基于心电信号的STEMI集成深度学习预测

Kanimozhi J, Hemalatha Karnan, UmaMaheshwari Durairaj
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引用次数: 0

摘要

心肌梗死或心脏病发作是由于冠状动脉粥样硬化斑块沉积,阻塞动脉,导致心肌特定区域的血流量和供氧减少。心电图显示ST段抬高、负T波和病理性Q波,用于诊断。本工作采用CNN、LSTM和BiLSTM算法的集成模型对心肌梗死与正常心电图进行分类。心肌梗死数据集[10506X188]和正常心电图数据集[4046X188]从PTB诊断心电图数据库中检索。分类前生成大小为[14553X191]的表格数据集,由异常信号和正常信号以及标签组成。预处理步骤包括两种信号的信号提取和信号去噪。表格数据集经过k折交叉验证,用于训练、验证和测试。分割后的数据分别使用CNN、LSTM和BiLSTM网络层进行训练。然后,对这三种网络连续组合的集成模型的训练准确率进行了100%的评价,并对四种模型的混淆图进行了比较。
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Ensemble deep learning prediction of STEMI using ECG signals
Myocardial infarction or heart attack is caused due to atherosclerotic plaque deposition in the coronary arteries thereby occluding the artery, which leads to decrease in blood flow and oxygen supply to the specific regions of the heart muscles. For diagnostic purpose, ECG is used which shows the ST elevation, negative T wave and pathologic Q wave. Classification of myocardial infarction from the normal ECG is handled in this work using the ensemble model of CNN, LSTM and BiLSTM algorithm. The myocardial infarction dataset [10506X188] and normal ECG dataset [4046X188] are retrieved from the PTB Diagnostic ECG Database. The tabular datasets in the size of [14553X191] consisting of abnormal and normal signals and the labels are generated prior to classification. Preprocessing steps involve the signal extraction and signal denoising of both the signal types. The tabular datasets are k-fold cross- validated for training, validation and testing. The split data are trained using CNN, LSTM and BiLSTM network layers individually. The ensemble model, thenceforth, combining all these three networks consecutively is evaluated for the performance in terms of training accuracy 100% and confusion chart for all the four models is also compared.
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