Market Access and Medical Affairs, Roche Diagnostics, Buenos Aires, Argentina.
Ricardo Gutiérrez Children's Hospital, Buenos Aires, Argentina.
PLoS One. 2021 Apr 30;16(4):e0250711. doi: 10.1371/journal.pone.0250711. eCollection 2021.
Inappropriate antibiotic use represents a major global threat. Sepsis and bacterial lower respiratory tract infections (LRTIs) have been linked to antimicrobial resistance, carrying important consequences for patients and health systems. Procalcitonin-guided algorithms may represent helpful tools to reduce antibiotic overuse but the financial burden is unclear. The aim of this study was to estimate the healthcare and budget impact in Argentina of using procalcitonin-guided algorithms to guide antibiotic prescription.
A decision tree was used to model health and cost outcomes for the Argentinean health system, over a one-year duration. Patients with suspected sepsis in the intensive care unit and hospitalized patients with LRTI were included. Model parameters were obtained from a focused, non-systematic, local and international bibliographic search, and validated by a panel of local experts. Deterministic and probabilistic sensitivity analyses were performed to analyze the uncertainty of parameters.
The model predicted that using procalcitonin-guided algorithms would result in 734.5 [95% confidence interval (CI): 1,105.2;438.8] thousand fewer antibiotic treatment days, 7.9 [95% CI: 18.5;8.5] thousand antibiotic-resistant cases avoided, and 5.1 [95% CI: 6.7;4.2] thousand fewer Clostridioides difficile cases. In total, this would save $422.4 US dollars (USD) [95% CI: $935;$267] per patient per year, meaning cost savings of $83.0 [95% CI: $183.6;$57.7] million USD for the entire health system and $0.4 [95% CI: $0.9;$0.3] million USD for a healthcare provider with 1,000 cases per year of sepsis and LRTI patients. The sensitivity analysis showed that the probability of cost-saving for the sepsis patient group was lower than for the LRTI patient group (85% vs. 100%).
Healthcare and financial benefits can be obtained by implementing procalcitonin-guided algorithms in Argentina. Although we found results to be robust on an aggregate level, some caution must be used when focusing only on sepsis patients in the intensive care unit.
不适当的抗生素使用是一个全球性的主要威胁。脓毒症和细菌性下呼吸道感染(LRTIs)与抗菌药物耐药性有关,给患者和卫生系统带来了重要后果。降钙素原指导的算法可能是减少抗生素过度使用的有用工具,但经济负担尚不清楚。本研究的目的是评估在阿根廷使用降钙素原指导的算法来指导抗生素处方的医疗保健和预算影响。
使用决策树模型来模拟阿根廷卫生系统的健康和成本结果,为期一年。纳入重症监护病房疑似脓毒症患者和住院的细菌性下呼吸道感染患者。模型参数来自于有针对性的、非系统性的、当地和国际文献检索,并由当地专家组进行验证。进行确定性和概率敏感性分析以分析参数的不确定性。
该模型预测,使用降钙素原指导的算法将导致抗生素治疗天数减少 734.5 [95%置信区间(CI):1105.2;438.8]千天,避免 7.9 [95% CI:18.5;8.5]千例抗生素耐药病例,减少 5.1 [95% CI:6.7;4.2]千例艰难梭菌病例。总的来说,这将使每位患者每年节省 422.4 美元(USD)[95% CI:935 美元;267 美元],整个卫生系统节省 83.0 [95% CI:183.6 美元;57.7 美元],对于一家每年有 1000 例脓毒症和细菌性下呼吸道感染患者的医疗服务提供者,节省 0.4 [95% CI:0.9 美元;0.3 美元]。敏感性分析显示,脓毒症患者组的成本节约概率低于细菌性下呼吸道感染患者组(85%比 100%)。
在阿根廷实施降钙素原指导的算法可以获得医疗保健和经济上的好处。虽然我们在总体水平上发现结果是稳健的,但在仅关注重症监护病房的脓毒症患者时,必须谨慎使用。