Data mining for identification of molecular targets in ovarian cancer

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Abstract

Ovarian cancer is possibly the sixth most common malignancy worldwide, in Mexico representing the fourth leading cause of gynecological cancer death more than 70% being diagnosed at an advanced stage and the survival being very poor. Ovarian tumors are classified according to histological characteristics, epithelial ovarian cancer as the most common (~80%). We here used high-density microarrays and a systems biology approach to identify tissue-associated deregulated genes. Non-malignant ovarian tumors showed a gene expression profile associated with immune mediated inflammatory responses (28 genes), whereas malignant tumors had a gene expression profile related to cell cycle regulation (1,329 genes) and ovarian cell lines to cell cycling and metabolism (1,664 genes).

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APA

Villegas-Ruiz, V., & Juarez-Mendez, S. (2016). Data mining for identification of molecular targets in ovarian cancer. Asian Pacific Journal of Cancer Prevention, 17(4), 1691–1699. https://doi.org/10.7314/APJCP.2016.17.4.1691

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