scholarly journals An Exhaled microRNA Panel Interrogated for Lung Cancer Case-Control Discrimination

Author(s):  
Miao Shi ◽  
Weiguo Han ◽  
Olivier Loudig ◽  
Chirag D. Shah ◽  
Jay B. Dobkin ◽  
...  

Abstract Background: An exhaled microRNA-based lung cancer case-control discriminant biomarker strategy is reported.Methods: A microRNA-seq discovery effort compared paired tumor to non-tumor tissue, was reconciled with analogous TCGA and published literature-based tissue-discriminant microRNA data, yielding a candidate panel of 24 microRNAs that are upregulated in either adenocarcinomas and/or squamous cell carcinomas. The technical feasibility of microRNA-PCR assays in exhaled breath condensate (EBC) was tested. The airway origin of exhaled microRNAs was then topographically “fingerprinted”, using paired EBC and bronchoscopic samples. For initial EBC testing, a clinic-based case-control set of 351 individuals (166 NSCLC cases, 185 non-cancer controls) was interrogated with the 24-candidate microRNA panel by qualitative RT-PCR, and curated by melt curve analysis. Data were analyzed by both logistic regression (LR), and by random-forest (RF) models, validated by iterative resampling.Results: Both feasibility of exhaled microRNA detection, and its origins in part from lower airway sources, were confirmed. LR models adjusted for age, sex, smoking status, pack years, quit-years, and underlying lung disease identified exhaled miR-21, 33b, 212 (p.adj,=0.019, 0.018, 0.033, resp.) as case-control discriminant. For the RF analysis, the combined clinical + microRNA models showed modest added discrimination capacity (1.1–2.5%) beyond the clinical models alone: by subgroup, all subjects 1.1% (p = 8.7e-04)); former smokers 2.5% (p = 3.6e-05); early stage 1.2% (p = 9.0e-03). Sensitivity, specificity, positive- and negative-predictive values of the clinical + microRNA models for the entire cohort were 71%-76%.Conclusion: This work suggests that exhaled microRNAs are measurable qualitatively; reflect in part lower airway signatures; and if improved/refined, can potentially help distinguish lung cancer cases from controls.

1995 ◽  
Vol 5 (Special Issue) ◽  
pp. S145-S148 ◽  
Author(s):  
Haruhiko Sugimura ◽  
Gerson Shigueaki Hamada ◽  
Iunis Suzuki ◽  
Toshio Iwase ◽  
Etsuko Kiyokawa ◽  
...  

Author(s):  
S.D. Spivack ◽  
W. Han ◽  
O. Loudig ◽  
C. Shah ◽  
J.B. Dobkin ◽  
...  

Sign in / Sign up

Export Citation Format

Share Document