Pinned Repositories
3design.github.io
This is the repo for the BigBrain website at bigbrainproject.org
APPIAN
APPIAN is an open-source automated software pipeline for analyzing PET images in conjunction with MRI. The goal of APPIAN is to facilitate reproducible research and to make PET tracer kinetic data analysis easier for users with moderate computing skills.
brainhack-school
Help and collaboration
BrainSwag
BrainSpell solely houses neuroimaging stereotaxic coordinates. Expanding the BrainSpell database to include ‘omics’ data from neuronal, neurovascular and cerebrospinal fluid (CSF) studies would better facilitate multimodal analysis. In concert with the neuronal component, a healthy cerebral circulation is essential for maintaining brain perfusion and function. The CSF supports/cushions the brain, circulates nutrients obtained from the blood, and removes waste products. Observed changes in brain function in health or disease could be due to underlying alterations in any or all of the above components. The proposed changes to BrainSpell will enable users to integrate multiple streams of information and have a better view of the big picture.
fmriprep
fMRIprep is a functional magnetic resonance image pre-processing pipeline that is designed to provide an easily accessible, state-of-the-art interface that is robust to differences in scan acquisition protocols and that requires minimal user input, while providing easily interpretable and comprehensive error and output reporting.
microdraw
Collaborative vectorial annotation tool for ultra high resolution data
neurodatascience.github.io
NeuroData Science Lab Website
open-brain-consent
Making neuroimaging open from the grounds (consent form) and up (tools)
pna-notebooks
Notebooks for the Berkeley course on practical neuroimaging
pyminc
A python interface to the MINC 2 library, allowing use of numpy arrays to access MINC data, and other such similar goodies, developed by Jason Lerch
pjtoussaint's Repositories
pjtoussaint/3design.github.io
This is the repo for the BigBrain website at bigbrainproject.org
pjtoussaint/APPIAN
APPIAN is an open-source automated software pipeline for analyzing PET images in conjunction with MRI. The goal of APPIAN is to facilitate reproducible research and to make PET tracer kinetic data analysis easier for users with moderate computing skills.
pjtoussaint/brainhack-school
Help and collaboration
pjtoussaint/BrainSwag
BrainSpell solely houses neuroimaging stereotaxic coordinates. Expanding the BrainSpell database to include ‘omics’ data from neuronal, neurovascular and cerebrospinal fluid (CSF) studies would better facilitate multimodal analysis. In concert with the neuronal component, a healthy cerebral circulation is essential for maintaining brain perfusion and function. The CSF supports/cushions the brain, circulates nutrients obtained from the blood, and removes waste products. Observed changes in brain function in health or disease could be due to underlying alterations in any or all of the above components. The proposed changes to BrainSpell will enable users to integrate multiple streams of information and have a better view of the big picture.
pjtoussaint/fmriprep
fMRIprep is a functional magnetic resonance image pre-processing pipeline that is designed to provide an easily accessible, state-of-the-art interface that is robust to differences in scan acquisition protocols and that requires minimal user input, while providing easily interpretable and comprehensive error and output reporting.
pjtoussaint/microdraw
Collaborative vectorial annotation tool for ultra high resolution data
pjtoussaint/neurodatascience.github.io
NeuroData Science Lab Website
pjtoussaint/open-brain-consent
Making neuroimaging open from the grounds (consent form) and up (tools)
pjtoussaint/pna-notebooks
Notebooks for the Berkeley course on practical neuroimaging
pjtoussaint/pyminc
A python interface to the MINC 2 library, allowing use of numpy arrays to access MINC data, and other such similar goodies, developed by Jason Lerch
pjtoussaint/RMINC
Statistics for MINC volumes: A library to integrate voxel-based statistics for MINC volumes into the R environment. Supports getting and writing of MINC volumes, running voxel-wise linear models, correlations, etc.; correcting for multiple comparisons using the False Discovery Rate, and more. With contributions from Jason Lerch, Jim Nikelski and Matthijs van Eede. Some additional information can be found here:
pjtoussaint/tutorials-and-resources
A list of tutorials and other resources useful to learn open science and neuroimaging, EEG and MEG