Training:Tractography.Validation

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A new initiative has begun in response to a shared vision among Cores 1, 3 and 5 that the field of medical image analysis would be well served by work in the area of validation, calibration and assessment of reliability. This vision was also articulated by our External Advisory Committee (add link) who recommended that this work be added to the NAMIC mission. A thorough and lively discussion of this topic was held during the 2006 All Hands Meeting (add link). Discussions have continued among our participants since then and as a result a plan for the initial work on this front has been articulated. This page will serve as the coordinating site for this effort which we expect to evolve with time.

There are many outstanding questions in this domain that we agree are interesting and worth considering such as:

  1. What benchmarks should be used to assess performance of a NAMIC Toolkit algorithm?
  2. How can we assess the performance of an algorithm if we have no access to the ground truth of what it is measuring (e.g. the white matter of the brain with tractography)?
  3. What statistical methods are most appropriate for quanitfying and testing significance of these assessments?


The answers to these questions will vary depending on the specific algorithm and its application. The group agree that the best way to proceed was to chose one very specific example that is highly relevant to the NAMIC work to date and focus efforts on that. The methods that arise from this can then be applied to additional areas.

We agreed to begin by studying the results obtained by applying each of the tractography tools to a single dataset and then gathering to present the results to one another and discuss how best to quantify the similarities and differences.

Details:

  • Data sets to be provided by Marek Kubicki (put link to descriptor page and download instructions here). N= 5 or 10 or 15 (TBD) each schizophrenic and healthy subjects that are de-identified and not marked as to diagnosis. Each subject will have a 3T high resolution DTI scan, mMRI scan and expert generated Regions of Interest (ROIs) for each subject that are needed for tract definition (put link to acquisition parameter details here). Hopefully this will be done within the next week or two.
  • The tracts to be studied are the cingulum bundle, the uncinate fasiculus, and teh arcuate fasiculus on the left and right sides. (Link to the definition of the tracts to be put here- Randy or Marek). This list of tracts is open for further discussion but needs to be completed soon- hopefully within the next week or two.
  • Each tool developer is responsible for downloading and analyzing the data, optimizing their own algorithm as needed. Keep careful notes on your final processing methods as you will need to teach them to Sonia Pujol who will repeat the analysis independently using all the tools herself for the data to be included in a summary manuscript.
  • Metrics to be collected need to be finalized by this group, but suggestions include measure of FA along the tract, size and/or volume of tract, spatial localization of tract, measure of connectivity. Perhaps also some way to look at group results towards the goal of being able to make statements about differences in health and disease? Please write in more suggestions and detailed methods here.
  • Particiipating algorithms (and tester) include:
  1. fiber tracking the UNC way (Guido Gerig or his designee)
  2. Slicer tract tool (Ron Kikinis to designate)
  3. POI tool (Bruce Fischl/Dennis Jen)
  4. Volumetric connectivity (Ross Whitaker or
  5. Fisler (Allen Tannenbaum or
  6. Medinrea (PF Filliard)
  7. GTRACT (Vince Magnotta)
  8. Cluster tool (? Lauren O'Donnell) may not be appropriate for this



  • Collaboration between Cores 1, 3 and 5.
  • Leadership by Randy Gollub, Ross Whitaker and Guido Gerig
  • Powered by Sonia Pujol
  • Made relvant by Marek Kubicki

Contributors include