Published July 9, 2020 | Version 1.0
Lesson Open

naturalistic-data-analysis/naturalistic_data_analysis: Version 1.0

  • 1. Dartmouth College
  • 2. Columbia University
  • 3. University of Texas at Austin
  • 4. New Classrooms
  • 5. Donders Institute For Brain, Cognition, And Behavior
  • 6. Forschungszentrum Jülich
  • 7. University Of California Los Angeles
  • 8. Johns Hopkins University
  • 9. SungKyunKwan University
  • 10. Tel-Aviv University

Description

Version 1.0 of the Naturalistic-Data.org educational course. Naturalistic-Data.org is an open access online educational resource that provides an introduction to analyzing naturalistic functional neuroimaging datasets using Python. Naturalistic-Data.org is built using Jupyter-Book and provides interactive tutorials for introducing advanced analytic techniques . This includes functional alignment, inter-subject correlations, inter-subject representational similarity analysis, inter-subject functional connectivity, event segmentation, natural language processing, hidden semi-markov models, automated annotation extraction, and visualizing high dimensional data. The tutorials focus on practical applications using open access data, short open access video lectures, and interactive Jupyter notebooks. All of the tutorials use open source packages from the python scientific computing community (e.g., numpy, pandas, scipy, matplotlib, scikit-learn, networkx, nibabel, nilearn, brainiak, hypertoos, timecorr, pliers, statesegmentation, and nltools). The course is designed to be useful for varying levels of experience, including individuals with minimal experience with programming, Python, and statistics.

Files

naturalistic-data-analysis/naturalistic_data_analysis-1.0.zip

Files (190.0 MB)

Additional details