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Do Staphylococcus epidermidis Genetic Clusters Predict Isolation Sources?

机译:表皮葡萄球菌遗传簇能预测分离来源吗?

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摘要

Staphylococcus epidermidis is a ubiquitous colonizer of human skin and a common cause of medical device-associated infections. The extent to which the population genetic structure of S. epidermidis distinguishes commensal from pathogenic isolates is unclear. Previously, Bayesian clustering of 437 multilocus sequence types (STs) in the international database revealed a population structure of six genetic clusters (GCs) that may reflect the species' ecology. Here, we first verified the presence of six GCs, including two (GC3 and GC5) with significant admixture, in an updated database of 578 STs. Next, a single nucleotide polymorphism (SNP) assay was developed that accurately assigned 545 (94%) of 578 STs to GCs. Finally, the hypothesis that GCs could distinguish isolation sources was tested by SNP typing and GC assignment of 154 isolates from hospital patients with bacteremia and those with blood culture contaminants and from nonhospital carriage. GC5 was isolated almost exclusively from hospital sources. GC1 and GC6 were isolated from all sources but were overrepresented in isolates from nonhospital and infection sources, respectively. GC2, GC3, and GC4 were relatively rare in this collection. No association was detected between fdh-positive isolates (GC2 and GC4) and nonhospital sources. Using a machine learning algorithm, GCs predicted hospital and nonhospital sources with 80% accuracy and predicted infection and contaminant sources with 45% accuracy, which was comparable to the results seen with a combination of five genetic markers (icaA, IS256, sesD [bhp], mecA, and arginine catabolic mobile element [ACME]). Thus, analysis of population structure with subgenomic data shows the distinction of hospital and nonhospital sources and the near-inseparability of sources within a hospital.
机译:表皮葡萄球菌是人类皮肤的普遍定居者,是医疗器械相关感染的常见原因。表皮葡萄球菌的群体遗传结构区分共生与致病性分离物的程度尚不清楚。以前,国际数据库中的437个多基因座序列类型(ST)的贝叶斯聚类揭示了六个遗传簇(GC)的种群结构,这可能反映了该物种的生态。在这里,我们首先在578个ST的更新数据库中验证了六个GC的存在,其中包括两个(GC3和GC5)具有显着混合。接下来,开发了将578个ST中的545个(94%)准确分配给GC的单核苷酸多态性(SNP)分析。最后,通过SNP分型和GC分配,对来自医院菌血症患者,血液培养物污染患者和非医院携带患者的154种分离物进行了气相色谱分离,验证了GC可以区分分离源的假说。 GC5几乎完全是从医院来源中分离出来的。 GC1和GC6从所有来源中分离出来,但在来自非医院和感染来源的分离物中分别代表过多。 GC2,GC3和GC4在此集合中相对较少。在fdh阳性分离株(GC2和GC4)和非医院来源之间未检测到关联。使用机器学习算法,GC可以以80%的准确度预测医院和非医院来源,并以45%的准确度预测感染和污染物来源,这与结合五个遗传标记(icaA,IS256,sesD [bhp])看到的结果相当,mecA和精氨酸分解代谢移动元素[ACME])。因此,用亚基因组数据对人口结构进行的分析显示出医院和非医院资源的区别以及医院内资源的几乎不可分割性。

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