction, cardiomyopathy, and arrhythmia which are implicated in ASCVD. The high-dimensional and inter-correlated nature of ECG data makes it a good candidate for analysis using machine learning techniques and may provide additional prognostic information not captured by CAC. In this study, we aimed to develop a quantitative ECG risk score (eRiS) to predict major adverse cardiovascular events (MACE) alone, or when added to CAC. Further, we aimed to construct and validate a novel nomogram incorporating ECG, CAC and clinical factors for ASCVD. METHODS: We analyzed 5,864 patients with at least 1 cardiovascular risk factor who underwent CAC scoring and a standard ECG as part of the CLARIFY study (ClinicalTrials.gov Identifier: NCT04075162). Events were defined as myocardial infarction, coronary revascularization, stroke or death. A total of 649 ECG features, consisting of measurements such as amplitude and interval measurements from all deflections in the ECG waveform (53 per lead and 13 overall) were automatically extracted using a clinical software (GE Muse™ Cardiology Information System, GE Healthcare). The data was split into 4 training (S(tr)) and internal validation (S(v)) sets [S(tr) (1): S(v) (1): 50:50; S(tr) (2): S(v) (2): 60:40; S(tr) (3): S(v) (3): 70:30; S(tr) (4): S(v) (4): 80:20], and the results were compared across all the subsets. We used the ECG features derived from S(tr) to develop eRiS. A least absolute shrinkage and selection operator-Cox (LASSO-Cox) regularization model was used for data dimension reduction, feature selection, and eRiS construction. A Cox-proportional hazards model was used to assess the benefit of using an eRiS alone (M(ecg)), CAC alone (M(cac)) and a combination of eRiS and CAC (M(ecg+cac)) for MACE prediction. A nomogram (M(nom)) was further constructed by integrating eRiS with CAC and demographics (age and sex). The primary endpoint of the study was the assessment of the performance of M(ecg), M(cac), M(ecg+cac) and M(nom) in predicting CV disease-free survival in ASCVD. FINDINGS: Over a median follow-up of 14 months, 494 patients had MACE. The feature selection strategy preserved only about 18% of the features that were consistent across the various strata (S(tr)). The M(ecg) model, comprising of eRiS alone was found to be significantly associated with MACE and had good discrimination of MACE (C-Index: 0.7, p = <2e-16). eRiS could predict time-to MACE (C-Index: 0.6, p = <2e-16 across all S(v)). The M(ecg+cac) model was associated with MACE (C-index: 0.71). Model comparison showed that M(ecg+cac) was superior to M(ecg) (p = 1.8e-10) or M(cac) (p < 2.2e-16) alone. The M(nom), comprising of eRiS, CAC, age and sex was associated with MACE (C-index 0.71). eRiS had the most significant contribution, followed by CAC score and other clinical variables. Further, M(nom) was able to identify unique patient risk-groups based on eRiS, CAC and clinical variables. CONCLUSION: The use of ECG features in conjunction with CAC may allow for improved prognostication and identification of populations at risk. Future directions will involve prospective validation of the risk score and the nomogram across diverse populations with a heterogeneity of treatment effects. Frontiers Media S.A. 2022-10-05 /pmc/articles/PMC9580025/ /pubmed/36277775 http://dx.doi.org/10.3389/fcvm.2022.976769 Text en Copyright © 2022 Siva Kumar, Al-Kindi, Tashtish, Rajagopalan, Fu, Rajagopalan and Madabhushi. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cardiovascular Medicine
Siva Kumar, Shruti
Al-Kindi, Sadeer
Tashtish, Nour
Rajagopalan, Varun
Fu, Pingfu
Rajagopalan, Sanjay
Madabhushi, Anant
Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title_full Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title_fullStr Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title_full_unstemmed Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title_short Machine learning derived ECG risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
title_sort machine learning derived ecg risk score improves cardiovascular risk assessment in conjunction with coronary artery calcium scoring
topic Cardiovascular Medicine
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9580025/
https://www.ncbi.nlm.nih.gov/pubmed/36277775
http://dx.doi.org/10.3389/fcvm.2022.976769
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