Explainable-by-design Semi-Supervised Representation Learning for COVID-19 Diagnosis from CT Imaging
Our motivating application is a real-world problem: COVID-19 classification from CT imaging, for which we present an explainable Deep Learning approach based on a semi-supervised classification pipeline that employs variational autoencoders to extract efficient feature embedding. We have optimized t...
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Zusammenfassung: | Our motivating application is a real-world problem: COVID-19 classification
from CT imaging, for which we present an explainable Deep Learning approach
based on a semi-supervised classification pipeline that employs variational
autoencoders to extract efficient feature embedding. We have optimized the
architecture of two different networks for CT images: (i) a novel conditional
variational autoencoder (CVAE) with a specific architecture that integrates the
class labels inside the encoder layers and uses side information with shared
attention layers for the encoder, which make the most of the contextual clues
for representation learning, and (ii) a downstream convolutional neural network
for supervised classification using the encoder structure of the CVAE. With the
explainable classification results, the proposed diagnosis system is very
effective for COVID-19 classification. Based on the promising results obtained
qualitatively and quantitatively, we envisage a wide deployment of our
developed technique in large-scale clinical studies.Code is available at
https://git.etrovub.be/AVSP/ct-based-covid-19-diagnostic-tool.git. |
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DOI: | 10.48550/arxiv.2011.11719 |