Literature DB >> 27935848

Plasmin(ogen) serves as a favorable biomarker for prediction of survival in advanced high-grade serous ovarian cancer.

Shuo Zhao1, Julia Dorn1, Rudolf Napieralski1, Axel Walch1, Sandra Diersch1, Matthias Kotzsch1, Nancy Ahmed1, John D Hooper1, Marion Kiechle1, Manfred Schmitt1, Viktor Magdolen1.   

Abstract

In serous ovarian cancer, the clinical relevance of tumor cell-expressed plasmin(ogen) (PLG) has not yet been evaluated. Due to its proteolytic activity, plasmin supports tumorigenesis, however, angiostatin(-like) fragments, derived from PLG, can also function as potent anti-tumorigenic factors. In the present study, we assessed PLG protein expression in 103 cases of advanced high-grade serous ovarian cancer (FIGO III/IV) by immunohistochemistry (IHC). In 70/103 cases, positive staining of tumor cells was observed. In univariate Cox regression analysis, PLG staining was positively associated with prolonged overall survival (OS) [hazard ratio (HR)=0.59, p=0.026] of the patients. In multivariable analysis, PLG, together with residual tumor mass, remained a statistically significant independent prognostic marker (HR=0.49, p=0.009). In another small patient cohort (n=29), we assessed mRNA expression levels of PLG by quantitative PCR. Here, elevated PLG mRNA levels were also significantly associated with prolonged OS of patients (Kaplan-Meier analysis; p=0.001). This finding was validated by in silico analysis of a microarray data set (n=398) from The Cancer Genome Atlas (Kaplan-Meier analysis; p=0.031). In summary, these data indicate that elevated PLG expression represents a favorable prognostic biomarker in advanced (FIGO III/IV) high-grade serous ovarian cancer.

Entities:  

Keywords:  PAI-1; immunohistochemistry; ovarian cancer; plasmin; plasminogen; quantitative PCR; uPA

Mesh:

Substances:

Year:  2017        PMID: 27935848     DOI: 10.1515/hsz-2016-0282

Source DB:  PubMed          Journal:  Biol Chem        ISSN: 1431-6730            Impact factor:   3.915


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