Automated Quantification of Pneumonia Infected Volume in Lung CT Images: A Comparison with Subjective Assessment of Radiologists

Author:

Mirniaharikandehei Seyedehnafiseh1ORCID,Abdihamzehkolaei Alireza1,Choquehuanca Angel2,Aedo Marco2ORCID,Pacheco Wilmer2,Estacio Laura2,Cahui Victor2,Huallpa Luis2,Quiñonez Kevin2,Calderón Valeria2,Gutierrez Ana Maria2,Vargas Ana3,Gamero Dery3,Castro-Gutierrez Eveling2,Qiu Yuchen1,Zheng Bin1ORCID,Jo Javier A.1

Affiliation:

1. School of Electrical and Computer Engineering, University of Oklahoma, Norman, OK 73019-1102, USA

2. School of Systems Engineering and Informatics, Universidad Nacional de San Agustín de Arequipa, Arequipa 04000, Peru

3. Medical School, Universidad Nacional de San Agustín de Arequipa, Arequipa 04002, Peru

Abstract

Objective: To help improve radiologists’ efficacy of disease diagnosis in reading computed tomography (CT) images, this study aims to investigate the feasibility of applying a modified deep learning (DL) method as a new strategy to automatically segment disease-infected regions and predict disease severity. Methods: We employed a public dataset acquired from 20 COVID-19 patients, which includes manually annotated lung and infections masks, to train a new ensembled DL model that combines five customized residual attention U-Net models to segment disease infected regions followed by a Feature Pyramid Network model to predict disease severity stage. To test the potential clinical utility of the new DL model, we conducted an observer comparison study. First, we collected another set of CT images acquired from 80 COVID-19 patients and process images using the new DL model. Second, we asked two chest radiologists to read images of each CT scan and report the estimated percentage of the disease-infected lung volume and disease severity level. Third, we also asked radiologists to rate acceptance of DL model-generated segmentation results using a 5-scale rating method. Results: Data analysis results show that agreement of disease severity classification between the DL model and radiologists is >90% in 45 testing cases. Furthermore, >73% of cases received a high rating score (≥4) from two radiologists. Conclusion: This study demonstrates the feasibility of developing a new DL model to automatically segment disease-infected regions and quantitatively predict disease severity, which may help avoid tedious effort and inter-reader variability in subjective assessment of disease severity in future clinical practice.

Funder

Universidad Nacional de San Agustin (UNSA), Arequipa, Peru, through the Latin America Sustainability Initiative (LASI) and the OU-UNSA Global Change and Human Health Institute

National Institutes of Health (NIH) of USA

Publisher

MDPI AG

Subject

Bioengineering

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