International audienceEven in the absence of an experimental effect, functional magnetic resonance imaging (fMRI) time series generally demonstrate serial dependence. This colored noise or endogenous autocorrelation typically has disproportionate spectral power at low frequencies, i.e., its spectrum is (1/f)-like. Various pre-whitening and pre-coloring strategies have been proposed to make valid inference on standardised test statistics estimated by time series regression in this context of residually autocorrelated errors. Here we introduce a new method based on random permutation after orthogonal transformation of the observed time series to the wavelet domain. This scheme exploits the general whitening or decorrelating property of the di...
The quality of statistical analyses of functional neuroimages is studied after applying various prep...
To assess the impact of colored noise on statistics and determine optimal imaging parameters in even...
International audienceThis work addresses two main problems in wavelet-based time series estimation....
International audienceEven in the absence of an experimental effect, functional magnetic resonance i...
International audienceFunctional magnetic resonance imaging (fMRI) time series generally demonstrate...
Wavelets provide an orthonormal basis for multiresolution analysis and decorrelation or 'whitening' ...
International audienceThe discrete wavelet transform (DWT) is widely used for multiresolution analys...
Purpose To assess the impact of colored noise on statistics in event-related functional MRI (fMRI) (...
When performing statistical analysis of single-subject fMRI data, serial correlations need to be tak...
One of the major findings from multimodal neuroimaging studies in the past decade is that the human ...
International audienceFractional Gaussian noise (fGn) provides a parsimonious model for stationary i...
Abstract: In data processing, the fundamental idea behind wavelets is to analyze according to scale,...
International audienceWavelet-based methods for hypothesis testing are described and their potential...
Functional magnetic resonance imaging (fMRI) is a recent, non-invasive technique that allows the mea...
The quality of statistical analyses of functional neuroimages is studied after applying various prep...
To assess the impact of colored noise on statistics and determine optimal imaging parameters in even...
International audienceThis work addresses two main problems in wavelet-based time series estimation....
International audienceEven in the absence of an experimental effect, functional magnetic resonance i...
International audienceFunctional magnetic resonance imaging (fMRI) time series generally demonstrate...
Wavelets provide an orthonormal basis for multiresolution analysis and decorrelation or 'whitening' ...
International audienceThe discrete wavelet transform (DWT) is widely used for multiresolution analys...
Purpose To assess the impact of colored noise on statistics in event-related functional MRI (fMRI) (...
When performing statistical analysis of single-subject fMRI data, serial correlations need to be tak...
One of the major findings from multimodal neuroimaging studies in the past decade is that the human ...
International audienceFractional Gaussian noise (fGn) provides a parsimonious model for stationary i...
Abstract: In data processing, the fundamental idea behind wavelets is to analyze according to scale,...
International audienceWavelet-based methods for hypothesis testing are described and their potential...
Functional magnetic resonance imaging (fMRI) is a recent, non-invasive technique that allows the mea...
The quality of statistical analyses of functional neuroimages is studied after applying various prep...
To assess the impact of colored noise on statistics and determine optimal imaging parameters in even...
International audienceThis work addresses two main problems in wavelet-based time series estimation....