| Literature DB >> 28580707 |
Yanli Lin1, Qixin Leng1, Zhengran Jiang1,2, Maria A Guarnera1, Yun Zhou3, Xueqi Chen4, Heping Wang5, Wenxian Zhou5, Ling Cai5, HongBin Fang5, Jie Li6, Hairong Jin6, Linghui Wang6, Shaoqiong Yi6, Wei Lu7, David Evers8, Carol B Fowle8, Yun Su9, Feng Jiang1,8.
Abstract
Lung cancer is primarily caused by cigarette smoking and the leading cancer killer in the USA and across the world. Early detection of lung cancer by low-dose CT (LDCT) can reduce the mortality. However, LDCT dramatically increases the number of indeterminate pulmonary nodules (PNs), leading to overdiagnosis. Having a definitive preoperative diagnosis of malignant PNs is clinically important. Using microarray and droplet digital PCR to directly profile plasma miRNA expressions of 135 patients with PNs, we identified 11 plasma miRNAs that displayed a significant difference between patients with malignant versus benign PNs. Using multivariate logistic regression analysis of the molecular results and clinical/radiological characteristics, we developed an integrated classifier comprising two miRNA biomarkers and one radiological characteristic for distinguishing malignant from benign PNs. The classifier had 89.9% sensitivity and 90.9% specificity, being significantly higher compared with the biomarkers or clinical/radiological characteristics alone (all p < 0.05). The classifier was validated in two independent sets of patients. We have for the first time shown that the integration of plasma biomarkers and radiological characteristics could more accurately identify lung cancer among indeterminate PNs. Future use of the classifier could spare individuals with benign growths from the harmful diagnostic procedures, while allowing effective treatments to be immediately initiated for lung cancer, thereby reduces the mortality and cost. Nevertheless, further prospective validation of this classifier is warranted.Entities:
Keywords: CT; biomarkers; lung cancer; miRNA; pulmonary nodules
Mesh:
Substances:
Year: 2017 PMID: 28580707 PMCID: PMC5526452 DOI: 10.1002/ijc.30822
Source DB: PubMed Journal: Int J Cancer ISSN: 0020-7136 Impact factor: 7.396