Literature DB >> 26048622

The diffusion tensor imaging (DTI) component of the NIH MRI study of normal brain development (PedsDTI).

Lindsay Walker1, Lin-Ching Chang1, Amritha Nayak1, M Okan Irfanoglu1, Kelly N Botteron2, James McCracken3, Robert C McKinstry4, Michael J Rivkin5, Dah-Jyuu Wang6, Judith Rumsey7, Carlo Pierpaoli8.   

Abstract

The NIH MRI Study of normal brain development sought to characterize typical brain development in a population of infants, toddlers, children and adolescents/young adults, covering the socio-economic and ethnic diversity of the population of the United States. The study began in 1999 with data collection commencing in 2001 and concluding in 2007. The study was designed with the final goal of providing a controlled-access database; open to qualified researchers and clinicians, which could serve as a powerful tool for elucidating typical brain development and identifying deviations associated with brain-based disorders and diseases, and as a resource for developing computational methods and image processing tools. This paper focuses on the DTI component of the NIH MRI study of normal brain development. In this work, we describe the DTI data acquisition protocols, data processing steps, quality assessment procedures, and data included in the database, along with database access requirements. For more details, visit http://www.pediatricmri.nih.gov. This longitudinal DTI dataset includes raw and processed diffusion data from 498 low resolution (3 mm) DTI datasets from 274 unique subjects, and 193 high resolution (2.5 mm) DTI datasets from 152 unique subjects. Subjects range in age from 10 days (from date of birth) through 22 years. Additionally, a set of age-specific DTI templates are included. This forms one component of the larger NIH MRI study of normal brain development which also includes T1-, T2-, proton density-weighted, and proton magnetic resonance spectroscopy (MRS) imaging data, and demographic, clinical and behavioral data. Published by Elsevier Inc.

Entities:  

Keywords:  DTI; Database; Diffusion; Longitudinal; MRI; Multicenter; NIH; Pediatric

Mesh:

Year:  2015        PMID: 26048622      PMCID: PMC6805138          DOI: 10.1016/j.neuroimage.2015.05.083

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  15 in total

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4.  Phase Image Texture Analysis for Motion Detection in Diffusion MRI (PITA-MDD).

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8.  A protocol for the analysis of DTI data collected from young children.

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9.  Neuroimaging young children and associations with neurocognitive development in a South African birth cohort study.

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10.  In vivo human whole-brain Connectom diffusion MRI dataset at 760 µm isotropic resolution.

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