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Artificial Intelligence-based Quantification of Pleural Plaque Volume and Association With Lung Function in Asbestos-exposed Patients.

Authors :
Groot Lipman KBW
Boellaard TN
de Gooijer CJ
Bogveradze N
Hong EK
Landolfi F
Castagnoli F
Vakhidova N
Smesseim I
van der Heijden F
Beets-Tan RGH
Wittenberg R
Bodalal Z
Burgers JA
Trebeschi S
Source :
Journal of thoracic imaging [J Thorac Imaging] 2024 May 01; Vol. 39 (3), pp. 165-172. Date of Electronic Publication: 2023 Nov 01.
Publication Year :
2024

Abstract

Purpose: Pleural plaques (PPs) are morphologic manifestations of long-term asbestos exposure. The relationship between PP and lung function is not well understood, whereas the time-consuming nature of PP delineation to obtain volume impedes research. To automate the laborious task of delineation, we aimed to develop automatic artificial intelligence (AI)-driven segmentation of PP. Moreover, we aimed to explore the relationship between pleural plaque volume (PPV) and pulmonary function tests.<br />Materials and Methods: Radiologists manually delineated PPs retrospectively in computed tomography (CT) images of patients with occupational exposure to asbestos (May 2014 to November 2019). We trained an AI model with a no-new-UNet architecture. The Dice Similarity Coefficient quantified the overlap between AI and radiologists. The Spearman correlation coefficient ( r ) was used for the correlation between PPV and pulmonary function test metrics. When recorded, these were vital capacity (VC), forced vital capacity (FVC), and diffusing capacity for carbon monoxide (DLCO).<br />Results: We trained the AI system on 422 CT scans in 5 folds, each time with a different fold (n = 84 to 85) as a test set. On these independent test sets combined, the correlation between the predicted volumes and the ground truth was r = 0.90, and the median overlap was 0.71 Dice Similarity Coefficient. We found weak to moderate correlations with PPV for VC (n = 80, r = -0.40) and FVC (n = 82, r = -0.38), but no correlation for DLCO (n = 84, r = -0.09). When the cohort was split on the median PPV, we observed statistically significantly lower VC ( P = 0.001) and FVC ( P = 0.04) values for the higher PPV patients, but not for DLCO ( P = 0.19).<br />Conclusion: We successfully developed an AI algorithm to automatically segment PP in CT images to enable fast volume extraction. Moreover, we have observed that PPV is associated with loss in VC and FVC.<br />Competing Interests: J.A.B. is on the advisory board of Roche International (payment to institution) and received financial support and free drugs for an investigator-initiated study by MSD. The remaining authors declare no conflict of interest.<br /> (Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc.)

Details

Language :
English
ISSN :
1536-0237
Volume :
39
Issue :
3
Database :
MEDLINE
Journal :
Journal of thoracic imaging
Publication Type :
Academic Journal
Accession number :
37905941
Full Text :
https://doi.org/10.1097/RTI.0000000000000759