Discovering dense and consistent landmarks in the brain

  • Authors:
  • Dajiang Zhu;Degang Zhang;Carlos Faraco;Kaiming Li;Fan Deng;Hanbo Chen;Xi Jiang;Lei Guo;L. Stephen Miller;Tianming Liu

  • Affiliations:
  • University of Georgia, Dept. of Computer Science, Athens, GA;University of Georgia, Dept. of Computer Science, Athens, GA and Northwestern Polytechnical University, Shaanxi, China;University of Georgia, Biomedical Health Sciences Inst., Athens, GA and University of Georgia, BioImaging Research Center, Athens, GA;University of Georgia, Dept. of Computer Science, Athens, GA and Northwestern Polytechnical University, Shaanxi, China;University of Georgia, Dept. of Computer Science, Athens, GA;University of Georgia, Dept. of Computer Science, Athens, GA;University of Georgia, Dept. of Computer Science, Athens, GA;Northwestern Polytechnical University, Shaanxi, China;University of Georgia, BioImaging Research Center, Athens, GA and University of Georgia, Dept. of Psychology, Athens, GA;University of Georgia, Dept. of Computer Science, Athens, GA and University of Georgia, BioImaging Research Center, Athens, GA

  • Venue:
  • IPMI'11 Proceedings of the 22nd international conference on Information processing in medical imaging
  • Year:
  • 2011

Quantified Score

Hi-index 0.02

Visualization

Abstract

The lack of consistent and reliable functionally meaningful landmarks in the brain has significantly hampered the advancement of brain imaging studies. In this paper, we use white matter fiber connectivity patterns, obtained from diffusion tensor imaging (DTI) data, as predictors of brain function, and to discover a dense, reliable and consistent map of brain landmarks within and across individuals. The general principles and our strategies are as follows. 1) Each brain landmark should have consistent structural fiber connectivity pattern across a group of subjects. We will quantitatively measure the similarity of the fiber bundles emanating from the corresponding landmarks via a novel trace-map approach, and then optimize the locations of these landmarks by maximizing the group-wise consistency of the shape patterns of emanating fiber bundles. 2) The landmark map should be dense and distributed all over major functional brain regions. We will initialize a dense and regular grid map of approximately 2000 landmarks that cover the whole brains in different subjects via linear brain image registration. 3) The dense map of brain landmarks should be reproducible and predictable in different datasets of various subject populations. The approaches and results in the above two steps are evaluated and validated via reproducibility studies. The dense map of brain landmarks can be reliably and accurately replicated in a new DTI dataset such that the landmark map can be used as a predictive model. Our experiments show promising results, and a subset of the discovered landmarks are validated via task-based fMRI.