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    Complete Neural Signal Processing And Analysis: Zero To Hero

    Posted By: ELK1nG
    Complete Neural Signal Processing And Analysis: Zero To Hero

    Complete Neural Signal Processing And Analysis: Zero To Hero
    Last updated 11/2022
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 19.63 GB | Duration: 46h 54m

    Learn signal processing and statistics using brain electrical data with expert instruction and code challenges in MATLAB

    What you'll learn

    Signal processing

    Time series data analysis

    Statistics (non-parametric)

    Neuroscience (brain science)

    Spectral analysis application

    Applied math

    Requirements

    Basic MATLAB knowledge

    Access to MATLAB or Octave

    Description

    Use your brain to learn signal processing, data analysis, and statistics… by learning about brains!If you are reading this, I guess you have a brain. Your brain generates electrical signals that can be measured using electrodes, which are like small antennas. These electrical signals are rreeeeeaaallly complicated, because the brain is really complicated! But learning how to analyze brain electrical signals is an amazing and fascinating way to learn about signal processing, data visualization, spectral analysis, synchronization (connectivity) analyses, and statistics (in particular, permutation-based statistics).What do you get in this course?This course contains over 46 hours of video instruction, plus TONS of MATLAB exercises, problem sets, and challenges.If you do all the MATLAB exercises, this course is easily well over 100 hours of educational content.And you get access to the Q&A forum, where you can post specific questions about the course material and I answer as quickly as I can (typically 1-2 days).By the end of this course, you will have confidence in processing, cleaning, analyzing, and performing statistics on brain electrical activity.What do you need to know before joining this course?I have tried to make this course accessible to anyone who is interested in learning neural signal processing and time series analysis.I believe you can simply start this course without any formal background in neuroscience/biology, and without any background in signal processing/math/statistics. That said, some background in these topics will definitely be helpful.However, I do assume that you have access to MATLAB (or Octave), and that you have some basic MATLAB coding skills (variables, for-loops, basic plotting). If you are a total noob to MATLAB, then please first take an intro-MATLAB course and then come back here. Why should you trust this weird Mike X Cohen guy?I've been teaching this material for almost 20 years. I'm really dedicated to teaching and I work really hard to improve my courses each year. Check out the reviews of this course and my other courses to see what my students think of my teaching style and dedication.I've also written several textbooks on neural data analysis and scientific programming. And there are more books and more courses on the way!… but you have to watch out for my weird sense of humor. You've been warned…

    Overview

    Section 1: Introduction

    Lecture 1 Broad introduction to neural time series analysis

    Lecture 2 Neural data science as source sepatation

    Lecture 3 What to expect from this course

    Lecture 4 A quick note about how this went from 2 to 1 course

    Lecture 5 Download this file if you are using Octave (otherwise ignore)

    Section 2: The basics of neural signal processing

    Lecture 6 Download MATLAB materials for this course

    Lecture 7 Origin, significance, and interpretation of EEG

    Lecture 8 Overview of possible preprocessing steps

    Lecture 9 ICA for data cleaning

    Lecture 10 Signal artifacts (not) to worry about

    Lecture 11 Topographical mapping

    Lecture 12 Overview of time-domain analyses (ERPs)

    Lecture 13 Motivations for rhythm-based analyses

    Lecture 14 Interpreting time-frequency plots

    Lecture 15 The empirical datasets used in this course

    Lecture 16 MATLAB: EEG dataset

    Lecture 17 MATLAB: V1 dataset

    Lecture 18 Where to get more EEG data?

    Lecture 19 Simulating data to understand analysis methods

    Lecture 20 Problem set: introduction and explanation

    Lecture 21 Problem set (1/2): Simulating and visualizing data

    Lecture 22 Problem set (2/2): Simulating and visualizing data

    Lecture 23 Planck, neuron, universe

    Section 3: Simulating time series signals and noise

    Lecture 24 MATLAB files for this section

    Lecture 25 Why simulate data?

    Lecture 26 Generating white and pink noise

    Lecture 27 The three important equations (sine, Gaussian, Euler's)

    Lecture 28 Generating "chirps" (frequency-modulated signals)

    Lecture 29 Non-stationary narrowband activity via filtered noise

    Lecture 30 Transient oscillation

    Lecture 31 The eeglab EEG structure

    Lecture 32 Project 1-1: Channel-level EEG data

    Lecture 33 Project 1-1: Solutions

    Lecture 34 Projecting dipoles onto EEG electrodes

    Lecture 35 Project 1-2: dipole-level EEG data

    Lecture 36 Project 1-2: Solutions

    Section 4: Time-domain analyses

    Lecture 37 MATLAB files for this section

    Lecture 38 Event-related potential (ERP)

    Lecture 39 Lowpass filter an ERP

    Lecture 40 Compute the average reference

    Lecture 41 Butterfly plot and topo-variance time series

    Lecture 42 Topography time series

    Lecture 43 Simulate ERPs from two dipoles

    Lecture 44 Project 2-1: Quantify the ERP as peak-mean or peak-to-peak

    Lecture 45 Project 2-1: Solutions

    Lecture 46 Project 2-2: ERP peak latency topoplot

    Lecture 47 Project 2-2: Solutions

    Section 5: Static spectral analysis

    Lecture 48 Download MATLAB materials for this section

    Lecture 49 Course tangent: self-accountability in online learning

    Lecture 50 Time and frequency domains

    Lecture 51 Sine waves

    Lecture 52 MATLAB: Sine waves and their parameters

    Lecture 53 Complex numbers

    Lecture 54 Euler's formula

    Lecture 55 MATLAB: Complex numbers and Euler's formula

    Lecture 56 The dot product

    Lecture 57 MATLAB: Dot product and sine waves

    Lecture 58 Complex sine waves

    Lecture 59 MATLAB: Complex sine waves

    Lecture 60 The complex dot product

    Lecture 61 MATLAB: The complex dot product

    Lecture 62 Fourier coefficients

    Lecture 63 MATLAB: The discrete-time Fourier transform

    Lecture 64 MATLAB: Fourier coefficients as complex numbers

    Lecture 65 Frequencies in the Fourier transform

    Lecture 66 Positive and negative frequencies

    Lecture 67 Accurate scaling of Fourier coefficients

    Lecture 68 MATLAB: Positive/negative spectrum; amplitude scaling

    Lecture 69 MATLAB: Spectral analysis of resting-state EEG

    Lecture 70 MATLAB: Quantify alpha power over the scalp

    Lecture 71 The perfection of the Fourier transform

    Lecture 72 The inverse Fourier transform

    Lecture 73 MATLAB: Reconstruct a signal via inverse FFT

    Lecture 74 Frequency resolution and zero-padding

    Lecture 75 MATLAB: Frequency resolution and zero-padding

    Lecture 76 Estimation errors and Fourier coefficients

    Lecture 77 Signal nonstationarities

    Lecture 78 MATLAB: Examples of sharp nonstationarities on power spectra

    Lecture 79 MATLAB: Examples of smooth nonstationarities on power spectra

    Lecture 80 Welch's method for smooth spectral decomposition

    Lecture 81 MATLAB: Welch's method on phase-slip data

    Lecture 82 MATLAB: Welch's method on resting-state EEG data

    Lecture 83 MATLAB: Welch's method on V1 dataset

    Lecture 84 Problem set (1/2): Spectral analyses of real and simulated data

    Lecture 85 Problem set (2/2): Spectral analyses of real and simulated data

    Section 6: More on static spectral analyses

    Lecture 86 MATLAB files for this section

    Lecture 87 Program the Fourier transform from scratch!

    Lecture 88 Program the inverse Fourier transform from scratch!

    Lecture 89 Spectral separation on simulated dipole data

    Lecture 90 FFT of stationary and non-stationary simulated data

    Lecture 91 FFT and Welch's method on EEG resting state data

    Lecture 92 To taper or not to taper?

    Lecture 93 Extracting average power from a frequency band

    Lecture 94 Comparing average spectra vs. spectra of an average

    Lecture 95 Project 3-1: Topography of spectrally separated activity

    Lecture 96 Project 3-1: Solutions

    Lecture 97 Project 3-2: Topography of alpha-theta ratio

    Lecture 98 Project 3-2: Solutions

    Section 7: Time-frequency analysis

    Lecture 99 Download MATLAB materials for this section

    Lecture 100 Morlet wavelets in time and in frequency

    Lecture 101 MATLAB: Getting to know Morlet wavelets

    Lecture 102 Convolution in the time domain

    Lecture 103 MATLAB: Time-domain convolution

    Lecture 104 Convolution as spectral multiplication

    Lecture 105 MATLAB: The five steps of convolution

    Lecture 106 MATLAB: Convolve real data with a Gaussian

    Lecture 107 MATLAB: Complex Morlet wavelets

    Lecture 108 Complex Morlet wavelet convolution

    Lecture 109 Convolution coding tips

    Lecture 110 MATLAB: Complex Morlet wavelet convolution

    Lecture 111 MATLAB: Convolution with all trials!

    Lecture 112 MATLAB: A full time-frequency power plot!

    Lecture 113 Averaging phase values

    Lecture 114 Inter-trial phase clustering (ITPC/ITC)

    Lecture 115 MATLAB: ITPC

    Lecture 116 Parameters of Morlet wavelet (time-frequency trade-off)

    Lecture 117 MATLAB: Time-frequency trade-off

    Lecture 118 The stationarity assumption of wavelet convolution

    Lecture 119 The "1/f" structure of spectral brain dynamics

    Lecture 120 Baseline normalization of time-frequency power

    Lecture 121 MATLAB: Baseline normalization of TF plots

    Lecture 122 Scale-free dynamics via detrended fluctuation analysis (DFA)

    Lecture 123 MATLAB: detrended fluctuation analysis

    Lecture 124 The filter-Hilbert time-frequency method

    Lecture 125 MATLAB: Filter-Hilbert

    Lecture 126 The short-time Fourier transform (STFFT)

    Lecture 127 MATLAB: STFFT

    Lecture 128 Comparing wavelet, filter-Hilbert, and STFFT

    Lecture 129 The multi-taper method

    Lecture 130 Within-subject, cross-trial regression

    Lecture 131 MATLAB: Cross-trial regression

    Lecture 132 Temporal resolution vs. precision, pre- and post-convolution

    Lecture 133 MATLAB: Downsampling time-frequency results

    Lecture 134 MATLAB: Linear vs. logarithmic frequency scaling

    Lecture 135 Separating phase-locked and non-phase-locked activity

    Lecture 136 MATLAB: Total, non-phase-locked, and phase-locked power

    Lecture 137 Edge effects, buffer zones, and data epoch length

    Lecture 138 Problem set (1/3): Time-frequency analysis

    Lecture 139 Problem set (2/3): Time-frequency analysis

    Lecture 140 Problem set (3/3): Time-frequency analysis

    Section 8: More on time-frequency analysis

    Lecture 141 MATLAB files for this section

    Lecture 142 Create a family of complex Morlet wavelets

    Lecture 143 Create a time-frequency plot of a nonlinear chirp

    Lecture 144 Compare wavelet-derived spectrum and FFT

    Lecture 145 Wavelet convolution of close frequencies

    Lecture 146 Time-frequency power of multitrial EEG activity

    Lecture 147 Baseline normalize power with dB and % change

    Lecture 148 Exploring wavelet parameters in real data

    Lecture 149 Exploring wavelet parameters in simulated data

    Lecture 150 Inter-trial phase clustering before vs. after removing ERP

    Lecture 151 Downsampling time-frequency power

    Lecture 152 Visualize time-frequency power from all channels

    Lecture 153 Instantaneous frequency in simulated data

    Lecture 154 Instantaneous frequency in real data

    Lecture 155 Project 4-1: Phase-locked, non-phase-locked, and total power

    Lecture 156 Project 4-1: Solutions

    Lecture 157 Narrowband filtering and the Hilbert transform

    Lecture 158 Project 4-2: Time-frequency power plot via filter-Hilbert

    Lecture 159 Project 4-2: Solutions

    Section 9: Synchronization analyses

    Lecture 160 Download MATLAB materials for this section

    Lecture 161 Four things to keep in mind about connectivity

    Lecture 162 Volume conduction and what to do about it

    Lecture 163 Intuition about phase synchronization

    Lecture 164 Inter-site phase clustering (ISPC)

    Lecture 165 MATLAB: ISPC

    Lecture 166 Surface Laplacian for connectivity analyses

    Lecture 167 MATLAB: Laplacian in simulated data

    Lecture 168 MATLAB: Laplacian in real EEG data

    Lecture 169 Phase-lag-based connectivity

    Lecture 170 MATLAB: phase-lag index

    Lecture 171 When to use phase-lag vs. phase-clustering measures

    Lecture 172 MATLAB: Phase synchronization in voltage and Laplacian data

    Lecture 173 Connectivity over time vs. over trials

    Lecture 174 MATLAB: Connectivity over time vs. over trials

    Lecture 175 MATLAB: Simulating data to test connectivity methods

    Lecture 176 Two methods of power-based connectivity

    Lecture 177 Granger causality (prediction)

    Lecture 178 MATLAB: Granger causality

    Lecture 179 "Hubness" from graph theory

    Lecture 180 MATLAB: Connectivity hubs

    Lecture 181 When to use which connectivity method?

    Lecture 182 Problem set (1/2): Pairwise synchronization

    Lecture 183 Problem set (2/2): Pairwise synchronization

    Section 10: More on synchronization analyses

    Lecture 184 MATLAB files for this section

    Lecture 185 Synchronization in simulated noisy oscillators

    Lecture 186 Spurious connectivity in narrowband noise

    Lecture 187 Phase synchronization matrices in multitrial data

    Lecture 188 Power time series correlations

    Lecture 189 Power correlations over trials

    Lecture 190 Scalp Laplacian for electrode-level connectivity

    Lecture 191 All-to-all synchronization and "hubness" (graph theory)

    Lecture 192 Phase-lag index

    Lecture 193 Project 5-1: ISPC and PLI, with and without Laplacian

    Lecture 194 Project 5-1: Solutions

    Lecture 195 Project 5-2: Seeded phase vs. power coupling

    Lecture 196 Project 5-2: Solutions

    Section 11: Permutation-based statistics

    Lecture 197 Download MATLAB materials for this section

    Lecture 198 Introduction: The basis of statistics, necessity, and levels

    Lecture 199 Parametric vs. nonparametric statistics

    Lecture 200 Permutation-based statistics

    Lecture 201 MATLAB: Permutation testing and shuffling

    Lecture 202 MATLAB: Permutation testing in real data

    Lecture 203 Multiple comparisons and limitations of Bonferroni method

    Lecture 204 Cluster-based multiple comparisons correction

    Lecture 205 MATLAB: Cluster correction

    Lecture 206 Extreme pixel-based multiple comparisons correction

    Lecture 207 MATLAB: Extreme pixel correction

    Lecture 208 Illustrating statistical significance in plots

    Lecture 209 Subject- vs. group-level analyses

    Lecture 210 Error bars and guessing significance

    Lecture 211 Three approaches for group-level statistics

    Lecture 212 MATLAB: Extracting features for group analyses

    Lecture 213 Circular inference ("double-dipping")

    Section 12: More on permutation testing statistics

    Lecture 214 MATLAB files for this section

    Lecture 215 Permutation testing for one variable and two groups

    Lecture 216 Meta-permutation test for increased stability

    Lecture 217 Permutation testing in simulated time series

    Lecture 218 Permutation testing for cluster correction in simulated data

    Lecture 219 Permutation testing and cluster correction in real EEG data

    Lecture 220 Project 7-1: Effects of noise smoothness on cluster correction

    Lecture 221 Project 7-1: Solutions

    Lecture 222 Project 7-2: Simulate time-frequency data for statistical testing

    Lecture 223 Project 7-2: Solutions

    Section 13: Multivariate components analysis

    Lecture 224 MATLAB files for this section

    Lecture 225 Background knowledge for this section

    Lecture 226 Simulate multicomponent EEG data

    Lecture 227 Create covariance matrices based on time and on frequency

    Lecture 228 Principal components analysis (PCA) of simulated data

    Lecture 229 Time-based GED for source-separation in simulated data

    Lecture 230 Frequency-based GED for source-separation in simulated data

    Lecture 231 Project 6-1: GED for interacting alpha sources

    Lecture 232 Project 6-1: Solutions

    Section 14: Bonus section

    Lecture 233 Bonus lecture

    Anyone interested in applied signal processing,Interested in non-parametric statistics,Existing or aspiring neuroscience students,Anyone who wants to know what brain electrical signals look like