Abstract
Background: Localized radiation therapy is the first-line option for the treatment of nonmetastatic prostate cancer (PCa). Previous studies revealed that long non-coding RNAs (lncRNAs) had crucial roles in disease progression. However, the mechanisms of lncRNAs underlying prostate cancerrelated fatigue remained largely unclear.
Objective: The present study aimed to uncover the key genes related to PCa related fatigue during localized radiation therapy by constructing mRNA and lncRNA regulatory networks.
Methods: We analyzed GSE30174, which included 10 control samples and 40 PCa related fatigue samples, to identify differently expressed lncRNAs and mRNAs in PCa related fatigue. A proteinprotein interaction network was constructed to reveal the interactions among mRNAs. Co-expression network analysis was applied to identify the key lncRNAs and reveal the functions of these lncRNAs in PCa related fatigue.
Results and Discussion: This research found 1271 dysregulated mRNAs and 205 dysregulated lncRNAs in PCa related fatigue using GSE30174. Bioinformatics analysis showed that PCa related fatigue with mRNAs and lncRNAs were associated with inflammatory response and immune response related biological processes. Furthermore, we constructed a PPI network and lncRNA co-expression network related to fatigue in PCa. Of note, we observed that the dysregulated lncRNAs and mRNAs, such as SEC61A2, ADCY6, LPAR5, COL7A1, ALB, COL1A1, SNHG1, LINC01215, LINC00926, GNG4, LMO7, and COL4A6, in PCa related fatigue could predict the outcome of PCa patients.
Conclusions: This research could provide novel mechanisms underlying fatigue and identify new biomarkers for the prognosis of PCa.
Keywords: Long non-coding RNAs, prostate cancer, fatigue, biomarker, co-expression analysis, genes.
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