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Temporal Autocorrelation in Univariate Linear Modeling of FMRI Data
2001
NeuroImage
In functional magnetic resonance imaging statistical analysis there are problems with accounting for temporal autocorrelations when assessing change within voxels. Techniques to date have utilized temporal filtering strategies to either shape these autocorrelations or remove them. Shaping, or "coloring," attempts to negate the effects of not accurately knowing the intrinsic autocorrelations by imposing known autocorrelation via temporal filtering. Removing the autocorrelation, or
doi:10.1006/nimg.2001.0931
pmid:11707093
fatcat:l2swcivp55adhnccdaubq2ow4u