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Severity Assessment and Progression Prediction of COVID-19 Patients Based on the LesionEncoder Framework and Chest CT.

Authors :
Feng, You-Zhen
Liu, Sidong
Cheng, Zhong-Yuan
Quiroz, Juan C.
Rezazadegan, Dana
Chen, Ping-Kang
Lin, Qi-Ting
Qian, Long
Liu, Xiao-Fang
Berkovsky, Shlomo
Coiera, Enrico
Song, Lei
Qiu, Xiao-Ming
Cai, Xiang-Ran
Source :
Information (2078-2489); Nov2021, Vol. 12 Issue 11, p471, 1p
Publication Year :
2021

Abstract

Automatic severity assessment and progression prediction can facilitate admission, triage, and referral of COVID-19 patients. This study aims to explore the potential use of lung lesion features in the management of COVID-19, based on the assumption that lesion features may carry important diagnostic and prognostic information for quantifying infection severity and forecasting disease progression. A novel LesionEncoder framework is proposed to detect lesions in chest CT scans and to encode lesion features for automatic severity assessment and progression prediction. The LesionEncoder framework consists of a U-Net module for detecting lesions and extracting features from individual CT slices, and a recurrent neural network (RNN) module for learning the relationship between feature vectors and collectively classifying the sequence of feature vectors. Chest CT scans of two cohorts of COVID-19 patients from two hospitals in China were used for training and testing the proposed framework. When applied to assessing severity, this framework outperformed baseline methods achieving a sensitivity of 0.818, specificity of 0.952, accuracy of 0.940, and AUC of 0.903. It also outperformed the other tested methods in disease progression prediction with a sensitivity of 0.667, specificity of 0.838, accuracy of 0.829, and AUC of 0.736. The LesionEncoder framework demonstrates a strong potential for clinical application in current COVID-19 management, particularly in automatic severity assessment of COVID-19 patients. This framework also has a potential for other lesion-focused medical image analyses. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20782489
Volume :
12
Issue :
11
Database :
Complementary Index
Journal :
Information (2078-2489)
Publication Type :
Academic Journal
Accession number :
153875861
Full Text :
https://doi.org/10.3390/info12110471