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A bioinformatics platform for studying metabolic functions of unculturable microbes

机译:用于研究不可培养微生物的代谢功能的生物信息学平台

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The processes of natural ecosystems are strongly affected by the lifestyles of their most numerous inhabitants, the bacterial and archaeal prokaryotes. Examples of phenomena that affect local ecosystems and the biosphere at large include cycling of carbon and nitrogen, and both positive and negative interactions with plants and animals. Recent advances in molecular techniques such as 16S rDNA sequencing have revealed that natural ecosystems are dominated by bacteria which are not culturable and hence remain largely unknown. The growing wealth of completely sequenced microbial genomes does not directly illuminate these natural ecosystems. Direct amplification or cloning from environmental samples of genes involved in metabolic processes of interest does allow us to investigate molecular processes at the genetic level among these poorly known systems. A major informatics challenge is to integrate data from the sequencing of multiple different genes from a mixture of unknown organisms and assemble amodel of which genes co-occur within individual species. We propose to develop an informatics-based solution to this problem based on concordance of gene phylogenies and sequence attributes such as codon bias and oligonucleotide word frequencies. The system will take anonymous DNA sequences from multiple loci and estimate which ones come from the same species. A successful solution will enable a new level of sophistication in the way we can study the functional genomics of the largely unknown, unculturable microbes that dominate terrestrial, subterranean, and aquatic ecosystems.
机译:自然生态系统的过程受到其大多数居民,细菌和古细菌原核生物的生活方式的强烈影响。影响当地生态系统和整个生物圈的现象的例子包括碳和氮的循环以及与动植物的正负相互作用。分子技术(例如16S rDNA测序)的最新进展表明,自然生态系统主要由无法培养的细菌所主导,因此在很大程度上仍是未知的。完全测序的微生物基因组的不断增长的财富并不能直接阐明这些自然生态系统。从环境样本中直接扩增或克隆涉及目标代谢过程的基因确实使我们能够在这些鲜为人知的系统中研究遗传水平的分子过程。信息学的一个主要挑战是整合来自未知生物混合物的多个不同基因的测序数据,并建立一个模型,该模型共同存在于单个物种中。我们建议基于基因系统发育和序列属性(例如密码子偏倚和寡核苷酸词频率)的一致性,针对此问题开发基于信息学的解决方案。该系统将从多个基因座获取匿名DNA序列,并估计哪些序列来自同一物种。一个成功的解决方案将使我们能够研究在陆地,地下和水生生态系统中占主导地位的,广为人知,无法耕种的微生物的功能基因组学,从而将复杂性提高到一个新的水平。

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