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Lifetime Residential History Collection and Processing for Environmental Data Linkages in the ABCD Study

HEALTH & PLACE(2024)

Univ Calif San Diego

Cited 0|Views14
Abstract
By using geospatial information such as participants’ residential history along with external datasets of environmental exposures, ongoing studies can enrich their cohorts to investigate the role of the environment on brain-behavior health outcomes. However, challenges may arise if clear guidance and key quality control steps are not taken at the outset of data collection of residential information. Here, we detail the protocol development aimed at improving the collection of lifetime residential address information from the Adolescent Brain Cognitive Development (ABCD) Study. This protocol generates a workflow for minimizing gaps in residential information, improving data collection processes, and reducing misclassification error in exposure estimates.
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Key words
Lifetime addresses,Residential history,ABCD study,Environment,Geospatial data
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