Regression Analyses and Their Particularities in Observational Studies.

IF 6.5 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Antonia Zapf, Christian Wiessner, Inke Regina König
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引用次数: 0

Abstract

Background: Regression analysis is a standard method in medical research. It is often not clear, however, how the individual components of regression models are to be understood and interpreted. In this article, we provide an overview of this type of analysis and discuss its special features when used in observational studies.

Methods: Based on a selective literature review, the individual components of a regression model for differently scaled outcome variables (metric: linear regression; binary: logistic regression; time to event: Cox regression; count variable: Poisson or negative binomial regression) are explained, and their interpretation is illustrated with respect to a study on multiple sclerosis. The prerequisites for the use of each of these models, their applications, and their limitations are described in detail.

Results: Regression analyses are used to quantify the relation between several variables and the outcome variable. In randomized clinical trials, this flexible statistical analysis method is usually lean and prespecified. In observational studies, where there is a need to control for potential confounders, researchers with knowledge of the topic in question must collaborate with experts in statistical modeling to ensure high model quality and avoid errors. Causal diagrams are an increasingly important basis for evaluation. They should be constructed in collaboration and should differentiate between confounders, mediators, and colliders.

Conclusion: Researchers need a basic understanding of regression models so that these models will be well defined and their findings will be fully reported and correctly interpreted.

观察研究中的回归分析及其特殊性--科学出版物评价丛书第 32 部分。
背景:回归分析是医学研究的标准方法:回归分析是医学研究的标准方法。然而,如何理解和解释回归模型的各个组成部分往往并不清楚。在本文中,我们将概述这种分析方法,并讨论其在观察性研究中使用时的特点:方法:根据有选择性的文献综述,对不同尺度的结果变量(度量变量:线性回归;二元变量:逻辑回归;事件发生时间:Cox 回归;计数变量:线性回归;二元变量:Logistic 回归;事件发生时间:Cox 回归;计数变量:Cox 回归)的回归模型的各个组成部分进行分析:Cox 回归;计数变量:解释,并结合一项关于多发性硬化症的研究说明其解释。详细介绍了使用每种模型的前提条件、应用及其局限性:回归分析用于量化多个变量与结果变量之间的关系。在随机临床试验中,这种灵活的统计分析方法通常是精简和预先指定的。在需要控制潜在混杂因素的观察性研究中,了解相关主题的研究人员必须与统计建模专家合作,以确保模型的高质量并避免错误。因果关系图越来越成为评估的重要依据。因果关系图应在合作中构建,并应区分混杂因素、中介因素和碰撞因素:研究人员需要对回归模型有基本的了解,这样才能很好地定义这些模型,并充分报告和正确解释研究结果。
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来源期刊
Deutsches Arzteblatt international
Deutsches Arzteblatt international 医学-医学:内科
CiteScore
4.10
自引率
5.20%
发文量
306
审稿时长
4-8 weeks
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: Carelit CINAHL (Cumulative Index to Nursing and Allied Health Literature) Compendex DOAJ (Directory of Open Access Journals) EMBASE (Excerpta Medica database) EMNursing GEOBASE (Geoscience & Environmental Data) HINARI (Health InterNetwork Access to Research Initiative) Index Copernicus Medline (MEDLARS Online) Medpilot PsycINFO (Psychological Information Database) Science Citation Index Expanded Scopus By being indexed in these databases, Deutsches Ärzteblatt International's articles are made available to researchers, clinicians, and healthcare professionals worldwide, contributing to the global exchange of medical knowledge and research.
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