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Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature

BACKGROUND: Tumor mutation burden (TMB) is an important determinant and biomarker for response of targeted therapy and prognosis in patients with lung cancer. The present study aimed to determine whether radiomics signature could non‐invasively predict the TMB status and driver mutations in patients...

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Autores principales: Wang, Xiaoxiao, Kong, Cheng, Xu, Weizhang, Yang, Sheng, Shi, Dan, Zhang, Jingyuan, Du, Mulong, Wang, Siwei, Bai, Yongkang, Zhang, Te, Chen, Zeng, Ma, Zhifei, Wang, Jie, Dong, Gaochao, Sun, Mengting, Yin, Rong, Chen, Feng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons Australia, Ltd 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6775017/
https://www.ncbi.nlm.nih.gov/pubmed/31414580
http://dx.doi.org/10.1111/1759-7714.13163
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author Wang, Xiaoxiao
Kong, Cheng
Xu, Weizhang
Yang, Sheng
Shi, Dan
Zhang, Jingyuan
Du, Mulong
Wang, Siwei
Bai, Yongkang
Zhang, Te
Chen, Zeng
Ma, Zhifei
Wang, Jie
Dong, Gaochao
Sun, Mengting
Yin, Rong
Chen, Feng
author_facet Wang, Xiaoxiao
Kong, Cheng
Xu, Weizhang
Yang, Sheng
Shi, Dan
Zhang, Jingyuan
Du, Mulong
Wang, Siwei
Bai, Yongkang
Zhang, Te
Chen, Zeng
Ma, Zhifei
Wang, Jie
Dong, Gaochao
Sun, Mengting
Yin, Rong
Chen, Feng
author_sort Wang, Xiaoxiao
collection PubMed
description BACKGROUND: Tumor mutation burden (TMB) is an important determinant and biomarker for response of targeted therapy and prognosis in patients with lung cancer. The present study aimed to determine whether radiomics signature could non‐invasively predict the TMB status and driver mutations in patients with resectable early stage lung adenocarcinoma (LUAD). METHODS: A total of 61pulmonary nodules (PNs) from 51 patients post‐operatively diagnosed LUAD were enrolled for analysis. Two datasets were divided according to two‐thirds of patients from different commercial Comprehensive Genomic Profiling (CGP) panels: a training cohort including 41 PNs and a testing cohort including rest 20PNs. We sequenced all tumor specimens and paired blood cells using next generation sequencing (NGS), so as to detect TMB status and somatic mutations. We collected 718 quantitative 3D radiomics features extracted from segmented volumes of each PNs and 78 clinical and pathological features retrieved from medical records as well. Support vector machine methods were performed to establish the predictive model. RESULTS: We established an efficient fusion‐positive tumor prediction model that predicts TMB status and EGFR/TP53 mutations of early stage LUAD. The radiomics signature yielded a median AUC value of 0.606, 0.604, and 0.586 respectively. Combining radiomics with the clinical information can further improve the prediction performance, which the median AUC values are 0.671 for TMB, 0.697 and 0.656 for EGFR/TP53 respectively. CONCLUSION: It is feasible and effective to facilitate TMB and somatic driver mutations prediction by using the radiomics signature and NGS data in early stage LUAD.
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spelling pubmed-67750172019-10-07 Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature Wang, Xiaoxiao Kong, Cheng Xu, Weizhang Yang, Sheng Shi, Dan Zhang, Jingyuan Du, Mulong Wang, Siwei Bai, Yongkang Zhang, Te Chen, Zeng Ma, Zhifei Wang, Jie Dong, Gaochao Sun, Mengting Yin, Rong Chen, Feng Thorac Cancer Original Articles BACKGROUND: Tumor mutation burden (TMB) is an important determinant and biomarker for response of targeted therapy and prognosis in patients with lung cancer. The present study aimed to determine whether radiomics signature could non‐invasively predict the TMB status and driver mutations in patients with resectable early stage lung adenocarcinoma (LUAD). METHODS: A total of 61pulmonary nodules (PNs) from 51 patients post‐operatively diagnosed LUAD were enrolled for analysis. Two datasets were divided according to two‐thirds of patients from different commercial Comprehensive Genomic Profiling (CGP) panels: a training cohort including 41 PNs and a testing cohort including rest 20PNs. We sequenced all tumor specimens and paired blood cells using next generation sequencing (NGS), so as to detect TMB status and somatic mutations. We collected 718 quantitative 3D radiomics features extracted from segmented volumes of each PNs and 78 clinical and pathological features retrieved from medical records as well. Support vector machine methods were performed to establish the predictive model. RESULTS: We established an efficient fusion‐positive tumor prediction model that predicts TMB status and EGFR/TP53 mutations of early stage LUAD. The radiomics signature yielded a median AUC value of 0.606, 0.604, and 0.586 respectively. Combining radiomics with the clinical information can further improve the prediction performance, which the median AUC values are 0.671 for TMB, 0.697 and 0.656 for EGFR/TP53 respectively. CONCLUSION: It is feasible and effective to facilitate TMB and somatic driver mutations prediction by using the radiomics signature and NGS data in early stage LUAD. John Wiley & Sons Australia, Ltd 2019-08-14 2019-10 /pmc/articles/PMC6775017/ /pubmed/31414580 http://dx.doi.org/10.1111/1759-7714.13163 Text en © 2019 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-nc/4.0/ License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited and is not used for commercial purposes.
spellingShingle Original Articles
Wang, Xiaoxiao
Kong, Cheng
Xu, Weizhang
Yang, Sheng
Shi, Dan
Zhang, Jingyuan
Du, Mulong
Wang, Siwei
Bai, Yongkang
Zhang, Te
Chen, Zeng
Ma, Zhifei
Wang, Jie
Dong, Gaochao
Sun, Mengting
Yin, Rong
Chen, Feng
Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title_full Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title_fullStr Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title_full_unstemmed Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title_short Decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using CT‐based radiomics signature
title_sort decoding tumor mutation burden and driver mutations in early stage lung adenocarcinoma using ct‐based radiomics signature
topic Original Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6775017/
https://www.ncbi.nlm.nih.gov/pubmed/31414580
http://dx.doi.org/10.1111/1759-7714.13163
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