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Target identification in biological systems using network connectivity information from literature mining databases

机译:来自文献挖掘数据库的网络连接信息的生物系统中的目标识别

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We address the automated drug target identification problem for pharmaceutical research. It is often the case in pharmaceutical industry to bring a new promising target to clinical trials only to find that it has serious safety concerns or lack of efficacy. A gene downstream or upstream in the pathway can be a remedy, however, finding such an alternative target using existing in-silico or bench tools can be extremely labor-intensive. Recently, increasing amounts of information and observations have been compiled from different areas of biological research and deposited on databases. In this work we propose a novel computational method to quantify indirect relationships between the objects of biological research of interest by using existing relationships from text mining databases to automate the search for novel biological targets. We applied our method to analyze 9575 proteins in Ariadne database and create a rank-ordered list of proteins that are most similar to the original query. We also compared our method with the Jaccard similarity index for link prediction performance. Our method outperformed the Jaccard method in predicting the existing links for 9575 proteins in the database.
机译:我们解决了制药研究的自动化药物目标识别问题。制药行业往往是为临床试验带来新的有希望的目标,只发现它具有严重的安全问题或缺乏疗效。途径中下游或上游的基因可以是一种补救措施,但是,使用现有的硅或台式工具找到这种替代靶标的可以是极其劳动密集的。最近,从生物学研究的不同领域编制了增加的信息和观察,并存放在数据库上。在这项工作中,我们提出了一种新颖的计算方法来通过使用文本挖掘数据库的现有关系来计算利息的生物学研究对象之间的间接关系,以自动搜索新的生物学目标。我们应用了我们在Ariadne数据库中分析了9575蛋白的方法,并创建了与原始查询最相似的Quickous的蛋白质列表。我们还将我们的方法与Jaccard相似索引进行了比较了链接预测性能。我们的方法表现出Jaccard方法预测数据库中9575蛋白的现有链接。

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