The First International Imaging Genetics Conference was held January 17 and 18, 2005.
To assess the state of the art in the various established fields of genetics and imaging, and to facilitate the transdisciplinary fusion needed to optimize the development of the emerging field of Imaging Genetics.
Step 1. Core 3-2 will develop operational criteria and guidelines for differentiation of areas and subareas.
Step 2. Core 3-2 will develop 10 training sets in which areas and subareas of BA 9 and 46 have been differentiated as a rule–based averaged functional anatomical unit applied to individual subjects.
Needs to be applied to UCI 28 by Tannenbaum
Gliches in Freesurfer, Slicer must be overcome and features added eg subcortical white matter segmentation for tractography
Extend to visualization (Falko Kuester)
Supplement Slicer with multiple segmentation programs in addition to Freesurfer
Anatomical Accuracy
Specified Operational Plan
Step 3. Core 1 will develop algorithms and methods for defining areas based on the training dataset.
Step 4. Iterations of Steps 1 through 3 will perfect and validate the various methods for defining areas.
Step 5. The area identification methods will be implemented by Core 3.
Identified 80 ROIs Relevant to DBP of Schizophrenia
Circuitry Analysis
Specified Operational Plan
Step 1. Core 3-2 will collaborate with Core 2 to implement algorithms for structural equation modeling, and the canonical variate analysis.
Fallon & Kilpatrick, piloted but as a first step need to better quantify and automate ROI based on literature, Knowledge Based Learning as a general tool.
Step 2. Core 3-2 will use step 1 software to test Core 3-2 hypotheses.
Step 3. Core 3-2 in collaboration with Core 2 will extend the canonical variate analysis methods of Step 1 to determine images that distinguish among tasks, clinical symptoms, and cognitive performance.
Step 4. Core 3-2 and Core 1 will collaborate to integrate canonical variate analyses with machine learning approaches for detecting circuitry.
Genetic Analysis in Combination with Imaging Data
Specified Operational Plan
Step 1. Core 3 will type multiple genetic markers at selected genes relevant to schizophrenia and brain structure.
Step 2. Core 2 will extend Toronto “in-house” Phase v2.0 software for measuring two gene-gene interactions to multiple genes and make the software more user friendly to neuroscience and genetic researchers in general.
Step 3. Core 3-2 will determine linkage disequilibrium structure on the genetic data using specific programs such as Haploview, GOLD, and 2LD and construct haplotypes.
Genetic Analysis in Combination with Imaging Data
Specified Operational Plan (cont.)
Step 4. Core 3-2 will complete genetic analyses on the haplotypes developed, identified by the Core 3-2 software in Step 3, and test for gene-gene interaction using refinement of Toronto Phase v2.0 software from Step 2.
Step 5. Core 3-2 will collaborate with Core 1 to develop methods for combining genetic and imaging data using machine learning technologies and Bayesian hierarchical modeling.
Step 6. Iterations of Step 5 will develop predictive models and suggest hypotheses.
Molecular Genetic Approach
Cytoarchitectural abnormalities
Will the Brain Derived Neurotrophic Factor (BDNF) Gene Predict Grey Matter Volume?