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Assessing electrocardiogram changes after ischemic stroke with artificial intelligence

OBJECTIVE: Ischemic stroke (IS) with subsequent cerebrocardiac syndrome (CCS) has a poor prognosis. We aimed to investigate electrocardiogram (ECG) changes after IS with artificial intelligence (AI). METHODS: We collected ECGs from a healthy population and patients with IS, and then analyzed partici...

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Autores principales: Zeng, Ziqiang, Wang, Qixuan, Yu, Yingjing, Zhang, Yichu, Chen, Qi, Lou, Weiming, Wang, Yuting, Yan, Lingyu, Cheng, Zujue, Xu, Lijun, Yi, Yingping, Fan, Guangqin, Deng, Libin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9794063/
https://www.ncbi.nlm.nih.gov/pubmed/36574427
http://dx.doi.org/10.1371/journal.pone.0279706
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author Zeng, Ziqiang
Wang, Qixuan
Yu, Yingjing
Zhang, Yichu
Chen, Qi
Lou, Weiming
Wang, Yuting
Yan, Lingyu
Cheng, Zujue
Xu, Lijun
Yi, Yingping
Fan, Guangqin
Deng, Libin
author_facet Zeng, Ziqiang
Wang, Qixuan
Yu, Yingjing
Zhang, Yichu
Chen, Qi
Lou, Weiming
Wang, Yuting
Yan, Lingyu
Cheng, Zujue
Xu, Lijun
Yi, Yingping
Fan, Guangqin
Deng, Libin
author_sort Zeng, Ziqiang
collection PubMed
description OBJECTIVE: Ischemic stroke (IS) with subsequent cerebrocardiac syndrome (CCS) has a poor prognosis. We aimed to investigate electrocardiogram (ECG) changes after IS with artificial intelligence (AI). METHODS: We collected ECGs from a healthy population and patients with IS, and then analyzed participant demographics and ECG parameters to identify abnormal features in post-IS ECGs. Next, we trained the convolutional neural network (CNN), random forest (RF) and support vector machine (SVM) models to automatically detect the changes in the ECGs; Additionally, We compared the CNN scores of good prognosis (mRS ≤ 2) and poor prognosis (mRS > 2) to assess the prognostic value of CNN model. Finally, we used gradient class activation map (Grad-CAM) to localize the key abnormalities. RESULTS: Among the 3506 ECGs of the IS patients, 2764 ECGs (78.84%) led to an abnormal diagnosis. Then we divided ECGs in the primary cohort into three groups, normal ECGs (N-Ns), abnormal ECGs after the first ischemic stroke (A-ISs), and normal ECGs after the first ischemic stroke (N-ISs). Basic demographic and ECG parameter analyses showed that heart rate, QT interval, and P-R interval were significantly different between 673 N-ISs and 3546 N-Ns (p < 0.05). The CNN has the best performance among the three models in distinguishing A-ISs and N-Ns (AUC: 0.88, 95%CI = 0.86–0.90). The prediction scores of the A-ISs and N-ISs obtained from the all three models are statistically different from the N-Ns (p < 0.001). Futhermore, the CNN scores of the two groups (mRS > 2 and mRS ≤ 2) were significantly different (p < 0.05). Finally, Grad-CAM revealed that the V4 lead may harbor the highest probability of abnormality. CONCLUSION: Our study showed that a high proportion of post-IS ECGs harbored abnormal changes. Our CNN model can systematically assess anomalies in and prognosticate post-IS ECGs.
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spelling pubmed-97940632022-12-28 Assessing electrocardiogram changes after ischemic stroke with artificial intelligence Zeng, Ziqiang Wang, Qixuan Yu, Yingjing Zhang, Yichu Chen, Qi Lou, Weiming Wang, Yuting Yan, Lingyu Cheng, Zujue Xu, Lijun Yi, Yingping Fan, Guangqin Deng, Libin PLoS One Research Article OBJECTIVE: Ischemic stroke (IS) with subsequent cerebrocardiac syndrome (CCS) has a poor prognosis. We aimed to investigate electrocardiogram (ECG) changes after IS with artificial intelligence (AI). METHODS: We collected ECGs from a healthy population and patients with IS, and then analyzed participant demographics and ECG parameters to identify abnormal features in post-IS ECGs. Next, we trained the convolutional neural network (CNN), random forest (RF) and support vector machine (SVM) models to automatically detect the changes in the ECGs; Additionally, We compared the CNN scores of good prognosis (mRS ≤ 2) and poor prognosis (mRS > 2) to assess the prognostic value of CNN model. Finally, we used gradient class activation map (Grad-CAM) to localize the key abnormalities. RESULTS: Among the 3506 ECGs of the IS patients, 2764 ECGs (78.84%) led to an abnormal diagnosis. Then we divided ECGs in the primary cohort into three groups, normal ECGs (N-Ns), abnormal ECGs after the first ischemic stroke (A-ISs), and normal ECGs after the first ischemic stroke (N-ISs). Basic demographic and ECG parameter analyses showed that heart rate, QT interval, and P-R interval were significantly different between 673 N-ISs and 3546 N-Ns (p < 0.05). The CNN has the best performance among the three models in distinguishing A-ISs and N-Ns (AUC: 0.88, 95%CI = 0.86–0.90). The prediction scores of the A-ISs and N-ISs obtained from the all three models are statistically different from the N-Ns (p < 0.001). Futhermore, the CNN scores of the two groups (mRS > 2 and mRS ≤ 2) were significantly different (p < 0.05). Finally, Grad-CAM revealed that the V4 lead may harbor the highest probability of abnormality. CONCLUSION: Our study showed that a high proportion of post-IS ECGs harbored abnormal changes. Our CNN model can systematically assess anomalies in and prognosticate post-IS ECGs. Public Library of Science 2022-12-27 /pmc/articles/PMC9794063/ /pubmed/36574427 http://dx.doi.org/10.1371/journal.pone.0279706 Text en © 2022 Zeng et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Zeng, Ziqiang
Wang, Qixuan
Yu, Yingjing
Zhang, Yichu
Chen, Qi
Lou, Weiming
Wang, Yuting
Yan, Lingyu
Cheng, Zujue
Xu, Lijun
Yi, Yingping
Fan, Guangqin
Deng, Libin
Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title_full Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title_fullStr Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title_full_unstemmed Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title_short Assessing electrocardiogram changes after ischemic stroke with artificial intelligence
title_sort assessing electrocardiogram changes after ischemic stroke with artificial intelligence
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9794063/
https://www.ncbi.nlm.nih.gov/pubmed/36574427
http://dx.doi.org/10.1371/journal.pone.0279706
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