Literature DB >> 29446758

Localized thin-section CT with radiomics feature extraction and machine learning to classify early-detected pulmonary nodules from lung cancer screening.

Shu-Ju Tu1, Chih-Wei Wang, Kuang-Tse Pan, Yi-Cheng Wu, Chen-Te Wu.   

Abstract

Lung cancer screening aims to detect small pulmonary nodules and decrease the mortality rate of those affected. However, studies from large-scale clinical trials of lung cancer screening have shown that the false-positive rate is high and positive predictive value is low. To address these problems, a technical approach is greatly needed for accurate malignancy differentiation among these early-detected nodules. We studied the clinical feasibility of an additional protocol of localized thin-section CT for further assessment on recalled patients from lung cancer screening tests. Our approach of localized thin-section CT was integrated with radiomics features extraction and machine learning classification which was supervised by pathological diagnosis. Localized thin-section CT images of 122 nodules were retrospectively reviewed and 374 radiomics features were extracted. In this study, 48 nodules were benign and 74 malignant. There were nine patients with multiple nodules and four with synchronous multiple malignant nodules. Different machine learning classifiers with a stratified ten-fold cross-validation were used and repeated 100 times to evaluate classification accuracy. Of the image features extracted from the thin-section CT images, 238 (64%) were useful in differentiating between benign and malignant nodules. These useful features include CT density (p  =  0.002 518), sigma (p  =  0.002 781), uniformity (p  =  0.032 41), and entropy (p  =  0.006 685). The highest classification accuracy was 79% by the logistic classifier. The performance metrics of this logistic classification model was 0.80 for the positive predictive value, 0.36 for the false-positive rate, and 0.80 for the area under the receiver operating characteristic curve. Our approach of direct risk classification supervised by the pathological diagnosis with localized thin-section CT and radiomics feature extraction may support clinical physicians in determining truly malignant nodules and therefore reduce problems in lung cancer screening.

Entities:  

Mesh:

Year:  2018        PMID: 29446758     DOI: 10.1088/1361-6560/aaafab

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


  14 in total

1.  Uncertainty measurement of radiomics features against inherent quantum noise in computed tomography imaging.

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Authors:  Xianghua Hu; Weichuan Ye; Zhongxue Li; Chunmiao Chen; Shimiao Cheng; Xiuling Lv; Wei Weng; Jie Li; Qiaoyou Weng; Peipei Pang; Min Xu; Minjiang Chen; Jiansong Ji
Journal:  Br J Radiol       Date:  2020-07-20       Impact factor: 3.039

3.  External validation of radiomics-based predictive models in low-dose CT screening for early lung cancer diagnosis.

Authors:  Noemi Garau; Chiara Paganelli; Paul Summers; Wookjin Choi; Sadegh Alam; Wei Lu; Cristiana Fanciullo; Massimo Bellomi; Guido Baroni; Cristiano Rampinelli
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Review 4.  Artificial intelligence applications for pediatric oncology imaging.

Authors:  Heike Daldrup-Link
Journal:  Pediatr Radiol       Date:  2019-10-16

5.  Extraction of gray-scale intensity distributions from micro computed tomography imaging for femoral cortical bone differentiation between low-magnesium and normal diets in a laboratory mouse model.

Authors:  Shu-Ju Tu; Shun-Ping Wang; Fu-Chou Cheng; Ying-Ju Chen
Journal:  Sci Rep       Date:  2019-05-31       Impact factor: 4.379

6.  Towards clinical application of image mining: a systematic review on artificial intelligence and radiomics.

Authors:  Martina Sollini; Lidija Antunovic; Arturo Chiti; Margarita Kirienko
Journal:  Eur J Nucl Med Mol Imaging       Date:  2019-06-18       Impact factor: 9.236

7.  A novel technology to integrate imaging and clinical markers for non-invasive diagnosis of lung cancer.

Authors:  Ahmed Shaffie; Ahmed Soliman; Xiao-An Fu; Michael Nantz; Guruprasad Giridharan; Victor van Berkel; Hadil Abu Khalifeh; Mohammed Ghazal; Adel Elmaghraby; Ayman El-Baz
Journal:  Sci Rep       Date:  2021-02-25       Impact factor: 4.379

8.  Multiclassifier fusion based on radiomics features for the prediction of benign and malignant primary pulmonary solid nodules.

Authors:  Yao Shen; Fangyi Xu; Wenchao Zhu; Hongjie Hu; Ting Chen; Qiang Li
Journal:  Ann Transl Med       Date:  2020-03

9.  An investigation of machine learning methods in delta-radiomics feature analysis.

Authors:  Yushi Chang; Kyle Lafata; Wenzheng Sun; Chunhao Wang; Zheng Chang; John P Kirkpatrick; Fang-Fang Yin
Journal:  PLoS One       Date:  2019-12-13       Impact factor: 3.240

10.  Reporting radiographers and their role in thoracic CT service improvement: managing the pulmonary nodule.

Authors:  Paul Holland; Hazel Spence; Alison Clubley; Chantel Brooks; David Baldwin; Kate Pointon
Journal:  BJR Open       Date:  2020-03-10
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