Schumacher M, Wangler M, Wolkewitz M, Beyersmann J
Institute of Medical Biometry and Medical Informatics, University Medical Center, Stefan-Meier-Str. 26, 79104 Freiburg, Germany.
Methods Inf Med. 2007;46(5):595-600.
Nosocomial infections constitute a major medical problem leading to increased morbidity and mortality of patients. Besides prolongation of length of hospital stay, hospital mortality attributable to those infections is often the quantity of interest when describing their impact and consequences. Since occurrence of nosocomial infections is a time-dynamic process, estimation of this quantity might be hampered by that fact. A general framework shall be developed for defining and estimating attributable mortality that in addition is taking discharge of patients as competing risk and potential censoring of observation time into account.
Since the term "attributable mortality" is used in a variety of meanings we first review basic definitions; the quantities of interest are then derived in terms of transition probabilities arising in a suitably defined multistate model that allows straightforward estimation and interpretation. Bootstrap resampling is used to calculate corresponding standard errors and confidence intervals.
The methodology is applied to the data of the SIR-3 study, a prospective cohort study on the incidence of nosocomial infections in intensive care unit patients. Occurrence of nosocomial pneumonia is shown to be associated with increased mortality; the population-attributable fraction is estimated as 7.7% (95% confidence interval: 2.6-12.8%) for an observation period of 120 days.
Attributable mortality is an important risk measure in epidemiology. If risk exposure is time dependent, multistate models provide an easily understandable framework to define and estimate attributable mortality. The approach is capable of handling competing events, which are omnipresent in clinical research and censoring.
医院感染是一个重大的医学问题,会导致患者发病率和死亡率上升。除了延长住院时间外,在描述医院感染的影响和后果时,由这些感染导致的医院死亡率通常是关注的重点。由于医院感染的发生是一个随时间变化的过程,这一事实可能会妨碍对该指标的估计。我们将开发一个通用框架,用于定义和估计归因死亡率,该框架还将把患者出院视为竞争风险,并考虑观察时间的潜在截尾情况。
由于“归因死亡率”一词有多种含义,我们首先回顾基本定义;然后根据在适当定义的多状态模型中出现的转移概率推导出关注的指标,该模型允许进行直接的估计和解释。使用自助重抽样来计算相应的标准误差和置信区间。
该方法应用于SIR-3研究的数据,这是一项关于重症监护病房患者医院感染发生率的前瞻性队列研究。结果显示,医院获得性肺炎的发生与死亡率增加有关;在120天的观察期内,人群归因分数估计为7.7%(95%置信区间:2.6 - 12.8%)。
归因死亡率是流行病学中的一项重要风险指标。如果风险暴露随时间变化,多状态模型为定义和估计归因死亡率提供了一个易于理解的框架。该方法能够处理竞争事件,而竞争事件在临床研究和截尾情况中普遍存在。