NCLGSPJul 11, 2020

A Tutorial on Graph Theory for Brain Signal Analysis

arXiv:2007.05800v12 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental tutorial paper for researchers in neuroscience and signal processing.

This tutorial paper provides an introduction to graph theory concepts and their application for analyzing brain signals, demonstrating these techniques on a multi-trial dataset from a visual ERP paradigm.

This tutorial paper refers to the use of graph-theoretic concepts for analyzing brain signals. For didactic purposes it splits into two parts: theory and application. In the first part, we commence by introducing some basic elements from graph theory and stemming algorithmic tools, which can be employed for data-analytic purposes. Next, we describe how these concepts are adapted for handling evolving connectivity and gaining insights into network reorganization. Finally, the notion of signals residing on a given graph is introduced and elements from the emerging field of graph signal processing (GSP) are provided. The second part serves as a pragmatic demonstration of the tools and techniques described earlier. It is based on analyzing a multi-trial dataset containing single-trial responses from a visual ERP paradigm. The paper ends with a brief outline of the most recent trends in graph theory that are about to shape brain signal processing in the near future and a more general discussion on the relevance of graph-theoretic methodologies for analyzing continuous-mode neural recordings.

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