Variational, geometric, and statistical methods for modeling brain anatomy and function

Author: Faugeras O//Adde G//Charpiat G//Chefd'hotel C////
Affiliation: Odyssee Laboratory-ENPC/ENS/INRIA, INRIA, BP93, 06902 Sophia-Antipolis, France. faugeras@sophia.inria.fr
Conference/Journal: Neuroimage
Date published: 2004
Other: Volume ID: 23 , Issue ID: Suppl 1 , Pages: S46-55 , Word Count: 253


We survey the recent activities of the Odyssee Laboratory in the area of the application of mathematics to the design of models for studying brain anatomy and function. We start with the problem of reconstructing sources in MEG and EEG, and discuss the variational approach we have developed for solving these inverse problems. This motivates the need for geometric models of the head. We present a method for automatically and accurately extracting surface meshes of several tissues of the head from anatomical magnetic resonance (MR) images. Anatomical connectivity can be extracted from diffusion tensor magnetic resonance images but, in the current state of the technology, it must be preceded by a robust estimation and regularization stage. We discuss our work based on variational principles and show how the results can be used to track fibers in the white matter (WM) as geodesics in some Riemannian space. We then go to the statistical modeling of functional magnetic resonance imaging (fMRI) signals from the viewpoint of their decomposition in a pseudo-deterministic and stochastic part that we then use to perform clustering of voxels in a way that is inspired by the theory of support vector machines and in a way that is grounded in information theory. Multimodal image matching is discussed next in the framework of image statistics and partial differential equations (PDEs) with an eye on registering fMRI to the anatomy. The paper ends with a discussion of a new theory of random shapes that may prove useful in building anatomical and functional atlases.