Discovery of Novel Bladder Cancer Biomarkers by Comparative Urine Proteomics Using iTRAQ Technology
journal contributionposted on 05.11.2010, 00:00 by Yi-Ting Chen, Chien-Lun Chen, Hsiao-Wei Chen, Ting Chung, Chih-Ching Wu, Chi-De Chen, Chia-Wei Hsu, Meng-Chieh Chen, Ke-Hung Tsui, Phei-Lang Chang, Yu-Sun Chang, Jau-Song Yu
A urine sample preparation workflow for the iTRAQ (isobaric tag for relative and absolute quantitation) technique was established. The reproducibility of this platform was evaluated and applied to discover proteins with differential levels between pooled urine samples from nontumor controls and three bladder cancer patient subgroups with different grades/stages (a total of 14 controls and 23 cancer cases in two multiplex iTRAQ runs). Combining the results of two independent clinical sample sets, a total of 638 urine proteins were identified. Among them, 55 proteins consistently showed >2-fold differences in both sample sets. Western blot analyses of individual urine samples confirmed that the levels of apolipoprotein A-I (APOA1), apolipoprotein A-II, heparin cofactor 2 precursor and peroxiredoxin-2 were significantly elevated in bladder cancer urine specimens (n = 25−74). Finally, we quantified APOA1 in a number of urine samples using a commercial ELISA and confirmed again its potential value for diagnosis (n = 126, 94.6% sensitivity and 92.0% specificity at a cutoff value of 11.16 ng/mL) and early detection (n = 71, 83.8% sensitivity and 94.0% specificity). Collectively, our results provide the first iTRAQ-based quantitative profile of bladder cancer urine proteins and represent a valuable resource for the discovery of bladder cancer markers.
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sample setsbladder cancer patient subgroupsiTRAQ TechnologyA urine sample preparation workflowAPOAbladder cancer urine proteinsbladder cancer urine specimensurine samples638 urine proteinsNovel Bladder Cancer Biomarkersheparin cofactor 2 precursorbladder cancer markersELISAComparative Urine Proteomics23 cancer casesWestern blot analyses