Identification of a Steroid Hormone-Associated Gene Signature Predicting the Prognosis of Prostate Cancer through an Integrative Bioinformatics Analysis

Autor: Yo-Liang Lai, Chia-Hsin Liu, Shu-Chi Wang, Shu-Pin Huang, Yi-Chun Cho, Bo-Ying Bao, Chia-Cheng Su, Hsin-Chih Yeh, Cheng-Hsueh Lee, Pai-Chi Teng, Chih-Pin Chuu, Deng-Neng Chen, Chia-Yang Li, Wei-Chung Cheng
Rok vydání: 2022
Předmět:
Zdroj: Cancers; Volume 14; Issue 6; Pages: 1565
ISSN: 2072-6694
Popis: The importance of anti-androgen therapy for prostate cancer (PC) has been well recognized. However, the mechanisms underlying prostate cancer resistance to anti-androgens are not completely understood. Therefore, identifying pharmacological targets in driving the development of castration-resistant PC is necessary. In the present study, we sought to identify core genes in regulating steroid hormone pathways and associating them with the disease progression of PC. The selection of steroid hormone-associated genes was identified from functional databases, including gene ontology, KEGG, and Reactome. The gene expression profiles and relevant clinical information of patients with PC were obtained from TCGA and used to examine the genes associated with steroid hormone. The machine-learning algorithm was performed for key feature selection and signature construction. With the integrative bioinformatics analysis, an eight-gene signature, including CA2, CYP2E1, HSD17B, SSTR3, SULT1E1, TUBB3, UCN, and UGT2B7 was established. Patients with higher expression of this gene signature had worse progression-free interval in both univariate and multivariate cox models adjusted for clinical variables. The expression of the gene signatures also showed the aggressiveness consistently in two external cohorts, PCS and PAM50. Our findings demonstrated a validated eight-gene signature could successfully predict PC prognosis and regulate the steroid hormone pathway.
Databáze: OpenAIRE
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