A Bayesian Spatial Mixture Model for FMRI Analysis


Autoria(s): Geliazkova, Maya
Data(s)

08/06/2011

08/06/2011

2010

Resumo

We develop, implement and study a new Bayesian spatial mixture model (BSMM). The proposed BSMM allows for spatial structure in the binary activation indicators through a latent thresholded Gaussian Markov random field. We develop a Gibbs (MCMC) sampler to perform posterior inference on the model parameters, which then allows us to assess the posterior probabilities of activation for each voxel. One purpose of this article is to compare the HJ model and the BSMM in terms of receiver operating characteristics (ROC) curves. Also we consider the accuracy of the spatial mixture model and the BSMM for estimation of the size of the activation region in terms of bias, variance and mean squared error. We perform a simulation study to examine the aforementioned characteristics under a variety of configurations of spatial mixture model and BSMM both as the size of the region changes and as the magnitude of activation changes.

Identificador

Serdica Journal of Computing, Vol. 4, No 4, (2010), 417p-434p

1312-6555

http://hdl.handle.net/10525/1603

Idioma(s)

en

Publicador

Institute of Mathematics and Informatics Bulgarian Academy of Sciences

Palavras-Chave #Spatial Mixture Models #CAR Model #ROC Analysis #Procedure #Bias #Variance #Mean Squared Error
Tipo

Article