Interpretable Alzheimer's Disease Classification Via a Contrastive Diffusion Autoencoder
ICML (2023), 3rd Workshop on Interpretable Machine Learning in Healthcare (IMLH) In visual object classification, humans often justify their choices by comparing objects to prototypical examples within that class. We may therefore increase the interpretability of deep learning models by imbuing them...
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Zusammenfassung: | ICML (2023), 3rd Workshop on Interpretable Machine Learning in
Healthcare (IMLH) In visual object classification, humans often justify their choices by
comparing objects to prototypical examples within that class. We may therefore
increase the interpretability of deep learning models by imbuing them with a
similar style of reasoning. In this work, we apply this principle by
classifying Alzheimer's Disease based on the similarity of images to training
examples within the latent space. We use a contrastive loss combined with a
diffusion autoencoder backbone, to produce a semantically meaningful latent
space, such that neighbouring latents have similar image-level features. We
achieve a classification accuracy comparable to black box approaches on a
dataset of 2D MRI images, whilst producing human interpretable model
explanations. Therefore, this work stands as a contribution to the pertinent
development of accurate and interpretable deep learning within medical imaging. |
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DOI: | 10.48550/arxiv.2306.03022 |