PLoS ONE (Jan 2017)

Integrative analysis for the discovery of lung cancer serological markers and validation by MRM-MS.

  • Jihye Shin,
  • Sang-Yun Song,
  • Hee-Sung Ahn,
  • Byung Chull An,
  • Yoo-Duk Choi,
  • Eun Gyeong Yang,
  • Kook-Joo Na,
  • Seung-Taek Lee,
  • Jae-Il Park,
  • Seon-Young Kim,
  • Cheolju Lee,
  • Seung-Won Lee

DOI
https://doi.org/10.1371/journal.pone.0183896
Journal volume & issue
Vol. 12, no. 8
p. e0183896

Abstract

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Non-small-cell lung cancer (NSCLC) constitutes approximately 80% of all diagnosed lung cancers, and diagnostic markers detectable in the plasma/serum of NSCLC patients are greatly needed. In this study, we established a pipeline for the discovery of markers using 9 transcriptome datasets from publicly available databases and profiling of six lung cancer cell secretomes. Thirty-one out of 312 proteins that overlapped between two-fold differentially expressed genes and identified cell secretome proteins were detected in the pooled plasma of lung cancer patients. To quantify the candidates in the serum of NSCLC patients, multiple-reaction-monitoring mass spectrometry (MRM-MS) was performed for five candidate biomarkers. Finally, two potential biomarkers (BCHE and GPx3; AUC = 0.713 and 0.673, respectively) and one two-marker panel generated by logistic regression (BCHE/GPx3; AUC = 0.773) were identified. A validation test was performed by ELISA to evaluate the reproducibility of GPx3 and BCHE expression in an independent set of samples (BCHE and GPx3; AUC = 0.630 and 0.759, respectively, BCHE/GPx3 panel; AUC = 0.788). Collectively, these results demonstrate the feasibility of using our pipeline for marker discovery and our MRM-MS platform for verifying potential biomarkers of human diseases.