- posi.ffd
the position of the voxel in the brain image.
- covariates
a data frame or matrix whose columns contain the covariates related to the expected BOLD response obtained from the experimental setup.
- ffdc
a 4D array (ffdc[i,j,k,t]) that contains the sequence of MRI images that are meant to be analyzed. (i,j,k) define the position of the voxel observed at time t.
- m0
the constant prior mean value for the covariates parameters and common to all voxels within every neighborhood at t=0 (m0=0 is the default value when no prior information is available). For the case of available prior information, m0 can be defined as a p q matrix, where p is the number of columns in the covariates object and q is the cluster size.
- Cova
a positive constant that defines the prior variances for the covariates parameters at t=0 (Cova=100 is the default value when no prior information is available). For the case of available prior information, Cova can be defined as a p p matrix, where p is the number of columns in the covariates object.
- delta
a discount factor related to the evolution variances. Recommended values between 0.85<delta<1. delta=1 will yield results similar to the classical general linear model.
- S0
prior covariance structure among voxels within every cluster at t=0. S0=1 is the default value when no prior information is available and defines an q q identity matrix. For the case of available prior information, S0 can be defined as an q q matrix, where q is the common number of voxels in every cluster.
- n0
a positive hyperparameter of the prior distribution for the covariance matrix S0 at t=0 (n=1 is the default value when no prior information is available). For the case of available prior information, n0 can be set as n0=np, where np is the number of MRI images in the pilot sample.
- N1
is the number of images (2<N1<T) from the ffdc array employed in the model fitting. N1=NULL (or equivalently N1=T) is its default value, taking all the images in the ffdc array for the fitting process.
- Nsimu1
is the number of simulated on-line trajectories related to the state parameters. These simulated curves are later employed to compute the posterior probability of voxel activation.
- Cutpos1
a cutpoint time from where the on-line trajectories begin. This parameter value is related to an approximation from a t-student distribution to a normal distribution. Values equal to or greater than 30 are recommended (30<Cutpos1<T).
- Min.vol
helps to define a threshold for the voxels considered in
the analysis. For example, Min.vol = 0.10 means that all the voxels with values
below to max(ffdc)*Min.vol can be considered irrelevant and discarded from the analysis.
- r1
a positive integer number that defines the distance from every voxel with its most distant neighbor. This value determines the size of the cluster. The users can set a range of different r1 values: r1 = 0, 1, 2, 3, 4, which leads to q = 1, 7, 19, 27, 33, where q is the size of the cluster.