scispace - formally typeset
Open AccessBook

Analyzing Neural Time Series Data: Theory and Practice

TLDR
This book offers a comprehensive guide to the theory and practice of analyzing electrical brain signals and is the only book on the topic that covers both the theoretical background and the implementation in language that can be understood by readers without extensive formal training in mathematics.
Abstract
A comprehensive guide to the conceptual, mathematical, and implementational aspects of analyzing electrical brain signals, including data from MEG, EEG, and LFP recordings. This book offers a comprehensive guide to the theory and practice of analyzing electrical brain signals. It explains the conceptual, mathematical, and implementational (via Matlab programming) aspects of time-, time-frequency- and synchronization-based analyses of magnetoencephalography (MEG), electroencephalography (EEG), and local field potential (LFP) recordings from humans and nonhuman animals. It is the only book on the topic that covers both the theoretical background and the implementation in language that can be understood by readers without extensive formal training in mathematics, including cognitive scientists, neuroscientists, and psychologists. Readers who go through the book chapter by chapter and implement the examples in Matlab will develop an understanding of why and how analyses are performed, how to interpret results, what the methodological issues are, and how to perform single-subject-level and group-level analyses. Researchers who are familiar with using automated programs to perform advanced analyses will learn what happens when they click the "analyze now" button. The book provides sample data and downloadable Matlab code. Each of the 38 chapters covers one analysis topic, and these topics progress from simple to advanced. Most chapters conclude with exercises that further develop the material covered in the chapter. Many of the methods presented (including convolution, the Fourier transform, and Euler's formula) are fundamental and form the groundwork for other advanced data analysis methods. Readers who master the methods in the book will be well prepared to learn other approaches.

read more

Citations
More filters
Journal ArticleDOI

DeepSleepNet: A Model for Automatic Sleep Stage Scoring Based on Raw Single-Channel EEG

TL;DR: This paper proposes a deep learning model, named DeepSleepNet, for automatic sleep stage scoring based on raw single-channel EEG, and utilizes convolutional neural networks to extract time-invariant features, and bidirectional-long short-term memory to learn transition rules among sleep stages automatically from EEG epochs.
Journal ArticleDOI

Granger Causality Analysis in Neuroscience and Neuroimaging

TL;DR: Granger causality (G-causality) analysis is used for the characterization of functional circuits underpinning perception, cognition, behavior, and consciousness in neuroscience.
Journal ArticleDOI

DREAMER: A Database for Emotion Recognition Through EEG and ECG Signals From Wireless Low-cost Off-the-Shelf Devices

TL;DR: DREAMER, a multimodal database consisting of electroencephalogram (EEG) and ECG) signals recorded during affect elicitation by means of audio-visual stimuli, indicates the prospects of using low-cost devices for affect recognition applications.
Journal ArticleDOI

Where Does EEG Come From and What Does It Mean

TL;DR: It is argued that the authors know shockingly little about the answer to where do EEG signals come from and what do they mean, and how modern neuroscience technologies that allow us to measure and manipulate neural circuits with high spatiotemporal accuracy might finally bring us some answers.
Journal ArticleDOI

Midfrontal conflict-related theta-band power reflects neural oscillations that predict behavior.

TL;DR: Most of the conflict-related and behaviorally relevant midfrontal EEG signal reflects a modulation of ongoing theta-band oscillations that occurs during the decision process but is not phase-locked to the stimulus or to the response.
Related Papers (5)