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在时变风险情况下,使用泊松模型来处理无后效性偏倚的危害。

The hazard of using the Poisson model to cope with immortal time bias in the case of time-varying hazard.

机构信息

National Centre for Healthcare Research & Pharmacoepidemiology, at the University of Milano-Bicocca, Milan, Italy.

Department of Statistics and Quantitative Methods, Laboratory of Healthcare Research & Pharmacoepidemiology, Unit of Biostatistics, Epidemiology and Public Health, University of Milano-Bicocca, 8, Edificio U7, Milan, 20126, Italy.

出版信息

BMC Med Res Methodol. 2024 Nov 9;24(1):272. doi: 10.1186/s12874-024-02396-y.

Abstract

BACKGROUND

A time-dependent analysis, usually by means of Poisson and Cox regression models, can be applied to prevent immortal time bias. However, the use of the Poisson model requires the assumption that the event rate is constant over time. This study aims to assess the potential consequences of using the Poisson model to cope with immortal time bias on estimating the exposure-outcome relationship in the case of time-varying risks.

METHODS

A simulation study was carried out. Survival times were assumed to follow a Weibull distribution, and the Weibull parameters were chosen to identify three different scenarios: the hazard of the event is constant, decreases, or increases over time. A dichotomous time-varying exposure in which patients can change at most once from unexposed to exposed was considered. The Poisson model was fitted to estimate the exposure-outcome association.

RESULTS

Small changes in the outcome risk over time (as denoted by the shape parameter of the Weibull distribution) strongly affected the exposure-outcome association estimate. The estimated effect of exposure was always lower and greater than the true exposure effect when the event risk decreases or increases over time, and this was the case irrespective of the true exposure effect. The bias magnitude was positively associated with the prevalence of and time to exposure.

CONCLUSIONS

Biased estimates were obtained from the Poisson model to cope with immortal time. In settings with a time-varying outcome risk, the model should adjust for the trend in outcome risk. Otherwise, other models should be considered.

摘要

背景

可以采用时依分析(通常使用泊松回归和 Cox 回归模型)来预防不朽时间偏倚。然而,泊松模型的使用要求事件率随时间保持不变。本研究旨在评估在时间变化的风险情况下,使用泊松模型来应对不朽时间偏倚对暴露-结局关系估计的潜在后果。

方法

进行了一项模拟研究。假设生存时间遵循威布尔分布,选择威布尔参数以识别三种不同情况:事件的危险随时间保持不变、减少或增加。考虑了一种二分类的时依暴露,患者最多只能从无暴露变为暴露一次。拟合泊松模型以估计暴露-结局关联。

结果

随着时间的推移,结局风险的微小变化(如威布尔分布的形状参数所示)强烈影响暴露-结局关联的估计。当事件风险随时间降低或增加时,暴露的估计效应始终低于和高于真实暴露效应,而且无论真实暴露效应如何,情况均如此。偏倚幅度与暴露的流行率和时间呈正相关。

结论

泊松模型处理不朽时间会产生有偏估计。在结局风险随时间变化的情况下,模型应调整结局风险的趋势。否则,应考虑其他模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/706d/11549743/12a2e0c8bc1b/12874_2024_2396_Fig1_HTML.jpg

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