金黄色葡萄球菌管家基因中抗生素耐药性的意外预测因子。

Mattia Prosperi, Marco Salemi, Taj Azarian, Franco Milicchio, Judith A Johnson, Marco Oliva
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引用次数: 9

摘要

耐甲氧西林金黄色葡萄球菌(MRSA)是目前美国医院中最常见的抗生素耐药性病原体。对甲氧西林的耐药性是由短链氯化石蜡基因元件携带的。多基因座序列分型(MLST)涵盖了金黄色葡萄球菌7个持家基因的内部片段。结合mec分型,MLST已被用于创建金黄色葡萄球菌的国际命名法。具有单核苷酸多态性(SNP)的MLST序列类型被认为是不同的。在这项工作中,使用公共数据库,通过交叉表测试、多变量(系统发育)逻辑回归(LR)、决策树、规则库和随机森林(RF),研究了MLST SNPs与甲氧西林/苯唑西林耐药性或易感性之间的关系。模型性能通过多次交叉验证进行评估。SNPs的层次聚类也被用来分析变异协变量。已知的甲氧西林(苯唑西林)抗体图谱结果为1526例(649例),其中63%(54%)对甲氧西林有耐药性。在单变量分析中,发现几个MLST SNPs与抗生素耐药性/易感性密切相关。RF模型正确预测了75%和63%的病例对甲氧西林和苯唑西林的耐药性/易感性(交叉验证)。LR的结果相似。上述SNPs的层次聚类在相同和不同的基因内产生了高水平的协变;这表明管家基因的SNPs和抗生素抗性相关基因之间存在强烈的遗传联系。这一发现为使用少量基因组标记快速鉴定具有抗生素耐药性的铜绿假单胞菌谱系提供了基础。位点的数量随后可以适度增加,以提高不依赖于抗性标记物本身的直接检测的抗性基因型检测的敏感性和特异性。
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Unexpected Predictors of Antibiotic Resistance in Housekeeping Genes of Staphylococcus Aureus.

Methicillin-resistant Staphylococcus aureus (MRSA) is currently the most commonly identified antibiotic-resistant pathogen in US hospitals. Resistance to methicillin is carried by SCCmec genetic elements. Multilocus sequence typing (MLST) covers internal fragments of seven housekeeping genes of S. aureus. In conjunction with mec typing, MLST has been used to create an international nomenclature for S. aureus. MLST sequence types with a single nucleotide polymorphism (SNP) considered distinct. In this work, relationships among MLST SNPs and methicillin/oxacillin resistance or susceptibility were studied, using a public data base, by means of cross-tabulation tests, multivariable (phylogenetic) logistic regression (LR), decision trees, rule bases, and random forests (RF). Model performances were assessed through multiple cross-validation. Hierarchical clustering of SNPs was also employed to analyze mutational covariation. The number of instances with a known methicillin (oxacillin) antibiogram result was 1526 (649), where 63% (54%) was resistant to methicillin (oxacillin). In univariable analysis, several MLST SNPs were found strongly associated with antibiotic resistance/susceptibility. A RF model predicted correctly the resistance/susceptibility to methicillin and oxacillin in 75% and 63% of cases (cross-validated). Results were similar for LR. Hierarchical clustering of the aforementioned SNPs yielded a high level of covariation both within the same and different genes; this suggests strong genetic linkage between SNPs of housekeeping genes and antibiotic resistant associated genes. This finding provides a basis for rapid identification of antibiotic resistant S. arues lineages using a small number of genomic markers. The number of sites could subsequently be increased moderately to increase the sensitivity and specificity of genotypic tests for resistance that do not rely on the direct detection of the resistance marker itself.

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