Infection Control Programme, University of Geneva Hospitals and Faculty of Medicine, 4 rue Gabrielle-Perret-Gentil, Geneva 4, Switzerland.
Clin Microbiol Infect. 2010 Dec;16(12):1729-35. doi: 10.1111/j.1469-0691.2010.03332.x.
Healthcare-associated infections (HAIs) unquestionably have substantial effects on morbidity and mortality. However, quantifying the exact economic burden attributable to HAIs still remains a challenging issue. Inaccurate estimations may arise from two major sources of bias. First, factors other than infection may affect patients' length of stay (LOS) and healthcare utilization. Second, HAI is a time-varying exposure, as the infection can impact on LOS and costs only after the infection has started. The most frequent mistake in previously published evidence is the introduction of time-dependent information as time-fixed, on the assumption that the impact of such exposure on the outcome was already present on admission. Longitudinal and multistate models avoid time-dependent bias and address the time-dependent complexity of the data. Appropriate statistical methods are important in analysis of excess costs and LOS associated with HAI, because informed decisions and policy developments may depend on them.
医疗机构相关性感染(HAI)无疑对发病率和死亡率有重大影响。然而,量化归因于 HAI 的确切经济负担仍然是一个具有挑战性的问题。不准确的估计可能源于两个主要的偏倚来源。首先,除感染以外的因素可能会影响患者的住院时间(LOS)和医疗保健利用。其次,HAI 是一个随时间变化的暴露因素,只有在感染开始后,感染才会对 LOS 和成本产生影响。先前发表的证据中最常见的错误是将随时间变化的信息作为固定时间引入,假设这种暴露对结果的影响在入院时就已经存在。纵向和多状态模型避免了随时间变化的偏倚,并解决了数据随时间变化的复杂性。适当的统计方法对于分析与 HAI 相关的超额成本和 LOS 非常重要,因为明智的决策和政策发展可能取决于这些方法。