neurotech-berkeley / Neurotech Course
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CS198-96: Intro to Neurotechnology @ UC Berkeley
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CS 198-96: Introduction to Neurotechnology (Fall 2020)
Welcome to CS 198-96: Intro to Neurotechnology! This course is run by the Education branch of Neurotechnology @ Berkeley.
Meet the Team
- Deven Navani, VP of Education
- Amy Wang, co-head of Education
- Izzy Baldacci, co-head of Education
- Haya Halabieh, content
- Sooyeon Oh, content
- Julie Nemerson, content
- Milan Filo, content
- Abhinav Gundrala, content
- Czarinah Micah Rodriguez, content
Module 1: The Big Picture
Section 1: What is neurotechnology?
- Lesson 1: Neuroimaging (slides) (video)
- Lesson 2: Neuromodulation/Neurostimulation
- Lesson 3: Brain-Computer Interfaces
Section 2: Why neurotechnology?
- Lesson 4: Treat Neurological Disorders (slides) (video)
- Lesson 5: Understand the Brain (slides) (video)
- Lesson 6: Device Control (slides) (video)
- Lesson 7: Human Augmentation (slides) (video)
Section 3: Technologies and Key Players
- Lesson 8: Electroencephalography (EEG)
- Lesson 9: Electromyography (EMG)
- Lesson 10: Magnetic Imaging
- Lesson 11: Invasive Approaches
Section 4: Challenges
- Lesson #12: Bandwidth
- Lesson 13: Implantation
- Lesson 14: Neuroscience knowledge gaps
- Lesson 15: Public Skepticism and Ethics
Module 2: Neuroscience
Section 1: Neuroscience Systems
- Lesson 1: The Nervous System (slides) (video)
- Lesson 2: The brain (slides) (video)
- Lesson 3: Biological Neural Networks (slides) (video)
- Lesson 4: Microstructures of the Brain (slides) (video)
Section 2: The Action Potential
- Lesson 5: An Introduction (slides) (video)
- Lesson 6: Electricity and the Brain (slides) (video)
- Lesson 7: Electrochemical Gradients (slides) (video)
- Lesson 8: Synaptic Transmission (slides) (video)
Section 3: Sensory Systems
- Lesson 9: The Auditory System (slides) (video)
- Lesson 10: The Visual System (slides) (video)
- Lesson 11: The Tactile System (slides) (video)
Section 4: Motor Systems
- Lesson 12: Cortical Motor System and Action Planning (slides) (video)
- Lesson 13: Motor Unit Types (slides) (video)
- Lesson 14: Motor Unit Properties (slides) (video)
Module 3: Working with fMRI Data
Section 1: Overview/Biological Basis of fMRI
- Lesson 1: Brain Activity (slides) (video)
- Lesson 2: Visualizing Brain Activity (slides) (video)
- Lesson 3: Interpreting fMRI (slides) (video)
- Lesson 4: Applications (slides) (video)
Section 2: Intro to fMRI Data
- Lesson 5: What is fMRI Data? (slides) (video)
- Lessons 6: fMRI Dataset Pre-processing and Visualization (slides) (video)
Section 3: Analyzing fMRI Data
Module 4: Working with EEG Data
Section 1: What is EEG?
- Lesson 1: EEG Introduction (slides) (video)
- Lesson 2: Brain Waves (slides) (video)
- Lesson 3: EEG Terminologies (slides) (video)
- Lesson 4: Types of EEG Data Analysis (slides) (video)
Section 2: EEG Signal Processing
- Lesson 5: EEG Pre-processing Part 1 (slides) (video)
- Lessons 6: EEG Pre-processing Part 2 (slides) (video)
- Lessons 7: Fourier Transform (slides) (video)
- Lessons 8: Motor Imagery and PSD (slides) (video)
Spring 2020 Lectures
- Lecture 1: The Big Picture (slides) (webcast)
- Lecture 2: Macro Neuroscience (slides) (webcast)
- Lecture 3: Micro Neuroscience (slides) (webcast)
- Lecture 4: Brain Imaging Techniques (slides) (webcast)
- Lecture 5: Introduction to Signal Processing (webcast)
- Lecture 10: Clinical Applications (slides) (webcast)
- Lecture 11: Neuroethics (slides) (webcast)
- Lecture 12: Current State of the Field (webcast)
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