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Separating Drivers from Passengers in Whole Genome Analysis: Identification of Combinatorial Effects of Genes by Mining Knowledge Sources

机译:全基因组分析中的乘客分离司机:采矿知识来源鉴定基因的组合效应

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This study aimed to develop a new informatics platform for the discovery, recovery and multi-level analysis of the effects of individual genes and multiple gene combinations on pathophenotypes of bacteria. Natural language processing algorithms were employed to extract gene-disease associations from PubMed literature and annotated genomes of bacteria with epidemic potential. From these associations gene virulence profiles were generated enabling the comparison of gene signatures within and across genomes. It allowed the identification of virulence genes and construction of their association networks as well as the detection of knowledge gaps. This proof-of-concept study confirmed the feasibility of our original approach for integrating bacterial genome level knowledge with published observations from clinical settings.
机译:本研究旨在开发一个新信息平台,用于发现,恢复和多级别分析个体基因和多基因组合对细菌的致病症的影响。使用自然语言处理算法用于提取来自PubMed文献的基因疾病关联,并具有流行潜力的细菌的注释基因组。从这些关联中,产生基因毒力分布,使基因签名和跨基因组的比较能够进行比较。它允许鉴定毒力基因和其关联网络的构建以及检测知识差距。这种概念证明研究证实了我们原始方法与从临床环境中公布的观察结果整合细菌基因组水平知识的可行性。

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