DOAJ Open Access 2025

Mother and Infant Research Electronic Data Analysis (MIREDA): Creating a Common Data Model for Federated Analysis to Inform Policy for Improvement in Maternal and Child Outcomes.

Michael Seaborne Hope Jones Neil Cockburn Stevo Durbaba Amy Hough +12 lainnya

Abstrak

Objective MIREDA aims to provide a harmonized UK-wide resource of restructured, routinely collected anonymised data from multiple birth cohorts using the OMOP Common Data Model (CDM). It will enable analyses across sites without sharing sensitive data and produce real-world evidence to support interventions and policies that improve maternal and infant outcomes. Methods MIREDA harmonizes data from five UK birth cohorts by identifying and compiling common data within each Trusted Research Environment (TRE). The data is cleaned and assessed using summary reports before being mapped to a common format through a mix of automated and manual steps. Transformation rules are applied to standardize the data while ensuring privacy, as no raw data leaves the TREs. Analyses are conducted separately within each TRE using the same methods, with strict checks and validations before securely federating the results. Results Preliminary findings reveal significant regional variations in preterm birth rates and school attainment, alongside differing exposure risks such as smoking rates, maternal age, ethnicity, and multimorbidity. By stratifying populations with similar exposure risks but residing in different regions, the dataset enables natural experiment methods to evaluate the impact of local policies and interventions. Early results demonstrate how harmonized data can reveal disparities in crude versus standardized prevalence rates and provide case studies highlighting the effectiveness of local interventions in improving maternal and child outcomes. Conclusion The OMOP CDM provides a scalable, internationally accepted framework for data harmonisation. MIREDA will expand this to include non-healthcare data, such as education and health visitor records, and foster international collaborations. This initiative will help policymakers identify effective interventions to improve maternal and infant outcomes across the UK and beyond.

Penulis (17)

M

Michael Seaborne

H

Hope Jones

N

Neil Cockburn

S

Stevo Durbaba

A

Amy Hough

D

Dan Mason

C

Carlos Sánchez-Soriano

C

Chris Orton

A

Armando Méndez-Villalón

T

Tom Giles

D

David Ford

P

Philip Quinlan

K

Krish Nirantharakumar

L

Lucilla Poston

R

Rebecca Reynolds

G

Gillian Santorelli

S

Sinead Brophy

Format Sitasi

Seaborne, M., Jones, H., Cockburn, N., Durbaba, S., Hough, A., Mason, D. et al. (2025). Mother and Infant Research Electronic Data Analysis (MIREDA): Creating a Common Data Model for Federated Analysis to Inform Policy for Improvement in Maternal and Child Outcomes.. https://doi.org/10.23889/ijpds.v10i3.3022

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Informasi Jurnal
Tahun Terbit
2025
Sumber Database
DOAJ
DOI
10.23889/ijpds.v10i3.3022
Akses
Open Access ✓