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A knowledge driven mutual information-based analytical framework for the identification of rumen metabolites

机译:基于知识的基于互信息的分析框架用于瘤胃代谢物的鉴定

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Metabolites are the final product of biochemical reactions in the rumen micro-ecological system and very sensitive to changes of microbial genes. However, limited by the spectra library and the computational techniques of structure identification, the identification of metabolites from non-targeted metabolomics is time-consuming and inefficient. The absence of specific information about metabolites makes the biological interpretation of the quantitative analysis of metabolomics meaningless. Based on the nonlinear association between microbial genes and metabolites, combined with knowledge of metabolic pathways from the KEGG database, this study developed a knowledge driven mutual information-based analytical framework for identifying metabolites associated with integrals derived from NMR analysis results. In this study, one known metabolite and three sets of integrals with unknow metabolites were identified within the novel framework. The results showed that this mutual information-based framework could very efficiently target metabolites that may correspond to integrals from NMR spectra.
机译:代谢产物是瘤胃微生态系统中生化反应的最终产物,对微生物基因的变化非常敏感。但是,受光谱库和结构鉴定计算技术的限制,从非目标代谢组学鉴定代谢物既费时又低效。缺乏有关代谢物的特定信息,使得对代谢组学定量分析的生物学解释变得毫无意义。基于微生物基因与代谢物之间的非线性关联,并结合KEGG数据库中的代谢途径知识,本研究开发了一种基于知识驱动的基于互信息的分析框架,用于识别与NMR分析结果中的积分相关的代谢物。在这项研究中,在新框架内鉴定了一种已知的代谢物和三组具有未知代谢物的积分。结果表明,这种基于互信息的框架可以非常有效地靶向可能与NMR谱图积分相对应的代谢物。

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