Yokogawa/KIT tutorial

[TUTORIAL UNDER DEVELOPMENT: NOT READY FOR PUBLIC USE]

Authors: Francois Tadel, Yasuhiro Haruta, Ei-ichi Okumura, Takashi Asakawa.

This tutorial introduces some concepts that are specific to the management of MEG/EEG files recorded with Yokogawa/KIT systems in the Brainstorm environment.

License

This tutorial dataset (MEG/EEG and MRI data) remains proprietary of Yokogawa Electric Corporation, Japan. Its use and transfer outside the Brainstorm tutorial, e.g. for research purposes, is prohibited without written consent from Yokogawa Electric Corporation.

Description of the experiment

This tutorial is based on a simple median nerve stimulation experiment:

Export recordings from Meg160

To import Yokogawa/KIT data files (.con, .raw, .ave) into Brainstorm, a data export process is required beforehand. The data export function is available in Meg160, which is data analysis software equipped in most of Yokogawa/KIT systems.

The dataset used in this tutorial has already been exported using this procedure. It is described here so that later you can export your own recordings to Brainstorm.

If your software does not support the functions used below, please contact Yokogawa via
http://www.yokogawa.com/me/index.htm

Export the digitizer file

Export the recordings

Download and installation

Import the anatomy

Without the individual MRI

If you do not have access to an individual MR scan of the subject (or if its quality is too low to be processed with FreeSurfer), but if you have digitized the head shape of the subject using a tracking system, you have an alternative: deform one of the Brainstorm templates (Colin27 or ICBM152) to match the shape of the subject's head.
For more information, read the following tutorial: Warping default anatomy

Access the recordings

Prepare the channel file

Refine the MRI registration

Read the stimulation information

Artifacts: Evaluate the power spectrum

Evaluation

Two of the typical pre-processing steps consist in getting rid of the contamination due to the power lines (50 Hz or 60Hz) and of the frequencies we are not interested in (a low-pass filter to remove the high-frequencies and a high-pass filter to remove the very slow components of the signals). Let's start with the spectral evaluation of this file.

Correction

Review the recordings

Epoching and averaging

Import recordings

In this experiment, the electric stimulation is sent with a frequency of 2.8Hz, meaning that the inter-stimulus interval is 357ms. We are going to import epochs of 300ms around the stimulation events.

Average epochs

Source analysis

Head model

Noise covariance matrix

Inverse model

Z-score normalization

Regions of interest

Scripting

Graphic edition

Generate Matlab script

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Tutorials/Yokogawa (last edited 2014-04-11 18:22:19 by agrippa)