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Journal Article

Citation

Kim H, Drake B, Jonson-Reid M. Child Abuse Negl. 2020; 104: e104467.

Affiliation

Brown School of Social Work, Washington University in St. Louis, Saint Louis, MO, United States.

Copyright

(Copyright © 2020, Elsevier Publishing)

DOI

10.1016/j.chiabu.2020.104467

PMID

32247069

Abstract

BACKGROUND: Child maltreatment reports (CMR) are both common and strongly associated with various negative outcomes.

OBJECTIVE: To examine CMR risks by child age, early childhood context, current/cumulative economic status (welfare receipt), race, and other risk factors with a longitudinal dataset. PARTICIPANTS AND SETTING: The CAN sample included 2,111 children having a CMR ≤ age 3, suggestive of a harmful early childhood context. The AFDC sample included 1,923 children having AFDC but no CMR ≤ age 3, suggestive of early childhood protective factors despite poverty.

METHODS: We estimated the CMR likelihood at each age from 1-17 years based on various risk factors while following up children from 1995-2009.

RESULTS: During follow-up, CMR likelihoods were substantially higher for the CAN sample than for the AFDC sample. The age-CMR relationship was strongly negative for the CAN sample (OR = 0.87, 95% CI = 0.86-0.88). This relationship was weaker for the AFDC sample (OR = 0.92, 0.89-0.95) and became non-significant for children who exited welfare. Current welfare receipt remained a strong predictor of CMR likelihoods for both CAN (OR = 2.32, 1.98-2.71) and AFDC (OR = 2.08, 1.61-2.68) samples. Prior welfare receipt moderately increased CMR likelihoods among those not currently on welfare. Controlling for other risk factors, White children had the highest likelihood of CMR. Other child and parent level vulnerabilities also increased CMR risk over time.

CONCLUSIONS: This study highlights the importance of longitudinal analytic approaches and the utility of cross-sector administrative data in improving our ability to understand and predict CMRs over time.

Copyright © 2020 Elsevier Ltd. All rights reserved.


Language: en

Keywords

Administrative data analysis; Child abuse; Child maltreatment; Child protective services; Multilevel growth curve model

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