Clinical Advisors Committee - 1.April.2011 Agenda:

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Presentation transcript:

“A Knowledge Environment for Neuroimaging in Child Psychiatry” R01 MH083320 Clinical Advisors Committee - 1.April.2011 Agenda: Review of CANDIShare grant Objectives Review of current status of data release (www.nitrc.org/projects/candi_share) Brief overview of planned releases Discussion of: Usability, advertising, extensions, etc. Other discussion? Adjourn

CANDIShare - Aims 1R01 MH083320 Aims: Aim 1: Use the existing resources NITRC to make a large set of MR image and anatomic analysis data available. This will include: a. Image data - including structural and diffusion imaging at 1.5 and 3.0 T. Each subject will include a comprehensive set of clinical, demographic and behavioral measures. b. Segmentation – the segmentation results for ‘general segmentation’ and parcellation (cortical and white matter). c. Creation and dissemination of static and dynamic probabilistic atlases from specific subsets of these data for use in other segmentation and analysis frameworks. Aim 2: Integrate the volumetric data derived from these images into the Internet Brain Volume Database (IBVD), and use the IBVD system to catalogue the representative literature of other published data from these similar age and diagnostic categories of study. Aim 3: Create the prototype for a unified Child Psychiatry Neuroimaging Portal that seamlessly integrates information across these resources and to select outside resources (PubMed, BIRN, MRI Study of Normal Brain Development, etc.). Promote the overall framework as a prototype to engender greater sharing of information within the child psychiatric community 1R01 MH083320

CANDIShare - Data 1R01 MH083320

CANDIShare - NITRC http://www.nitrc.org/projects/candi_share 1R01 MH083320

CANDIShare - Release 1R01 MH083320

CANDIShare - rel notes 1R01 MH083320

CANDIShare - Release 1R01 MH083320

CANDIShare - IBVD 1R01 MH083320

CANDIShare - IBVD 1R01 MH083320

CANDIShare - dir 1R01 MH083320

CANDIShare - otl/nii .otl 1R01 MH083320 nii.gz

CANDIShare - otl/nii 1R01 MH083320

CANDIShare - otl/nii 1R01 MH083320

CANDIShare - future Brief overview of planned releases Segmentation * (any moment now) Behavioral/clinical measures KSADS, Tanner, SES, MRS, GAF, meds Parcellation Diffusion Longitudinal cohort More subjects 1R01 MH083320

CANDIShare - discussion Discussion of: Usability, advertising, extensions, etc. Neuroinformatics Data News Item etc. Other discussion? ‘Proper Image Database (i.e. XNAT_Central) Adjourn 1R01 MH083320