Bernd Kowall, Susanne Stolpe, Wolfgang Galetzka, Michael Nonnemacher, Andreas Stang
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引用次数: 0
Abstract
Background: Observational epidemiological studies often yield different results on the same research question. In this article, we explain how this comes about.
Methods: In this review, which is based on publications retrieved by a selective search in PubMed and the Web of Science, we use information from international publications, simulation studies on sampling error, and a quantitative bias analysis on fictitious data to demonstrate why the results of epidemiological studies are often uncertain, and why it is, therefore, generally necessary to perform more than one study on any particular question.
Results: Sampling errors, imprecise measurements, alternative but equally appropriate methods of data analysis, and features of the populations being studied are common reasons why studies on the same question can yield different results. Simulation studies are used to illustrate the fact that effect estimates such as relative risks or odds ratios can deviate markedly from the true value because of sampling error, i.e., by chance alone. Quantitative bias analysis is used to show how strongly effect estimates can be distorted by misclassification of exposures or outcomes. Finally, it is shown through illustrative examples that different but equally appropriate methods of data analysis can lead to divergent study results.
Conclusion: The above reasons why epidemiological study results can be heterogeneous are explained in this review. Quantitative bias analyses and sensitivity analyses with alternative data evaluation strategies can help explain divergent results on one and the same question.
背景:观察性流行病学研究往往会对同一问题得出不同的结果。在本文中,我们将解释这种情况是如何产生的:这篇综述基于在 PubMed 和 Web of Science 上有选择性地搜索到的出版物,我们利用国际出版物中的信息、对抽样误差的模拟研究以及对虚构数据的定量偏差分析,来说明为什么流行病学研究的结果常常是不确定的,以及为什么通常有必要对任何特定问题进行不止一项研究:结果:抽样误差、不精确的测量、其他同样合适的数据分析方法以及被研究人群的特征,都是对同一问题进行研究得出不同结果的常见原因。模拟研究用来说明,相对风险或几率比率等效应估计值可能会因为抽样误差(即仅仅是偶然因素)而明显偏离真实值。定量偏差分析用于说明暴露或结果的错误分类会如何强烈地扭曲效果估计值。最后,通过举例说明不同但同样适当的数据分析方法会导致不同的研究结果:本综述解释了上述流行病学研究结果可能存在差异的原因。定量偏倚分析和采用其他数据评估策略的敏感性分析有助于解释同一问题的不同结果。
期刊介绍:
Deutsches Ärzteblatt International is a bilingual (German and English) weekly online journal that focuses on clinical medicine and public health. It serves as the official publication for both the German Medical Association and the National Association of Statutory Health Insurance Physicians. The journal is dedicated to publishing independent, peer-reviewed articles that cover a wide range of clinical medicine disciplines. It also features editorials and a dedicated section for scientific discussion, known as correspondence.
The journal aims to provide valuable medical information to its international readership and offers insights into the German medical landscape. Since its launch in January 2008, Deutsches Ärzteblatt International has been recognized and included in several prestigious databases, which helps to ensure its content is accessible and credible to the global medical community. These databases include:
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