Literature DB >> 30215060

SAS® Macros for Computing the Mediated Effect in the Pretest-Posttest Control Group Design.

Matthew J Valente1, David P MacKinnon1.   

Abstract

Mediation analysis is a statistical technique for investigating the extent to which a mediating variable transmits the relation of an independent variable to a dependent variable. Because it is useful in many fields, there have been rapid developments in statistical mediation methods. The most cutting-edge statistical mediation analysis focuses on the causal interpretation of mediated effect estimates. Cause-and-effect inferences are particularly challenging in mediation analysis because of the difficulty of randomizing subjects to levels of the mediator (MacKinnon, 2008). The focus of this paper is how incorporating longitudinal measures of the mediating and outcome variables aides in the causal interpretation of mediated effects. This paper provides useful SAS® tools for designing adequately powered studies to detect the mediated effect. Three SAS macros were developed using the powerful but easy-to-use REG, CALIS, and SURVEYSELECT procedures to do the following: (1) implement popular statistical models for estimating the mediated effect in the pretest-posttest control group design; (2) conduct a prospective power analysis for determining the required sample size for detecting the mediated effect; and (3) conduct a retrospective power analysis for studies that have already been conducted and a required sample to detect an observed effect is desired. We demonstrate the use of these three macros with an example.

Entities:  

Year:  2017        PMID: 30215060      PMCID: PMC6133302     

Source DB:  PubMed          Journal:  SAS Glob Forum


  15 in total

1.  Mediating mechanisms in a program to reduce intentions to use anabolic steroids and improve exercise self-efficacy and dietary behavior.

Authors:  D P MacKinnon; L Goldberg; G N Clarke; D L Elliot; J Cheong; A Lapin; E L Moe; J L Krull
Journal:  Prev Sci       Date:  2001-03

2.  Testing mediational models with longitudinal data: questions and tips in the use of structural equation modeling.

Authors:  David A Cole; Scott E Maxwell
Journal:  J Abnorm Psychol       Date:  2003-11

3.  Yes, but what's the mechanism? (don't expect an easy answer).

Authors:  John G Bullock; Donald P Green; Shang E Ha
Journal:  J Pers Soc Psychol       Date:  2010-04

4.  Identifiability and exchangeability for direct and indirect effects.

Authors:  J M Robins; S Greenland
Journal:  Epidemiology       Date:  1992-03       Impact factor: 4.822

5.  Bias in cross-sectional analyses of longitudinal mediation.

Authors:  Scott E Maxwell; David A Cole
Journal:  Psychol Methods       Date:  2007-03

6.  Distribution of the product confidence limits for the indirect effect: program PRODCLIN.

Authors:  David P MacKinnon; Matthew S Fritz; Jason Williams; Chondra M Lockwood
Journal:  Behav Res Methods       Date:  2007-08

7.  Confidence Limits for the Indirect Effect: Distribution of the Product and Resampling Methods.

Authors:  David P Mackinnon; Chondra M Lockwood; Jason Williams
Journal:  Multivariate Behav Res       Date:  2004-01-01       Impact factor: 5.923

8.  Comparing models of change to estimate the mediated effect in the pretest-posttest control group design.

Authors:  Matthew J Valente; David P MacKinnon
Journal:  Struct Equ Modeling       Date:  2017-02-08       Impact factor: 6.125

9.  Personalized mailed feedback for college drinking prevention: a randomized clinical trial.

Authors:  Mary E Larimer; Christine M Lee; Jason R Kilmer; Patricia M Fabiano; Christopher B Stark; Irene M Geisner; Kimberly A Mallett; Ty W Lostutter; Jessica M Cronce; Maggie Feeney; Clayton Neighbors
Journal:  J Consult Clin Psychol       Date:  2007-04

10.  POWER ANALYSIS FOR COMPLEX MEDIATIONAL DESIGNS USING MONTE CARLO METHODS.

Authors:  Felix Thoemmes; David P Mackinnon; Mark R Reiser
Journal:  Struct Equ Modeling       Date:  2010       Impact factor: 6.125

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