Explaining the Black-box Smoothly- A Counterfactual Approach
Sumedha Singla, Motahhare Eslami, Brian Pollack, Stephen Wallace and, Kayhan Batmanghelich

TL;DR
This paper introduces a novel counterfactual explanation method using GANs for medical image classification, improving interpretability and clinical relevance over traditional saliency maps.
Contribution
It presents a new counterfactual explanation framework for black-box image classifiers in medical imaging, with clinically relevant metrics and human validation showing improved understanding.
Findings
Counterfactual explanations improved user understanding significantly.
The method revealed reliance on clinically relevant features.
Established a benchmark for evaluating explanations in medical imaging.
Abstract
We propose a BlackBox Counterfactual Explainer, designed to explain image classification models for medical applications. Classical approaches (e.g., saliency maps) that assess feature importance do not explain "how" imaging features in important anatomical regions are relevant to the classification decision. Our framework explains the decision for a target class by gradually "exaggerating" the semantic effect of the class in a query image. We adopted a Generative Adversarial Network (GAN) to generate a progressive set of perturbations to a query image, such that the classification decision changes from its original class to its negation. We used counterfactual explanations from our framework to audit a classifier trained on a chest x-ray dataset with multiple labels. We proposed clinically-relevant quantitative metrics such as cardiothoracic ratio and the score of a healthy…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Radiomics and Machine Learning in Medical Imaging · COVID-19 diagnosis using AI
