Prostate
cancer (PCa) is the most prevalent noncutaneous cancer
among men. The limited accuracy and/or invasive nature of the current
diagnostic tools have driven the demand for new and noninvasive biomarkers.
Urine as a noninvasive sample that contains prostatic secretions is
a promising source of PCa markers. The automatic text-mining functionality
of VOSviewer was used to retrieve and create co-occurrence networks
of terms associated with PCa. These results were complemented with
DisGENET data, a repository of PCa associations, and with a recent
bioinformatic analysis integrating all differentially expressed proteins
identified in tumor tissue and urine from PCa patients to address
the limited term selection of VOSviewer. Afterward, the results were
integrated with gene expression data from the Gene Expression Omnibus
database to correlate gene and protein levels. This study suggests
AXIN2, GSTM2, KLK3, LGALS3, MSMB, PRTFDC1, and SH3RF1 as important
entities in PCa context. KLK, LGALS3, and MSMB proteins are common
to a previous bioinformatic analysis, and a concordance was found
between the levels of gene and protein expression. The applicability
of the pipeline presented here was validated by showing altered urinary
levels of galectin-3 protein in PCa patients compared to noncancer
subjects.
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