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Utilising linked administrative data to model the impact of stacked early childhood interventions on developmental inequities

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posted on 2025-09-04, 11:38 authored by Sarah Gray, Sharon Goldfeld, Marnie Downes, Shuaijun Guo, Margarita Moreno-Betancur, Meredith O'Connor, Cindy Pham, Alannah Rudkin, Elodie O'Connor, Fran AzpitarteFran Azpitarte, Hannah Badland, Naomi Priest, Gerry Redmond, Susan Woolfenden, Katrina Williams
ObjectiveTo demonstrate how linked administrative data can be utilised to examine the extent to which stacking multiple policy-relevant hypothetical interventions across early childhood could potentially reduce socioeconomic inequities in children’s developmental outcomes at school entry. MethodsWe used longitudinal linked administrative data from 274,123 Australian children born between January 2012-July 2013 and who participated in the 2018 Australian Early Development Census (AEDC) in their first year of formal schooling. Causal mediation analysis using an interventional effects approach was used to estimate the impact of hypothetical interventions aimed at reducing socioeconomic inequities in five intervention targets over early childhood: household income (1-2 years), home reading (2-3 years), household crowding (3-4 years), child mental health (4-5 years), and preschool attendance (4-5 years). Poor child development was measured by teacher-reported vulnerability on one or more developmental domains of the AEDC. ResultsThe analytic sample included 172,615 children (87,179 male [50.5%]) with complete data. One-sixth exhibited poor development at school entry. Children who were socioeconomically disadvantaged in infancy (bottom 25th percentile on a composite of household income, parent education, and occupation) had a higher risk of poor developmental outcomes compared to peers: absolute risk difference = 8.7% (95% CI, 8.2% to 9.1%). Intervening to reduce inequities in all five intervention targets simultaneously resulted in a 5.6% (95% CI, 5.2% to 5.9%) absolute reduction in the risk of poor developmental outcomes. Among separate interventions, the largest absolute reduction was for home reading (4.5%, 95% CI, 4.3% to 4.8%), followed by child mental health (0.6%, 95% CI, 0.5% to 0.8%) and preschool attendance (0.2%, 95% CI, 0.2% to 0.3%). ConclusionThis is the first study to apply causal methods to linked administrative data for evaluating multisectoral early childhood interventions. Combining interventions reduces socioeconomic inequities in child development more than individual approaches. We show how such data can address causal policy questions otherwise infeasible, unethical, or impractical to test in trials.<p></p>

History

School

  • Social Sciences and Humanities

Department

  • Criminology, Sociology and Social Policy

Published in

International Journal of Population Data Science

Volume

10

Issue

4

Publisher

Swansea University

Version

  • VoR (Version of Record)

Rights holder

© The Authors

Publisher statement

Open Access under CC BY 4.0 (https://creativecommons.org/licenses/by/4.0/deed.en)

Copyright date

2025

Notes

Conference Proceedings for ADR UK Conference 2025

eISSN

2399-4908

Language

  • en

Depositor

Dr Fran Azpitarte. Deposit date: 3 September 2025

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