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首页> 外文期刊>BMC Genomics >Prediction and analysis of metagenomic operons via MetaRon: a pipeline for prediction of Metagenome and whole-genome opeRons
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Prediction and analysis of metagenomic operons via MetaRon: a pipeline for prediction of Metagenome and whole-genome opeRons

机译:METARON的预测与分析METARON:一种预测梅塔群和全基因组手术的管道

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Abstract Background Efficient regulation of bacterial genes in response to the environmental stimulus results in unique gene clusters known as operons. Lack of complete operonic reference and functional information makes the prediction of metagenomic operons a challenging task; thus, opening new perspectives on the interpretation of the host-microbe interactions. Results In this work, we identified whole-genome and metagenomic operons via MetaRon (Metagenome and whole-genome opeRon prediction pipeline). MetaRon identifies operons without any experimental or functional information. MetaRon was implemented on datasets with different levels of complexity and information. Starting from its application on whole-genome to simulated mixture of three whole-genomes ( E. coli MG1655, Mycobacterium tuberculosis H37Rv and Bacillus subtilis str. 16), E. coli c20 draft genome extracted from chicken gut and finally on 145 whole-metagenome data samples from human gut. MetaRon consistently achieved high operon prediction sensitivity, specificity and accuracy across E. coli whole-genome (97.8, 94.1 and 92.4%), simulated genome (93.7, 75.5 and 88.1%) and E. coli c20 (87, 91 and 88%,), respectively. Finally, we identified 1,232,407 unique operons from 145 paired-end human gut metagenome samples. We also report strong association of type 2 diabetes with Maltose phosphorylase (K00691), 3-deoxy-D-glycero-D-galacto-nononate 9-phosphate synthase (K21279) and an uncharacterized protein (K07101). Conclusion With MetaRon, we were able to remove two notable limitations of existing whole-genome operon prediction methods: (1) generalizability (ability to predict operons in unrelated bacterial genomes), and (2) whole-genome and metagenomic data management. We also demonstrate the use of operons as a subset to represent the trends of secondary metabolites in whole-metagenome data and the role of secondary metabolites in the occurrence of disease condition. Using operonic data from metagenome to study secondary metabolic trends will significantly reduce the data volume to more precise data. Furthermore, the identification of metabolic pathways associated with the occurrence of type 2 diabetes (T2D) also presents another dimension of analyzing the human gut metagenome. Presumably, this study is the first organized effort to predict metagenomic operons and perform a detailed analysis in association with a disease, in this case type 2 diabetes . The application of MetaRon to metagenomic data at diverse scale will be beneficial to understand the gene regulation and therapeutic metagenomics.
机译:摘要背景有效调节细菌基因响应环境刺激的响应导致称为操纵子的独特基因集群。缺乏完整的操作参考和功能信息使得Metagenomic操纵子的预测成为一个具有挑战性的任务;因此,开启了对宿主微生物相互作用的解释的新观点。结果在这项工作中,我们通过Metaron(MetaremoMe和全基因组型术术管道)鉴定了全基因组和肉桂组科。 METARON在没有任何实验或功能信息的情况下识别操纵权。 METARON在具有不同级别复杂性和信息的数据集上实现。从其对全基因组的施用开始,以模拟三种全基因组(大肠杆菌Mg1655,结核分枝杆菌H37RV和芽孢杆菌枯草芽孢杆菌STR.16),大肠杆菌C20草案从鸡肠中提取,最后在145次全梅塔群中来自人体肠道的数据样本。 Metaron始终如一地实现了大肠杆菌全基因组(97.8,94.1和92.4%),模拟基因组(93.7,75.5和88.1%)和大肠杆菌C20(87,91和88%, ), 分别。最后,我们确定了1,232,407个独特的145个配对人体肠道甲胺酮样品的操纵子。我们还报告了麦芽糖磷酸化酶(K00691),3-脱氧-D-甘油-D-GOLACTO-NONATE 9-磷酸合酶(K21279)和非特征蛋白质(K07101)的强烈关联2型糖尿病。结论Metaron,我们能够去除现有全基因组型器预测方法的两个显着局限性:(1)概括性(预测无关细菌基因组中的操纵子)和(2)全基因组和偏见数据管理。我们还展示了使用操纵子作为子集,以代表全部偏见数据中的次生代谢产物的趋势和次生代谢物在疾病状况发生中的作用。使用来自Metagenome的Orconic数据来研究次要的代谢趋势将显着将数据量降低到更精确的数据。此外,鉴定与2型糖尿病(T2D)的发生相关的代谢途径也呈现了分析人体肠道组织的另一种尺寸。据推测,本研究是第一次有组织的努力,以预测肉桂组合,并在这种情况下与疾病进行详细分析,在这种情况下,2型糖尿病。 Metaron在不同规模中施加到Metagenomic数据将有益于了解基因调控和治疗偏心神经论。

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