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Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas

BACKGROUND: We aimed to assess if quantitative radiomic features can predict programmed death ligand 1 (PD‐L1) expression in advanced stage lung adenocarcinoma. METHODS: This retrospective study included 153 patients who had advanced stage (>IIIA by TNM classification) lung adenocarcinoma with pr...

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Autores principales: Yoon, Jiyoung, Suh, Young Joo, Han, Kyunghwa, Cho, Hyoun, Lee, Hye‐Jeong, Hur, Jin, Choi, Byoung Wook
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons Australia, Ltd 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7113038/
https://www.ncbi.nlm.nih.gov/pubmed/32043309
http://dx.doi.org/10.1111/1759-7714.13352
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author Yoon, Jiyoung
Suh, Young Joo
Han, Kyunghwa
Cho, Hyoun
Lee, Hye‐Jeong
Hur, Jin
Choi, Byoung Wook
author_facet Yoon, Jiyoung
Suh, Young Joo
Han, Kyunghwa
Cho, Hyoun
Lee, Hye‐Jeong
Hur, Jin
Choi, Byoung Wook
author_sort Yoon, Jiyoung
collection PubMed
description BACKGROUND: We aimed to assess if quantitative radiomic features can predict programmed death ligand 1 (PD‐L1) expression in advanced stage lung adenocarcinoma. METHODS: This retrospective study included 153 patients who had advanced stage (>IIIA by TNM classification) lung adenocarcinoma with pretreatment thin section computed tomography (CT) images and PD‐L1 expression test results in their pathology reports. Clinicopathological data were collected from electronic medical records. Visual analysis and radiomic feature extraction of the tumor from pretreatment CT were performed. We constructed two models for multivariate logistic regression analysis (one based on clinical variables, and the other based on a combination of clinical variables and radiomic features), and compared c‐statistics of the receiver operating characteristic curves of each model to identify the model with the higher predictability. RESULTS: Among 153 patients, 53 patients were classified as PD‐L1 positive and 100 patients as PD‐L1 negative. There was no significant difference in clinical characteristics or imaging findings on visual analysis between the two groups (P > 0.05 for all). Rad‐score by radiomic analysis was higher in the PD‐L1 positive group than in the PD‐L1 negative group with a statistical significance (−0.378 ± 1.537 vs. −1.171 ± 0.822, P = 0.0008). A prediction model that uses clinical variables and CT radiomic features showed higher performance compared to a prediction model that uses clinical variables only (c‐statistic = 0.646 vs. 0.550, P = 0.0299). CONCLUSIONS: Quantitative CT radiomic features can predict PD‐L1 expression in advanced stage lung adenocarcinoma. A prediction model composed of clinical variables and CT radiomic features may facilitate noninvasive assessment of PD‐L1 expression. KEY POINTS: Significant findings of the study Quantitative CT radiomic features can help predict PD‐L1 expression, whereas none of the qualitative imaging findings is associated with PD‐L1 positivity. What this study adds A prediction model composed of clinical variables and CT radiomic features may facilitate noninvasive assessment of PD‐L1 expression.
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spelling pubmed-71130382020-04-02 Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas Yoon, Jiyoung Suh, Young Joo Han, Kyunghwa Cho, Hyoun Lee, Hye‐Jeong Hur, Jin Choi, Byoung Wook Thorac Cancer Original Articles BACKGROUND: We aimed to assess if quantitative radiomic features can predict programmed death ligand 1 (PD‐L1) expression in advanced stage lung adenocarcinoma. METHODS: This retrospective study included 153 patients who had advanced stage (>IIIA by TNM classification) lung adenocarcinoma with pretreatment thin section computed tomography (CT) images and PD‐L1 expression test results in their pathology reports. Clinicopathological data were collected from electronic medical records. Visual analysis and radiomic feature extraction of the tumor from pretreatment CT were performed. We constructed two models for multivariate logistic regression analysis (one based on clinical variables, and the other based on a combination of clinical variables and radiomic features), and compared c‐statistics of the receiver operating characteristic curves of each model to identify the model with the higher predictability. RESULTS: Among 153 patients, 53 patients were classified as PD‐L1 positive and 100 patients as PD‐L1 negative. There was no significant difference in clinical characteristics or imaging findings on visual analysis between the two groups (P > 0.05 for all). Rad‐score by radiomic analysis was higher in the PD‐L1 positive group than in the PD‐L1 negative group with a statistical significance (−0.378 ± 1.537 vs. −1.171 ± 0.822, P = 0.0008). A prediction model that uses clinical variables and CT radiomic features showed higher performance compared to a prediction model that uses clinical variables only (c‐statistic = 0.646 vs. 0.550, P = 0.0299). CONCLUSIONS: Quantitative CT radiomic features can predict PD‐L1 expression in advanced stage lung adenocarcinoma. A prediction model composed of clinical variables and CT radiomic features may facilitate noninvasive assessment of PD‐L1 expression. KEY POINTS: Significant findings of the study Quantitative CT radiomic features can help predict PD‐L1 expression, whereas none of the qualitative imaging findings is associated with PD‐L1 positivity. What this study adds A prediction model composed of clinical variables and CT radiomic features may facilitate noninvasive assessment of PD‐L1 expression. John Wiley & Sons Australia, Ltd 2020-02-11 2020-04 /pmc/articles/PMC7113038/ /pubmed/32043309 http://dx.doi.org/10.1111/1759-7714.13352 Text en © 2020 The Authors. Thoracic Cancer published by China Lung Oncology Group and John Wiley & Sons Australia, Ltd This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Articles
Yoon, Jiyoung
Suh, Young Joo
Han, Kyunghwa
Cho, Hyoun
Lee, Hye‐Jeong
Hur, Jin
Choi, Byoung Wook
Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title_full Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title_fullStr Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title_full_unstemmed Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title_short Utility of CT radiomics for prediction of PD‐L1 expression in advanced lung adenocarcinomas
title_sort utility of ct radiomics for prediction of pd‐l1 expression in advanced lung adenocarcinomas
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7113038/
https://www.ncbi.nlm.nih.gov/pubmed/32043309
http://dx.doi.org/10.1111/1759-7714.13352
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