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利用逆概率加权生存曲线估计医疗保健相关感染对住院时间延长的影响。

Estimating the Effect of Healthcare-Associated Infections on Excess Length of Hospital Stay Using Inverse Probability-Weighted Survival Curves.

机构信息

Health Economics Research Centre, Nuffield Department of Population Health, University of Oxford, Oxford, United Kingdom.

National Institute for Health Research Health Protection Research Unit in Healthcare Associated Infections and Antimicrobial Resistance, University of Oxford, Oxford, United Kingdom.

出版信息

Clin Infect Dis. 2020 Dec 3;71(9):e415-e420. doi: 10.1093/cid/ciaa136.

Abstract

BACKGROUND

Studies estimating excess length of stay (LOS) attributable to nosocomial infections have failed to address time-varying confounding, likely leading to overestimation of their impact. We present a methodology based on inverse probability-weighted survival curves to address this limitation.

METHODS

A case study focusing on intensive care unit-acquired bacteremia using data from 2 general intensive care units (ICUs) from 2 London teaching hospitals were used to illustrate the methodology. The area under the curve of a conventional Kaplan-Meier curve applied to the observed data was compared with that of an inverse probability-weighted Kaplan-Meier curve applied after treating bacteremia as censoring events. Weights were based on the daily probability of acquiring bacteremia. The difference between the observed average LOS and the average LOS that would be observed if all bacteremia cases could be prevented was multiplied by the number of admitted patients to obtain the total excess LOS.

RESULTS

The estimated total number of extra ICU days caused by 666 bacteremia cases was estimated at 2453 (95% confidence interval [CI], 1803-3103) days. The excess number of days was overestimated when ignoring time-varying confounding (2845 [95% CI, 2276-3415]) or when completely ignoring confounding (2838 [95% CI, 2101-3575]).

CONCLUSIONS

ICU-acquired bacteremia was associated with a substantial excess LOS. Wider adoption of inverse probability-weighted survival curves or alternative techniques that address time-varying confounding could lead to better informed decision making around nosocomial infections and other time-dependent exposures.

摘要

背景

评估医院获得性感染导致的住院时间过长(LOS)的研究未能解决时变混杂问题,这可能导致其影响被高估。我们提出了一种基于逆概率加权生存曲线的方法来解决这个局限性。

方法

使用来自伦敦 2 家教学医院的 2 个普通重症监护病房(ICU)的数据,对 ICU 获得性菌血症进行了案例研究,以说明该方法。将常规 Kaplan-Meier 曲线应用于观察数据的曲线下面积与将菌血症作为删失事件应用于逆概率加权 Kaplan-Meier 曲线的曲线下面积进行了比较。权重基于每天发生菌血症的概率。如果所有菌血症病例都可以预防,观察到的平均 LOS 与平均 LOS 之间的差异乘以入院患者的数量,即可得到总超额 LOS。

结果

666 例菌血症病例估计导致额外 ICU 天数 2453 天(95%置信区间 [CI],1803-3103)。当忽略时变混杂(2845 [95% CI,2276-3415])或完全忽略混杂(2838 [95% CI,2101-3575])时,估计的超额天数被高估。

结论

ICU 获得性菌血症与显著的超额 LOS 相关。更广泛地采用逆概率加权生存曲线或其他解决时变混杂的替代技术,可能会使医院感染和其他时间依赖性暴露的决策更加明智。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8ce7/7713691/192489a5172f/ciaa136f0001.jpg

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