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首页> 外文期刊>Briefings in bioinformatics >Large-scale data-driven integrative framework for extracting essential targets and processes from disease-associated gene data sets
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Large-scale data-driven integrative framework for extracting essential targets and processes from disease-associated gene data sets

机译:大规模数据驱动的综合框架,用于从疾病相关的基因数据集中提取基本目标和过程

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摘要

Populations worldwide currently face several public health challenges, including growing prevalence of infections and the emergence of new pathogenic organisms. The cost and risk associated with drug development make the development of new drugs for several diseases, especially orphan or rare diseases, unappealing to the pharmaceutical industry. Proof of drug safety and efficacy is required before market approval, and rigorous testing makes the drug development process slow, expensive and frequently result in failure. This failure is often because of the use of irrelevant targets identified in the early steps of the drug discovery process, suggesting that target identification and validation are cornerstones for the success of drug discovery and development. Here, we present a large-scale data-driven integrative computational framework to extract essential targets and processes from an existing disease-associated data set and enhance target selection by leveraging drug–target–disease association at the systems level. We applied this framework to tuberculosis and Ebola virus diseases combining heterogeneous data from multiple sources, including protein–protein functional interaction, functional annotation and pharmaceutical data sets. Results obtained demonstrate the effectiveness of the pipeline, leading to the extraction of essential drug targets and to the rational use of existing approved drugs. This provides an opportunity to move toward optimal target-based strategies for screening available drugs and for drug discovery. There is potential for this model to bridge the gap in the production of orphan disease therapies, offering a systematic approach to predict new uses for existing drugs, thereby harnessing their full therapeutic potential.
机译:全球群体目前面临着几种公共卫生挑战,包括不断增长的感染患病率和新的致病生物的出现。与药物开发相关的成本和风险使新药开发出几种疾病,特别是孤儿或罕见疾病,不吸引制药行业。在市场批准之前需要药物安全和功效证明,严格的测试使药物开发过程缓慢,昂贵,经常导致失败。这种失败往往是因为在药物发现过程的早期步骤中使用了所识别的无关目标,表明目标识别和验证是药物发现和发展成功的基石。这里,我们提出了大规模的数据驱动的整合计算框架,以通过利用系统水平利用药物 - 靶疾病关联来提取现有疾病相关数据集的基本目标和过程,提高目标选择。我们将该骨架应用于结核病和埃博拉病毒疾病,将异质数据组合来自多种来源,包括蛋白质 - 蛋白质功能相互作用,功能注释和药物数据集。获得的结果证明了管道的有效性,从而提取必要药物目标以及合理使用现有批准的药物。这提供了朝着筛选可用药物和药物发现的最佳目标策略的机会。这种模型有可能弥合在孤儿疾病疗法的生产中的差距,提供一种系统的方法来预测现有药物的新用途,从而利用它们的全部治疗潜力。

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