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Structural brain development: a review of methodological approaches and best practices

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journal contribution
posted on 2024-06-05, 02:33 authored by Nandi VijayakumarNandi Vijayakumar, KL Mills, A Alexander-Bloch, CK Tamnes, S Whittle
© 2017 The Authors Continued advances in neuroimaging technologies and statistical modelling capabilities have improved our knowledge of structural brain development in children and adolescents. While this has provided an increasingly nuanced understanding of brain development, the field is still plagued by inconsistent findings. This review highlights the methodological diversity in existing longitudinal magnetic resonance imaging (MRI) studies on structural brain development during childhood and adolescence, and addresses how such variation might contribute to inconsistencies in the literature. We discuss the impact of method choices at multiple decision points across the research process, from study design and sample selection, to image processing and statistical analysis. We also highlight the extent to which different methodological considerations have been empirically examined, drawing attention to specific areas that would benefit from future investigation. Where appropriate, we recommend certain best practices that would be beneficial for the field to adopt, including greater completeness and transparency in reporting methods, in order to ultimately develop an accurate and detailed understanding of normative child and adolescent brain development.

History

Journal

Developmental cognitive neuroscience

Volume

33

Pagination

129-148

Location

Amsterdam, The Netherlands

Open access

  • Yes

ISSN

1878-9293

eISSN

1878-9307

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2017, The Authors

Publisher

Elsevier

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