Abstract

Kidney cancer ranks as one of the top 10 causes of cancer death; this cancer is difficult to detect, difficult to treat, and poorly understood. The most common subtype of kidney cancer is clear cell renal cell carcinoma (ccRCC) and its progression is influenced by complex gene interactions. Few clinical studies have investigated the molecular markers associated with the progression of ccRCC. In this study, we collected microarray profiles of 72 ccRCCs and matched normal samples to identify differentially expressed genes (DEGs). Then a weighted gene co-expression network analysis (WGCNA) was conducted to identify co-expressed gene modules. By relating all co-expressed modules to clinical features, we found that the brown module and Fuhrman grade had the highest correlation (r = −0.8, p = 1e-09). Thus, the brown module was regarded as a clinically significant module and subsequently analyzed. Functional annotation showed that the brown module focused on metabolism-related biological processes and pathways, such as fatty acid oxidation and amino acid metabolism. We then performed a protein-protein interaction (PPI) network to identify the hub nodes in the brown module. It is worth noting that only one candidate, acetyl-CoA acetyltransferase (ACAT1), was considered to be the final target most relevant to the Fuhrman grade of ccRCC, by applying the intersection of hub genes in the co-expressed network and the PPI network. ACAT1 was subsequently validated using another two external microarray datasets and the TCGA dataset. Intriguingly, validation results indicated that ACAT1 was negatively correlated with four grades of ccRCC, which was also consistent with our results from qRT-PCR analysis and immunohistochemistry staining of clinical samples. Overexpression of ACAT1 inhibited the proliferation and migration of human ccRCC cells in vitro. In addition, the Kaplan-Meier survival curve showed that patients with a lower expression of ACAT1 showed a significantly lower overall survival rate and disease-free survival rate, indicating that ACAT1 could act as a prognostic and recurrence/progression biomarker of ccRCC. In summary, we found and confirmed that ACAT1 might help to identify the progression of ccRCC, which might have important clinical implications for enhancing risk stratification, therapeutic decision, and prognosis prediction in ccRCC patients.

Highlights

  • Kidney cancer is one of the most common malignancies of the urinary system [1], ∼90% of which is renal cell carcinoma (RCC)

  • Previous studies have shown that seven known kidney cancer genes, VHL, MET, FLCN, TSC1, TSC2, FH, and SDH, are involved in pathways that respond to metabolic stress or nutrient stimulation, suggesting that kidney cancer is a disease of dysregulated cellular metabolism [6]

  • Under the threshold of a false discovery rate (FDR)

Read more

Summary

Introduction

Kidney cancer is one of the most common malignancies of the urinary system [1], ∼90% of which is renal cell carcinoma (RCC). Clear cell RCC (ccRCC) accounts for between 70 and 85% of RCC, and has the highest rate of mortality [2]. It is clear that many key oncogenic signaling pathways converge to accommodate tumor cell metabolism to support their growth and survival. Some of these metabolic changes appear to be necessary for malignant transformation. In light of these basic findings, many researchers suggest that changes in cellular metabolism should be considered as an important marker of cancer [5]. There is, great significance in determining the effective metabolismrelated biomarkers responsible for the genesis and development of ccRCC

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call