Evaluation of importance estimators in deep learning classifiers for Computed Tomography
Lennart Brocki, Wistan Marchadour, Jonas Maison, Bogdan Badic,, Panagiotis Papadimitroulas, Mathieu Hatt, Franck Vermet, Neo Christopher, Chung

TL;DR
This study evaluates various importance estimators for deep learning models in medical CT image classification, revealing discrepancies between model fidelity and human interpretability, and identifying top-performing methods.
Contribution
It systematically compares importance estimators in medical imaging, highlighting differences between model-centric and human-centric interpretability metrics.
Findings
SmoothGrad achieved top fidelity and ROC scores
Integrated Gradients and SmoothGrad excelled in Dice Similarity Coefficients
Discrepancy observed between model fidelity and human interpretability
Abstract
Deep learning has shown superb performance in detecting objects and classifying images, ensuring a great promise for analyzing medical imaging. Translating the success of deep learning to medical imaging, in which doctors need to understand the underlying process, requires the capability to interpret and explain the prediction of neural networks. Interpretability of deep neural networks often relies on estimating the importance of input features (e.g., pixels) with respect to the outcome (e.g., class probability). However, a number of importance estimators (also known as saliency maps) have been developed and it is unclear which ones are more relevant for medical imaging applications. In the present work, we investigated the performance of several importance estimators in explaining the classification of computed tomography (CT) images by a convolutional deep network, using three…
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Taxonomy
MethodsALIGN
