Author
Listed:
- Ziqiang Zeng
- Qixuan Wang
- Yingjing Yu
- Yichu Zhang
- Qi Chen
- Weiming Lou
- Yuting Wang
- Lingyu Yan
- Zujue Cheng
- Lijun Xu
- Yingping Yi
- Guangqin Fan
- Libin Deng
Abstract
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 2 and mRS ≤ 2) were significantly different (p
Suggested Citation
Ziqiang Zeng & Qixuan Wang & Yingjing Yu & Yichu Zhang & Qi Chen & Weiming Lou & Yuting Wang & Lingyu Yan & Zujue Cheng & Lijun Xu & Yingping Yi & Guangqin Fan & Libin Deng, 2022.
"Assessing electrocardiogram changes after ischemic stroke with artificial intelligence,"
PLOS ONE, Public Library of Science, vol. 17(12), pages 1-16, December.
Handle:
RePEc:plo:pone00:0279706
DOI: 10.1371/journal.pone.0279706
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