Contains fulltext : 159104.pdf (publisher's version ) (Open Access)Cluster-based analysis methods in neuroimaging provide control of whole-brain false positive rates without the need to conservatively correct for the number of voxels and the associated false negative results. The current method defines clusters based purely on shapes in the landscape of activation, instead of requiring the choice of a statistical threshold that may strongly affect results. Statistical significance is determined using permutation testing, combining both size and height of activation. A method is proposed for dealing with relatively small local peaks. Simulations confirm the method controls the false positive rate and correctly identifies re...
<p>The method consists of two parts: correlation coefficient computation and multiple comparison cor...
In the context of neuroimaging experiments, it is essential to account for the multiple comparisons ...
Abstract Various machine-learning classification techniques have been employed previo...
Cluster-based analysis methods in neuroimaging provide control of whole-brain false positive rates w...
Cluster-based analysis methods in neuroimaging provide control of whole-brain false positive rates w...
<p>The size of the whole brain tractography dataset is reduced by extracting a random sample (1). Fo...
Many image enhancement and thresholding techniques make use of spatial neighbourhood information to ...
Cluster size inference, or tests based on the spatial extent of brain imaging signals, is a widely u...
A typical brain image data set consists of a set of 3D images, each of which is composed of tens of ...
The scenario considered here is one where brain connectivity is represented as a network and an expe...
this paper is as follows [3]: First, as an initialization step the classification is initialized usi...
<p>Typical patterns of connectivity change that the different clustering methods are sensitive to. H...
In recent neuroimaging studies, threshold-free cluster enhancement (TFCE) gained popularity as a sop...
Contains fulltext : 231171.pdf (publisher's version ) (Open Access)Because of the ...
In neuroimaging cluster-based inference has generally been found to be more powerful than voxel-wise...
<p>The method consists of two parts: correlation coefficient computation and multiple comparison cor...
In the context of neuroimaging experiments, it is essential to account for the multiple comparisons ...
Abstract Various machine-learning classification techniques have been employed previo...
Cluster-based analysis methods in neuroimaging provide control of whole-brain false positive rates w...
Cluster-based analysis methods in neuroimaging provide control of whole-brain false positive rates w...
<p>The size of the whole brain tractography dataset is reduced by extracting a random sample (1). Fo...
Many image enhancement and thresholding techniques make use of spatial neighbourhood information to ...
Cluster size inference, or tests based on the spatial extent of brain imaging signals, is a widely u...
A typical brain image data set consists of a set of 3D images, each of which is composed of tens of ...
The scenario considered here is one where brain connectivity is represented as a network and an expe...
this paper is as follows [3]: First, as an initialization step the classification is initialized usi...
<p>Typical patterns of connectivity change that the different clustering methods are sensitive to. H...
In recent neuroimaging studies, threshold-free cluster enhancement (TFCE) gained popularity as a sop...
Contains fulltext : 231171.pdf (publisher's version ) (Open Access)Because of the ...
In neuroimaging cluster-based inference has generally been found to be more powerful than voxel-wise...
<p>The method consists of two parts: correlation coefficient computation and multiple comparison cor...
In the context of neuroimaging experiments, it is essential to account for the multiple comparisons ...
Abstract Various machine-learning classification techniques have been employed previo...