IVAICVLGMay 10, 2022

Explainable Deep Learning Methods in Medical Image Classification: A Survey

arXiv:2205.04766v3137 citationsh-index: 4
Originality Synthesis-oriented
AI Analysis

It tackles the problem of making AI more transparent for medical professionals, but it is incremental as it synthesizes existing research rather than introducing new methods.

This survey addresses the lack of interpretability in deep learning models for medical image classification, which hinders clinical adoption, by reviewing explanation methods, datasets, evaluation metrics, and challenges in the field.

The remarkable success of deep learning has prompted interest in its application to medical imaging diagnosis. Even though state-of-the-art deep learning models have achieved human-level accuracy on the classification of different types of medical data, these models are hardly adopted in clinical workflows, mainly due to their lack of interpretability. The black-box-ness of deep learning models has raised the need for devising strategies to explain the decision process of these models, leading to the creation of the topic of eXplainable Artificial Intelligence (XAI). In this context, we provide a thorough survey of XAI applied to medical imaging diagnosis, including visual, textual, example-based and concept-based explanation methods. Moreover, this work reviews the existing medical imaging datasets and the existing metrics for evaluating the quality of the explanations. In addition, we include a performance comparison among a set of report generation-based methods. Finally, the major challenges in applying XAI to medical imaging and the future research directions on the topic are also discussed.

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