DRR4Covid: Learning Automated COVID-19 Infection Segmentation from Digitally Reconstructed Radiographs
Pengyi Zhang, Yunxin Zhong, Yulin Deng, Xiaoying Tang, Xiaoqiong Li

TL;DR
DRR4Covid introduces a novel method that uses digitally reconstructed radiographs and domain adaptation to accurately diagnose and segment COVID-19 infections from chest X-ray images without requiring labeled real X-ray data.
Contribution
The paper presents a new approach combining infection-aware DRR generation and domain adaptation to improve COVID-19 detection and segmentation from CXRs.
Findings
Achieved high accuracy, AUC, and F1-score without using labeled CXRs.
Effectively reduced domain discrepancy between DRRs and CXRs.
Estimated infection detection sensitivity at 19.43% of infected lung voxels.
Abstract
Automated infection measurement and COVID-19 diagnosis based on Chest X-ray (CXR) imaging is important for faster examination. We propose a novel approach, called DRR4Covid, to learn automated COVID-19 diagnosis and infection segmentation on CXRs from digitally reconstructed radiographs (DRRs). DRR4Covid comprises of an infection-aware DRR generator, a classification and/or segmentation network, and a domain adaptation module. The infection-aware DRR generator is able to produce DRRs with adjustable strength of radiological signs of COVID-19 infection, and generate pixel-level infection annotations that match the DRRs precisely. The domain adaptation module is introduced to reduce the domain discrepancy between DRRs and CXRs by training networks on unlabeled real CXRs and labeled DRRs together.We provide a simple but effective implementation of DRR4Covid by using a domain adaptation…
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Taxonomy
TopicsCOVID-19 diagnosis using AI · Radiomics and Machine Learning in Medical Imaging · Lung Cancer Diagnosis and Treatment
