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Main Authors: Wagner, Patrick, Mehari, Temesgen, Haverkamp, Wilhelm, Strodthoff, Nils
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2305.17043
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author Wagner, Patrick
Mehari, Temesgen
Haverkamp, Wilhelm
Strodthoff, Nils
author_facet Wagner, Patrick
Mehari, Temesgen
Haverkamp, Wilhelm
Strodthoff, Nils
contents Deep neural networks have become increasingly popular for analyzing ECG data because of their ability to accurately identify cardiac conditions and hidden clinical factors. However, the lack of transparency due to the black box nature of these models is a common concern. To address this issue, explainable AI (XAI) methods can be employed. In this study, we present a comprehensive analysis of post-hoc XAI methods, investigating the local (attributions per sample) and global (based on domain expert concepts) perspectives. We have established a set of sanity checks to identify sensible attribution methods, and we provide quantitative evidence in accordance with expert rules. This dataset-wide analysis goes beyond anecdotal evidence by aggregating data across patient subgroups. Furthermore, we demonstrate how these XAI techniques can be utilized for knowledge discovery, such as identifying subtypes of myocardial infarction. We believe that these proposed methods can serve as building blocks for a complementary assessment of the internal validity during a certification process, as well as for knowledge discovery in the field of ECG analysis.
format Preprint
id arxiv_https___arxiv_org_abs_2305_17043
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Explaining Deep Learning for ECG Analysis: Building Blocks for Auditing and Knowledge Discovery
Wagner, Patrick
Mehari, Temesgen
Haverkamp, Wilhelm
Strodthoff, Nils
Signal Processing
Machine Learning
Deep neural networks have become increasingly popular for analyzing ECG data because of their ability to accurately identify cardiac conditions and hidden clinical factors. However, the lack of transparency due to the black box nature of these models is a common concern. To address this issue, explainable AI (XAI) methods can be employed. In this study, we present a comprehensive analysis of post-hoc XAI methods, investigating the local (attributions per sample) and global (based on domain expert concepts) perspectives. We have established a set of sanity checks to identify sensible attribution methods, and we provide quantitative evidence in accordance with expert rules. This dataset-wide analysis goes beyond anecdotal evidence by aggregating data across patient subgroups. Furthermore, we demonstrate how these XAI techniques can be utilized for knowledge discovery, such as identifying subtypes of myocardial infarction. We believe that these proposed methods can serve as building blocks for a complementary assessment of the internal validity during a certification process, as well as for knowledge discovery in the field of ECG analysis.
title Explaining Deep Learning for ECG Analysis: Building Blocks for Auditing and Knowledge Discovery
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2305.17043