A novel convolutional neural network for reconstructing surface electrocardiograms from intracardiac electrograms and vice versa

作者:

Highlights:

• Proposed a generalized formulation on the problem of multivariate multiple nonlinear regression for neural networks.

• Developed a novel CNN architecture to perform multivariate multiple nonlinear regression with only one model.

• Provided state of the art results for 12-lead ECG reconstruction from a set of EGM leads.

• Allowed the reverse mapping of 12-lead ECG to reconstructed EGM.

• Created an interpretable classifier for ECG arrhythmia classification from the weights learned in the CNN model.

摘要

•Proposed a generalized formulation on the problem of multivariate multiple nonlinear regression for neural networks.•Developed a novel CNN architecture to perform multivariate multiple nonlinear regression with only one model.•Provided state of the art results for 12-lead ECG reconstruction from a set of EGM leads.•Allowed the reverse mapping of 12-lead ECG to reconstructed EGM.•Created an interpretable classifier for ECG arrhythmia classification from the weights learned in the CNN model.

论文关键词:ECG reconstruction,Intracardiac electrogram,Implantable devices,Nonlinear regression,Convolutional multivariate multiple regression,Deep neural network

论文评审过程:Received 11 November 2020, Revised 7 July 2021, Accepted 11 July 2021, Available online 16 July 2021, Version of Record 29 July 2021.

论文官网地址:https://doi.org/10.1016/j.artmed.2021.102135