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Case identification of non-traumatic brain injury in youth using linked population data.


ABSTRACT:

Background

Population-level administrative data provides a cost-effective means of monitoring health outcomes and service needs of clinical populations. This study aimed to present a method for case identification of non-traumatic brain injury in population-level data and to examine the association with sociodemographic factors.

Methods

An estimated resident population of youth aged 0-24 years was constructed using population-level datasets within the New Zealand Integrated Data Infrastructure. A clinical consensus committee reviewed the International Classification of Diseases Ninth and Tenth Editions codes and Read codes for inclusion in a case definition. Cases were those with at least one non-traumatic brain injury code present in the five years up until 30 June 2018 in one of four databases in the Integrated Data Infrastructure. Rates of non-traumatic brain injury were examined, both including and excluding birth injury codes and across age, sex, ethnicity, and socioeconomic deprivation groups.

Results

Of the 1 579 089 youth aged 0-24 years on 30 June 2018, 8154 (0.52%) were identified as having one of the brain injury codes in the five-years to 30 June 2018. Rates of non-traumatic brain injury were higher in males, children aged 0-4 years, Māori and Pacific young people, and youth living with high levels of social deprivation.

Conclusion

This study presents a comprehensive method for case identification of non-traumatic brain injury using national population-level administrative data.

SUBMITTER: Slykerman RF 

PROVIDER: S-EPMC10908152 | biostudies-literature | 2024 Mar

REPOSITORIES: biostudies-literature

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Publications

Case identification of non-traumatic brain injury in youth using linked population data.

Slykerman Rebecca F RF   Clasby Betony E BE   Chong Jimmy J   Edward Kathryn K   Milne Barry J BJ   Temperton Helen H   Thabrew Hiran H   Bowden Nicholas N  

BMC neurology 20240302 1


<h4>Background</h4>Population-level administrative data provides a cost-effective means of monitoring health outcomes and service needs of clinical populations. This study aimed to present a method for case identification of non-traumatic brain injury in population-level data and to examine the association with sociodemographic factors.<h4>Methods</h4>An estimated resident population of youth aged 0-24 years was constructed using population-level datasets within the New Zealand Integrated Data I  ...[more]

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