Literature DB >> 34209366

Deep Learning-Based Stage-Wise Risk Stratification for Early Lung Adenocarcinoma in CT Images: A Multi-Center Study.

Jing Gong1,2, Jiyu Liu3, Haiming Li1,2, Hui Zhu1,2, Tingting Wang1,2, Tingdan Hu1,2, Menglei Li1,2, Xianwu Xia4, Xianfang Hu5, Weijun Peng1,2, Shengping Wang1,2, Tong Tong1,2, Yajia Gu1,2.   

Abstract

This study aims to develop a deep neural network (DNN)-based two-stage risk stratification model for early lung adenocarcinomas in CT images, and investigate the performance compared with practicing radiologists. A total of 2393 GGNs were retrospectively collected from 2105 patients in four centers. All the pathologic results of GGNs were obtained from surgically resected specimens. A two-stage deep neural network was developed based on the 3D residual network and atrous convolution module to diagnose benign and malignant GGNs (Task1) and classify between invasive adenocarcinoma (IA) and non-IA for these malignant GGNs (Task2). A multi-reader multi-case observer study with six board-certified radiologists' (average experience 11 years, range 2-28 years) participation was conducted to evaluate the model capability. DNN yielded area under the receiver operating characteristic curve (AUC) values of 0.76 ± 0.03 (95% confidence interval (CI): (0.69, 0.82)) and 0.96 ± 0.02 (95% CI: (0.92, 0.98)) for Task1 and Task2, which were equivalent to or higher than radiologists in the senior group with average AUC values of 0.76 and 0.95, respectively (p > 0.05). With the CT image slice thickness increasing from 1.15 mm ± 0.36 to 1.73 mm ± 0.64, DNN performance decreased 0.08 and 0.22 for the two tasks. The results demonstrated (1) a positive trend between the diagnostic performance and radiologist's experience, (2) the DNN yielded equivalent or even higher performance in comparison with senior radiologists, and (3) low image resolution decreased model performance in predicting the risks of GGNs. Once tested prospectively in clinical practice, the DNN could have the potential to assist doctors in precision diagnosis and treatment of early lung adenocarcinoma.

Entities:  

Keywords:  CT image; deep learning; ground glass nodule; lung adenocarcinoma; risk stratification

Year:  2021        PMID: 34209366     DOI: 10.3390/cancers13133300

Source DB:  PubMed          Journal:  Cancers (Basel)        ISSN: 2072-6694            Impact factor:   6.639


  2 in total

1.  How Many Private Data Are Needed for Deep Learning in Lung Nodule Detection on CT Scans? A Retrospective Multicenter Study.

Authors:  Jeong Woo Son; Ji Young Hong; Yoon Kim; Woo Jin Kim; Dae-Yong Shin; Hyun-Soo Choi; So Hyeon Bak; Kyoung Min Moon
Journal:  Cancers (Basel)       Date:  2022-06-28       Impact factor: 6.575

2.  METTL7B is a novel prognostic biomarker of lower-grade glioma based on pan-cancer analysis.

Authors:  Zhipeng Jiang; Wen Yin; Hecheng Zhu; Jun Tan; Youwei Guo; Zhaoqi Xin; Quanwei Zhou; Yudong Cao; Zhaoping Wu; Yirui Kuang; Can Li; Dongcheng Xie; Hailong Huang; Ming Zhao; Xingjun Jiang; Lei Wang; Caiping Ren
Journal:  Cancer Cell Int       Date:  2021-07-19       Impact factor: 5.722

  2 in total

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