Zerbini Luiz Fernando, Bhasin Manoj K, de Vasconcellos Jaira F, Paccez Juliano D, Gu Xuesong, Kung Andrew L, Libermann Towia A
International Center for Genetic Engineering and Biotechnology (ICGEB), Cancer Genomics Group and Division of Medical Biochemistry, University of Cape Town, Cape Town, South Africa.
BIDMC Genomics, Proteomics, Bioinformatics and Systems Biology Center, Beth Israel Deaconess Medical Center and Harvard Medical School, Boston, MA.
Mol Cancer Ther. 2014 Jul;13(7):1929-1941. doi: 10.1158/1535-7163.MCT-13-0750. Epub 2014 May 1.
Although early stages of clear cell renal cell carcinoma (ccRCC) are curable, survival outcome for metastatic ccRCC remains poor. We previously established a highly accurate signature of differentially expressed genes that distinguish ccRCC from normal kidney. The purpose of this study was to apply a new individualized bioinformatics analysis (IBA) strategy to these transcriptome data in conjunction with Gene Set Enrichment Analysis of the Connectivity Map (C-MAP) database to identify and reposition FDA-approved drugs for anticancer therapy. Here, we demonstrate that one of the drugs predicted to revert the RCC gene signature toward normal kidney, pentamidine, is effective against RCC cells in culture and in a RCC xenograft model. ccRCC-specific gene expression signatures of individual patients were used to query the C-MAP software. Eight drugs with negative correlation and P-value <0.05 were analyzed for efficacy against RCC in vitro and in vivo. Our data demonstrate consistency across most patients with ccRCC for the set of high-scoring drugs. Most of the selected high-scoring drugs potently induce apoptosis in RCC cells. Several drugs also demonstrate selectivity for Von Hippel-Lindau negative RCC cells. Most importantly, at least one of these drugs, pentamidine, slows tumor growth in the 786-O human ccRCC xenograft mouse model. Our findings suggest that pentamidine might be a new therapeutic agent to be combined with current standard-of-care regimens for patients with metastatic ccRCC and support our notion that IBA combined with C-MAP analysis enables repurposing of FDA-approved drugs for potential anti-RCC therapy.
尽管透明细胞肾细胞癌(ccRCC)的早期阶段是可治愈的,但转移性ccRCC的生存结果仍然很差。我们之前建立了一个高度准确的差异表达基因特征,可将ccRCC与正常肾脏区分开来。本研究的目的是将一种新的个体化生物信息学分析(IBA)策略应用于这些转录组数据,并结合连接图谱(C-MAP)数据库的基因集富集分析,以识别和重新定位FDA批准的抗癌治疗药物。在此,我们证明,预测可使RCC基因特征恢复为正常肾脏状态的药物之一喷他脒,在培养的RCC细胞和RCC异种移植模型中均对RCC细胞有效。利用个体患者的ccRCC特异性基因表达特征查询C-MAP软件。分析了8种负相关且P值<0.05的药物在体外和体内对RCC的疗效。我们的数据表明,大多数ccRCC患者对于这组高分药物的反应具有一致性。大多数选定的高分药物能有效诱导RCC细胞凋亡。几种药物还对VHLD阴性RCC细胞具有选择性。最重要的是,这些药物中的至少一种喷他脒,可减缓786-O人ccRCC异种移植小鼠模型中的肿瘤生长。我们的研究结果表明,喷他脒可能是一种新的治疗药物,可与目前转移性ccRCC患者的标准治疗方案联合使用,并支持我们的观点,即IBA与C-MAP分析相结合能够重新利用FDA批准的药物进行潜在的抗RCC治疗。