Detection of Myocardial Infarction Using Hybrid CNN-LSTM Model

Muhtasim Firoz, Rethwan Faiz, Nuzat Naury Alam, M. H. Imam
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Abstract

Electrocardiograms, or ECGs, are used by medical professionals to identify whether or not a patient has been experiencing myocardial infarction. In the medical field, myocardial injury detection procedures are not usually automated. A deep learning-based model can automate this manual procedure. The proposed model is a deep learning-based predictive model capable of detecting myocardial infarction from 15 ECG leads. The PTB database was used in this model. This database contains data from 15 ECG leads, which include 12 standard leads and 3 frank leads. The objective of the work is to identify MI with high and stable accuracy, F1 score, precision, and recall using an imbalanced PTB dataset. The proposed model is a combination of the dilated CNN(ConvNetQuake) and an LSTM network. The validation F1 score, precision, recall, and accuracy for the model are 1.0, 1.0, 1.0 and 100%, respectively. Regarding the test set, the F1 score, precision, recall, and accuracy for the model are 0.94, 0.88, 1.0 and 97.7%, respectively.
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用CNN-LSTM混合模型检测心肌梗死
心电图(electrocardiogram,简称ECGs)是医学专业人员用来确定患者是否患有心肌梗死的工具。在医学领域,心肌损伤检测程序通常不是自动化的。基于深度学习的模型可以自动执行这一手动过程。该模型是一种基于深度学习的预测模型,能够从15个心电图导联中检测心肌梗死。本模型采用PTB数据库。此数据库包含15个ECG导联的数据,其中包括12个标准导联和3个坦率导联。这项工作的目标是使用一个不平衡的PTB数据集来识别具有高而稳定的准确性、F1分数、精度和召回率的MI。该模型是扩展CNN(ConvNetQuake)和LSTM网络的结合。模型的验证F1分数、精密度、召回率和准确度分别为1.0、1.0、1.0和100%。对于测试集,模型的F1得分为0.94,准确率为0.88,召回率为1.0,准确率为97.7%。
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