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验证可用于预测南得克萨斯退伍军人医疗保健系统治疗的肠革兰氏阴性菌血症患者耐药性的扩展谱β-内酰胺酶临床评分模型。

Validation of Available Extended-Spectrum-Beta-Lactamase Clinical Scoring Models in Predicting Drug Resistance in Patients with Enteric Gram-Negative Bacteremia Treated at South Texas Veterans Health Care System.

机构信息

South Texas Veterans Health Care System (STVHCS), San Antonio, Texas, USA

University of Texas Health Science Center at San Antonio, San Antonio, Texas, USA.

出版信息

Antimicrob Agents Chemother. 2021 May 18;65(6). doi: 10.1128/AAC.02562-20.

Abstract

Extended-spectrum-beta-lactamase (ESBL)-producing are increasingly common; however, predicting which patients are likely to be infected with an ESBL pathogen is challenging, leading to increased use of carbapenems. To date, five prediction models have been developed to distinguish between patients infected with ESBL pathogens. The aim of this study was to validate and compare each of these models to better inform antimicrobial stewardship. This was a retrospective cohort study of patients with Gram-negative bacteremia treated at the South Texas Veterans Health Care System over 3 months from 2018 to 2019. We evaluated isolate, clinical syndrome, and score variables for the five published prediction models/scores: Italian "Tumbarello," Duke, University of South Carolina (USC), Hopkins clinical decision tree, and modified Hopkins. Each model was assessed using the area under the receiver operating characteristic curve (AUROC) and Pearson correlation. One hundred forty-five patients were included for analysis, of which 20 (13.8%) were infected with an ESBL or spp. The most common sources of infection were genitourinary (55.8%) and gastrointestinal/intraabdominal (24.1%), and the most common pathogen was (75.2%). The prediction model with the strongest discriminatory ability (AUROC) was Tumbarello (0.7556). The correlation between prediction model score and percent ESBL was strongest with the modified Hopkins model ( = 0.74). In this veteran population, the modified Hopkins and Duke prediction models were most accurate in discriminating between Gram-negative bacteremia patients when considering both AUROC and correlation. However, given the moderate discriminatory ability, many patients with ESBL (at least 25%) may still be missed empirically.

摘要

产超广谱β-内酰胺酶(ESBL)的菌株越来越常见;然而,预测哪些患者可能感染 ESBL 病原体具有挑战性,导致碳青霉烯类药物的使用增加。迄今为止,已经开发了五种预测模型来区分感染 ESBL 病原体的患者。本研究的目的是验证和比较这些模型中的每一个,以更好地为抗菌药物管理提供信息。这是一项回顾性队列研究,纳入了 2018 年至 2019 年在南德克萨斯退伍军人医疗保健系统治疗的革兰氏阴性菌菌血症患者,共 3 个月。我们评估了 5 种已发表的预测模型/评分的分离株、临床综合征和评分变量:意大利“Tumbarello”、杜克、南卡罗来纳大学(USC)、霍普金斯临床决策树和改良霍普金斯。使用受试者工作特征曲线下面积(AUROC)和 Pearson 相关系数评估每个模型。共纳入 145 例患者进行分析,其中 20 例(13.8%)感染了 ESBL 或 属。最常见的感染源是泌尿生殖系统(55.8%)和胃肠道/腹腔内(24.1%),最常见的病原体是 (75.2%)。具有最强判别能力(AUROC)的预测模型是 Tumbarello(0.7556)。改良霍普金斯模型与预测模型评分和 ESBL 百分比之间的相关性最强( = 0.74)。在这个退伍军人人群中,在考虑 AUROC 和相关性时,改良霍普金斯和杜克预测模型在区分革兰氏阴性菌血症患者方面最为准确。然而,由于判别能力中等,许多感染 ESBL 的患者(至少 25%)可能仍会被经验性地遗漏。

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