Severity Assessment of Coronavirus Disease 2019 (COVID-19) Using
Quantitative Features from Chest CT Images
- URL: http://arxiv.org/abs/2003.11988v1
- Date: Thu, 26 Mar 2020 15:49:32 GMT
- Title: Severity Assessment of Coronavirus Disease 2019 (COVID-19) Using
Quantitative Features from Chest CT Images
- Authors: Zhenyu Tang, Wei Zhao, Xingzhi Xie, Zheng Zhong, Feng Shi, Jun Liu,
Dinggang Shen
- Abstract summary: The aim of this study is to realize automatic severity assessment (non-severe or severe) of COVID-19 based on chest CT images.
A random forest (RF) model is trained to assess the severity (non-severe or severe) based on quantitative features.
Several quantitative features, which have the potential to reflect the severity of COVID-19, were revealed.
- Score: 54.919022945740515
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Background: Chest computed tomography (CT) is recognized as an important tool
for COVID-19 severity assessment. As the number of affected patients increase
rapidly, manual severity assessment becomes a labor-intensive task, and may
lead to delayed treatment. Purpose: Using machine learning method to realize
automatic severity assessment (non-severe or severe) of COVID-19 based on chest
CT images, and to explore the severity-related features from the resulting
assessment model. Materials and Method: Chest CT images of 176 patients (age
45.3$\pm$16.5 years, 96 male and 80 female) with confirmed COVID-19 are used,
from which 63 quantitative features, e.g., the infection volume/ratio of the
whole lung and the volume of ground-glass opacity (GGO) regions, are
calculated. A random forest (RF) model is trained to assess the severity
(non-severe or severe) based on quantitative features. Importance of each
quantitative feature, which reflects the correlation to the severity of
COVID-19, is calculated from the RF model. Results: Using three-fold cross
validation, the RF model shows promising results, i.e., 0.933 of true positive
rate, 0.745 of true negative rate, 0.875 of accuracy, and 0.91 of area under
receiver operating characteristic curve (AUC). The resulting importance of
quantitative features shows that the volume and its ratio (with respect to the
whole lung volume) of ground glass opacity (GGO) regions are highly related to
the severity of COVID-19, and the quantitative features calculated from the
right lung are more related to the severity assessment than those of the left
lung. Conclusion: The RF based model can achieve automatic severity assessment
(non-severe or severe) of COVID-19 infection, and the performance is promising.
Several quantitative features, which have the potential to reflect the severity
of COVID-19, were revealed.
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