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通过整合多个 OMICS 数据集来优先考虑癌症治疗小分子药物。

Prioritizing cancer therapeutic small molecules by integrating multiple OMICS datasets.

机构信息

College of Bioinformatics Science and Technology and Bio-pharmaceutical Key Laboratory of Heilongjiang Province, Harbin Medical University, Harbin, P.R. China.

出版信息

OMICS. 2012 Oct;16(10):552-9. doi: 10.1089/omi.2012.0005. Epub 2012 Aug 23.

Abstract

Drug design is crucial for the effective discovery of anti-cancer drugs. The success or failure of drug design often depends on the leading compounds screened in pre-clinical studies. Many efforts, such as in vivo animal experiments and in vitro drug screening, have improved this process, but these methods are usually expensive and laborious. In the post-genomics era, it is possible to seek leading compounds for large-scale candidate small-molecule screening with multiple OMICS datasets. In the present study, we developed a computational method of prioritizing small molecules as leading compounds by integrating transcriptomics and toxicogenomics data. This method provides priority lists for the selection of leading compounds, thereby reducing the time required for drug design. We found 11 known therapeutic small molecules for breast cancer in the top 100 candidates in our list, 2 of which were in the top 10. Furthermore, another 3 of the top 10 small molecules were recorded as closely related to cancer treatment in the DrugBank database. A comparison of the results of our approach with permutation tests and shared gene methods demonstrated that our OMICS data-based method is quite competitive. In addition, we applied our method to a prostate cancer dataset. The results of this analysis indicated that our method surpasses both the shared gene method and random selection. These analyses suggest that our method may be a valuable tool for directing experimental studies in cancer drug design, and we believe this time- and cost-effective computational strategy will be helpful in future studies in cancer therapy.

摘要

药物设计对于有效发现抗癌药物至关重要。药物设计的成败往往取决于临床前研究中筛选的先导化合物。许多努力,如体内动物实验和体外药物筛选,已经改进了这个过程,但这些方法通常昂贵且费力。在后基因组时代,可以利用多个 OMICS 数据集寻找用于大规模候选小分子筛选的先导化合物。在本研究中,我们开发了一种通过整合转录组学和毒理学基因组学数据来优先考虑小分子作为先导化合物的计算方法。该方法为先导化合物的选择提供了优先级列表,从而减少了药物设计所需的时间。我们在列表的前 100 名候选者中发现了 11 种已知的治疗乳腺癌的小分子药物,其中 2 种位于前 10 名。此外,在 DrugBank 数据库中,还有另外 3 种排名前十的小分子药物被记录为与癌症治疗密切相关。我们的方法与置换检验和共享基因方法的结果比较表明,我们基于 OMICS 数据的方法具有很强的竞争力。此外,我们还将我们的方法应用于前列腺癌数据集。该分析的结果表明,我们的方法优于共享基因方法和随机选择。这些分析表明,我们的方法可能是癌症药物设计中指导实验研究的有价值的工具,我们相信这种节省时间和成本的计算策略将有助于未来的癌症治疗研究。

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