JCS: An Explainable COVID-19 Diagnosis System by Joint Classification
and Segmentation
- URL: http://arxiv.org/abs/2004.07054v3
- Date: Tue, 3 Aug 2021 13:44:25 GMT
- Title: JCS: An Explainable COVID-19 Diagnosis System by Joint Classification
and Segmentation
- Authors: Yu-Huan Wu, Shang-Hua Gao, Jie Mei, Jun Xu, Deng-Ping Fan, Rong-Guo
Zhang, Ming-Ming Cheng
- Abstract summary: coronavirus disease 2019 (COVID-19) has caused a pandemic disease in over 200 countries.
To control the infection, identifying and separating the infected people is the most crucial step.
This paper develops a novel Joint Classification and (JCS) system to perform real-time and explainable COVID-19 chest CT diagnosis.
- Score: 95.57532063232198
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recently, the coronavirus disease 2019 (COVID-19) has caused a pandemic
disease in over 200 countries, influencing billions of humans. To control the
infection, identifying and separating the infected people is the most crucial
step. The main diagnostic tool is the Reverse Transcription Polymerase Chain
Reaction (RT-PCR) test. Still, the sensitivity of the RT-PCR test is not high
enough to effectively prevent the pandemic. The chest CT scan test provides a
valuable complementary tool to the RT-PCR test, and it can identify the
patients in the early-stage with high sensitivity. However, the chest CT scan
test is usually time-consuming, requiring about 21.5 minutes per case. This
paper develops a novel Joint Classification and Segmentation (JCS) system to
perform real-time and explainable COVID-19 chest CT diagnosis. To train our JCS
system, we construct a large scale COVID-19 Classification and Segmentation
(COVID-CS) dataset, with 144,167 chest CT images of 400 COVID-19 patients and
350 uninfected cases. 3,855 chest CT images of 200 patients are annotated with
fine-grained pixel-level labels of opacifications, which are increased
attenuation of the lung parenchyma. We also have annotated lesion counts,
opacification areas, and locations and thus benefit various diagnosis aspects.
Extensive experiments demonstrate that the proposed JCS diagnosis system is
very efficient for COVID-19 classification and segmentation. It obtains an
average sensitivity of 95.0% and a specificity of 93.0% on the classification
test set, and 78.5% Dice score on the segmentation test set of our COVID-CS
dataset. The COVID-CS dataset and code are available at
https://github.com/yuhuan-wu/JCS.
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