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首页> 外文期刊>BMC Systems Biology >Connectivity mapping using a combined gene signature from multiple colorectal cancer datasets identified candidate drugs including existing chemotherapies
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Connectivity mapping using a combined gene signature from multiple colorectal cancer datasets identified candidate drugs including existing chemotherapies

机译:使用来自多个结直肠癌数据集的组合基因签名进行连通性定位,确定了包括现有化学疗法在内的候选药物

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Background While the discovery of new drugs is a complex, lengthy and costly process, identifying new uses for existing drugs is a cost-effective approach to therapeutic discovery. Connectivity mapping integrates gene expression profiling with advanced algorithms to connect genes, diseases and small molecule compounds and has been applied in a large number of studies to identify potential drugs, particularly to facilitate drug repurposing. Colorectal cancer (CRC) is a commonly diagnosed cancer with high mortality rates, presenting a worldwide health problem. With the advancement of high throughput omics technologies, a number of large scale gene expression profiling studies have been conducted on CRCs, providing multiple datasets in gene expression data repositories. In this work, we systematically apply gene expression connectivity mapping to multiple CRC datasets to identify candidate therapeutics to this disease. Results We developed a robust method to compile a combined gene signature for colorectal cancer across multiple datasets. Connectivity mapping analysis with this signature of 148 genes identified 10 candidate compounds, including irinotecan and etoposide, which are chemotherapy drugs currently used to treat CRCs. These results indicate that we have discovered high quality connections between the CRC disease state and the candidate compounds, and that the gene signature we created may be used as a potential therapeutic target in treating the disease. The method we proposed is highly effective in generating quality gene signature through multiple datasets; the publication of the combined CRC gene signature and the list of candidate compounds from this work will benefit both cancer and systems biology research communities for further development and investigations.
机译:背景技术虽然新药的发现是一个复杂,漫长且昂贵的过程,但发现现有药物的新用途是治疗发现的一种经济有效的方法。连接映射将基因表达谱与高级算法集成在一起,以连接基因,疾病和小分子化合物,并且已在大量研究中用于识别潜在药物,特别是促进药物重新利用。大肠癌(CRC)是一种常见的癌症,死亡率高,存在着全球性的健康问题。随着高通量组学技术的发展,已经对CRC进行了许多大规模的基因表达谱研究,从而在基因表达数据库中提供了多个数据集。在这项工作中,我们系统地将基因表达连接映射应用于多个CRC数据集,以识别该疾病的候选疗法。结果我们开发了一种鲁棒的方法,可为多个数据集汇编用于大肠癌的组合基因签名。具有148个基因的这一特征的连通性作图分析确定了10种候选化合物,包括伊立替康和依托泊苷,它们是目前用于治疗CRC的化疗药物。这些结果表明,我们已经发现CRC疾病状态与候选化合物之间存在高质量的联系,并且我们创建的基因标记可以用作治疗该疾病的潜在治疗靶标。我们提出的方法在通过多个数据集生成高质量基因签名方面非常有效;联合CRC基因签名的公开发表以及这项工作中候选化合物的列表将使癌症和系统生物学研究界受益,以进行进一步的开发和研究。

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