Abstract:
Deep Learning (DL) models for automatic ECG interpretation became widely investigated in recent years. However, their performance varies highly across models and datasets...Show MoreMetadata
Abstract:
Deep Learning (DL) models for automatic ECG interpretation became widely investigated in recent years. However, their performance varies highly across models and datasets. One of the main reasons is the possibility that the DL model might learn spurious correlations present in a dataset between inputs and outcomes. In this study, we proposed a novel training strategy potentially able to force the domain knowledge into a DL model, by complementing, only during training, an end-to-end approach with features known to be relevant for the outcome. We tested the approach for the creation of a DL model tuned to identify myocardial infarction (MI)from the standard 12-lead electrocardiograms (ECGs). Two models were trained: one with standard backpropagation (full model) and the second one (split model) with the proposed approach, on the PTB Diagnostic ECG Database. An explainable AI technique was then used to identify which ECG leads were considered relevant by both models for each MI site, and were compared with guidelines for MI site identification. The validation accuracy was 0.85 and 0.69 for full and split models, respectively. Despite the lower performance achieved with the proposed approach, the number of relevant leads was higher (10 vs 4), suggesting that the domain knowledge was likely percolated into the DL model, made it more robust and capable of better generalization on other dataset.
Published in: 2023 Computing in Cardiology (CinC)
Date of Conference: 01-04 October 2023
Date Added to IEEE Xplore: 26 December 2023
ISBN Information: