some default

Laura Waite 6f527a5990 add README 2 years ago
.datalad c034c7e39a [DATALAD] new dataset 2 years ago
sub-032317 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
sub-032318 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
sub-032319 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
sub-032320 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
sub-032321 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
sub-032322 93658b6cd7 [DATALAD] Added content extracted from archive oxford-PM.tar.gz 2 years ago
.gitattributes c034c7e39a [DATALAD] new dataset 2 years ago
README 6f527a5990 add README 2 years ago

README

## University of Oxford WIN Macaque PM (oxford-pm)
The [Oxford-pm Prime](https://fcon_1000.projects.nitrc.org/indi/PRIME/oxford2.html)
dataset includes post-mortem diffusion data from a 7T scanner on six macaques.

## Data Access
Creative Commons – Attribution-NonCommercial Share Alike (CC-BY-NC-SA)

## Data Overview

**Species**:
* Macaca mulatta

**Sample Description**:
* Sample size: 6
* Age distribution: 4.03-15.81 years (mean 9.98, std 4.64)
* Sex distribution: n=4 male, n=2 female

**Scan sequences**:
* Scanner type: 7T whole body scanner
* Diffusion-weighted

## DataLad Datasets
This repository is a [DataLad](https://www.datalad.org/) dataset. It provides
fine-grained data access down to the level of individual files, and allows for
tracking future updates. In order to use this repository for data retrieval,
[DataLad](https://www.datalad.org/) is required. It is a free and
open source command line tool, available for all major operating
systems, and builds upon Git and [git-annex](https://git-annex.branchable.com/)
to share, synchronize, and version control collections of large files.

More information on DataLad and how to use it can be found in the DataLad
Handbook at [handbook.datalad.org](http://handbook.datalad.org/en/latest/index.html).
The chapter "DataLad Datasets" is especially helpful as an introduction to
datasets.