Improving 3D convolutional neural network comprehensibility via interactive visualization of relevance maps: Evaluation in Alzheimer's disease
Martin Dyrba, Moritz Hanzig, Slawek Altenstein, Sebastian Bader,, Tommaso Ballarini, Frederic Brosseron, Katharina Buerger, Daniel Cantr\'e,, Peter Dechent, Laura Dobisch, Emrah D\"uzel, Michael Ewers, Klaus Fliessbach,, Wenzel Glanz, John-Dylan Haynes, Michael T. Heneka

TL;DR
This study enhances the interpretability of CNN models for Alzheimer's detection in MRI scans by using interactive relevance maps, showing that the models focus on clinically relevant brain regions like the hippocampus.
Contribution
It introduces an interactive visualization method for CNN relevance maps, linking model focus to known pathological regions, thereby improving model comprehensibility in AD diagnosis.
Findings
High accuracy in AD detection across datasets (AUC ≥ 0.92)
Relevance scores correlate strongly with hippocampal volume (r ≈ -0.86)
Relevance maps highlight hippocampal atrophy as key for AD detection
Abstract
Background: Although convolutional neural networks (CNN) achieve high diagnostic accuracy for detecting Alzheimer's disease (AD) dementia based on magnetic resonance imaging (MRI) scans, they are not yet applied in clinical routine. One important reason for this is a lack of model comprehensibility. Recently developed visualization methods for deriving CNN relevance maps may help to fill this gap. We investigated whether models with higher accuracy also rely more on discriminative brain regions predefined by prior knowledge. Methods: We trained a CNN for the detection of AD in N=663 T1-weighted MRI scans of patients with dementia and amnestic mild cognitive impairment (MCI) and verified the accuracy of the models via cross-validation and in three independent samples including N=1655 cases. We evaluated the association of relevance scores and hippocampus volume to validate the clinical…
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Taxonomy
Methods3 Dimensional Convolutional Neural Network
