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Modeling multiple risks during infancy to predict quality of the caregiving environment: Contributions of a person-centered approach

Authors :
Stephanie T, Lanza
Brittany L, Rhoades
Mark T, Greenberg
Martha, Cox
Mike, Willoughby
Source :
Infant Behavior and Development. 34:390-406
Publication Year :
2011
Publisher :
Elsevier BV, 2011.

Abstract

The primary goal of this study was to compare several variable-centered and person-centered methods for modeling multiple risk factors during infancy to predict the quality of caregiving environments at six months of age. Nine risk factors related to family demographics and maternal psychosocial risk, assessed when children were two months old, were explored in the understudied population of children born in low-income, non-urban communities in Pennsylvania and North Carolina (N = 1047). These risk factors were (1) single (unpartnered) parent status, (2) marital status, (3) mother's age at first child birth, (4) maternal education, (5) maternal reading ability, (6) poverty status, (7) residential crowding, (8) prenatal smoking exposure, and (9) maternal depression. We compared conclusions drawn using a bivariate approach, multiple regression analysis, the cumulative risk index, and latent class analysis (LCA). The risk classes derived using LCA provided a more intuitive summary of how multiple risks were organized within individuals as compared to the other methods. The five risk classes were: married low-risk; married low-income; cohabiting multiproblem; single low-income; and single low-income/education. The LCA findings illustrated how the association between particular family configurations and the infants' caregiving environment quality varied across race and site. Discussion focuses on the value of person-centered models of analysis to understand complexities of prediction of multiple risk factors.

Details

ISSN :
01636383
Volume :
34
Database :
OpenAIRE
Journal :
Infant Behavior and Development
Accession number :
edsair.doi.dedup.....d673345c6d9a813d194e8b1490021a75
Full Text :
https://doi.org/10.1016/j.infbeh.2011.02.002