Radiologist-Level COVID-19 Detection Using CT Scans with Detail-Oriented Capsule Networks
Aryan Mobiny, Pietro Antonio Cicalese, Samira Zare, Pengyu Yuan,, Mohammadsajad Abavisani, Carol C. Wu, Jitesh Ahuja, Patricia M. de Groot,, Hien Van Nguyen

TL;DR
This paper introduces DECAPS, a novel capsule network architecture that automatically detects COVID-19 from CT scans with high accuracy, outperforming radiologists and existing methods, and incorporating innovative training and data augmentation techniques.
Contribution
The paper presents DECAPS, a new capsule network with Inverted Dynamic Routing and Peekaboo training, improving COVID-19 detection accuracy from CT scans.
Findings
DECAPS achieves 96.1% AUC in COVID-19 detection.
Outperforms three experienced radiologists in accuracy.
Uses GAN-based data augmentation to address data scarcity.
Abstract
Radiographic images offer an alternative method for the rapid screening and monitoring of Coronavirus Disease 2019 (COVID-19) patients. This approach is limited by the shortage of radiology experts who can provide a timely interpretation of these images. Motivated by this challenge, our paper proposes a novel learning architecture, called Detail-Oriented Capsule Networks (DECAPS), for the automatic diagnosis of COVID-19 from Computed Tomography (CT) scans. Our network combines the strength of Capsule Networks with several architecture improvements meant to boost classification accuracies. First, DECAPS uses an Inverted Dynamic Routing mechanism which increases model stability by preventing the passage of information from non-descriptive regions. Second, DECAPS employs a Peekaboo training procedure which uses a two-stage patch crop and drop strategy to encourage the network to generate…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · Medical Imaging Techniques and Applications
