回归陷阱:为什么回归分析不适合选择行为改变干预的决定因素。

IF 2.4 Q2 PSYCHOLOGY, CLINICAL
Health Psychology and Behavioral Medicine Pub Date : 2023-10-25 eCollection Date: 2023-01-01 DOI:10.1080/21642850.2023.2268684
Rik Crutzen, Gjalt-Jorn Ygram Peters
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引用次数: 2

摘要

目的:回归分析通常用于选择行为改变干预的决定因素,但本文的目的是解释为什么回归分析不适合这一目的(即回归陷阱)。方法:通过提供(1)基于决定因素重叠的理论基础来实现这一目的;(2) 基于用于计算回归系数的公式的数学原理;以及(3)基于真实世界数据的示例。结果:首先,回归系数的含义通常被解释为表达决定因素和目标行为之间的关联,“保持所有其他预测因素不变”我们解释说,这通常归结为“忽视了心理的一部分”其次,我们证明了回归系数的解释被决定因素之间的相关性所扭曲。第三,所提供的例子表明了这在实践中的影响。这导致了针对不太相关的决定因素的干预措施,从而对行为改变的影响较小。结论:回归分析以及依赖相关性的多元分析不适合选择行为改变干预的决定因素,这有理论、数学和实践原因。相反,干预开发人员应该同时考虑单变量分布和双变量关联估计,并且有免费的工具可以做到这一点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

The regression trap: why regression analyses are not suitable for selecting determinants to target in behavior change interventions.

The regression trap: why regression analyses are not suitable for selecting determinants to target in behavior change interventions.

The regression trap: why regression analyses are not suitable for selecting determinants to target in behavior change interventions.

The regression trap: why regression analyses are not suitable for selecting determinants to target in behavior change interventions.

Objective: Regression analyses are commonly used for selecting determinants to target in behavior change interventions, but the aim of this article is to explain why regression analyses are not suitable for this purpose (i.e. the regression trap).

Methods: This aim is achieved by providing (1) a theoretical rationale based on overlap among determinants; (2) a mathematical rationale based on the formulas that are used to calculate regression coefficients; and (3) examples based on real-world data.

Results: First, the meaning of regression coefficients is commonly explained as expressing the association between a determinant and a target behavior 'holding all other predictors constant.' We explain that this often boils down to 'neglecting a part of the psyche.' Second, we demonstrate that the interpretation of regression coefficients is distorted by correlations between determinants. Third, the examples provided demonstrate the impact this has in practice. This results in interventions targeting determinants that are less relevant and, thereby, have less impact on behavior change.

Conclusion: There are theoretical, mathematical, and practical reasons why regression analyses, and by extension multivariate analyses relying on correlations, are not suitable to select determinants to target in behavior change interventions. Instead, intervention developers should consider univariate distributions and bivariate association estimates simultaneously and there are freely accessible tools available to do so.

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来源期刊
CiteScore
3.50
自引率
3.70%
发文量
57
审稿时长
24 weeks
期刊介绍: Health Psychology and Behavioral Medicine: an Open Access Journal (HPBM) publishes theoretical and empirical contributions on all aspects of research and practice into psychosocial, behavioral and biomedical aspects of health. HPBM publishes international, interdisciplinary research with diverse methodological approaches on: Assessment and diagnosis Narratives, experiences and discourses of health and illness Treatment processes and recovery Health cognitions and behaviors at population and individual levels Psychosocial an behavioral prevention interventions Psychosocial determinants and consequences of behavior Social and cultural contexts of health and illness, health disparities Health, illness and medicine Application of advanced information and communication technology.
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