Cargando…

Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning

To develop a deep learning system based on 3D convolutional neural networks (CNNs), and to automatically predict EGFR‐mutant pulmonary adenocarcinoma in CT images. A dataset of 579 nodules with EGFR mutation status labels of mutant (Mut) or wild‐type (WT) was retrospectively analyzed. A deep learnin...

Descripción completa

Detalles Bibliográficos
Autores principales: Zhao, Wei, Yang, Jiancheng, Ni, Bingbing, Bi, Dexi, Sun, Yingli, Xu, Mengdi, Zhu, Xiaoxia, Li, Cheng, Jin, Liang, Gao, Pan, Wang, Peijun, Hua, Yanqing, Li, Ming
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6601587/
https://www.ncbi.nlm.nih.gov/pubmed/31074592
http://dx.doi.org/10.1002/cam4.2233
_version_ 1783431316577976320
author Zhao, Wei
Yang, Jiancheng
Ni, Bingbing
Bi, Dexi
Sun, Yingli
Xu, Mengdi
Zhu, Xiaoxia
Li, Cheng
Jin, Liang
Gao, Pan
Wang, Peijun
Hua, Yanqing
Li, Ming
author_facet Zhao, Wei
Yang, Jiancheng
Ni, Bingbing
Bi, Dexi
Sun, Yingli
Xu, Mengdi
Zhu, Xiaoxia
Li, Cheng
Jin, Liang
Gao, Pan
Wang, Peijun
Hua, Yanqing
Li, Ming
author_sort Zhao, Wei
collection PubMed
description To develop a deep learning system based on 3D convolutional neural networks (CNNs), and to automatically predict EGFR‐mutant pulmonary adenocarcinoma in CT images. A dataset of 579 nodules with EGFR mutation status labels of mutant (Mut) or wild‐type (WT) was retrospectively analyzed. A deep learning system, namely 3D DenseNets, was developed to process 3D patches of nodules from CT data, and learn strong representations with supervised end‐to‐end training. The 3D DenseNets were trained with a training subset of 348 nodules and tuned with a development subset of 116 nodules. A strong data augmentation technique, mixup, was used for better generalization. We evaluated our model on a holdout subset of 115 nodules. An independent public dataset of 37 nodules from the cancer imaging archive (TCIA) was also used to test the generalization of our method. Conventional radiomics analysis was also performed for comparison. Our method achieved promising performance on predicting EGFR mutation status, with AUCs of 75.8% and 75.0% for our holdout test set and public test set, respectively. Moreover, strong relations were found between deep learning feature and conventional radiomics, while deep learning worked through an enhanced radiomics manner, that is, deep learned radiomics (DLR), in terms of robustness, compactness and expressiveness. The proposed deep learning system predicts EGFR‐mutant of lung adenocarcinomas in CT images noninvasively and automatically, indicating its potential to help clinical decision‐making by identifying eligible patients of pulmonary adenocarcinoma for EGFR‐targeted therapy.
format Online
Article
Text
id pubmed-6601587
institution National Center for Biotechnology Information
language English
publishDate 2019
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-66015872019-07-22 Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning Zhao, Wei Yang, Jiancheng Ni, Bingbing Bi, Dexi Sun, Yingli Xu, Mengdi Zhu, Xiaoxia Li, Cheng Jin, Liang Gao, Pan Wang, Peijun Hua, Yanqing Li, Ming Cancer Med Cancer Biology To develop a deep learning system based on 3D convolutional neural networks (CNNs), and to automatically predict EGFR‐mutant pulmonary adenocarcinoma in CT images. A dataset of 579 nodules with EGFR mutation status labels of mutant (Mut) or wild‐type (WT) was retrospectively analyzed. A deep learning system, namely 3D DenseNets, was developed to process 3D patches of nodules from CT data, and learn strong representations with supervised end‐to‐end training. The 3D DenseNets were trained with a training subset of 348 nodules and tuned with a development subset of 116 nodules. A strong data augmentation technique, mixup, was used for better generalization. We evaluated our model on a holdout subset of 115 nodules. An independent public dataset of 37 nodules from the cancer imaging archive (TCIA) was also used to test the generalization of our method. Conventional radiomics analysis was also performed for comparison. Our method achieved promising performance on predicting EGFR mutation status, with AUCs of 75.8% and 75.0% for our holdout test set and public test set, respectively. Moreover, strong relations were found between deep learning feature and conventional radiomics, while deep learning worked through an enhanced radiomics manner, that is, deep learned radiomics (DLR), in terms of robustness, compactness and expressiveness. The proposed deep learning system predicts EGFR‐mutant of lung adenocarcinomas in CT images noninvasively and automatically, indicating its potential to help clinical decision‐making by identifying eligible patients of pulmonary adenocarcinoma for EGFR‐targeted therapy. John Wiley and Sons Inc. 2019-05-10 /pmc/articles/PMC6601587/ /pubmed/31074592 http://dx.doi.org/10.1002/cam4.2233 Text en © 2019 The Authors. Cancer Medicine published by John Wiley & Sons 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 Cancer Biology
Zhao, Wei
Yang, Jiancheng
Ni, Bingbing
Bi, Dexi
Sun, Yingli
Xu, Mengdi
Zhu, Xiaoxia
Li, Cheng
Jin, Liang
Gao, Pan
Wang, Peijun
Hua, Yanqing
Li, Ming
Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title_full Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title_fullStr Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title_full_unstemmed Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title_short Toward automatic prediction of EGFR mutation status in pulmonary adenocarcinoma with 3D deep learning
title_sort toward automatic prediction of egfr mutation status in pulmonary adenocarcinoma with 3d deep learning
topic Cancer Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6601587/
https://www.ncbi.nlm.nih.gov/pubmed/31074592
http://dx.doi.org/10.1002/cam4.2233
work_keys_str_mv AT zhaowei towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT yangjiancheng towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT nibingbing towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT bidexi towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT sunyingli towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT xumengdi towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT zhuxiaoxia towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT licheng towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT jinliang towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT gaopan towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT wangpeijun towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT huayanqing towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning
AT liming towardautomaticpredictionofegfrmutationstatusinpulmonaryadenocarcinomawith3ddeeplearning