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Research on the identification of myocardial infarction location based on multi-Resolution residual network
Vol 1, Issue 1, 2020
Issue release: 31 December 2020
VIEWS - 2423 (Abstract)
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Abstract
In order to realize the classification and recognition of anterior myocardial infarction, inferior myocardial infarction, anterior septal myocardial infarction and normal ECG signals, this study takes the clinical database as the experimental data source, extracts the training set and test set data for training and testing the network model, optimizes the traditional neural network, and designs a new network algorithm: multi-resolution residual network. The multi-resolution residual network is visually compared with the traditional network to evaluate the recognition effect of the model. The test set accuracy of multi-resolution residual network is 91.8%, which is higher than that of classical neural network. The algorithm in this study can assist doctors in the diagnosis of myocardial infarction diseases, and has certain clinical significance.
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Copyright (c) 2020 Ji Qi, Hua Jiang, Ruiqing Zhang, Yang Shen, Yanni Tong, Xianzheng Sha, Shijie Chang
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Prof. Prakash Deedwania
University of California,
San Francisco, United States