Theoretical work on how contextual environments affect health outcomes has long stressed the importance of interactive effects: contexts are often expected to affect individuals differently. In fact, risk for poor developmental outcomes is often conceived of as an interaction - risk factors may have negative effects only for those experiencing high levels of stress or multiple risk factors. Research examining these interactions, however, has typically been limited to studying simple bivariate interactions. The purpose of this study is to develop and demonstrate the utility of a new statistical tool, random effect regression mixture models, to further the study of risk in context. These models work by identifying latent classes of individuals who are differentially affected by their contexts and then provide the tools to understand what differentiates these children. The study will evaluate the conditions under which valid inferences can be made using these models and then demonstrates their use to assess differential effects of stressful life events. These models will then be further developed to allow their use with multilevel data through the inclusion of random effects. Monte Carlo simulations will be conducted to evaluate the utility of the models in conjunction with analyses conducted on a large sample of high-risk children to demonstrate the utility of the models with real data. The results will focus on demonstrating the validity of this model when used to study how developmental contexts affect children differently. In a final set of analyses multilevel random effects models will be applied to data from a second study to assess the effects of stressful life events on the development of depression. This application is important for providing evidence that previous results are not situation specific. Further, as the second study was designed to look at complex context by risk interactions this application should demonstrate the power of these models as a tool for answering real world reseach questions. ? ? ?

Agency
National Institute of Health (NIH)
Institute
Eunice Kennedy Shriver National Institute of Child Health & Human Development (NICHD)
Type
Research Project (R01)
Project #
1R01HD054736-01A1
Application #
7320069
Study Section
Psychosocial Development, Risk and Prevention Study Section (PDRP)
Program Officer
Spittel, Michael
Project Start
2007-08-22
Project End
2010-07-31
Budget Start
2007-08-22
Budget End
2008-07-31
Support Year
1
Fiscal Year
2007
Total Cost
$117,262
Indirect Cost
Name
University of South Carolina at Columbia
Department
Psychology
Type
Schools of Arts and Sciences
DUNS #
041387846
City
Columbia
State
SC
Country
United States
Zip Code
29208
Jaki, Thomas; Su, Ting-Li; Kim, Minjung et al. (2018) An evaluation of the bootstrap for model validation in mixture models. Commun Stat Simul Comput 47:1028-1038
Lamont, Andrea E; Vermunt, Jeroen K; Van Horn, M Lee (2016) Regression Mixture Models: Does Modeling the Covariance Between Independent Variables and Latent Classes Improve the Results? Multivariate Behav Res 51:35-52
Kim, Minjung; Lamont, Andrea E; Jaki, Thomas et al. (2016) Impact of an equality constraint on the class-specific residual variances in regression mixtures: A Monte Carlo simulation study. Behav Res Methods 48:813-26
Van Horn, M Lee; Feng, Yuling; Kim, Minjung et al. (2016) Using Multilevel Regression Mixture Models to Identify Level-1 Heterogeneity in Level-2 Effects. Struct Equ Modeling 23:259-269
Van Horn, M Lee; Jaki, Thomas; Masyn, Katherine et al. (2015) Evaluating differential effects using regression interactions and regression mixture models. Educ Psychol Meas 75:677-714
Fagan, Abigail A; Van Horn, M Lee; Hawkins, J David et al. (2013) Differential Effects of Parental Controls on Adolescent Substance Use: For Whom Is the Family Most Important? J Quant Criminol 29:347-368
George, Melissa R W; Yang, Na; Jaki, Thomas et al. (2013) Finite Mixtures for Simultaneously Modelling Differential Effects and Non-Normal Distributions. Multivariate Behav Res 48:816-844
George, Melissa R W; Yang, Na; Van Horn, M Lee et al. (2013) Using regression mixture models with non-normal data: Examining an ordered polytomous approach. J Stat Comput Simul 83:757-770
Lee Van Horn, M; Smith, Jessalyn; Fagan, Abigail A et al. (2012) Not quite normal: Consequences of violating the assumption of normality in regression mixture models. Struct Equ Modeling 19:227-249
Wetter, Emily K; Hankin, Benjamin L (2009) Mediational pathways through which positive and negative emotionality contribute to anhedonic symptoms of depression: a prospective study of adolescents. J Abnorm Child Psychol 37:507-20

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