LGAICVJul 9, 2022

Explainable AI (XAI) in Biomedical Signal and Image Processing: Promises and Challenges

arXiv:2207.04295v111 citationsh-index: 43
Originality Synthesis-oriented
AI Analysis

This is an incremental overview paper for researchers in biomedical AI, pointing to an upcoming special issue.

The paper addresses the challenge of translating AI model results into biologically/clinically interpretable information in biomedical signal and image processing, highlighting that Explainable AI (XAI) aims to fill this gap by making models interpretable and providing explanations.

Artificial intelligence has become pervasive across disciplines and fields, and biomedical image and signal processing is no exception. The growing and widespread interest on the topic has triggered a vast research activity that is reflected in an exponential research effort. Through study of massive and diverse biomedical data, machine and deep learning models have revolutionized various tasks such as modeling, segmentation, registration, classification and synthesis, outperforming traditional techniques. However, the difficulty in translating the results into biologically/clinically interpretable information is preventing their full exploitation in the field. Explainable AI (XAI) attempts to fill this translational gap by providing means to make the models interpretable and providing explanations. Different solutions have been proposed so far and are gaining increasing interest from the community. This paper aims at providing an overview on XAI in biomedical data processing and points to an upcoming Special Issue on Deep Learning in Biomedical Image and Signal Processing of the IEEE Signal Processing Magazine that is going to appear in March 2022.

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