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Over the last decade dramatic advances have been made in both the technology and data available to better understand the multifactorial influences on child and adolescent health and development. This paper seeks to clarify methods that can be used to link information from health, education, social care and research datasets. Linking these different types of data can facilitate epidemiological research that investigates mental health from the population to the patient; enabling advanced analytics to better identify, conceptualise and address child and adolescent needs. The majority of adolescent mental health research is not able to maximise the full potential of data linkage, primarily due to four key challenges: confidentiality, sampling, matching and scalability. By presenting five existing and proposed models for linking adolescent data in relation to these challenges, this paper aims to facilitate the clinical benefits that will be derived from effective integration of available data in understanding, preventing and treating mental disorders.

Original publication

DOI

10.1136/ebmental-2019-300140

Type

Journal article

Journal

Evid Based Ment Health

Publication Date

02/2020

Volume

23

Pages

39 - 44

Keywords

child & adolescent psychiatry, depression & mood disorders, Adolescent, Biomedical Research, Child, Datasets as Topic, Humans, Information Storage and Retrieval, Mental Health, United Kingdom