Literature DB >> 34001319

CEFEs: A CNN Explainable Framework for ECG Signals.

Barbara Mukami Maweu1, Sagnik Dakshit2, Rittika Shamsuddin3, Balakrishnan Prabhakaran4.   

Abstract

In the healthcare domain, trust, confidence, and functional understanding are critical for decision support systems, therefore, presenting challenges in the prevalent use of black-box deep learning (DL) models. With recent advances in deep learning methods for classification tasks, there is an increased use of deep learning in healthcare decision support systems, such as detection and classification of abnormal Electrocardiogram (ECG) signals. Domain experts seek to understand the functional mechanism of black-box models with an emphasis on understanding how these models arrive at specific classification of patient medical data. In this paper, we focus on ECG data as the healthcare data signal to be analyzed. Since ECG is a one-dimensional time-series data, we target 1D-CNN (Convolutional Neural Networks) as the candidate DL model. Majority of existing interpretation and explanations research has been on 2D-CNN models in non-medical domain leaving a gap in terms of explanation of CNN models used on medical time-series data. Hence, we propose a modular framework, CNN Explanations Framework for ECG Signals (CEFEs), for interpretable explanations. Each module of CEFEs provides users with the functional understanding of the underlying CNN models in terms of data descriptive statistics, feature visualization, feature detection, and feature mapping. The modules evaluate a model's capacity while inherently accounting for correlation between learned features and raw signals which translates to correlation between model's capacity to classify and it's learned features. Explainable models such as CEFEs could be evaluated in different ways: training one deep learning architecture on different volumes/amounts of the same dataset, training different architectures on the same data set or a combination of different CNN architectures and datasets. In this paper, we choose to evaluate CEFEs extensively by training on different volumes of datasets with the same CNN architecture. The CEFEs' interpretations, in terms of quantifiable metrics, feature visualization, provide explanation as to the quality of the deep learning model where traditional performance metrics (such as precision, recall, accuracy, etc.) do not suffice.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Convolution neural network; Deep learning; ECG Signals; Explainable AI; Explainable Framework; Synthetic healthcare data

Year:  2021        PMID: 34001319     DOI: 10.1016/j.artmed.2021.102059

Source DB:  PubMed          Journal:  Artif Intell Med        ISSN: 0933-3657            Impact factor:   5.326


  6 in total

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

Authors:  Anton Banta; Romain Cosentino; Mathews M John; Allison Post; Skylar Buchan; Mehdi Razavi; Behnaam Aazhang
Journal:  Artif Intell Med       Date:  2021-07-16       Impact factor: 7.011

2.  The Prediction of Preterm Birth Using Time-Series Technology-Based Machine Learning: Retrospective Cohort Study.

Authors:  Yichao Zhang; Sha Lu; Yina Wu; Wensheng Hu; Zhenming Yuan
Journal:  JMIR Med Inform       Date:  2022-06-13

Review 3.  Artificial Intelligence in Cardiology-A Narrative Review of Current Status.

Authors:  George Koulaouzidis; Tomasz Jadczyk; Dimitris K Iakovidis; Anastasios Koulaouzidis; Marc Bisnaire; Dafni Charisopoulou
Journal:  J Clin Med       Date:  2022-07-05       Impact factor: 4.964

4.  WaSP-ECG: A Wave Segmentation Pretraining Toolkit for Electrocardiogram Analysis.

Authors:  Rob Brisk; Raymond R Bond; Dewar Finlay; James A D McLaughlin; Alicja J Piadlo; David J McEneaney
Journal:  Front Physiol       Date:  2022-03-17       Impact factor: 4.566

Review 5.  Photoplethysmogram Analysis and Applications: An Integrative Review.

Authors:  Junyung Park; Hyeon Seok Seok; Sang-Su Kim; Hangsik Shin
Journal:  Front Physiol       Date:  2022-03-01       Impact factor: 4.566

6.  Beat-Level Interpretation of Intra-Patient Paradigm Based on Object Detection.

Authors:  Man Kang; Xue-Feng Wang; Jing Xiao; He Tian; Tian-Ling Ren
Journal:  Front Cardiovasc Med       Date:  2022-03-18
  6 in total

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