EEG Signal Processing and Machine Learning. Saeid Sanei

EEG Signal Processing and Machine Learning - Saeid Sanei


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is frequently used to extract a parametric description.

      A tutorial on realistic neural modelling using the Hodgkin–Huxley excitation model by David Beeman has been documented at the first annual meeting of the World Association of Modelers (WAM) Biologically Accurate Modeling Meeting (BAMM) in 2005 in Texas, USA. This can be viewed at http://www.brains‐minds‐media.org/archive/218.

      The objective in this section is to introduce some established models for generating normal and some abnormal EEGs. These models are generally nonlinear and some have been proposed [15] for modelling a normal EEG signal and some others for the abnormal EEGs.

      A simple distributed model consisting of a set of simulated neurons, thalamocortical relay cells, and interneurons was proposed [16, 17] that incorporates the limited physiological and histological data available at that time. The basic assumptions were sufficient to explain the generation of the alpha rhythm, i.e. the EEGs within the frequency range of 8–13 Hz.

Schematic illustration of a nonlinear lumped model for generating the rhythmic activity of the EEG signals; he(t) and hi(t) are the excitatory and inhibitory post-synaptic potentials, f(v) is normally a simplified nonlinear function, and the Cis are respectively the interaction parameters representing the interneurons and thalamocortical neurons.

      In this model [16] there is a feedback loop including the inhibitory post‐synaptic potentials, the nonlinear function, and the interaction parameters C3 and C4. The other feedback includes mainly the excitatory potentials, nonlinear function, and the interaction parameters C1 and C2. The role of the excitatory neurons is to excite one or two inhibitory neurons. The latter, in turn, serve to inhibit a collection of excitatory neurons. Thus, the neural circuit forms a feedback system. The input p(t) is considered as a white noise signal. This is a general model; more assumptions are often needed to enable generation of the EEGs for the abnormal cases. Therefore, the function f(v) may change to generate the EEG signals for different brain abnormalities. Accordingly, the Ci coefficients can be varied. In addition, the output is subject to environment and measurement noise. In some models, such as the local EEG model (LEM) [16] the noise has been considered as an additive component in the output.

Schematic illustration of the local EEG model (LEM).

      (3.35)equation

      (3.36)equation

      where A, B, ak , and bk are constant parameters, which control the shape of the pulse waveforms. The membrane potentials are related to the axonal pulse densities via the static threshold functions fe and fi . These functions are generally nonlinear; however, to ease the manipulations they are considered linear for each short time interval. Using this model, the normal brain rhythms such as alpha wave is considered as filtered noise.

      EPs were simulated by presenting pulses to the input of the coupled models. In general, the responses were more realistic than those produced using a single model. The proposed model is based on a nonlinear model of a cortical column described by Jansen and Rit [20] and also based upon Lopes da Silva's lumped‐parameter model [16, 18]. The cortical column is modelled by a population of ‘feed forward’ pyramidal cells, receiving inhibitory and excitatory feedback from local interneurons (i.e. other pyramidal, stellate or basket cells residing in the same column) and excitatory input from neighbouring or more distant columns. The input can be a pulse, arbitrary function, or noise.


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