next up previous
Next: About this document ... Up: tr03mw2 Previous:

Bibliography

1
H. Benali, I. Buvat, J.L. Anton, M. Pélégrini, M. Di Paola, J. Bittoun, Y. Burnod, and R. Di Paola.
Space-time statistical model for functional MRI image sequences.
In J.S. Duncan and G.R. Gindi, editors, Information Processing in Medical Imaging, pages 285-298. Kluwer Academic Publishers, 1997.

2
G.M. Boynton, S.A. Engel, G.H. Glover, and D.J. Heeger.
Linear systems analysis of functional magnetic resonance imaging in human V1.
Journal of Neuroscience, 16:4207-4221, 1996.

3
E. Bullmore, M. Brammer, S.C.R. Williams, S. Rabe-Hesketh, N. Janot, A. David, J. Mellers, R. Howard, and P. Sham.
Statistical methods of estimation and inference for functional MR image analysis.
Magnetic Resonance in Medicine, 35(2):261-277, 1996.

4
R. Christensen.
Plane Answers to Complex Questions.
Springer, 1996.

5
M.S. Cohen.
Parametric analysis of fMRI data using linear systems methods.
NeuroImage, 6:93-103, 1997.

6
N.A.C. Cressie.
Statistics for Spatial Data.
Wiley, New York, 1993.

7
A.M. Dale and R.L. Buckner.
Selective averaging of rapidly presented individual trials using fMRI.
Human Brain Mapping, 5:329-340, 1997.

8
X. Descombes, F. Kruggel, and D. Y. von Cramon.
Spatio-temporal fMRI analysis using Markov random fields.
IEEE Trans. on Medical Imaging, 17(6):1028-39, December 1998.

9
K. J. Friston, D. E. Glaser, R. N. A. Henson, S. Kiebel, C. Phillips, and J. Ashburner.
Classical and Bayesian inference in neuroimaging: Applications.
NeuroImage, 16:484-512, 2002.

10
K. J. Friston, W. Penny, C. Phillips, S. Kiebel, G. Hinton, and J. Ashburner.
Classical and Bayesian inference in neuroimaging: Theory.
NeuroImage, 16:465-483, 2002.

11
K.J. Friston, C.D. Frith, R. Turner, and R.S.J. Frackowiak.
Characterizing evoked hemodynamics with fMRI.
NeuroImage, 2:157-165, 1995.

12
K.J. Friston, A.P. Holmes, J.-B. Poline, P.J. Grasby, S.C.R Williams, R.S.J. Frackowiak, and R. Turner.
Analysis of fMRI time series revisited.
NeuroImage, 2:45-53, 1995.

13
K.J. Friston, A.P. Holmes, K.J. Worsley, J.-B. Poline, C.D. Frith, and R.S.J. Frackowiak.
Statistical parametric maps in functional imaging: A general linear approach.
Human Brain Mapping, 2:189-210, 1995.

14
K.J. Friston, P. Jezzard, and R. Turner.
Analysis of Functional MRI time-series.
Human Brain Mapping, 1:153-171, 1994.

15
K.J. Friston, O. Josephs, G. Rees, and R. Turner.
Nonlinear event-related responses in fMRI.
Magnetic Resonance in Medicine, 39:41-52, 1998.

16
K.J. Friston, O. Josephs, E. Zarahn, A.P. Holmes, S. Rouquette, and J-B. Poline.
To smooth or not to smooth?
NeuroImage, 12:196-208, 2000.

17
K.J. Friston, A.. Mechelli, R. Turner, and C.J. Price.
Nonlinear responses in fMRI: the balloon model, Volterra kernels, and other hemodynamics.
NeuroImage, 12:466-477, 2000.

18
K.J. Friston, K.J. Worsley, R.S.J. Frackowiak, J.C. Mazziotta, and A.C. Evans.
Assessing the significance of focal activations using their spatial extent.
Human Brain Mapping, 1:214-220, 1994.

19
FSL.
http://www.fmrib.ox.ac.uk/fsl.

20
D. Gamerman.
Markov Chain Monte Carlo.
Chapman and Hall, London, 1997.

21
C.R. Genovese.
A Bayesian time-course model for functional magnetic resonance imaging data (with discussion).
Journal of the American Statistical Association, 95:691-703, 2000.

22
W.R. Gilks, S. Richardson, and D.J. Spiegalhalter.
Markov Chain Monte Carlo in Practice.
Chapman and Hall, London, 1996.

23
G.H. Glover.
Deconvolution of impulse response in event-related BOLD fMRI.
NeuroImage, 9:416-429, 1999.

24
C. Gössl, D.P. Auer, and L. Fahrmeir.
Dynamic models in fMRI.
Magnetic Resonance in Medicine, 43:72-81, 2000.

25
C. Gössl, D.P. Auer, and L. Fahrmeir.
Bayesian modeling of the haemodynamic response function in BOLD fMRI.
NeuroImage, 14(1):140-148, 2001.

26
C. Gössl, D.P. Auer, and L. Fahrmeir.
Bayesian spatio-temporal inference in functional magnetic resonance imaging.
Biometrika, 2001.
Accepted.

27
P.J. Green.
Reversible jump Markov Chain Monte Carlo computation and bayesian model determination.
Biometrika, 82:711-732, 1995.

28
N.V. Hartvig.
A stochastic geometry model for fMRI data.
Technical Report 410, Department of Theoretical Statistics, University of Aarhus, 2000.

29
N.V. Hartvig and J. Jensen.
Spatial mixture modelling of fMRI data.
Human Brain Mapping, 11(4):233-248, 2000.

30
J. Hykin, R. Bowtell, P. Glover, R. Coxon, L.D. Blumhardt, and P. Mansfield.
Investigation of the linearity of functional activation signal changes in the brain using echo planar imaging (EPI) at 3.0 T.
In Proc. of the SMR and ESMRB, Joint Meeting, page 795, 1995.

31
M. Jenkinson, P.R. Bannister, J.M. Brady, and S.M. Smith.
Improved optimisation for the robust and accurate linear registration and motion correction of brain images.
NeuroImage, 17(2):825-841, 2002.

32
M.I. Jordan.
Learning in Graphical Models.
MIT Press, 1999.

33
O. Josephs, R. Turner, and K. Friston.
Event-related fMRI.
Human Brain Mapping, 5:1-7, 1997.

34
V. Kiviniemi, J.-H. Kantola, J. Jauhiainen, A. Hyvärinen, and O. Tervonen.
Independent component analysis of nondetermistic fMRI signal sources.
NeuroImage, 2003.

35
F. Kruggel and D.Y. von Cramen.
Modeling the hemodynamic response in single-trial functional MRI experiments.
Magnetic Resonance in Medicine, 42:787-797, 1999.

36
D.J.C. MacKay.
Probable networks and plausible predictions - a review of practical Bayesian methods for supervised neural networks.
Network: Computation in Neural Systems, 6:469-505, 1995.

37
A. Mollie.
Bayesian mapping of disease, chapter 20.
In (22), 1996.

38
W.D. Penny and S.J. Roberts.
Bayesian multivariate autoregressive models with structured priors.
IEE Proceedings on Vision, Image and Signal Processing., 149:33-41, 2002.

39
D.B. Phillips and A.F.M. Smith.
Bayesian model comparison via jump diffusions, chapter 13.
In (22), 1996.

40
G.A.F. Seber.
Linear Regression Analysis.
Wiley, 1977.

41
D.J. Spiegalhalter, N.G. Best, B.P. Carlin, and A. van der Linde.
Bayesian measures of model complexity and fit.
Journal of the Royal Statistical Society, 64(3):134, 2002.

42
C.K. Wikle, L.M. Berliner, and N. Cressie.
Hierarchical bayesian space-time models.
Environmental and Ecological Statistics, 5:117-154, 1998.

43
M.W. Woolrich, B.D. Ripley, J.M. Brady, and S.M. Smith.
Temporal autocorrelation in univariate linear modelling of FMRI data.
NeuroImage, 14(6):1370-1386, 2001.