首页> 美国卫生研究院文献>The Ochsner Journal >Investigating the Source of a Disease Outbreak Based on Risk Estimation: A Simulation Study Comparing Risk Estimates Obtained From Logistic and Poisson Regression Applied to a Dichotomous Outcome
【2h】

Investigating the Source of a Disease Outbreak Based on Risk Estimation: A Simulation Study Comparing Risk Estimates Obtained From Logistic and Poisson Regression Applied to a Dichotomous Outcome

机译:基于风险估计调查疾病暴发的源头:一项模拟研究该研究比较了从Logistic回归和Poisson回归应用于二分结果得出的风险估计

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。

摘要

>Background: In epidemiologic investigations of disease outbreaks, multivariable regression techniques with adjustment for confounding can be applied to assess the association between exposure and outcome. Traditionally, logistic regression has been used in analyses of case-control studies to determine the odds ratio (OR) as the effect measure. For rare outcomes (incidence of 5% to 10%), an adjusted OR can be used to approximate the risk ratio (RR). However, concern has been raised about using logistic regression to estimate RR because how closely the calculated OR approximates the RR depends largely on the outcome rate. The literature shows that when the incidence of outcomes exceeds 10%, ORs greatly overestimate RRs. Consequently, in addition to logistic regression, other regression methods to accurately estimate adjusted RRs have been explored. One method of interest is Poisson regression with robust standard errors. This generalized linear model estimates RR directly vs logistic regression that determines OR. The purpose of this study was to empirically compare risk estimates obtained from logistic regression and Poisson regression with robust standard errors in terms of effect size and determination of the most likely source in the analysis of a series of simulated single-source disease outbreak scenarios.>Methods: We created a prototype dataset to simulate a foodborne outbreak following a public event with 14 food exposures and a 52.0% overall attack rate. Regression methods, including binary logistic regression and Poisson regression with robust standard errors, were applied to analyze the dataset. To further examine how these two models led to different conclusions of the potential outbreak source, a series of 5 additional scenarios with decreasing attack rates were simulated and analyzed using both regression models.>Results: For each of the explanatory variables—sex, age, and food types—in both univariable and multivariable models, the ORs obtained from logistic regression were estimated further from 1.0 than their corresponding RRs estimated by Poisson regression with robust standard errors. In the simulated scenarios, the Poisson regression models demonstrated greater consistency in the identification of one food type as the most likely outbreak source.>Conclusion: Poisson regression with robust standard errors proved to be a decisive and consistent method to estimate risk associated with a single source in an outbreak when the cohort data collection design was used.
机译:>背景:在疾病暴发的流行病学调查中,可以通过对混杂因素进行调整的多变量回归技术来评估暴露与结果之间的关联。传统上,逻辑回归已用于病例对照研究的分析中,以将比值比(OR)确定为效果指标。对于罕见的结果(发生率5%至10%),可以使用调整后的OR来近似风险比(RR)。但是,由于使用逻辑回归估计RR引起了人们的关注,因为计算的OR与RR的接近程度在很大程度上取决于结果率。文献表明,当结局发生率超过10%时,OR会大大高估RR。因此,除了逻辑回归之外,还探索了其他回归方法来准确估计调整后的RR。感兴趣的一种方法是具有鲁棒标准误差的泊松回归。该广义线性模型直接估计RR与确定OR的逻辑回归之间的关系。这项研究的目的是在一系列模拟的单源疾病暴发情景分析中,从效应大小和确定最可能的源方面,经验比较从逻辑回归和泊松回归获得的风险估计与稳健的标准误差。 strong>方法:我们创建了一个原型数据集来模拟一次公共事件后的一次食源性暴发,暴发了14次食物,总体攻击率为52.0%。回归方法包括二进制logistic回归和具有鲁棒标准误差的Poisson回归,被用于分析数据集。为了进一步检查这两个模型如何导致潜在爆发源的不同结论,使用两种回归模型对一系列5种攻击率降低的其他情景进行了模拟和分析。>结果:在单变量和多变量模型中,变量(性别,年龄和食物类型)的估计值,从逻辑回归获得的OR均比由Poisson回归估计的具有相对应的RR的估计值高1.0。在模拟情况下,泊松回归模型在确定一种食物类型为最可能的暴发源方面显示出更大的一致性。>结论:具有稳健标准误差的泊松回归被证明是一种决定性且一致的方法使用队列数据收集设计时,估计与一次爆发中的单一来源相关的风险。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

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