首页> 外文期刊>Statistics in medicine >Analysis of binary outcomes in longitudinal studies using weighted estimating equations and discrete-time survival methods: prevalence and incidence of smoking in an adolescent cohort.
【24h】

Analysis of binary outcomes in longitudinal studies using weighted estimating equations and discrete-time survival methods: prevalence and incidence of smoking in an adolescent cohort.

机译:在纵向研究中使用加权估计方程和离散时间生存方法对二元结果进行分析:青少年队列中的吸烟率和发生率。

获取原文
获取原文并翻译 | 示例
           

摘要

Longitudinal studies are increasingly popular in epidemiology. In this tutorial we provide a detailed review of methods used by us in the analysis of a longitudinal (multiwave or panel) study of adolescent health, focusing on smoking behaviour. This example is explored in detail with the principal aim of providing an introduction to the analysis of longitudinal binary data, at a level suited to statisticians familiar with logistic regression and survival analysis but not necessarily experienced in longitudinal analysis or estimating equation methods. We describe recent advances in statistical methodology that can play a practical role in applications and are available with standard software. Our approach emphasizes the importance of stating clear research questions, and for binary outcomes we suggest these are best organized around the key epidemiological concepts of prevalence and incidence. For prevalence questions, we show how unbiased estimating equations and information-sandwich variance estimates may be used to produce a valid and robust analysis, as long as sample size is reasonably large. We also show how the estimating equation approach readily extends to accommodate adjustments for missing data and complex survey design. A detailed discussion of gender-related differences over time in our smoking outcome is used to emphasize the need for great care in separating longitudinal from cross-sectional information. We show how incidence questions may be addressed using a discrete-time version of the proportional hazards regression model. This approach has the advantages of providing estimates of relative risks, being feasible with standard software, and also allowing robust information-sandwich variance estimates. Copyright 1999 John Wiley & Sons, Ltd.
机译:纵向研究在流行病学中越来越受欢迎。在本教程中,我们将详细介绍我们在分析青少年健康的纵向(多波或小组)研究中使用的方法,重点是吸烟行为。对本示例进行了详细探讨,其主要目的是为纵向二进制数据的分析提供入门知识,其水平适合于熟悉逻辑回归和生存分析但不一定具有纵向分析或估计方程式方法经验的统计学家。我们描述了统计方法的最新进展,这些进展可以在应用程序中发挥实际作用,并且可以与标准软件一起使用。我们的方法强调了阐明明确的研究问题的重要性,对于二进制结果,我们建议最好围绕流行率和发病率的关键流行病学概念来组织这些研究。对于普遍性问题,我们说明了只要样本量相当大,如何可以使用无偏估计方程和信息三明治方差估计来产生有效且鲁棒的分析。我们还展示了估计方程方法如何轻松扩展以适应缺失数据和复杂调查设计的调整。我们对吸烟结果随时间推移与性别相关的差异进行了详细讨论,以强调在区分纵向信息和横截面信息时需要格外小心。我们展示了如何使用比例风险回归模型的离散时间版本来解决发病问题。这种方法的优点是可以提供相对风险的估计值,这在标准软件中是可行的,并且还可以进行可靠的信息三明治方差估计。版权所有1999 John Wiley&Sons,Ltd.

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号