Prediction of drug candidates for clear cell renal cell carcinoma using a systems biology-based drug repositioning approach

使用基于系统生物学的药物重新定位方法预测透明细胞肾细胞癌的候选药物

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作者:Xiangyu Li, Koeun Shong, Woonghee Kim, Meng Yuan, Hong Yang, Yusuke Sato, Haruki Kume, Seishi Ogawa, Hasan Turkez, Saeed Shoaie, Jan Boren, Jens Nielsen, Mathias Uhlen, Cheng Zhang, Adil Mardinoglu1

Background

The response rates of the clinical chemotherapies are still low in clear cell renal cell carcinoma (ccRCC). Computational drug repositioning is a promising strategy to discover new uses for existing drugs to treat patients who cannot get benefits from clinical drugs.

Methods

We proposed a systematic approach which included the target prediction based on the co-expression network analysis of transcriptomics profiles of ccRCC patients and drug repositioning for cancer treatment based on the analysis of shRNA- and drug-perturbed signature profiles of human kidney cell line. Findings: First, based on the gene co-expression network analysis, we identified two types of gene modules in ccRCC, which significantly enriched with unfavorable and favorable signatures indicating poor and good survival outcomes of patients, respectively. Then, we selected four genes, BUB1B, RRM2, ASF1B and CCNB2, as the potential drug targets based on the topology analysis of modules. Further, we repurposed three most effective drugs for each target by applying the proposed drug repositioning approach. Finally, we evaluated the effects of repurposed drugs using an in vitro model and observed that these drugs inhibited the protein levels of their corresponding target genes and cell viability. Interpretation: These findings proved the usefulness and efficiency of our approach to improve the drug repositioning researches for cancer treatment and precision medicine. Funding: This study was funded by Knut and Alice Wallenberg Foundation and Bash Biotech Inc., San Diego, CA, USA.

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