Research Group for Host-Microbe Interaction, Department of Medical Biology, Faculty of Health Sciences, UiT - The Arctic University of Norway, Tromsø, Norway.
Norwegian Advisory Unit on Detection of Antimicrobial Resistance, Department of Microbiology and Infection Control, University Hospital of North Norway, Tromsø, Norway.
Sci Rep. 2021 Oct 21;11(1):20848. doi: 10.1038/s41598-021-00383-7.
Shotgun-metagenomics may give valuable clinical information beyond the detection of potential pathogen(s). Identification of antimicrobial resistance (AMR), virulence genes and typing directly from clinical samples has been limited due to challenges arising from incomplete genome coverage. We assessed the performance of shotgun-metagenomics on positive blood culture bottles (n = 19) with periprosthetic tissue for typing and prediction of AMR and virulence profiles in Staphylococcus aureus. We used different approaches to determine if sequence data from reads provides more information than from assembled contigs. Only 0.18% of total reads was derived from human DNA. Shotgun-metagenomics results and conventional method results were consistent in detecting S. aureus in all samples. AMR and known periprosthetic joint infection virulence genes were predicted from S. aureus. Mean coverage depth, when predicting AMR genes was 209 ×. Resistance phenotypes could be explained by genes predicted in the sample in most of the cases. The choice of bioinformatic data analysis approach clearly influenced the results, i.e. read-based analysis was more accurate for pathogen identification, while contigs seemed better for AMR profiling. Our study demonstrates high genome coverage and potential for typing and prediction of AMR and virulence profiles in S. aureus from shotgun-metagenomics data.
宏基因组测序技术除了能检测潜在病原体外,还可能提供有价值的临床信息。由于无法完全覆盖基因组,从临床样本中直接识别抗生素耐药性(AMR)、毒力基因和分型一直受到限制。我们评估了宏基因组测序技术在带假体组织的阳性血培养瓶(n=19)中的性能,用于对金黄色葡萄球菌进行分型和预测 AMR 和毒力特征。我们使用不同的方法来确定来自reads 的序列数据是否比组装的 contigs 提供更多信息。仅总reads 的 0.18%来自人类 DNA。宏基因组测序技术的结果与传统方法的结果在所有样本中均一致地检测到金黄色葡萄球菌。从金黄色葡萄球菌中预测了 AMR 和已知的假体关节感染毒力基因。在预测 AMR 基因时,平均覆盖深度为 209×。在大多数情况下,基因预测可以解释耐药表型。生物信息学数据分析方法的选择显然会影响结果,即基于 reads 的分析更有助于病原体鉴定,而 contigs 似乎更适合 AMR 分析。我们的研究表明,宏基因组测序数据可实现金黄色葡萄球菌的高基因组覆盖率,以及用于分型和预测 AMR 和毒力特征的潜力。