אירועים
אירועים והרצאות בפקולטה למדעי המחשב ע"ש הנרי ומרילין טאוב
יום שני, 16.07.2007, 11:30
In this talk, I will present a novel approach to computational modeling of
spatial activation patterns observed through fMRI. Functional connectivity
analysis is widely used in fMRI studies for detection and analysis of large
networks that co-activate with a user-selected `seed' region of interest. In
contrast, our method is based on clustering; it simultaneously identifies
interesting seed time courses and associates voxels with the respective
networks. This generalization eliminates the sensitivity to the threshold used
to classify voxels as members of a network and enables discovery of
co-activated networks without user selection of seed regions.
Based on the empirical observation that the detected patterns of co-activation
are inherently hierarchical, we propose a new representation for spatial
patterns of functional organization. Just like the anatomical hierarchies
represent the structure of the brain as a tree of increasingly simple systems,
we believe that the functional description of the brain should also be of a
hierarchical nature. We introduce Functional Hierarchy, a top-down
representation that encapsulates the notion that functionally defined regions
should be viewed at different resolutions, as dictated by the observed
activation pattern. We construct the functional hierarchy through an iterative
decomposition that utilizes clustering for network subdivision at each step.
The experimental results demonstrate that the functional region hierarchy
provides a robust and anatomically meaningful model for spatial patterns of
co-activation in fMRI. The hierarchical representation leads to insights into
the structure of the functional networks that are not immediately apparent from
flat representations that segment the brain into a large number of small
regions. In addition, subject-specific region hierarchies tend to share common
tree structure, further confirming the validity of this representation for
modeling group-wise patterns of co-activation.