Image Processing Reference
In-Depth Information
2.
Kwong, K.K., Belliveau, J.W., Chesler, D.A., Goldberg, I.R.M., Poncelet, B.P.,
Kennedy, D.N., Hoppel, B.E., Cohen, M.S., and Turner, R. (1992). Imaging of
human brain activity during primary sensory stimulation. Proc. Natl. Acad. Sci.
89: 5675-5679.
3.
Davidson, R. J. and Irwin, W.(2000). Functional MRI in the study of emotion. in
Moonen, C.T. W., Bandettini, P.A., Eds., Functional MRI . Berlin: Springer-Verlag,
pp. 487-499.
4.
Ricciardi, E., Gentili, C., Rizzo, M., Vanello, N., Sani, L., Landini, L., Guazzelli,
M., and Pietrini, P. (2004). Brain Activity Associated with Forgiving and Unfor-
giving Behaviour in Humans as Assessed by fMRI. in 10th Intl. Conf. on Func-
tional Mapping of Human Brain. Budapest, Hungary, June 13-17.
5.
Bandettini, P.A., Jesmanowicz, A., Wong, E.C., and Hyde, J.S. (1993). Processing
strategies for time-course data sets in functional MRI of the human brain. Magn.
Reson. Med . 30: 161-173.
6.
Friston, K.J., Frith, C.D., Turner, R., and Frackowiak, R.S.J. (1995).Characterising
evoked hemodynamics with fMRI. NeuroImage 2: 157-165.
7.
Worsley, K. J. and Friston, K. J. (1995). Analysis of fMRI time-series revisited—
again. NeuroImage 2: 173-181.
8.
Tukey, J.W. (1962). Exploratory data analysis. Ann. Stat. 33: 1-67.
9.
Fletcher, P.C., Dolan, R.J., Shallice, T., Frith, C.D., Frackowiak, R.S.J., and Fris-
ton, K.J. (1996). Is multivariate analysis of PET data more revealing than the
univariate approach? Evidence from a study of episodic memory retrieval. Neu-
roimage 3: 209-215.
10.
Philips, C.G., Zeki, S., and Barlow, H.B. (1984). Localization of function in the
cerebral cortex. Past, present and future. Brain 107: 327-361.
11.
Goutte, C., Toft, P., Rostrup, E., Nielsen, F.Ă…., and Hansen, L.K. (1999). On
clustering fMRI time series. NeuroImage 9: 298-310.
12.
Golay, X., Kollias, S., Stoll, G., Meier, D., Valavanis, A., and Boesiger, P. (1998).
A new correlation-based fuzzy logic clustering algorithm for fMRI. Magn. Reson.
Med . 40: 249-260.
13.
Cordes, D., Haughton, V., Darew, J.D., Arfanakis, K., and Maravilla, K. (2002).
Hierarchical clustering to measure connectivity in fMRI resting-state data. Magn.
Reson. Imaging . 20: 305-317.
14.
Filzmoser, P., Baumgartner, R., and Moser, E. (1999). A hierarchical clustering
method for analyzing functional MR images. Magn. Reson. Imaging . 17(6): 817-826.
15.
Stanberry, L., Nandy, R., and Cordes, D. (2003). Cluster analysis of fMRI data
using dendrogram sharpening. Human Brain Mapping 20: 201-219.
16.
Scarth, G., McIntyre, M., Wowk, B., and Somorjai, R. (1995). Detection of novelty
in functional images using fuzzy clustering. in Proc. of the Annual Meeting of the Soc.
of Magn. Reson. and Europ. Soc. for Magn. Reson. Med. and Biol . Nice, France,1: 238.
17.
Barth, M., Diemling, M., and Moser, E. (1997). Modulation of signal changes in
gradient-recalled echo fMRI with increasing echo time correlate with model
calculations. Magn. Reson. Imaging . 15(7): 745-752.
18.
Baumgartner, R., Scarth, G., Teichtmeister, C., Somorjai, R., and Moser, E. (1997).
Fuzzy clustering of gradient-echo functional MRI in the human visual cortex. Part
I: reproducibility. J. Magn. Reson. Imaging . 7: 1094-1101.
19.
Moser, E., Diemling, M., and Baumgartner, R. (1997). Fuzzy clustering of gradi-
ent-echo functional MRI in the human visual cortex. Part II: quantification. J.
Magn. Reson. Imaging . 7: 1102-1108.
Search WWH ::




Custom Search