Oncotarget

Research Papers:

A bioinformatics-to-clinic sequential approach to analysis of prostate cancer biomarkers using TCGA datasets and clinical samples: a new method for precision oncology?

Hidekazu Yoshie, Anna S. Sedukhina, Kimino Minagawa, Keiko Oda, Shigeko Ohnuma, Nobuyuki Yanagisawa, Ichiro Maeda, Masayuki Takagi, Hiroya Kudo, Ryuto Nakazawa, Hideo Sasaki, Toshio Kumai, Tatsuya Chikaraishi and Ko Sato _

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Oncotarget. 2017; 8:99601-99611. https://doi.org/10.18632/oncotarget.20448

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Abstract

Hidekazu Yoshie1,2,*, Anna S. Sedukhina1,*, Kimino Minagawa1, Keiko Oda1, Shigeko Ohnuma3, Nobuyuki Yanagisawa3, Ichiro Maeda3, Masayuki Takagi3, Hiroya Kudo2, Ryuto Nakazawa2, Hideo Sasaki2, Toshio Kumai1, Tatsuya Chikaraishi2 and Ko Sato1

1Department of Pharmacogenomics, St. Marianna University, Kawasaki, Japan

2Department of Urology, St. Marianna University, Kawasaki, Japan

3Department of Pathology, St. Marianna University, Kawasaki, Japan

*These authors have contributed equally to this work

Correspondence to:

Ko Sato, email: [email protected]

Keywords: bioinformatics, precision oncology, prostate cancer, PEG10, neuroendocrine prostate cancer

Received: May 10, 2017    Accepted: July 19, 2017    Published: August 24, 2017

ABSTRACT

Biomarker-driven cancer therapy has met with significant clinical success. Identification of a biomarker implicated in a malignant phenotype and linked to poor clinical outcome is required if we are to develop these types of therapies. A subset of prostate adenocarcinoma (PACa) cases are treatment-resistant, making them an attractive target for such an approach. To identify target molecules implicated in shorter survival of patients with PACa, we established a bioinformatics-to-clinic sequential analysis approach, beginning with 2-step in silico analysis of a TCGA dataset for localized PACa. The effect of candidate genes identified by in silico analysis on survival was then assessed using biopsy specimens taken at the time of initial diagnosis of localized and metastatic PACa. We identified PEG10 as a candidate biomarker. Data from clinical samples suggested that increased expression of PEG10 at the time of initial diagnosis was linked to shorter survival time. Interestingly, PEG10 overexpression also correlated with expression of chromogranin A and synaptophysin, markers for neuroendocrine prostate cancer, a type of treatment-resistant prostate cancer. These results indicate that PEG10 is a novel biomarker for shorter survival of patients with PACa. Also, PEG10 expression at the time of initial diagnosis may predict focal neuroendocrine differentiation of PACa. Thus, PEG10 may be an attractive target for biomarker-driven cancer therapy. Thus, bioinformatics-to-clinic sequential analysis is a valid tool for identifying targets for precision oncology.


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