TY - JOUR
T1 - Using factorial mediation analysis to better understand the effects of interventions
AU - Strayhorn, Jillian C.
AU - Collins, Linda Marie
AU - Brick, Timothy R.
AU - Marchese, Sara H.
AU - Pfammatter, Angela Fidler
AU - Pellegrini, Christine
AU - Spring, Bonnie
N1 - Funding Information:
Support for Drs Collins, Pfammatter, Pellegrini, Spring and Marchese was provided in part by R01DK097364 (MPIs: Spring/Collins). Ms Strayhorn acknowledges support from F31DA052140; Dr Marchese acknowledges support from award number F31DK120151; Dr Collins acknowledges support from P50DA039838, P01CA180945, and P30DA011041; Dr Brick acknowledges support from the Penn State SSRI and from award number 1U24AA027684-01; Dr Spring acknowledges support from P30CA060553 and UL1TR001422. The content is solely the responsibility of the authors and does not necessarily represent the views of the National Institutes of Health.
Publisher Copyright:
© 2021 Society of Behavioral Medicine 2021. All rights reserved. For permissions, please e-mail: journals.permissions@oup.com.
PY - 2022/1/1
Y1 - 2022/1/1
N2 - To improve understanding of how interventions work or why they do not work, there is need for methods of testing hypotheses about the causal mechanisms underlying the individual and combined effects of the components that make up interventions. Factorial mediation analysis, i.e., mediation analysis applied to data from a factorial optimization trial, enables testing such hypotheses. In this commentary, we demonstrate how factorial mediation analysis can contribute detailed information about an intervention's causal mechanisms. We briefly review the multiphase optimization strategy (MOST) and the factorial experiment. We use an empirical example from a 25 factorial optimization trial to demonstrate how factorial mediation analysis opens possibilities for better understanding the individual and combined effects of intervention components. Factorial mediation analysis has important potential to advance theory about interventions and to inform intervention improvements.
AB - To improve understanding of how interventions work or why they do not work, there is need for methods of testing hypotheses about the causal mechanisms underlying the individual and combined effects of the components that make up interventions. Factorial mediation analysis, i.e., mediation analysis applied to data from a factorial optimization trial, enables testing such hypotheses. In this commentary, we demonstrate how factorial mediation analysis can contribute detailed information about an intervention's causal mechanisms. We briefly review the multiphase optimization strategy (MOST) and the factorial experiment. We use an empirical example from a 25 factorial optimization trial to demonstrate how factorial mediation analysis opens possibilities for better understanding the individual and combined effects of intervention components. Factorial mediation analysis has important potential to advance theory about interventions and to inform intervention improvements.
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U2 - 10.1093/tbm/ibab137
DO - 10.1093/tbm/ibab137
M3 - Article
C2 - 34698351
AN - SCOPUS:85123812631
SN - 1869-6716
VL - 12
SP - 84
EP - 89
JO - Translational Behavioral Medicine
JF - Translational Behavioral Medicine
IS - 1
ER -