Literature DB >> 32840472

Diagnosis of Invasive Lung Adenocarcinoma Based on Chest CT Radiomic Features of Part-Solid Pulmonary Nodules: A Multicenter Study.

Guangyao Wu1, Henry C Woodruff1, Jing Shen1, Turkey Refaee1, Sebastian Sanduleanu1, Abdalla Ibrahim1, Ralph T H Leijenaar1, Rui Wang1, Jingtong Xiong1, Jie Bian1, Jianlin Wu1, Philippe Lambin1.   

Abstract

Background Solid components of part-solid nodules (PSNs) at CT are reflective of invasive adenocarcinoma, but studies describing radiomic features of PSNs and the perinodular region are lacking. Purpose To develop and to validate radiomic signatures diagnosing invasive lung adenocarcinoma in PSNs compared with the Brock, clinical-semantic features, and volumetric models. Materials and Methods This retrospective multicenter study (https://ClinicalTrials.gov, NCT03872362) included 291 patients (median age, 60 years; interquartile range, 55-65 years; 191 women) from January 2013 to October 2017 with 297 PSN lung adenocarcinomas split into training (n = 229) and test (n = 68) data sets. Radiomic features were extracted from the different regions (gross tumor volume [GTV], solid, ground-glass, and perinodular). Random-forest models were trained using clinical-semantic, volumetric, and radiomic features, and an online nodule calculator was used to compute the Brock model. Performances of models were evaluated using standard metrics such as area under the curve (AUC), accuracy, and calibration. The integrated discrimination improvement was applied to assess model performance changes after the addition of perinodular features. Results The radiomics model based on ground-glass and solid features yielded an AUC of 0.98 (95% confidence interval [CI]: 0.96, 1.00) on the test data set, which was significantly higher than the Brock (AUC, 0.83 [95% CI: 0.72, 0.94]; P = .007), clinical-semantic (AUC, 0.90 [95% CI: 0.83, 0.98]; P = .03), volumetric GTV (AUC, 0.87 [95% CI: 0.78, 0.96]; P = .008), and radiomics GTV (AUC, 0.88 [95% CI: 0.80, 0.96]; P = .01) models. It also achieved the best accuracy (93% [95% CI: 84%, 98%]). Both this model and the model with added perinodular features showed good calibration, whereas adding perinodular features did not improve the performance (integrated discrimination improvement, -0.02; P = .56). Conclusion Separating ground-glass and solid CT radiomic features of part-solid nodules was useful in diagnosing the invasiveness of lung adenocarcinoma, yielding a better predictive performance than the Brock, clinical-semantic, volumetric, and radiomics gross tumor volume models. Online supplemental material is available for this article. See also the editorial by Nishino in this issue. Published under a CC BY 4.0 license.

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Year:  2020        PMID: 32840472     DOI: 10.1148/radiol.2020192431

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  16 in total

1.  Solid Attenuation Components Attention Deep Learning Model to Predict Micropapillary and Solid Patterns in Lung Adenocarcinomas on Computed Tomography.

Authors:  Li-Wei Chen; Shun-Mao Yang; Ching-Chia Chuang; Hao-Jen Wang; Yi-Chang Chen; Mong-Wei Lin; Min-Shu Hsieh; Mara B Antonoff; Yeun-Chung Chang; Carol C Wu; Tinsu Pan; Chung-Ming Chen
Journal:  Ann Surg Oncol       Date:  2022-07-05       Impact factor: 4.339

2.  Multi-parametric MRI-based radiomics signature for preoperative prediction of Ki-67 proliferation status in sinonasal malignancies: a two-centre study.

Authors:  Shucheng Bi; Jie Li; Tongyu Wang; Fengyuan Man; Peng Zhang; Feng Hou; Hexiang Wang; Dapeng Hao
Journal:  Eur Radiol       Date:  2022-06-10       Impact factor: 7.034

3.  Combined Radiomic and Visual Assessment for Improved Detection of Lung Adenocarcinoma Invasiveness on Computed Tomography Scans: A Multi-Institutional Study.

Authors:  Pranjal Vaidya; Kaustav Bera; Philip A Linden; Amit Gupta; Prabhakar Shantha Rajiah; David R Jones; Matthew Bott; Harvey Pass; Robert Gilkeson; Frank Jacono; Kevin Li-Chun Hsieh; Gong-Yau Lan; Vamsidhar Velcheti; Anant Madabhushi
Journal:  Front Oncol       Date:  2022-05-30       Impact factor: 5.738

4.  Value of Whole-Thyroid CT-Based Radiomics in Predicting Benign and Malignant Thyroid Nodules.

Authors:  Han Xu; Ximing Wang; Chaoqun Guan; Ru Tan; Qing Yang; Qi Zhang; Aie Liu; Qingwei Liu
Journal:  Front Oncol       Date:  2022-05-05       Impact factor: 5.738

5.  Development and Validation a Nomogram Incorporating CT Radiomics Signatures and Radiological Features for Differentiating Invasive Adenocarcinoma From Adenocarcinoma In Situ and Minimally Invasive Adenocarcinoma Presenting as Ground-Glass Nodules Measuring 5-10mm in Diameter.

Authors:  Lili Shi; Weiya Shi; Xueqing Peng; Yi Zhan; Linxiao Zhou; Yunpeng Wang; Mingxiang Feng; Jinli Zhao; Fei Shan; Lei Liu
Journal:  Front Oncol       Date:  2021-04-21       Impact factor: 6.244

6.  Diagnosis of Invasive Meningioma Based on Brain-Tumor Interface Radiomics Features on Brain MR Images: A Multicenter Study.

Authors:  Dongdong Xiao; Zhen Zhao; Jun Liu; Xuan Wang; Peng Fu; Jehane Michael Le Grange; Jihua Wang; Xuebing Guo; Hongyang Zhao; Jiawei Shi; Pengfei Yan; Xiaobing Jiang
Journal:  Front Oncol       Date:  2021-08-20       Impact factor: 6.244

7.  Development and validation of a preoperative CT-based radiomic nomogram to predict pathology invasiveness in patients with a solitary pulmonary nodule: a machine learning approach, multicenter, diagnostic study.

Authors:  Luyu Huang; Weihuan Lin; Daipeng Xie; Yunfang Yu; Hanbo Cao; Guoqing Liao; Shaowei Wu; Lintong Yao; Zhaoyu Wang; Mei Wang; Siyun Wang; Guangyi Wang; Dongkun Zhang; Su Yao; Zifan He; William Chi-Shing Cho; Duo Chen; Zhengjie Zhang; Wanshan Li; Guibin Qiao; Lawrence Wing-Chi Chan; Haiyu Zhou
Journal:  Eur Radiol       Date:  2021-10-16       Impact factor: 7.034

Review 8.  Deep Learning With Radiomics for Disease Diagnosis and Treatment: Challenges and Potential.

Authors:  Xingping Zhang; Yanchun Zhang; Guijuan Zhang; Xingting Qiu; Wenjun Tan; Xiaoxia Yin; Liefa Liao
Journal:  Front Oncol       Date:  2022-02-17       Impact factor: 6.244

9.  Three-Dimensional Convolutional Neural Network-Based Prediction of Epidermal Growth Factor Receptor Expression Status in Patients With Non-Small Cell Lung Cancer.

Authors:  Xuemei Huang; Yingli Sun; Mingyu Tan; Weiling Ma; Pan Gao; Lin Qi; Jinjuan Lu; Yuling Yang; Kun Wang; Wufei Chen; Liang Jin; Kaiming Kuang; Shaofeng Duan; Ming Li
Journal:  Front Oncol       Date:  2022-02-02       Impact factor: 6.244

Review 10.  Structural and functional radiomics for lung cancer.

Authors:  Arthur Jochems; Turkey Refaee; Henry C Woodruff; Philippe Lambin; Guangyao Wu; Abdalla Ibrahim; Chenggong Yan; Sebastian Sanduleanu
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-03-11       Impact factor: 10.057

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