Department of Medicine, University of Illinois, Chicago, IL 60612, USA.
Department of Bioengineering, University of Illinois, Chicago, IL 60612, USA.
Biomed Res Int. 2018 Nov 14;2018:6074918. doi: 10.1155/2018/6074918. eCollection 2018.
It is well accepted that dysbiosis of microbiota is associated with disease; however, the biological mechanisms that promote susceptibility or resilience to disease remain elusive. One of the major limitations of previous microbiome studies has been the lack of complementary metatranscriptomic (functional) data to complement the interpretation of metagenomics (bacterial abundance). The purpose of this study was twofold, first to evaluate the bacterial diversity and differential gene expression of gut microbiota using complementary shotgun metagenomics (MG) and metatranscriptomics (MT) from same fecal sample. Second, to compare sequence data using different Illumina platforms and with different sequencing parameters as new sequencers are introduced, and to determine if the data are comparable on different platforms. In this study, we perform ultradeep metatranscriptomic shotgun sequencing for a sample that we previously analyzed with metagenomics shotgun sequencing. We performed sequencing analysis using different Illumina platforms, with different sequencing and analysis parameters. Our results suggest that use of different Illumina platform did not lead to detectable bias in the sequencing data. The analysis of the sample using MG and MT approach shows that some species genes are highly represented in the MT than in the MG, indicating that some species are highly metabolically active. Our analysis also shows that ~52% of the genes in the metagenome are in the metatranscriptome and therefore are robustly expressed. The functions of the low and rare abundance bacterial species remain poorly understood. Our observations indicate that among the low abundant species analyzed in this study some were found to be more metabolically active compared to others, and can contribute distinct profiles of biological functions that may modulate the host-microbiota and bacteria-bacteria interactions.
人们普遍认为,微生物群落的失调与疾病有关;然而,促进疾病易感性或抵抗力的生物学机制仍然难以捉摸。以前的微生物组研究的主要限制之一是缺乏补充的宏转录组学(功能)数据来补充对宏基因组学(细菌丰度)的解释。本研究的目的有两个,首先是使用来自相同粪便样本的互补组合式宏基因组学(MG)和宏转录组学(MT)来评估肠道微生物群的细菌多样性和差异基因表达。其次,比较使用不同 Illumina 平台的序列数据以及不同测序参数,因为新的测序仪不断推出,并确定不同平台上的数据是否具有可比性。在这项研究中,我们对我们之前使用宏基因组学组合式测序进行分析的样本进行了超深度宏转录组学组合式测序。我们使用不同的 Illumina 平台、不同的测序和分析参数进行了测序分析。我们的结果表明,使用不同的 Illumina 平台不会导致测序数据中出现可检测的偏差。使用 MG 和 MT 方法对样本进行分析表明,某些物种的基因在 MT 中的表达水平高于 MG,这表明某些物种具有高度的代谢活性。我们的分析还表明,宏基因组中的约 52%的基因存在于宏转录组中,因此表达稳健。低丰度和稀有细菌物种的功能仍知之甚少。我们的观察表明,在本研究中分析的低丰度物种中,有些物种的代谢活性比其他物种更高,并且可以贡献独特的生物学功能特征,这些特征可能调节宿主-微生物群和细菌-细菌相互作用。