Department of Pharmacy, Novant Health Forsyth Medical Center, Winston-Salem, NC.
Department of Pharmacy, Novant Health Forsyth Medical Center, Winston-Salem, NC; Department of Pharmacy Practice, Campbell University College of Pharmacy & Health Sciences, Buies Creek, NC.
Am J Infect Control. 2019 Mar;47(3):280-284. doi: 10.1016/j.ajic.2018.08.021. Epub 2018 Oct 11.
Clostridium difficile infection (CDI) is recognized as a significant challenge in health care. Identification of high-risk individuals is essential for the development of CDI prevention strategies. The objective of this study was to develop an easily implementable risk prediction model for hospital-onset CDI in patients receiving systemic antimicrobials.
This retrospective, case-control, multicenter study included adult patients admitted to Novant Health Forsyth Medical Center and Novant Health Presbyterian Medical Center from July 1, 2015, to July 1, 2017, who received systemic antibiotics. Cases were subjects with hospital-onset CDI; controls were subjects without a CDI diagnosis. Cases were matched 1:1 with controls by admitted medical unit type. Variables significantly associated with CDI were incorporated into a multivariate analysis. A logistic regression model was used to formulate a point-based risk prediction model. Positive predictive value, negative predictive value, sensitivity, specificity, and accuracy were determined at various point cutoffs of the model. A receiver operating characteristic-area under the curve was created to assess the discrimination of the model.
A total of 200 subjects (100 cases and 100 controls) were included. Most patients were Caucasian and female. Risk factors for CDI identified and incorporated into the model included age ≥70 years (adjusted odds ratio, 1.89; 95% confidence interval 1.05-3.43; P = .0326) and recent hospitalization in the past 90 days (adjusted odds ratio, 3.55; 95% confidence interval 1.90-6.83; P < .0001). Sensitivity and specificity were 76% and 49%, respectively, for scores ≥2 and 20% and 93%, respectively, for a score of 6. Diagnostic performance of various score cutoffs for the model indicated that a score ≥2 was associated with the highest accuracy (63%). The receiver operating characteristic-area under the curve was 0.7.
We developed a simple-to-implement hospital-onset CDI risk model that included only independent risks that can be obtained immediately on presentation to the health care facility. Despite this, the model had fair discriminatory power. Similar risk factors were found in previously developed models; however, the utility of these models is limited owing to the difficulty of assessing other included risk factors and the inclusion of risk factors that cannot be evaluated until the patient is discharged from the health care facility.
Identification of hospitalized patients who are receiving systemic antibiotics, are ≥70 years old, and were recently admitted to the hospital in the past 90 days may allow for an easily implementable hospital-onset CDI risk prevention strategy.
艰难梭菌感染(CDI)被认为是医疗保健领域的重大挑战。识别高危人群对于制定 CDI 预防策略至关重要。本研究旨在为接受全身抗菌药物治疗的患者开发一种易于实施的医院获得性 CDI 风险预测模型。
本回顾性病例对照多中心研究纳入 2015 年 7 月 1 日至 2017 年 7 月 1 日期间入住诺文特健康福赛斯医疗中心和诺文特健康长老会医疗中心的成年患者,他们接受了全身抗生素治疗。病例为医院获得性 CDI 患者;对照组为无 CDI 诊断的患者。通过入院医疗单元类型对病例和对照组进行 1:1 匹配。将与 CDI 显著相关的变量纳入多变量分析。使用逻辑回归模型制定基于点的风险预测模型。在模型的不同切点处确定阳性预测值、阴性预测值、敏感性、特异性和准确性。创建接受者操作特征曲线下面积以评估模型的鉴别能力。
共纳入 200 名患者(100 例病例和 100 名对照)。大多数患者为白种人和女性。确定并纳入模型的 CDI 危险因素包括年龄≥70 岁(调整后的优势比,1.89;95%置信区间,1.05-3.43;P=0.0326)和最近 90 天内住院(调整后的优势比,3.55;95%置信区间,1.90-6.83;P<0.0001)。评分≥2 的敏感性和特异性分别为 76%和 49%,评分 6 的敏感性和特异性分别为 20%和 93%。该模型的各种切点的诊断性能表明,评分≥2 与最高的准确性(63%)相关。接受者操作特征曲线下面积为 0.7。
我们开发了一种简单易行的医院获得性 CDI 风险模型,仅包含在患者就诊时即可立即获得的独立风险因素。尽管如此,该模型仍具有较好的区分能力。在以前开发的模型中发现了类似的危险因素;然而,由于评估其他纳入的危险因素困难,以及包括在患者出院前无法评估的危险因素,这些模型的实用性有限。
识别正在接受全身抗生素治疗、年龄≥70 岁且最近在过去 90 天内住院的住院患者,可能允许实施一种易于实施的医院获得性 CDI 风险预防策略。