Biases arising from linked administrative data for epidemiological research: a conceptual framework from registration to analyses.

Richard J Shaw ORCID logo; Katie L Harron ORCID logo; Julia M Pescarini ORCID logo; Elzo Pereira Pinto Junior ORCID logo; Mirjam Allik ORCID logo; Andressa N Siroky ORCID logo; Desmond Campbell ORCID logo; Ruth Dundas ORCID logo; Maria Yury Ichihara ORCID logo; Alastair H Leyland ORCID logo; +2 more... Mauricio L Barreto ORCID logo; Srinivasa Vittal Katikireddi ORCID logo; (2022) Biases arising from linked administrative data for epidemiological research: a conceptual framework from registration to analyses. European journal of epidemiology, 37 (12). pp. 1215-1224. ISSN 0393-2990 DOI: 10.1007/s10654-022-00934-w
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Linked administrative data offer a rich source of information that can be harnessed to describe patterns of disease, understand their causes and evaluate interventions. However, administrative data are primarily collected for operational reasons such as recording vital events for legal purposes, and planning, provision and monitoring of services. The processes involved in generating and linking administrative datasets may generate sources of bias that are often not adequately considered by researchers. We provide a framework describing these biases, drawing on our experiences of using the 100 Million Brazilian Cohort (100MCohort) which contains records of more than 131 million people whose families applied for social assistance between 2001 and 2018. Datasets for epidemiological research were derived by linking the 100MCohort to health-related databases such as the Mortality Information System and the Hospital Information System. Using the framework, we demonstrate how selection and misclassification biases may be introduced in three different stages: registering and recording of people's life events and use of services, linkage across administrative databases, and cleaning and coding of variables from derived datasets. Finally, we suggest eight recommendations which may reduce biases when analysing data from administrative sources.


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