Skip to content

joc19008/project-iota

 
 

Repository files navigation

i# project-iota STAT 159/259: Reproducible and Collaborative Statistical Data Science

Fall 2015 UC Berkeley

Join the chat at https://gitter.im/Jay4869/project-iota Build Status Coverage Status

This repository contains reproducible analysis based on dataset used in [Working Memory in Healthy and Schizophrenic Individuals] (https://openfmri.org/dataset/ds000115).

Installation

  1. Clone our project repository: https://github.com/berkeley-stat159/project-iota
  2. Install python modules with pip: pip install -r requirements.txt

General steps:

Download Dataset

  • make dataset: Download the 4.2GB ds115_sub001-005.tgz and nipy.bic.berkeley.edu, then automatically unzip sub001, the only subject data that we worked with.

Generate Convolution

  • make convo: Convolve study conditions with hemodynamic function(HDF). Included are the regular block design convolutions as well as a higher resolution convolutions for event-related convolutions.

Modeling & Analysis

  • make modeling: Run all the regressions and related plots mentioned in our report.

Hypothesis Testing

  • make testing: Run all the hypothesis tests and validations of our mode.

Report

  • make report: Compile our final report with analysis results.

Thanks to Jarrod Millman, Matthew Brett, [Ross Barnowski] (https://github.com/rossbar) and [J-B Poline] (https://github.com/jbpoline) for their instructions throughout the semester.

Contributors

About

No description, website, or topics provided.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 62.3%
  • TeX 33.7%
  • Makefile 3.4%
  • Shell 0.6%