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Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography

PURPOSE: Low-dose computed tomography (LDCT) for lung cancer screening is effective, although most eligible people are not being screened. Tools that provide personalized future cancer risk assessment could focus approaches toward those most likely to benefit. We hypothesized that a deep learning mo...

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Autores principales: Mikhael, Peter G., Wohlwend, Jeremy, Yala, Adam, Karstens, Ludvig, Xiang, Justin, Takigami, Angelo K., Bourgouin, Patrick P., Chan, PuiYee, Mrah, Sofiane, Amayri, Wael, Juan, Yu-Hsiang, Yang, Cheng-Ta, Wan, Yung-Liang, Lin, Gigin, Sequist, Lecia V., Fintelmann, Florian J., Barzilay, Regina
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer Health 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419602/
https://www.ncbi.nlm.nih.gov/pubmed/36634294
http://dx.doi.org/10.1200/JCO.22.01345
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author Mikhael, Peter G.
Wohlwend, Jeremy
Yala, Adam
Karstens, Ludvig
Xiang, Justin
Takigami, Angelo K.
Bourgouin, Patrick P.
Chan, PuiYee
Mrah, Sofiane
Amayri, Wael
Juan, Yu-Hsiang
Yang, Cheng-Ta
Wan, Yung-Liang
Lin, Gigin
Sequist, Lecia V.
Fintelmann, Florian J.
Barzilay, Regina
author_facet Mikhael, Peter G.
Wohlwend, Jeremy
Yala, Adam
Karstens, Ludvig
Xiang, Justin
Takigami, Angelo K.
Bourgouin, Patrick P.
Chan, PuiYee
Mrah, Sofiane
Amayri, Wael
Juan, Yu-Hsiang
Yang, Cheng-Ta
Wan, Yung-Liang
Lin, Gigin
Sequist, Lecia V.
Fintelmann, Florian J.
Barzilay, Regina
author_sort Mikhael, Peter G.
collection PubMed
description PURPOSE: Low-dose computed tomography (LDCT) for lung cancer screening is effective, although most eligible people are not being screened. Tools that provide personalized future cancer risk assessment could focus approaches toward those most likely to benefit. We hypothesized that a deep learning model assessing the entire volumetric LDCT data could be built to predict individual risk without requiring additional demographic or clinical data. METHODS: We developed a model called Sybil using LDCTs from the National Lung Screening Trial (NLST). Sybil requires only one LDCT and does not require clinical data or radiologist annotations; it can run in real time in the background on a radiology reading station. Sybil was validated on three independent data sets: a heldout set of 6,282 LDCTs from NLST participants, 8,821 LDCTs from Massachusetts General Hospital (MGH), and 12,280 LDCTs from Chang Gung Memorial Hospital (CGMH, which included people with a range of smoking history including nonsmokers). RESULTS: Sybil achieved area under the receiver-operator curves for lung cancer prediction at 1 year of 0.92 (95% CI, 0.88 to 0.95) on NLST, 0.86 (95% CI, 0.82 to 0.90) on MGH, and 0.94 (95% CI, 0.91 to 1.00) on CGMH external validation sets. Concordance indices over 6 years were 0.75 (95% CI, 0.72 to 0.78), 0.81 (95% CI, 0.77 to 0.85), and 0.80 (95% CI, 0.75 to 0.86) for NLST, MGH, and CGMH, respectively. CONCLUSION: Sybil can accurately predict an individual's future lung cancer risk from a single LDCT scan to further enable personalized screening. Future study is required to understand Sybil's clinical applications. Our model and annotations are publicly available.
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spelling pubmed-104196022023-08-16 Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography Mikhael, Peter G. Wohlwend, Jeremy Yala, Adam Karstens, Ludvig Xiang, Justin Takigami, Angelo K. Bourgouin, Patrick P. Chan, PuiYee Mrah, Sofiane Amayri, Wael Juan, Yu-Hsiang Yang, Cheng-Ta Wan, Yung-Liang Lin, Gigin Sequist, Lecia V. Fintelmann, Florian J. Barzilay, Regina J Clin Oncol ORIGINAL REPORTS PURPOSE: Low-dose computed tomography (LDCT) for lung cancer screening is effective, although most eligible people are not being screened. Tools that provide personalized future cancer risk assessment could focus approaches toward those most likely to benefit. We hypothesized that a deep learning model assessing the entire volumetric LDCT data could be built to predict individual risk without requiring additional demographic or clinical data. METHODS: We developed a model called Sybil using LDCTs from the National Lung Screening Trial (NLST). Sybil requires only one LDCT and does not require clinical data or radiologist annotations; it can run in real time in the background on a radiology reading station. Sybil was validated on three independent data sets: a heldout set of 6,282 LDCTs from NLST participants, 8,821 LDCTs from Massachusetts General Hospital (MGH), and 12,280 LDCTs from Chang Gung Memorial Hospital (CGMH, which included people with a range of smoking history including nonsmokers). RESULTS: Sybil achieved area under the receiver-operator curves for lung cancer prediction at 1 year of 0.92 (95% CI, 0.88 to 0.95) on NLST, 0.86 (95% CI, 0.82 to 0.90) on MGH, and 0.94 (95% CI, 0.91 to 1.00) on CGMH external validation sets. Concordance indices over 6 years were 0.75 (95% CI, 0.72 to 0.78), 0.81 (95% CI, 0.77 to 0.85), and 0.80 (95% CI, 0.75 to 0.86) for NLST, MGH, and CGMH, respectively. CONCLUSION: Sybil can accurately predict an individual's future lung cancer risk from a single LDCT scan to further enable personalized screening. Future study is required to understand Sybil's clinical applications. Our model and annotations are publicly available. Wolters Kluwer Health 2023-04-20 2023-01-12 /pmc/articles/PMC10419602/ /pubmed/36634294 http://dx.doi.org/10.1200/JCO.22.01345 Text en © 2023 by American Society of Clinical Oncology https://creativecommons.org/licenses/by-nc-nd/4.0/Creative Commons Attribution Non-Commercial No Derivatives 4.0 License: https://creativecommons.org/licenses/by-nc-nd/4.0/
spellingShingle ORIGINAL REPORTS
Mikhael, Peter G.
Wohlwend, Jeremy
Yala, Adam
Karstens, Ludvig
Xiang, Justin
Takigami, Angelo K.
Bourgouin, Patrick P.
Chan, PuiYee
Mrah, Sofiane
Amayri, Wael
Juan, Yu-Hsiang
Yang, Cheng-Ta
Wan, Yung-Liang
Lin, Gigin
Sequist, Lecia V.
Fintelmann, Florian J.
Barzilay, Regina
Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title_full Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title_fullStr Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title_full_unstemmed Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title_short Sybil: A Validated Deep Learning Model to Predict Future Lung Cancer Risk From a Single Low-Dose Chest Computed Tomography
title_sort sybil: a validated deep learning model to predict future lung cancer risk from a single low-dose chest computed tomography
topic ORIGINAL REPORTS
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10419602/
https://www.ncbi.nlm.nih.gov/pubmed/36634294
http://dx.doi.org/10.1200/JCO.22.01345
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