Department of Emergency Medicine, Mayo Clinic, Jacksonville, FL, United States of America.
Department of Emergency Medicine, Johns Hopkins University, Baltimore, MD, United States of America.
Am J Emerg Med. 2022 Jan;51:313-319. doi: 10.1016/j.ajem.2021.11.004. Epub 2021 Nov 7.
History and physical examination findings can be unreliable for prediction of genitourinary tract infections and differentiation of urinary tract infections from sexually transmitted infections (STIs). The study objective was to develop a prediction tool to more accurately identify patients with STIs.
A retrospective review of 64,490 emergency department (ED) encounters between April 18, 2014, and March 7, 2017, where patients age 18 years or older had urinalysis and urine culture or testing for gonorrhea, chlamydia, or trichomonas, was used to develop a prediction model for men and women with Neisseria gonorrhoeae or Chlamydia trachomatis, or both, and for women with Trichomonas vaginalis. The data set was randomly divided into two-thirds discovery and one-third validation. Groups were assigned through a random number generator. Backward step regression modeling was used to identify the best model for each outcome.
With use of age, race, marital status, and findings from vaginal wet preparation (white blood cells [WBCs], clue cells, and yeast) and urinalysis (squamous epithelial cells, protein, leukocyte esterase, and WBCs), the models had areas under the receiver operating characteristic curve of 0.80 for men with N gonorrhoeae or C trachomatis, or both; 0.75 for women with N gonorrhoeae or C trachomatis, or both; and 0.73 for women with T vaginalis.
The model estimated likelihood of ED patients having STIs was reasonably accurate with a limited number of demographic and laboratory variables. In the absence of point-of-care STI testing, use of a prediction tool for STIs may improve antimicrobial stewardship.
病史和体格检查结果对于预测泌尿生殖道感染以及区分尿路感染和性传播感染(STI)可能不可靠。本研究旨在开发一种预测工具,以更准确地识别 STI 患者。
回顾性分析 2014 年 4 月 18 日至 2017 年 3 月 7 日期间 64490 例急诊科(ED)就诊患者,这些患者年龄在 18 岁或以上,进行了尿液分析和尿液培养或淋病、衣原体或滴虫检测,用于开发男性和女性淋病奈瑟菌或沙眼衣原体,或两者都有,以及女性阴道毛滴虫的预测模型。数据集被随机分为三分之二的发现和三分之一的验证。通过随机数发生器分配组。使用向后逐步回归建模来确定每个结果的最佳模型。
使用年龄、种族、婚姻状况以及阴道湿片(白细胞[WBC]、线索细胞和酵母)和尿液分析(鳞状上皮细胞、蛋白质、白细胞酯酶和 WBC)的结果,这些模型的接受者操作特征曲线下面积为 0.80,用于男性淋病奈瑟菌或沙眼衣原体,或两者都有;0.75 用于女性淋病奈瑟菌或沙眼衣原体,或两者都有;0.73 用于女性阴道毛滴虫。
该模型使用有限的人口统计学和实验室变量估计 ED 患者患有 STI 的可能性相当准确。在没有即时 STI 检测的情况下,使用 STI 预测工具可能有助于改善抗菌药物管理。