AI Article Synopsis

  • Developed a deep learning (DL) pipeline for quantifying COVID-19 lung lesions using low-dose CT scans and evaluated its prognostic significance.
  • The study analyzed data from 144 patients for training and 30 for testing, comparing automated segmentations of lung lesions to manual ones.
  • Results showed the DL model provided more consistent and accurate lesion detection than human observers, enhancing prognostic accuracy for identifying high-risk patients.

Article Abstract

Objectives: 1) To develop a deep learning (DL) pipeline allowing quantification of COVID-19 pulmonary lesions on low-dose computed tomography (LDCT). 2) To assess the prognostic value of DL-driven lesion quantification.

Methods: This monocentric retrospective study included training and test datasets taken from 144 and 30 patients, respectively. The reference was the manual segmentation of 3 labels: normal lung, ground-glass opacity(GGO) and consolidation(Cons). Model performance was evaluated with technical metrics, disease volume and extent. Intra- and interobserver agreement were recorded. The prognostic value of DL-driven disease extent was assessed in 1621 distinct patients using C-statistics. The end point was a combined outcome defined as death, hospitalization>10 days, intensive care unit hospitalization or oxygen therapy.

Results: The Dice coefficients for lesion (GGO+Cons) segmentations were 0.75±0.08, exceeding the values for human interobserver (0.70±0.08; 0.70±0.10) and intraobserver measures (0.72±0.09). DL-driven lesion quantification had a stronger correlation with the reference than inter- or intraobserver measures. After stepwise selection and adjustment for clinical characteristics, quantification significantly increased the prognostic accuracy of the model (0.82 vs. 0.90; <0.0001).

Conclusions: A DL-driven model can provide reproducible and accurate segmentation of COVID-19 lesions on LDCT. Automatic lesion quantification has independent prognostic value for the identification of high-risk patients.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8939894PMC
http://dx.doi.org/10.1016/j.redii.2022.100003DOI Listing

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