Competing Endogenous RNA and Coexpression Network Analysis for Identification of Potential Biomarkers and Therapeutics in association with Metastasis Risk and Progression of Prostate Cancer.
Xiaocong PangYing ZhaoJinhua WangWan LiQian XiangZhuo ZhangShiliang WuAi-Lin LiuGuan-Hua DuYi Min CuiPublished in: Oxidative medicine and cellular longevity (2019)
Prostate cancer (PCa) is the most frequently diagnosed malignant neoplasm in men. Despite the high incidence, the underlying pathogenic mechanisms of PCa are still largely unknown, which limits the therapeutic options and leads to poor prognosis. Herein, based on the expression profiles from The Cancer Genome Atlas (TCGA) database, we investigated the interactions between long noncoding RNA (lncRNA) and mRNA by constructing a competing endogenous RNA network. Several competing endogenous RNAs could participate in the tumorigenesis of PCa. Six lncRNA signatures were identified as potential candidates associated with stage progression by the Kolmogorov-Smirnov test. In addition, 32 signatures from the coexpression network had potential diagnostic value for PCa lymphatic metastasis using machine learning algorithms. By targeting the coexpression network, the antifungal compound econazole was screened out for PCa treatment. Econazole could induce growth restraint, arrest the cell cycle, lead to apoptosis, inhibit migration, invasion, and adhesion in PC3 and DU145 cell lines, and inhibit the growth of prostate xenografts in nude mice. This systematic characterization of lncRNAs, microRNAs, and mRNAs in the risk of metastasis and progression of PCa will aid in the identification of candidate prognostic biomarkers and potential therapeutic drugs.
Keyphrases
- network analysis
- prostate cancer
- cell cycle
- long noncoding rna
- poor prognosis
- long non coding rna
- radical prostatectomy
- cell proliferation
- genome wide
- lymph node
- oxidative stress
- escherichia coli
- biofilm formation
- cell migration
- papillary thyroid
- gene expression
- endoplasmic reticulum stress
- human health
- candida albicans
- deep learning
- squamous cell
- cell death
- type diabetes
- adipose tissue
- bioinformatics analysis
- risk factors
- staphylococcus aureus
- mass spectrometry
- cystic fibrosis
- replacement therapy
- smoking cessation
- pi k akt