Division of Pulmonary, Critical Care, and Sleep Medicine, University of New Mexico, Albuquerque.
Department of Pharmacy Practice, St Louis College of Pharmacy.
Clin Infect Dis. 2017 Oct 30;65(10):1607-1614. doi: 10.1093/cid/cix612.
Predicting antimicrobial resistance in gram-negative bacteria (GNB) could balance the need for administering appropriate empiric antibiotics while also minimizing the use of clinically unwarranted broad-spectrum agents. Our objective was to develop a practical prediction rule able to identify patients with GNB infection at low risk for resistance to piperacillin-tazobactam (PT), cefepime (CE), and meropenem (ME).
The study included adult patients with sepsis or septic shock due to bloodstream infections caused by GNB admitted between 2008 and 2015 from Barnes-Jewish Hospital. We used multivariable logistic regression analyses to describe risk factors associated with resistance to the antibiotics of interest (PT, CE, and ME). Clinical decision trees were developed using the recursive partitioning algorithm CHAID (χ2 Automatic Interaction Detection).
The study included 1618 consecutive patients. Prevalence rates for resistance to PT, CE, and ME were 28.6%, 21.8%, and 8.5%, respectively. Prior antibiotic use, nursing home residence, and transfer from an outside hospital were associated with resistance to all 3 antibiotics. Resistance to ME was specifically linked with infection attributed to Pseudomonas or Acinetobacter spp. Discrimination was similar for the multivariable logistic regression and CHAID tree models, with both being better for ME than for PT and CE. Recursive partitioning algorithms separated out 2 clusters with a low probability of ME resistance and 4 with a high probability of PT, CE, and ME resistance.
With simple variables, clinical decision trees can be used to distinguish patients at low, intermediate, or high risk of resistance to PT, CE, and ME.
预测革兰氏阴性菌(GNB)的抗生素耐药性可以平衡使用适当的经验性抗生素的需求,同时最大限度地减少使用临床不必要的广谱药物。我们的目的是开发一种实用的预测规则,能够识别出患有 GNB 感染且对哌拉西林-他唑巴坦(PT)、头孢吡肟(CE)和美罗培南(ME)耐药风险低的患者。
本研究纳入了 2008 年至 2015 年间因 GNB 引起的血流感染导致败血症或感染性休克的成年患者。我们使用多变量逻辑回归分析来描述与感兴趣的抗生素(PT、CE 和 ME)耐药相关的危险因素。使用递归分区算法 CHAID(χ2 自动交互检测)开发临床决策树。
本研究纳入了 1618 例连续患者。对 PT、CE 和 ME 的耐药率分别为 28.6%、21.8%和 8.5%。先前使用抗生素、居住在疗养院以及从外院转来与所有 3 种抗生素的耐药性相关。对 ME 的耐药性与归因于假单胞菌或不动杆菌属的感染有关。多变量逻辑回归和 CHAID 树模型的判别能力相似,对 ME 的判别能力均优于对 PT 和 CE 的判别能力。递归分区算法将耐药性低的 ME 概率和耐药性高的 PT、CE 和 ME 概率分为 2 个聚类。
使用简单的变量,临床决策树可用于区分对 PT、CE 和 ME 耐药风险低、中或高的患者。