Literature DB >> 27082751

Risk of re-report: A latent class analysis of infants reported for maltreatment.

Andrea Lane Eastman1, Michael N Mitchell2, Emily Putnam-Hornstein2.   

Abstract

A key challenge facing child protective services (CPS) is identifying children who are at greatest risk of future maltreatment. This analysis examined a cohort of children with a first report to CPS during infancy, a vulnerable population at high risk of future CPS reports. Birth records of all infants born in California in 2006 were linked to CPS records; 23,871 infants remaining in the home following an initial report were followed for 5 years to determine if another maltreatment report occurred. Latent class analysis (LCA) was used to identify subpopulations of infants based on varying risks of re-report. LCA model fit was examined using the Bayesian information criterion, a likelihood ratio test, and entropy. Statistical indicators and interpretability suggested the four-class model best fit the data. A second LCA included infant re-report as a distal outcome to examine the association between class membership and the likelihood of re-report. In Class 1 and Class 2 (lowest risk), the probability of a re-report was 44%; in contrast, the probability in Class 4 (highest risk) was 78%. Two birth characteristics clustered in the medium- and highest-risk classes: lack of established paternity and delayed or absent prenatal care. Two risk factors from the initial report of maltreatment emerged as predictors of re-report in the highest-risk class: an initial allegation of neglect and a family history of CPS involvement involving older siblings. Findings suggest that statistical techniques can be used to identify families with a heightened risk of experiencing later CPS contact.
Copyright © 2016 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Child maltreatment; Childhood adversity; Infant vulnerability; Latent class analysis; Recurrence

Mesh:

Year:  2016        PMID: 27082751     DOI: 10.1016/j.chiabu.2016.03.002

Source DB:  PubMed          Journal:  Child Abuse Negl        ISSN: 0145-2134


  4 in total

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2.  The Children's Data Network: Harnessing the scientific potential of linked administrative data to inform children's programs and policies.

Authors:  Regan Foust; Jonathan Hoonhout; Lane Eastman Andrea; John Prindle; Rebecca Rebbe; Huy Nghiem; Himal Suthar; Stephanie Cuccaro-Alamin; Michael Mitchell; William Dawson; Lindsey Palmer; Siddharth Raj; Eunhye Ahn; Ivy Hammond; Claire McNellan; Julia Reddy; Wan-Ting Chen; Kamilah Mayfield; Emily Putnam-Hornstein; Jacquelyn McCroskey
Journal:  Int J Popul Data Sci       Date:  2022-03-21

3.  Characterizing newborn and older infant entries into care in England between 2006 and 2014.

Authors:  Rachel J Pearson; Matthew A Jay; Melissa O'Donnell; Linda Wijlaars; Ruth Gilbert
Journal:  Child Abuse Negl       Date:  2020-10-11

4.  Risk of Future Maltreatment: Examining Whether Worker Characteristics Predict Their Perception.

Authors:  Kristen Lwin; Joanne Filippelli; Barbara Fallon; Jason King; Nico Trocmé
Journal:  Child Maltreat       Date:  2021-07-26
  4 in total

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