Literature DB >> 31167172

Computer-aided diagnosis of ground-glass opacity pulmonary nodules using radiomic features analysis.

Jing Gong1, Jiyu Liu, Wen Hao, Shengdong Nie, Shengping Wang, Weijun Peng.   

Abstract

This study aims to develop a CT-based radiomic features analysis approach for diagnosis of ground-glass opacity (GGO) pulmonary nodules, and also assess whether computer-aided diagnosis (CADx) performance changes in classifying between benign and malignant nodules associated with histopathological subtypes namely, adenocarcinoma in situ (AIS), minimally invasive adenocarcinoma (MIA), and invasive adenocarcinoma (IAC), respectively. The study involves 182 histopathology-confirmed GGO nodules collected from two cancer centers. Among them, 59 are benign, 50 are AIS, 32 are MIA, and 41 are IAC nodules. Four training/testing data sets-(1) all nodules, (2) benign and AIS nodules, (3) benign and MIA nodules, (4) benign and IAC nodules-are assembled based on their histopathological subtypes. We first segment pulmonary nodules depicted in CT images by using a 3D region growing and geodesic active contour level set algorithm. Then, we computed and extracted 1117 quantitative imaging features based on the 3D segmented nodules. After conducting radiomic features normalization process, we apply a leave-one-out cross-validation (LOOCV) method to build models by embedding with a Relief feature selection, synthetic minority oversampling technique (SMOTE) and three machine-learning classifiers namely, support vector machine classifier, logistic regression classifier and Gaussian Naïve Bayes classifier. When separately using four data sets to train and test three classifiers, the average areas under receiver operating characteristic curves (AUC) are 0.75, 0.55, 0.77 and 0.93, respectively. When testing on an independent data set, our scheme yields higher accuracy than two radiologists (61.3% versus radiologist 1: 53.1% and radiologist 2: 56.3%). This study demonstrates that: (1) the feasibility of using CT-based radiomic features analysis approach to distinguish between benign and malignant GGO nodules, (2) higher performance of CADx scheme in diagnosing GGO nodules comparing with radiologist, and (3) a consistently positive trend between classification performance and invasive grade of GGO nodules. Thus, to improve the CADx performance in diagnosing of GGO nodules, one should assemble an optimal training data set dominated with more nodules associated with non-invasive lung adenocarcinoma (i.e. AIS and MIA).

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Mesh:

Year:  2019        PMID: 31167172     DOI: 10.1088/1361-6560/ab2757

Source DB:  PubMed          Journal:  Phys Med Biol        ISSN: 0031-9155            Impact factor:   3.609


  9 in total

1.  Developing of risk models for small solid and subsolid pulmonary nodules based on clinical and quantitative radiomics features.

Authors:  Rui Zhang; Huaiqiang Sun; Bojiang Chen; Renjie Xu; Weimin Li
Journal:  J Thorac Dis       Date:  2021-07       Impact factor: 2.895

2.  3D deep learning based classification of pulmonary ground glass opacity nodules with automatic segmentation.

Authors:  Duo Wang; Tao Zhang; Ming Li; Raphael Bueno; Jagadeesan Jayender
Journal:  Comput Med Imaging Graph       Date:  2020-12-11       Impact factor: 4.790

3.  Predicting Lung Cancer Risk of Incidental Solid and Subsolid Pulmonary Nodules in Different Sizes.

Authors:  Rui Zhang; Panwen Tian; Bojiang Chen; Yongzhao Zhou; Weimin Li
Journal:  Cancer Manag Res       Date:  2020-09-04       Impact factor: 3.989

4.  Clinical T category for lung cancer staging: A pragmatic approach for real-world practice.

Authors:  Yeonu Choi; Sun-Hyung Kim; Ki Hwan Kim; Yeonseok Choi; Sung Goo Park; Insuk Sohn; Hye Seung Kim; Sang-Won Um; Ho Yun Lee
Journal:  Thorac Cancer       Date:  2020-10-19       Impact factor: 3.500

5.  Predicting Malignancy and Invasiveness of Pulmonary Subsolid Nodules on CT Images Using Deep Learning.

Authors:  Tianle Shen; Runping Hou; Xiaodan Ye; Xiaoyang Li; Junfeng Xiong; Qin Zhang; Chenchen Zhang; Xuwei Cai; Wen Yu; Jun Zhao; Xiaolong Fu
Journal:  Front Oncol       Date:  2021-07-26       Impact factor: 6.244

6.  A short-term follow-up CT based radiomics approach to predict response to immunotherapy in advanced non-small-cell lung cancer.

Authors:  Jing Gong; Xiao Bao; Ting Wang; Jiyu Liu; Weijun Peng; Jingyun Shi; Fengying Wu; Yajia Gu
Journal:  Oncoimmunology       Date:  2022-01-25       Impact factor: 8.110

7.  Assessing the predictive accuracy of lung cancer, metastases, and benign lesions using an artificial intelligence-driven computer aided diagnosis system.

Authors:  Kunwei Li; Kunfeng Liu; Yinghua Zhong; Mingzhu Liang; Peixin Qin; Haijun Li; Rongguo Zhang; Shaolin Li; Xueguo Liu
Journal:  Quant Imaging Med Surg       Date:  2021-08

8.  Comparison and Fusion of Deep Learning and Radiomics Features of Ground-Glass Nodules to Predict the Invasiveness Risk of Stage-I Lung Adenocarcinomas in CT Scan.

Authors:  Xianwu Xia; Jing Gong; Wen Hao; Ting Yang; Yeqing Lin; Shengping Wang; Weijun Peng
Journal:  Front Oncol       Date:  2020-03-31       Impact factor: 6.244

Review 9.  The application of artificial intelligence in lung cancer: a narrative review.

Authors:  Huixian Zhang; Die Meng; Siqi Cai; Haoyue Guo; Peixin Chen; Zixuan Zheng; Jun Zhu; Wencheng Zhao; Hao Wang; Sha Zhao; Jia Yu; Yayi He
Journal:  Transl Cancer Res       Date:  2021-05       Impact factor: 1.241

  9 in total

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