Comparison of different methods in analyzing short-term air pollution effects in a cohort study of susceptible individuals.

Annette Peters, Stephanie von Klot, Niklas Berglind, Allmut Hörmann, Hannelore Löwel, Fredrik Nyberg, Juha Pekkanen, Carlo A Perucci, Massimo Stafoggia, Jordi Sunyer, Pekka Tiittanen, Francesco Forastiere
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引用次数: 35

Abstract

Background: Short-term fluctuations of ambient air pollution have been associated with exacerbation of cardiovascular disease. A multi-city study was designed to assess the probability of recurrent hospitalization in a cohort of incident myocardial infarction survivors in five European cities. The objective of this paper is to discuss the methods for analyzing short-term health effects in a cohort study based on a case-series.

Methods: Three methods were considered for the analyses of the cohort data: Poisson regression approach, case-crossover analyses and extended Cox regression analyses. The major challenge of these analyses is to appropriately consider changes within the cohort over time due to changes in the underlying risk following a myocardial infarction, slow time trends in risk factors within the population, dynamic cohort size and seasonal variation.

Results: Poisson regression analyses, case-crossover analyses and Extended Cox regression analyses gave similar results. Application of smoothing methods showed the capability to adequately model the complex time trends.

Conclusion: From a practical point of view, Poisson regression analyses are less time-consuming, and therefore might be used for confounder selection and most of the analyses. However, replication of the results with Cox models is desirable to assure that the results are independent of the analytical approach used. In addition, extended Cox regression analyses would allow a joint estimation of long-term and short-term health effects of time-varying exposures.

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在易感人群队列研究中分析空气污染短期影响的不同方法的比较。
背景:环境空气污染的短期波动与心血管疾病的恶化有关。一项多城市研究旨在评估5个欧洲城市的心肌梗死幸存者队列中复发住院的概率。本文的目的是讨论在基于病例系列的队列研究中分析短期健康影响的方法。方法:采用泊松回归分析、病例交叉分析和扩展Cox回归分析三种方法对队列资料进行分析。这些分析的主要挑战是适当考虑由于心肌梗死后潜在风险的变化、人群中危险因素的缓慢时间趋势、动态队列规模和季节性变化而导致的队列内随时间的变化。结果:泊松回归分析、病例交叉分析和扩展Cox回归分析结果相似。平滑方法的应用表明,该方法能够充分地模拟复杂的时间趋势。结论:从实际的角度来看,泊松回归分析更节省时间,因此可以用于混杂因素选择和大多数分析。然而,用Cox模型复制结果是可取的,以确保结果独立于所使用的分析方法。此外,扩展Cox回归分析将允许对时变暴露对健康的长期和短期影响进行联合估计。
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