Methodological aspects of EEG and Body dynamics measurements during motion.

EEG involves recording, analysis, and interpretation of voltages recorded on the human scalp originating from brain grey matter. EEG is one of the favorite methods to study and understand processes that underlie behavior. This is so, because EEG is relatively cheap, easy to wear, light weight and ha...

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Bibliographic Details
Main Authors: Pedro eReis, Felix eHebenstreit, Florian eGabsteiger, Vinzenz evon Tscharner, Matthias eLochmann
Format: Article
Language:English
Published: Frontiers Media S.A. 2014-03-01
Series:Frontiers in Human Neuroscience
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Online Access:http://journal.frontiersin.org/Journal/10.3389/fnhum.2014.00156/full
Description
Summary:EEG involves recording, analysis, and interpretation of voltages recorded on the human scalp originating from brain grey matter. EEG is one of the favorite methods to study and understand processes that underlie behavior. This is so, because EEG is relatively cheap, easy to wear, light weight and has high temporal resolution. In terms of behavior, this encompasses actions, such as movements, that are performed in response to the environment. However, there are methodological difficulties when recording EEG during movement such as movement artifacts. Thus, most studies about the human brain have examined activations during static conditions. This article attempts to compile and describe relevant methodological solutions that emerged in order to measure body and brain dynamics during motion. These descriptions cover suggestions of how to avoid and reduce motion artifacts, hardware, software and techniques for synchronously recording EEG, EMG, kinematics, kinetics and eye movements during motion. Additionally, we present various recording systems, EEG electrodes, caps and methods for determination of real/custom electrode positions. In the end we will conclude that it is possible to record and analyze synchronized brain and body dynamics related to movement or exercise tasks.
ISSN:1662-5161