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1. [attachment:SPM-Henson-1-preproc.ppt Spatial preprocessing: Realigment, unwarping, normalisation, smoothing, segmentation and Computational Neuroanatomy e.g. voxel-based morphometry (VBM), deformation-based morphometry (DBM) and tensor-based morphometry (TBM)] 1. [attachment:SPM-Henson-2-glm.ppt The General Linear Model: global effects, correlation/orthogonalisation, time-series convolution models, high-pass filtering, temporal auto-correlation, maximum likelihood (ML) estimation, non-sphericity, Statistical Parametric Maps (SPMs) and Random Field Theory Correction, Random Effects, Parametric Empirical Bayes and PPMs] 1. [attachment:SPM-Henson-3-design.ppt Experimental design: event-related fMRI, temporal basis functions, design optimisation, nonlinearities, effective connectivity and dynamic causal modelling (DCM)] 1. [attachment:SPM-Henson-4-MEEG.ppt SPM for EEG/MEG: space-time maps, inverse-problem, Bayesian formulation, model-evidence, canonical meshes] |
1. [[attachment:SPM-Henson-1-preproc.ppt|Spatial preprocessing: Realigment, unwarping, normalisation, smoothing, segmentation and Computational Neuroanatomy e.g. voxel-based morphometry (VBM), deformation-based morphometry (DBM) and tensor-based morphometry (TBM)]] 1. [[attachment:SPM-Henson-2-glm.ppt|The General Linear Model: global effects, correlation/orthogonalisation, time-series convolution models, high-pass filtering, temporal auto-correlation, maximum likelihood (ML) estimation, non-sphericity, Statistical Parametric Maps (SPMs) and Random Field Theory Correction, Random Effects, Parametric Empirical Bayes and PPMs]] 1. [[attachment:SPM-Henson-3-design.ppt|Experimental design: event-related fMRI, temporal basis functions, design optimisation, nonlinearities, effective connectivity and dynamic causal modelling (DCM)]] 1. [[attachment:SPM-Henson-4-MEEG.ppt|SPM for EEG/MEG: space-time maps, inverse-problem, Bayesian formulation, model-evidence, canonical meshes]] |
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You can also watch the [http://www.fil.ion.ucl.ac.uk/spm/course/video/ videos of the SPM Course for fMRI, PET and VBM, at the Wellcome Trust Centre for Neuroimaging] (May 2011), which also contain two recorded practical demonstrations from the 2009 MEG and EEG course on the same page. | You can also watch the [[http://www.fil.ion.ucl.ac.uk/spm/course/video/|videos of the SPM Course for fMRI, PET and VBM, at the Wellcome Trust Centre for Neuroimaging]] (May 2011), which also contain two recorded practical demonstrations from the 2009 MEG and EEG course on the same page. |
Rik Henson gives a short SPM course for graduates at the CBU and University of Cambridge during February/March every year (though the talks are open to all). Below are copies of the slides:
You can also watch the videos of the SPM Course for fMRI, PET and VBM, at the Wellcome Trust Centre for Neuroimaging (May 2011), which also contain two recorded practical demonstrations from the 2009 MEG and EEG course on the same page.