Literature DB >> 33963762

Application of a classifier combining bronchial transcriptomics and chest computed tomography features facilitates the diagnostic evaluation of lung cancer in smokers and nonsmokers.

Yang Xia1, Songmin Ying1, Rui Jin1, Hao Wu2, Ye Shen3, Tong Yin3, Fugui Yan1, Wei Zhang3, Fen Lan1, Bin Zhang1, Chen Zhu1, Chen Li2, Wen Li1, Huahao Shen1.   

Abstract

Lung cancer screening by computed tomography (CT) reduces mortality but exhibited high false-positive rates. We established a diagnostic classifier combining chest CT features with bronchial transcriptomics. Patients with CT-detected suspected lung cancer were enrolled. The sample collected by bronchial brushing was used for RNA sequencing. The e1071 and pROC packages in R software was applied to build the model. Eventually, a total of 283 patients, including 183 with lung cancer and 100 with benign lesions, were included into final analysis. When incorporating transcriptomic data with radiological characteristics, the advanced model yielded 0.903 AUC with 81.1% NPV. Moreover, the classifier performed well regardless of lesion size, location, stage, histologic type or smoking status. Pathway analysis showed enhanced epithelial differentiation, tumor metastasis, and impaired immunity were predominant in smokers with cancer, whereas tumorigenesis played a central role in nonsmokers with cancer. Apoptosis and oxidative stress contributed critically in metastatic lung cancer; by contrast, immune dysfunction was pivotal in locally advanced lung cancer. Collectively, we devised a minimal-to-noninvasive, efficient diagnostic classifier for smokers and nonsmokers with lung cancer, which provides evidence for different mechanisms of cancer development and metastasis associated with smoking. A negative classifier result will help the physician make conservative diagnostic decisions.
© 2021 UICC.

Entities:  

Keywords:  classifier; computed tomography; lung cancer; ribonucleic acid sequencing; smoking

Year:  2021        PMID: 33963762     DOI: 10.1002/ijc.33675

Source DB:  PubMed          Journal:  Int J Cancer        ISSN: 0020-7136            Impact factor:   7.396


  1 in total

1.  Identification of the Immune Signatures for Ovarian Cancer Based on the Tumor Immune Microenvironment Genes.

Authors:  Xiaoyan Shen; Xiao Gu; Ruiqiong Ma; Xiaoping Li; Jianliu Wang
Journal:  Front Cell Dev Biol       Date:  2022-03-17
  1 in total

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