Abstract

Electroencephalogram (EEG) is a common tool used to understand brain activities. The data are typically obtained by placing electrodes at the surface of the scalp and recording the oscillations of currents passing through the electrodes. These oscillations can sometimes lead to various interpretations, depending on, for example, the subject's health condition, the experiment carried out, the sensitivity of the tools used, or human manipulations. The data obtained over time can be considered a time series. There is evidence in the literature that epilepsy EEG data may be chaotic. Either way, the Embedding Theory in dynamical systems suggests that time series from a complex system could be used to reconstruct its phase space under proper conditions. In this letter, we propose an analysis of epilepsy EEG time series data based on a novel approach dubbed complex geometric structurization. Complex geometric structurization stems from the construction of strange attractors using Embedding Theory from dynamical systems. The complex geometric structures are themselves obtained using a geometry tool, the α-shapes from shape analysis. Initial analyses show a proof of concept in that these complex structures capture the expected changes brain in lobes under consideration. Further, a deeper analysis suggests that these complex structures can be used as biomarkers for seizure changes.

Highlights

  • A common way to understand brain functions and brain-related diseases is to place electrodes on a subject’s head and record the electrical activities that result

  • We propose a new method for analyzing EEG times series data, which we call complex geometric structurization (CGS)

  • To understand how to reconstruct the phase space of a dynamical system based on observations of one of its variables, we need to revisit the Embedding Theory (Takens, 1981), which is essentially a high-dimension transformation of the time series

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Summary

Introduction

A common way to understand brain functions and brain-related diseases is to place electrodes on a subject’s head and record the electrical activities that result. Electroencephalograms (EEG), a term coined by Berger (1929), are electrical activities recorded on humans or animals that display prominent oscillatory behavior subject to important changes during various behavioral states. We propose a new method for analyzing EEG times series data, which we call complex geometric structurization (CGS).

Understanding Embedding Theory
Statistical Morphometry
Complex Geometric Structurization
Findings
Discussion
Conclusion
Full Text
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