CVAILGNov 22, 2021

Explainable Deep Image Classifiers for Skin Lesion Diagnosis

arXiv:2111.11863v17 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for explainable AI in critical medical contexts like skin lesion diagnosis, though it is incremental as it adapts an existing method.

The authors tackled the lack of interpretability in deep learning models for medical diagnosis by customizing an existing XAI approach for skin lesion image classification, resulting in increased trust and confidence among users, with some classes distinctly separated in the latent space.

A key issue in critical contexts such as medical diagnosis is the interpretability of the deep learning models adopted in decision-making systems. Research in eXplainable Artificial Intelligence (XAI) is trying to solve this issue. However, often XAI approaches are only tested on generalist classifier and do not represent realistic problems such as those of medical diagnosis. In this paper, we analyze a case study on skin lesion images where we customize an existing XAI approach for explaining a deep learning model able to recognize different types of skin lesions. The explanation is formed by synthetic exemplar and counter-exemplar images of skin lesion and offers the practitioner a way to highlight the crucial traits responsible for the classification decision. A survey conducted with domain experts, beginners and unskilled people proof that the usage of explanations increases the trust and confidence in the automatic decision system. Also, an analysis of the latent space adopted by the explainer unveils that some of the most frequent skin lesion classes are distinctly separated. This phenomenon could derive from the intrinsic characteristics of each class and, hopefully, can provide support in the resolution of the most frequent misclassifications by human experts.

Foundations

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