Arinze Nkemdirim Okere, Anthony Ryan Pinto, Sandra Suther, Patrick Ten Eyck
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Eligible patients were enrolled in the study during their primary care visits. The primary outcome was the frequency of guideline-concordant treatment, analyzed using descriptive statistics and Chi-square tests. Among 201 patients (101 pre-intervention, 100 post-intervention), the pre-intervention group consisted of 77% females and 47% African Americans, while the post-intervention group consisted of 72% females and 46% African Americans. The intervention was associated with a 12.6% decrease in the number of antibiotic prescriptions discordant with clinical guidelines (37.6% to 25%) from the pre- to post-intervention periods. This corresponded to an odds ratio of 0.55 (95% CI: 0.30-1.01, <i>p</i> = 0.054). Although not statistically significant at α = 0.05, this numerical decrease suggests potential benefits of algorithm-driven protocols in improving antibiotic stewardship in resource-limited settings. 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The intervention was associated with a 12.6% decrease in the number of antibiotic prescriptions discordant with clinical guidelines (37.6% to 25%) from the pre- to post-intervention periods. This corresponded to an odds ratio of 0.55 (95% CI: 0.30-1.01, <i>p</i> = 0.054). Although not statistically significant at α = 0.05, this numerical decrease suggests potential benefits of algorithm-driven protocols in improving antibiotic stewardship in resource-limited settings. 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引用次数: 0
摘要
在美国,每年约有280万例细菌抗菌素耐药性(AMR)感染导致超过3.5万人死亡。AMR主要是由抗生素处方不当造成的,特别是在为农村社区或服务不足人群提供服务的诊所。抗生素管理计划(asp)改善了处方实践,但许多农村诊所缺乏功能齐全的asp。这项试点研究评估了算法驱动的协议对农村初级保健机构抗生素处方的影响。我们在一家联邦合格健康中心(FQHC)进行了一项前后准实验研究,重点关注上呼吸道感染、尿路感染和性传播感染。符合条件的患者在他们的初级保健访问期间被纳入研究。主要终点是指南一致性治疗的频率,使用描述性统计和卡方检验进行分析。201例患者(干预前101例,干预后100例)中,干预前组女性占77%,非裔美国人占47%,干预后组女性占72%,非裔美国人占46%。从干预前到干预后,与临床指南不一致的抗生素处方数量减少了12.6%(37.6%至25%)。比值比为0.55 (95% CI: 0.30-1.01, p = 0.054)。虽然在α = 0.05时不具有统计学意义,但这一数字减少表明算法驱动的协议在资源有限的环境中改善抗生素管理方面的潜在益处。更长的研究时间可以进一步阐明这些好处。
A Pilot Study Evaluating the Impact of an Algorithm-Driven Protocol on Guideline-Concordant Antibiotic Prescribing in a Rural Primary Care Setting.
Approximately 2.8 million cases of bacterial antimicrobial resistance (AMR) infections result in over 35,000 deaths annually in the U.S. AMR is driven largely by inappropriate prescribing of antibiotics, especially in clinics serving rural communities or underserved populations. Antibiotic Stewardship Programs (ASPs) improve prescribing practices, but many rural clinics lack fully functional ASPs. This pilot study evaluated the impact of an algorithm-driven protocol on antibiotic prescribing in a rural primary care setting. We conducted a pre-post quasi-experimental study at a Federally Qualified Health Center (FQHC), focusing on upper respiratory infections, urinary tract infections, and sexually transmitted infections. Eligible patients were enrolled in the study during their primary care visits. The primary outcome was the frequency of guideline-concordant treatment, analyzed using descriptive statistics and Chi-square tests. Among 201 patients (101 pre-intervention, 100 post-intervention), the pre-intervention group consisted of 77% females and 47% African Americans, while the post-intervention group consisted of 72% females and 46% African Americans. The intervention was associated with a 12.6% decrease in the number of antibiotic prescriptions discordant with clinical guidelines (37.6% to 25%) from the pre- to post-intervention periods. This corresponded to an odds ratio of 0.55 (95% CI: 0.30-1.01, p = 0.054). Although not statistically significant at α = 0.05, this numerical decrease suggests potential benefits of algorithm-driven protocols in improving antibiotic stewardship in resource-limited settings. Longer study periods may further elucidate these benefits.