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brainlife
Free cloud platform for secure neuroscience data analysis.ezbids
A web service for semi-automated conversion of raw imaging data to BIDSwarehouse
Service that allows data warehousing and workfow orchestrationapp-freesurfer
Freesurfer segments the t1w anatomical data into functionally different parts of the brain. Segmentation/parcellation can then be fed to many other subsequent analysis.abcd-spec
Application for Big Computational Data Specification (v1.1). This specification provide information on how to write an Application that can run on the open platformdocs
Brainlife.io Documentationui-tractview
HTML5 Tract Viewer - used to visualize output from AFQamaretti
Lightweight task orchestration service for ABCD-specification compatible apps.app-mrtrix3-act
Runs mrtrix3 ACT (Anatomically Constrained Tractography) using either single- or multi-shell diffusion-weighted MRI data.app-hcp-acpc-alignment
This app will align a T1w image to the ACPC plane (specifically, the MNI152_T1_1mm template from FSL using a 6 DOF alignment via FSL commands. This protocol was adapted from the HCP Preprocessing Pipeline (https://github.com/Washington-University/HCPpipelines.git). Requires a T1w image input and outputs an acpc_aligned T1w image.brainlife.github.io
brainlife.io home pageapp-mrtrix3-preproc
Run the recommended preprocessing procedure provided by mrtrix3. The options available mostly reflect the optimal DESIGNER pipeline that was recently proposed. This App runs for >15 on topup if both PA and AP dwi files are provided. It detects bvecs flipping (dwigradcheck) and update the gradient table accordingly.app-networkneuro
Build structural brain networks using diffusion-weighted MRI, tractography and a brain atlas for cortical and subcortical parcellation.ui-3dsurfaces
Surfaces viewer based on VTKapp-dtiinit
Runs vistasoft/dtiInit to preprocess and register dwi to anat/t1app-connectome-evaluator
Estimate the quality of your diffusion-weighted data to map human connectomes.app-convert-tck-to-trk
Convert a tractogram in tck format to a trk format filecli
brainlife.io Command Line Interface (CLI)pybrainlife
Library to access brainlife.io data objects and jupyter notebooksapp-documentation-template
This is a minimal template for brainlife.io Apps readme files. Use this as a start for your readme file and please cite the funding sources and articles reported here.dockerfiles
repository to store various dockerfiles used to build docker containers that are used across multiple brainlife appsapp-wmaSeg
Classifies streamlines into known anatomical tracts.app-myelin-mapping
app-life
LiFE (Linear Fasicle Evaluation) predicts the measured diffusion signal using the orientation of the fascicles present in a connectome. LiFE uses the difference between the measured and predicted diffusion signals to measure prediction error. The connectome model prediction error is used to compute two metrics to evaluate the evidence supporting properties of the connectome.ui-networkneuro-tracts
networkneuro fiber/roi visualizerui-conn
Brainlife's nvidia-docker UI container for CONN toolbox; functional connectivity toolboxui-itksnap
ITK-SNAP Visualizer for Brainlifeapp-abcd-hcp-pipeline
ABCD-BIDS pipeline used to process the BIDS input data (DCAN Labs' modified HCP pipeline)app-mouse_seg
Pipeline for mouse brain skull-stripping and ROI segmentationapp-epi-t1-registration
Align a Diffusion weighted MRI image to a T1 image using FSL's epi_reg. INPUTS: DWI data and a T1 image. OUTPUTS aligned DWI filedapp-denoise-tensorflow
app-fslDTIFIT
This app will fit the diffusion tensor model (DTI) to a diffusion MRI image using FSL's dtifit commmand.app-bold-time-series
an app to get nuisance regressed time series from a preprocessed bold, confounds, and a parcapp-tractanalysisprofiles
Create plots of diffusion metrics (i.e. FA, MD, RD, AD) for each of the segmented tracts from AFQ, known as Tract Profiles. Obtains streamline positions from segmented tracts and plots the metrics of interest along "nodes" of the tract, allowing for comparison of individual subject tracts. Requires the dt6 output from dtiinit and a white matter classification output from AFQ or WMAapp-cortex-tissue-mapping-stats
app-tractseg
Brainlife App for MIC-DKFZ/TractSeg. A tool for fast and accurate white matter bundle segmentation from Diffusion MRI using pretrained pytorch ML model.app-noddi-amico
This app will fit the Neurite Orientation Dispersion and Density Imaging (NODDI; Zhang et al, 2012) model to multi-shell, normalized DWI data using the Accelerated Microstructure Imaging via Convex Optimization (AMICO; Daducci et al, 2015) toolbox. Requires normalized, multi-shell DWI data (including bvals and bvecs) and an optional brainmask of the DWI. Will output the four NODDI output files: neurite density index (ndi), orientation dispersion index (odi), isotropic volume fraction (isovf), and the directions (dirs).app-qsiprep
Preprocessing of diffusion MRI data. It includes automatically generated preprocessing pipelines that correctly group, distortion correct, motion correct, denoise, coregister and resample your scans, producing visual reports and QC metrics.app-tractclassification
This service uses Automated fiber quantification AFQ and fe structure output from LiFE to identify major tract segments and quantify tissue properties along their trajectories. You can choose to have the zero weighted fibers (as determined by LiFE) removed before or after AFQ is applied. useinterhemisphericsplit is a variable from AFQ, which if set to true will cut fibers crossing between hemispheres with a midsaggital plane below z=-10. This is to get rid of CST fibers that appear to cross at the level of the brainstem. For more information about AFQ see https://github.com/yeatmanlab/AFQ/wikiapp-snr_in_cc
Brainlife.io app that computes the signal-to-noise ratio in the corpus callosumLove Open Source and this site? Check out how you can help us