| Literature DB >> 33432072 |
Feng Pan1,2, Lin Li1,2, Bo Liu3,4, Tianhe Ye1,2, Lingli Li1,2, Dehan Liu1,2, Zezhen Ding3,4, Guangfeng Chen1,2, Bo Liang1,2, Lian Yang5,6, Chuansheng Zheng1,2.
Abstract
This study aims to explore and compare a novel deep learning-based quantification with the conventional semi-quantitative computed tomography (CT) scoring for the serial chest CT scans of COVID-19. 95 patients with confirmed COVID-19 and a total of 465 serial chest CT scans were involved, including 61 moderate patients (moderate group, 319 chest CT scans) and 34 severe patients (severe group, 146 chest CT scans). Conventional CT scoring and deep learning-based quantification were performed for all chest CT scans for two study goals: (1) Correlation between these two estimations; (2) Exploring the dynamic patterns using these two estimations between moderate and severe groups. The Spearman's correlation coefficient between these two estimation methods was 0.920 (p < 0.001). predicted pulmonary involvement (CT score and percent of pulmonary lesions calculated using deep learning-based quantification) increased more rapidly and reached a higher peak on 23rd days from symptom onset in severe group, which reached a peak on 18th days in moderate group with faster absorption of the lesions. The deep learning-based quantification for COVID-19 showed a good correlation with the conventional CT scoring and demonstrated a potential benefit in the estimation of disease severities of COVID-19.Entities:
Year: 2021 PMID: 33432072 PMCID: PMC7801482 DOI: 10.1038/s41598-020-80261-w
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379