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Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction

BACKGROUND: Qualitative differences in 12-lead electrocardiograms (ECG) at onset have been reported in patients with takotsubo syndrome (TTS) and acute anterior myocardial infarction (Ant-AMI). We aimed to distinguish these diseases by machine learning (ML) approach of microvolt-level quantitative m...

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Autores principales: Shimizu, Masato, Suzuki, Makoto, Fujii, Hiroyuki, Kimura, Shigeki, Nishizaki, Mitsuhiro, Sasano, Tetsuo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9422059/
https://www.ncbi.nlm.nih.gov/pubmed/36046427
http://dx.doi.org/10.1016/j.cvdhj.2022.07.001
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author Shimizu, Masato
Suzuki, Makoto
Fujii, Hiroyuki
Kimura, Shigeki
Nishizaki, Mitsuhiro
Sasano, Tetsuo
author_facet Shimizu, Masato
Suzuki, Makoto
Fujii, Hiroyuki
Kimura, Shigeki
Nishizaki, Mitsuhiro
Sasano, Tetsuo
author_sort Shimizu, Masato
collection PubMed
description BACKGROUND: Qualitative differences in 12-lead electrocardiograms (ECG) at onset have been reported in patients with takotsubo syndrome (TTS) and acute anterior myocardial infarction (Ant-AMI). We aimed to distinguish these diseases by machine learning (ML) approach of microvolt-level quantitative measurements. METHODS: We enrolled 56 consecutive patients with sinus rhythm TTS (median age, 77 years; 16 men), and 1-to-1 random matching was performed based on age and sex of the patients. The ECG in the emergency room was evaluated using an automated system (ECAPs12c; Nihon-Koden). Statistical and ML predictive models for TTS were constructed using clinical features and ECG parameters. RESULTS: Statistically significant differences were observed in 25 parameters; the V(1) ST level at the J point (V(1) STJ) showed the lowest P value (P < .001). V(1) STJ ≤+18 μV showed the highest accuracy for TTS (0.773). The highest area under the receiver operating characteristic curve (AUROC) was shown in the aVR ST level at 1/16th of the preceding R-R interval after the J point (aVR STmid: 0.727). Conversely, the light gradient boosting machine (model_LGBM) and extra tree classifier (model_ET) indicated higher accuracy (model_LGBM: 0.842, model_ET: 0.831) and AUROC (model_LGBM: 0.868, model_ET 0.896) than other statistical models. V(1) STJ had high feature importance and Shapley additive explanation values in the 2 ML models. CONCLUSION: ML applied to automated microvolt-level ECG measurements showed the possibility of distinguishing between TTS and Ant-AMI, which may be a clinically useful ECG-based discriminator.
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spelling pubmed-94220592022-08-30 Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction Shimizu, Masato Suzuki, Makoto Fujii, Hiroyuki Kimura, Shigeki Nishizaki, Mitsuhiro Sasano, Tetsuo Cardiovasc Digit Health J Original Article BACKGROUND: Qualitative differences in 12-lead electrocardiograms (ECG) at onset have been reported in patients with takotsubo syndrome (TTS) and acute anterior myocardial infarction (Ant-AMI). We aimed to distinguish these diseases by machine learning (ML) approach of microvolt-level quantitative measurements. METHODS: We enrolled 56 consecutive patients with sinus rhythm TTS (median age, 77 years; 16 men), and 1-to-1 random matching was performed based on age and sex of the patients. The ECG in the emergency room was evaluated using an automated system (ECAPs12c; Nihon-Koden). Statistical and ML predictive models for TTS were constructed using clinical features and ECG parameters. RESULTS: Statistically significant differences were observed in 25 parameters; the V(1) ST level at the J point (V(1) STJ) showed the lowest P value (P < .001). V(1) STJ ≤+18 μV showed the highest accuracy for TTS (0.773). The highest area under the receiver operating characteristic curve (AUROC) was shown in the aVR ST level at 1/16th of the preceding R-R interval after the J point (aVR STmid: 0.727). Conversely, the light gradient boosting machine (model_LGBM) and extra tree classifier (model_ET) indicated higher accuracy (model_LGBM: 0.842, model_ET: 0.831) and AUROC (model_LGBM: 0.868, model_ET 0.896) than other statistical models. V(1) STJ had high feature importance and Shapley additive explanation values in the 2 ML models. CONCLUSION: ML applied to automated microvolt-level ECG measurements showed the possibility of distinguishing between TTS and Ant-AMI, which may be a clinically useful ECG-based discriminator. Elsevier 2022-07-16 /pmc/articles/PMC9422059/ /pubmed/36046427 http://dx.doi.org/10.1016/j.cvdhj.2022.07.001 Text en © 2022 Heart Rhythm Society. https://creativecommons.org/licenses/by/4.0/This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Original Article
Shimizu, Masato
Suzuki, Makoto
Fujii, Hiroyuki
Kimura, Shigeki
Nishizaki, Mitsuhiro
Sasano, Tetsuo
Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title_full Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title_fullStr Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title_full_unstemmed Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title_short Machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
title_sort machine learning of microvolt-level 12-lead electrocardiogram can help distinguish takotsubo syndrome and acute anterior myocardial infarction
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9422059/
https://www.ncbi.nlm.nih.gov/pubmed/36046427
http://dx.doi.org/10.1016/j.cvdhj.2022.07.001
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