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首页> 外文期刊>Journal of Clinical Microbiology >Comparing Patient Risk Factor-, Sequence Type-, and Resistance Locus Identification-Based Approaches for Predicting Antibiotic Resistance in Escherichia coli Bloodstream Infections
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Comparing Patient Risk Factor-, Sequence Type-, and Resistance Locus Identification-Based Approaches for Predicting Antibiotic Resistance in Escherichia coli Bloodstream Infections

机译:比较基于患者风险因素,序列类型和耐药位点识别的方法来预测大肠杆菌血液感染的抗生素耐药性

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Rapid diagnostic tests for antibiotic resistance that identify the presence or absence of antibiotic resistance genes/loci are increasingly being developed. However, these approaches usually neglect other sources of predictive information which could be identified over shorter time periods, including patient epidemiologic risk factors for antibiotic resistance and markers of lineage. ABSTRACT Rapid diagnostic tests for antibiotic resistance that identify the presence or absence of antibiotic resistance genes/loci are increasingly being developed. However, these approaches usually neglect other sources of predictive information which could be identified over shorter time periods, including patient epidemiologic risk factors for antibiotic resistance and markers of lineage. Using a data set of 414 Escherichia coli isolates recovered from separate episodes of bacteremia at a single academic institution in Toronto, Ontario, Canada, between 2010 and 2015, we compared the potential predictive ability of three approaches (epidemiologic risk factor-, pathogen sequence type [ST]-, and resistance gene identification-based approaches) for classifying phenotypic resistance to three antibiotics representing classes of broad-spectrum antimicrobial therapy (ceftriaxone [a 3rd-generation cephalosporin], ciprofloxacin [a fluoroquinolone], and gentamicin [an aminoglycoside]). We used logistic regression models to generate model receiver operating characteristic (ROC) curves. Predictive discrimination was measured using apparent and corrected (bootstrapped) areas under the curves (AUCs). Epidemiologic risk factor-based models based on two simple risk factors (prior antibiotic exposure and recent prior susceptibility of Gram-negative bacteria) provided a modest predictive discrimination, with AUCs ranging from 0.65 to 0.74. Sequence type-based models demonstrated strong discrimination (AUCs, 0.83 to 0.94) across all three antibiotic classes. The addition of epidemiologic risk factors to sequence type significantly improved the ability to predict resistance for all antibiotics ( P ?&?0.05). Resistance gene identification-based approaches provided the highest degree of discrimination (AUCs, 0.88 to 0.99), with no statistically significant benefit being achieved by adding the patient epidemiologic predictors. In summary, sequence type or other lineage-based approaches could produce an excellent discrimination of antibiotic resistance and may be improved by incorporating readily available patient epidemiologic predictors but are less discriminatory than identification of the presence of known resistance loci.
机译:越来越多地开发出快速的诊断性抗生素检测方法,以鉴定是否存在抗生素抗性基因/基因座。但是,这些方法通常会忽略其他可在较短时间段内确定的预测信息来源,包括患者对抗生素耐药性的流行病学危险因素和谱系标记。摘要越来越多地开发出快速的抗生素耐药性诊断测试,以鉴定是否存在抗生素抗性基因/基因。但是,这些方法通常会忽略其他可在较短时间段内确定的预测信息来源,包括患者对抗生素耐药性的流行病学危险因素和谱系标记。使用2010年至2015年在加拿大安大略省多伦多市的一所学术机构从不同菌血症发作中回收的414株大肠杆菌分离物的数据集,我们比较了三种方法(流行病学危险因素,病原体序列类型)的潜在预测能力[ST]和基于抗性基因鉴定的方法,用于对代表三种代表广谱抗菌治疗的三种抗生素(头孢曲松[第三代头孢菌素],环丙沙星[一种氟喹诺酮]和庆大霉素[一种氨基糖苷])的表型耐药性进行分类)。我们使用逻辑回归模型来生成模型接收器操作特征(ROC)曲线。使用曲线下的表观和校正(自举)区域(AUC)来测量预测歧视。基于流行病学危险因素的模型基于两个简单的危险因素(抗生素暴露之前和近期革兰氏阴性细菌的易感性)提供了适度的预测区分,AUC范围为0.65至0.74。基于序列类型的模型在所有三种抗生素类别中均表现出较强的区分度(AUC,0.83至0.94)。将流行病学危险因素添加到序列类型上可显着提高预测所有抗生素耐药性的能力(P <0.05)。基于抗性基因鉴定的方法提供了最高程度的区分度(AUC,0.88至0.99),而增加患者流行病学预测指标并没有获得统计学上的显着优势。总而言之,序列类型或其他基于谱系的方法可以产生出色的抗生素耐药性判别,并且可以通过合并容易获得的患者流行病学预测因子加以改善,但与鉴定已知耐药位点相比,歧视性较小。

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