Yaeger Jeffrey P, Temte Jonathan L, Hanrahan Lawrence P, Martinez-Donate P
St. Christopher's Hospital for Children, Drexel University College of Medicine, Department of Pediatrics, Philadelphia, Pennsylvania
University of Wisconsin School of Medicine and Public Health, Department of Family Medicine, Madison, Wisconsin.
Ann Fam Med. 2015 Nov;13(6):529-36. doi: 10.1370/afm.1856.
Prior studies have evaluated factors predictive of inappropriate antibiotic prescription for upper respiratory tract infections (URIs). Community factors, however, have not been examined. The aim of this study was to evaluate the roles of patient, clinician, and community factors in predicting appropriate management of URIs in children.
We used a novel database exchange, linking electronic health record data with community statistics, to identify all patients aged 3 months to 18 years in whom URI was diagnosed in the period from 2007 to 2012. We followed the Healthcare Effectiveness Data and Information Set (HEDIS) quality measurement titled "Appropriate treatment for children with upper respiratory infection" to determine the rate of appropriate management of URIs. We then stratified data across individual and community characteristics and used multiple logistic regression modeling to identify variables that independently predicted antibiotic prescription.
Of 20,581 patients, the overall rate for appropriate management for URI was 93.5%. Family medicine clinicians (AOR = 1.5; 95% CI 1.31, 1.71; reference = pediatric clinicians), urgent care clinicians (AOR = 2.23; 95% CI 1.93, 2.57; reference = pediatric clinicians), patients aged 12 to 18 years (AOR = 1.44; 95% CI 1.25, 1.67; reference = age 3 months to 4 years), and patients of white race/ ethnicity (AOR = 1.83; 95% CI 1.41, 2.37; reference = black non-Hispanic) were independently predictive of antibiotic prescription. No community factors were independently predictive of antibiotic prescription.
Results correlate with prior studies in which non-pediatric clinicians and white race/ethnicity were predictive of antibiotic prescription, while association with older patient age has not been previously reported. Findings illustrate the promise of linking electronic health records with community data to evaluate health care disparities.
先前的研究评估了上呼吸道感染(URI)不适当抗生素处方的预测因素。然而,社区因素尚未得到研究。本研究的目的是评估患者、临床医生和社区因素在预测儿童URI适当管理中的作用。
我们使用了一种新颖的数据库交换方法,将电子健康记录数据与社区统计数据相链接,以识别2007年至2012年期间所有诊断为URI的3个月至18岁患者。我们遵循医疗保健有效性数据和信息集(HEDIS)质量测量标准“上呼吸道感染儿童的适当治疗”来确定URI适当管理的比率。然后,我们根据个体和社区特征对数据进行分层,并使用多元逻辑回归模型来识别独立预测抗生素处方的变量。
在20581名患者中,URI适当管理的总体比率为93.5%。家庭医学临床医生(调整后比值比[AOR]=1.5;95%置信区间[CI]1.31,1.71;参照=儿科临床医生)、紧急护理临床医生(AOR=2.23;95%CI1.93,2.57;参照=儿科临床医生)、12至18岁的患者(AOR=1.44;95%CI1.25,1.67;参照=3个月至4岁)以及白人种族/族裔的患者(AOR=1.83;95%CI1.41,2.37;参照=非西班牙裔黑人)独立预测抗生素处方。没有社区因素独立预测抗生素处方。
结果与先前的研究相关,在先前研究中,非儿科临床医生和白人种族/族裔可预测抗生素处方,而与患者年龄较大的关联此前尚未报道。研究结果说明了将电子健康记录与社区数据相链接以评估医疗保健差异的前景。