| Literature DB >> 21761665 |
Fani Deligianni1, Gael Varoquaux, Bertrand Thirion, Emma Robinson, David J Sharp, A David Edwards, Daniel Rueckert.
Abstract
We present a novel probabilistic framework to learn across several subjects a mapping from brain anatomical connectivity to functional connectivity, i.e. the covariance structure of brain activity. This prediction problem must be formulated as a structured-output learning task, as the predicted parameters are strongly correlated. We introduce a model selection framework based on cross-validation with a parametrization-independent loss function suitable to the manifold of covariance matrices. Our model is based on constraining the conditional independence structure of functional activity by the anatomical connectivity. Subsequently, we learn a linear predictor of a stationary multivariate autoregressive model. This natural parameterization of functional connectivity also enforces the positive-definiteness of the predicted covariance and thus matches the structure of the output space. Our results show that functional connectivity can be explained by anatomical connectivity on a rigorous statistical basis, and that a proper model of functional connectivity is essential to assess this link.Mesh:
Year: 2011 PMID: 21761665 DOI: 10.1007/978-3-642-22092-0_25
Source DB: PubMed Journal: Inf Process Med Imaging ISSN: 1011-2499