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Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation

SIMPLE SUMMARY: Few significant advances have been made over recent decades in predicting lung cancer progression risk after complete surgical removal of tumor in stage IA non-small-cell lung cancers (NSCLCs). Although several biomarkers have shown some predictive value, it is unclear whether these...

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Autores principales: Huang, Peng, Illei, Peter B., Franklin, Wilbur, Wu, Pei-Hsun, Forde, Patrick M., Ashrafinia, Saeed, Hu, Chen, Khan, Hamza, Vadvala, Harshna V., Shih, Ie-Ming, Battafarano, Richard J., Jacobs, Michael A., Kong, Xiangrong, Lewis, Justine, Yan, Rongkai, Chen, Yun, Housseau, Franck, Rahmim, Arman, Fishman, Elliot K., Ettinger, David S., Pienta, Kenneth J., Wirtz, Denis, Brock, Malcolm V., Lam, Stephen, Gabrielson, Edward
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454871/
https://www.ncbi.nlm.nih.gov/pubmed/36077686
http://dx.doi.org/10.3390/cancers14174150
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author Huang, Peng
Illei, Peter B.
Franklin, Wilbur
Wu, Pei-Hsun
Forde, Patrick M.
Ashrafinia, Saeed
Hu, Chen
Khan, Hamza
Vadvala, Harshna V.
Shih, Ie-Ming
Battafarano, Richard J.
Jacobs, Michael A.
Kong, Xiangrong
Lewis, Justine
Yan, Rongkai
Chen, Yun
Housseau, Franck
Rahmim, Arman
Fishman, Elliot K.
Ettinger, David S.
Pienta, Kenneth J.
Wirtz, Denis
Brock, Malcolm V.
Lam, Stephen
Gabrielson, Edward
author_facet Huang, Peng
Illei, Peter B.
Franklin, Wilbur
Wu, Pei-Hsun
Forde, Patrick M.
Ashrafinia, Saeed
Hu, Chen
Khan, Hamza
Vadvala, Harshna V.
Shih, Ie-Ming
Battafarano, Richard J.
Jacobs, Michael A.
Kong, Xiangrong
Lewis, Justine
Yan, Rongkai
Chen, Yun
Housseau, Franck
Rahmim, Arman
Fishman, Elliot K.
Ettinger, David S.
Pienta, Kenneth J.
Wirtz, Denis
Brock, Malcolm V.
Lam, Stephen
Gabrielson, Edward
author_sort Huang, Peng
collection PubMed
description SIMPLE SUMMARY: Few significant advances have been made over recent decades in predicting lung cancer progression risk after complete surgical removal of tumor in stage IA non-small-cell lung cancers (NSCLCs). Although several biomarkers have shown some predictive value, it is unclear whether these markers add value to traditional TNM staging. We developed an integrated deep learning evaluation (IDLE) score to combine patient’s preoperative lung CT image findings and postoperative pathologic assessment and found that this score can better predict cancer progression risk than TNM staging and tumor grade. Improved predictive value of the IDLE score was primarily due to the complementary use of tumor measurements in CT images from an entire lung as well as microscopic tissue characteristics. Our findings suggest that integrating measurements from different aspects of tumor morphology is more robust for increasing prediction accuracy than building on the measurements of similar aspects of tumor morphology. ABSTRACT: Background: Prognostic risk factors for completely resected stage IA non-small-cell lung cancers (NSCLCs) have advanced minimally over recent decades. Although several biomarkers have been found to be associated with cancer recurrence, their added value to TNM staging and tumor grade are unclear. Methods: Features of preoperative low-dose CT image and histologic findings of hematoxylin- and eosin-stained tissue sections of resected lung tumor specimens were extracted from 182 stage IA NSCLC patients in the National Lung Screening Trial. These features were combined to predict the risk of tumor recurrence or progression through integrated deep learning evaluation (IDLE). Added values of IDLE to TNM staging and tumor grade in progression risk prediction and risk stratification were evaluated. Results: The 5-year AUC of IDLE was 0.817 ± 0.037 as compared to the AUC = 0.561 ± 0.042 and 0.573 ± 0.044 from the TNM stage and tumor grade, respectively. The IDLE score was significantly associated with cancer recurrence (p < 0.0001) even after adjusting for TNM staging and tumor grade. Synergy between chest CT image markers and histological markers was the driving force of the deep learning algorithm to produce a stronger prognostic predictor. Conclusions: Integrating markers from preoperative CT images and pathologist’s readings of resected lung specimens through deep learning can improve risk stratification of stage 1A NSCLC patients over TNM staging and tumor grade alone. Our study suggests that combining markers from nonoverlapping platforms can increase the cancer risk prediction accuracy.
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spelling pubmed-94548712022-09-09 Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation Huang, Peng Illei, Peter B. Franklin, Wilbur Wu, Pei-Hsun Forde, Patrick M. Ashrafinia, Saeed Hu, Chen Khan, Hamza Vadvala, Harshna V. Shih, Ie-Ming Battafarano, Richard J. Jacobs, Michael A. Kong, Xiangrong Lewis, Justine Yan, Rongkai Chen, Yun Housseau, Franck Rahmim, Arman Fishman, Elliot K. Ettinger, David S. Pienta, Kenneth J. Wirtz, Denis Brock, Malcolm V. Lam, Stephen Gabrielson, Edward Cancers (Basel) Article SIMPLE SUMMARY: Few significant advances have been made over recent decades in predicting lung cancer progression risk after complete surgical removal of tumor in stage IA non-small-cell lung cancers (NSCLCs). Although several biomarkers have shown some predictive value, it is unclear whether these markers add value to traditional TNM staging. We developed an integrated deep learning evaluation (IDLE) score to combine patient’s preoperative lung CT image findings and postoperative pathologic assessment and found that this score can better predict cancer progression risk than TNM staging and tumor grade. Improved predictive value of the IDLE score was primarily due to the complementary use of tumor measurements in CT images from an entire lung as well as microscopic tissue characteristics. Our findings suggest that integrating measurements from different aspects of tumor morphology is more robust for increasing prediction accuracy than building on the measurements of similar aspects of tumor morphology. ABSTRACT: Background: Prognostic risk factors for completely resected stage IA non-small-cell lung cancers (NSCLCs) have advanced minimally over recent decades. Although several biomarkers have been found to be associated with cancer recurrence, their added value to TNM staging and tumor grade are unclear. Methods: Features of preoperative low-dose CT image and histologic findings of hematoxylin- and eosin-stained tissue sections of resected lung tumor specimens were extracted from 182 stage IA NSCLC patients in the National Lung Screening Trial. These features were combined to predict the risk of tumor recurrence or progression through integrated deep learning evaluation (IDLE). Added values of IDLE to TNM staging and tumor grade in progression risk prediction and risk stratification were evaluated. Results: The 5-year AUC of IDLE was 0.817 ± 0.037 as compared to the AUC = 0.561 ± 0.042 and 0.573 ± 0.044 from the TNM stage and tumor grade, respectively. The IDLE score was significantly associated with cancer recurrence (p < 0.0001) even after adjusting for TNM staging and tumor grade. Synergy between chest CT image markers and histological markers was the driving force of the deep learning algorithm to produce a stronger prognostic predictor. Conclusions: Integrating markers from preoperative CT images and pathologist’s readings of resected lung specimens through deep learning can improve risk stratification of stage 1A NSCLC patients over TNM staging and tumor grade alone. Our study suggests that combining markers from nonoverlapping platforms can increase the cancer risk prediction accuracy. MDPI 2022-08-27 /pmc/articles/PMC9454871/ /pubmed/36077686 http://dx.doi.org/10.3390/cancers14174150 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Huang, Peng
Illei, Peter B.
Franklin, Wilbur
Wu, Pei-Hsun
Forde, Patrick M.
Ashrafinia, Saeed
Hu, Chen
Khan, Hamza
Vadvala, Harshna V.
Shih, Ie-Ming
Battafarano, Richard J.
Jacobs, Michael A.
Kong, Xiangrong
Lewis, Justine
Yan, Rongkai
Chen, Yun
Housseau, Franck
Rahmim, Arman
Fishman, Elliot K.
Ettinger, David S.
Pienta, Kenneth J.
Wirtz, Denis
Brock, Malcolm V.
Lam, Stephen
Gabrielson, Edward
Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title_full Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title_fullStr Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title_full_unstemmed Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title_short Lung Cancer Recurrence Risk Prediction through Integrated Deep Learning Evaluation
title_sort lung cancer recurrence risk prediction through integrated deep learning evaluation
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9454871/
https://www.ncbi.nlm.nih.gov/pubmed/36077686
http://dx.doi.org/10.3390/cancers14174150
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