Global explainability in aligned image modalities
Justin Engelmann, Amos Storkey, Miguel O. Bernabeu

TL;DR
This paper introduces a method for global explainability in aligned image modalities, enabling validation and understanding of deep learning models in medical imaging through pixel-wise aggregation and a novel validation technique.
Contribution
It proposes a simple pixel-wise aggregation approach for global explanations and introduces PEPPR for quantitative validation of explanation faithfulness.
Findings
Global explanations align with domain knowledge
Explanations faithfully reflect model behavior
Method effective on retinal images
Abstract
Deep learning (DL) models are very effective on many computer vision problems and increasingly used in critical applications. They are also inherently black box. A number of methods exist to generate image-wise explanations that allow practitioners to understand and verify model predictions for a given image. Beyond that, it would be desirable to validate that a DL model \textit{generally} works in a sensible way, i.e. consistent with domain knowledge and not relying on undesirable data artefacts. For this purpose, the model needs to be explained globally. In this work, we focus on image modalities that are naturally aligned such that each pixel position represents a similar relative position on the imaged object, as is common in medical imaging. We propose the pixel-wise aggregation of image-wise explanations as a simple method to obtain label-wise and overall global explanations.…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Cell Image Analysis Techniques · Retinal Imaging and Analysis
