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In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department

BACKGROUND: Classical ST‐T waveform changes on standard 12‐lead ECG have limited sensitivity in detecting acute coronary syndrome (ACS) in the emergency department. Numerous novel ECG features have been previously proposed to augment clinicians' decision during patient evaluation, yet their cli...

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Autores principales: Bouzid, Zeineb, Faramand, Ziad, Gregg, Richard E., Frisch, Stephanie O., Martin‐Gill, Christian, Saba, Samir, Callaway, Clifton, Sejdić, Ervin, Al‐Zaiti, Salah
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7955430/
https://www.ncbi.nlm.nih.gov/pubmed/33459029
http://dx.doi.org/10.1161/JAHA.120.017871
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author Bouzid, Zeineb
Faramand, Ziad
Gregg, Richard E.
Frisch, Stephanie O.
Martin‐Gill, Christian
Saba, Samir
Callaway, Clifton
Sejdić, Ervin
Al‐Zaiti, Salah
author_facet Bouzid, Zeineb
Faramand, Ziad
Gregg, Richard E.
Frisch, Stephanie O.
Martin‐Gill, Christian
Saba, Samir
Callaway, Clifton
Sejdić, Ervin
Al‐Zaiti, Salah
author_sort Bouzid, Zeineb
collection PubMed
description BACKGROUND: Classical ST‐T waveform changes on standard 12‐lead ECG have limited sensitivity in detecting acute coronary syndrome (ACS) in the emergency department. Numerous novel ECG features have been previously proposed to augment clinicians' decision during patient evaluation, yet their clinical utility remains unclear. METHODS AND RESULTS: This was an observational study of consecutive patients evaluated for suspected ACS (Cohort 1 n=745, age 59±17, 42% female, 15% ACS; Cohort 2 n=499, age 59±16, 49% female, 18% ACS). Out of 554 temporal‐spatial ECG waveform features, we used domain knowledge to select a subset of 65 physiology‐driven features that are mechanistically linked to myocardial ischemia and compared their performance to a subset of 229 data‐driven features selected by multiple machine learning algorithms. We then used random forest to select a final subset of 73 most important ECG features that had both data‐ and physiology‐driven basis to ACS prediction and compared their performance to clinical experts. On testing set, a regularized logistic regression classifier based on the 73 hybrid features yielded a stable model that outperformed clinical experts in predicting ACS, with 10% to 29% of cases reclassified correctly. Metrics of nondipolar electrical dispersion (ie, circumferential ischemia), ventricular activation time (ie, transmural conduction delays), QRS and T axes and angles (ie, global remodeling), and principal component analysis ratio of ECG waveforms (ie, regional heterogeneity) played an important role in the improved reclassification performance. CONCLUSIONS: We identified a subset of novel ECG features predictive of ACS with a fully interpretable model highly adaptable to clinical decision support applications. REGISTRATION: URL: https://www.clinicaltrials.gov; Unique Identifier: NCT04237688.
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spelling pubmed-79554302021-03-17 In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department Bouzid, Zeineb Faramand, Ziad Gregg, Richard E. Frisch, Stephanie O. Martin‐Gill, Christian Saba, Samir Callaway, Clifton Sejdić, Ervin Al‐Zaiti, Salah J Am Heart Assoc Original Research BACKGROUND: Classical ST‐T waveform changes on standard 12‐lead ECG have limited sensitivity in detecting acute coronary syndrome (ACS) in the emergency department. Numerous novel ECG features have been previously proposed to augment clinicians' decision during patient evaluation, yet their clinical utility remains unclear. METHODS AND RESULTS: This was an observational study of consecutive patients evaluated for suspected ACS (Cohort 1 n=745, age 59±17, 42% female, 15% ACS; Cohort 2 n=499, age 59±16, 49% female, 18% ACS). Out of 554 temporal‐spatial ECG waveform features, we used domain knowledge to select a subset of 65 physiology‐driven features that are mechanistically linked to myocardial ischemia and compared their performance to a subset of 229 data‐driven features selected by multiple machine learning algorithms. We then used random forest to select a final subset of 73 most important ECG features that had both data‐ and physiology‐driven basis to ACS prediction and compared their performance to clinical experts. On testing set, a regularized logistic regression classifier based on the 73 hybrid features yielded a stable model that outperformed clinical experts in predicting ACS, with 10% to 29% of cases reclassified correctly. Metrics of nondipolar electrical dispersion (ie, circumferential ischemia), ventricular activation time (ie, transmural conduction delays), QRS and T axes and angles (ie, global remodeling), and principal component analysis ratio of ECG waveforms (ie, regional heterogeneity) played an important role in the improved reclassification performance. CONCLUSIONS: We identified a subset of novel ECG features predictive of ACS with a fully interpretable model highly adaptable to clinical decision support applications. REGISTRATION: URL: https://www.clinicaltrials.gov; Unique Identifier: NCT04237688. John Wiley and Sons Inc. 2021-01-17 /pmc/articles/PMC7955430/ /pubmed/33459029 http://dx.doi.org/10.1161/JAHA.120.017871 Text en © 2021 The Authors. Published on behalf of the American Heart Association, Inc., by Wiley. This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Original Research
Bouzid, Zeineb
Faramand, Ziad
Gregg, Richard E.
Frisch, Stephanie O.
Martin‐Gill, Christian
Saba, Samir
Callaway, Clifton
Sejdić, Ervin
Al‐Zaiti, Salah
In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title_full In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title_fullStr In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title_full_unstemmed In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title_short In Search of an Optimal Subset of ECG Features to Augment the Diagnosis of Acute Coronary Syndrome at the Emergency Department
title_sort in search of an optimal subset of ecg features to augment the diagnosis of acute coronary syndrome at the emergency department
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7955430/
https://www.ncbi.nlm.nih.gov/pubmed/33459029
http://dx.doi.org/10.1161/JAHA.120.017871
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