COVID-FACT: A Fully-Automated Capsule Network-based Framework for Identification of COVID-19 Cases from Chest CT scans
Shahin Heidarian, Parnian Afshar, Nastaran Enshaei, Farnoosh, Naderkhani, Anastasia Oikonomou, S. Farokh Atashzar, Faranak Babaki Fard,, Kaveh Samimi, Konstantinos N. Plataniotis, Arash Mohammadi, and Moezedin, Javad Rafiee

TL;DR
COVID-FACT is a fully-automated capsule network-based framework that effectively identifies COVID-19 cases from chest CT scans with high accuracy, sensitivity, and specificity, requiring less supervision than existing methods.
Contribution
The paper introduces COVID-FACT, a novel capsule network-based framework that detects COVID-19 from CT scans without relying on detailed infection segmentation or extensive data augmentation.
Findings
Achieves 90.82% accuracy in COVID-19 detection
High sensitivity of 94.55% for COVID-19 cases
Area Under the Curve (AUC) of 0.98
Abstract
The newly discovered Corona virus Disease 2019 (COVID-19) has been globally spreading and causing hundreds of thousands of deaths around the world as of its first emergence in late 2019. Computed tomography (CT) scans have shown distinctive features and higher sensitivity compared to other diagnostic tests, in particular the current gold standard, i.e., the Reverse Transcription Polymerase Chain Reaction (RT-PCR) test. Current deep learning-based algorithms are mainly developed based on Convolutional Neural Networks (CNNs) to identify COVID-19 pneumonia cases. CNNs, however, require extensive data augmentation and large datasets to identify detailed spatial relations between image instances. Furthermore, existing algorithms utilizing CT scans, either extend slice-level predictions to patient-level ones using a simple thresholding mechanism or rely on a sophisticated infection…
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