Interpretable Deep Models for Cardiac Resynchronisation Therapy Response Prediction
Esther Puyol-Ant\'on, Chen Chen, James R. Clough, Bram Ruijsink,, Baldeep S. Sidhu, Justin Gould, Bradley Porter, Mark Elliott, Vishal Mehta,, Daniel Rueckert, Christopher A. Rinaldi, and Andrew P. King

TL;DR
This paper introduces an interpretable deep learning framework using a variational autoencoder that predicts cardiac therapy response from images and provides explanations aligned with clinical knowledge, aiding trust and discovery.
Contribution
The novel VAE-based framework disentangles latent space with clinical explanations, enabling both prediction and interpretability in medical image classification.
Findings
Achieved 88.43% sensitivity and 84.39% specificity in CRT response prediction.
Enhanced interpretability by visualizing decision boundary effects in the image domain.
Potential to discover new biomarkers beyond existing clinical knowledge.
Abstract
Advances in deep learning (DL) have resulted in impressive accuracy in some medical image classification tasks, but often deep models lack interpretability. The ability of these models to explain their decisions is important for fostering clinical trust and facilitating clinical translation. Furthermore, for many problems in medicine there is a wealth of existing clinical knowledge to draw upon, which may be useful in generating explanations, but it is not obvious how this knowledge can be encoded into DL models - most models are learnt either from scratch or using transfer learning from a different domain. In this paper we address both of these issues. We propose a novel DL framework for image-based classification based on a variational autoencoder (VAE). The framework allows prediction of the output of interest from the latent space of the autoencoder, as well as visualisation (in the…
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Taxonomy
MethodsInterpretability · Solana Customer Service Number +1-833-534-1729 · USD Coin Customer Service Number +1-833-534-1729
