Biomedical Engineering Reference
In-Depth Information
71.
Perkel, D.H., G.L. Gerstein, and G.P. Moore,
Neuronal spike trains and stochastic point processes.
II. Simultaneous spike trains.
Biophysical Journal, 1967.
7
(4): pp. 419-40.
Gerstein, G.L., and D.H. Perkel,
Simultaneously recorded trains of action potentials: Analysis and
functional interpretation.
Science, 1969.
164
(881): pp. 828-30.
Gerstein, G.L., D.H. Perkel, and K.N. Subramanian,
Identification of functionally related neural
assemblies.
Brain Research, 1978.
140
(1): pp. 43-62.
doi:10.1016/0006-8993(78)90237-8
Abeles, M., and G.L. Gerstein,
Detecting spatiotemporal firing patterns among simultaneously
recorded single neurons.
Journal of Neurophysiology, 1988.
60
(3): pp. 909-24.
Palm, G., A.M. Aertsen, and G.L. Gerstein,
On the significance of correlations among neuronal
spike trains.
Biological Cybernetics, 1988.
59
(1): pp. 1-11.
doi:10.1007/BF00336885
Grun, S., M. Diesmann, and A. Aertsen,
Unitary events in multiple single-neuron spiking activ-
ity: I. Detection and significance.
Neural Computation, 2002.
14
(1): pp. 43-80.
doi:10.1162/
Gerstein, G.L., and K.L. Kirkland,
Neural assemblies: Technical issues, analysis, and modeling.
Neural Networks, 2001.
14
(6-7): pp. 589-98.
doi:10.1016/S0893-6080(01)00042-9
Cox, D.R., and P.A.W. Lewis,
Multivariate point processes.
Proceedings of the Sixth Berkeley
Symposium on Probability and Mathematical Statistics, 1972.
3
: pp. 401-448.
Brillinger, D.R.,
The identification of point process systems.
Annals of Probability, 1975.
3
: pp.
909-929.
Gerstein, G.L., and D.H. Perkel,
Mutual temporal relationships among neuronal spike trains. Sta-
tistical techniques for display and analysis.
Biophysical Journal, 1972.
12
(5): pp. 453-473.
Borisyuk, G.N., et al.,
A new statistical method for identifying interconnections between neuronal
network elements.
Biological Cybernetics, 1985.
52
(5): pp. 301-306.
doi:10.1007/BF00355752
Gerstein, G.L., and A.M. Aertsen,
Representation of cooperative firing activity among simultane-
ously recorded neurons.
Journal of Neurophysiology, 1985.
54
(6): pp. 1513-1528.
Marmarelis, P.Z., and V.Z. Marmarelis, Analysis of Physiological Systems: The White Noise
Approach. 1978, New York, Plenum Press.
Song, D., V.Z. Marmarelis, and T.W. Berger.
Parametric and non-parametric models of short-
term plasticity
, in Second Joint EMBS/BMES Conference. 2002. Houston, TX.
doi:10.1109/
Marmarelis, V.Z.,
Identification of nonlinear biological systems using Laguerre expansions of kernels.
Annals of Biomedical Engineering, 1993.
21
: pp. 573-589.
doi:10.1007/BF02368639
Chichilnisky, E.J.,
A simple white noise analysis of neuronal light responses.
Network: Computa-
tion in Neural Systems, 2001.
12
: pp. 199-213.
Eden, U.T., et al.,
Dynamic Analysis of Neural Encoding by Point Process Adaptive Filtering.
Neu-
ral Computation, 2004.
16
: pp. 971-998.
doi:10.1162/089976604773135069
72.
73.
74.
75.
76.
77.
78.
79.
80.
81.
82.
83.
84.
85.
86.
87.