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首页> 外文期刊>DNA research: an international journal for rapid publication of reports on genes and genomes >Ultra-low input transcriptomics reveal the spore functional content and phylogenetic affiliations of poorly studied arbuscular mycorrhizal fungi
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Ultra-low input transcriptomics reveal the spore functional content and phylogenetic affiliations of poorly studied arbuscular mycorrhizal fungi

机译:超低输入转录组学揭示了研究不足的丛枝菌根真菌的孢子功能含量和系统发育关系

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Arbuscular mycorrhizal fungi (AMF) are a group of soil microorganisms that establish symbioses with the vast majority of land plants. To date, generation of AMF coding information has been limited to model genera that grow well axenically; Rhizoglomus and Gigaspora. Meanwhile, data on the functional gene repertoire of most AMF families is non-existent. Here, we provide primary large-scale transcriptome data from eight poorly studied AMF species (Acaulospora morrowiae, Diversispora versiforme, Scutellospora calospora, Racocetra castanea, Paraglomus brasilianum, Ambispora leptoticha, Claroideoglomus claroideum and Funneliformis mosseae) using ultra-low input ribonucleic acid (RNA)-seq approaches. Our analyses reveals that quiescent spores of many AMF species harbour a diverse functional diversity and solidify known evolutionary relationships within the group. Our findings demonstrate that RNA-seq data obtained from low-input RNA are reliable in comparison to conventional RNA-seq experiments. Thus, our methodology can potentially be used to deepen our understanding of fungal microbial function and phylogeny using minute amounts of RNA material.
机译:丛枝菌根真菌(AMF)是一组土壤微生物,可与绝大多数陆地植物建立共生关系。迄今为止,AMF编码信息的生成仅限于焦虑生长良好的模型属。根瘤菌和Gigaspora。同时,关于大多数AMF家族功能基因库的数据不存在。在这里,我们提供了来自8个未经充分研究的AMF物种(Ac虫、,虫,藜科,Scutellospora calospora,Racocetra castanea,巴西拟南芥,Ambispora leptoticha,Claroideoglomus claroideum和使用核糖核酸低聚核糖核酸(R))的主要大规模转录组数据)-seq方法。我们的分析表明,许多AMF物种的静态孢子具有不同的功能多样性,并巩固了该群体内已知的进化关系。我们的发现表明,与常规RNA-seq实验相比,从低输入RNA中获得的RNA-seq数据可靠。因此,使用微量的RNA物质,我们的方法可以潜在地加深对真菌微生物功能和系统发育的了解。

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