肠道微生物群落在具有宏基因组读段云测序和组装特征的极端选择压力下占主导地位。
Intestinal microbiota domination under extreme selective pressures characterized by metagenomic read cloud sequencing and assembly.
机构信息
Harvard Medical School, Harvard University, Boston, MA, 02115, USA.
Department of Genetics, Stanford University, Stanford, CA, 94305, USA.
出版信息
BMC Bioinformatics. 2019 Dec 2;20(Suppl 16):585. doi: 10.1186/s12859-019-3073-1.
BACKGROUND
Low diversity of the gut microbiome, often progressing to the point of intestinal domination by a single species, has been linked to poor outcomes in patients undergoing hematopoietic cell transplantation (HCT). Our ability to understand how certain organisms attain intestinal domination over others has been restricted in part by current metagenomic sequencing technologies that are typically unable to reconstruct complete genomes for individual organisms present within a sequenced microbial community. We recently developed a metagenomic read cloud sequencing and assembly approach that generates improved draft genomes for individual organisms compared to conventional short-read sequencing and assembly methods. Herein, we applied metagenomic read cloud sequencing to four stool samples collected longitudinally from an HCT patient preceding treatment and over the course of heavy antibiotic exposure.
RESULTS
Characterization of microbiome composition by taxonomic classification of reads reveals that that upon antibiotic exposure, the subject's gut microbiome experienced a marked decrease in diversity and became dominated by Escherichia coli. While diversity is restored at the final time point, this occurs without recovery of the original species and strain-level composition. Draft genomes for individual organisms within each sample were generated using both read cloud and conventional assembly. Read clouds were found to improve the completeness and contiguity of genome assemblies compared to conventional assembly. Moreover, read clouds enabled the placement of antibiotic resistance genes present in multiple copies both within a single draft genome and across multiple organisms. The occurrence of resistance genes associates with the timing of antibiotics administered to the patient, and comparative genomic analysis of the various intestinal E. coli strains across time points as well as the bloodstream isolate showed that the subject's E. coli bloodstream infection likely originated from the intestine. The E. coli genome from the initial pre-transplant stool sample harbors 46 known antimicrobial resistance genes, while all other species from the pre-transplant sample each contain at most 5 genes, consistent with a model of heavy antibiotic exposure resulting in selective outgrowth of the highly antibiotic-resistant E. coli.
CONCLUSION
This study demonstrates the application and utility of metagenomic read cloud sequencing and assembly to study the underlying strain-level genomic factors influencing gut microbiome dynamics under extreme selective pressures in the clinical context of HCT.
背景
肠道微生物组多样性低,通常会发展到单一物种主导肠道的程度,这与接受造血细胞移植(HCT)的患者的不良预后有关。我们理解某些生物体如何获得对其他生物体的肠道主导地位的能力受到当前宏基因组测序技术的限制,这些技术通常无法为在测序微生物群落中存在的单个生物体重建完整的基因组。我们最近开发了一种宏基因组读取云测序和组装方法,与传统的短读测序和组装方法相比,该方法可为单个生物体生成改进的草图基因组。在此,我们应用宏基因组读取云测序技术对 HCT 患者在治疗前和接受大量抗生素暴露期间收集的四个粪便样本进行了纵向分析。
结果
通过对读取物进行分类学分类来描述微生物组组成,表明在接受抗生素暴露后,受检者的肠道微生物组多样性显著降低,并且被大肠杆菌主导。虽然在最后一个时间点恢复了多样性,但这是在没有恢复原始物种和菌株水平组成的情况下发生的。使用常规组装和读取云分别为每个样本中的单个生物体生成了草图基因组。与常规组装相比,读取云可提高基因组组装的完整性和连续性。此外,读取云还可以在单个草图基因组内和多个生物体之间放置多个拷贝的抗生素抗性基因。耐药基因的出现与给予患者的抗生素的时间有关,并且对不同时间点的肠道大肠杆菌菌株和血流分离株的比较基因组分析表明,患者的大肠杆菌血流感染很可能起源于肠道。初始移植前粪便样本中的大肠杆菌基因组携带 46 个已知的抗生素耐药基因,而移植前样本中的所有其他物种每个最多携带 5 个基因,这与在 HCT 临床背景下,大量抗生素暴露导致高度耐药的大肠杆菌选择性生长的模型一致。
结论
本研究证明了宏基因组读取云测序和组装在研究极端选择性压力下肠道微生物组动态的潜在菌株水平基因组因素的应用和实用性。