Automated evaluation of quality metrics for brain data using deep learning #22
Labels
Atlantis
Project within the Europe-Australia Hub
CHECK_LABEL
Labels needs to be checked by a human
project
hi @ohbm/project-monitors: My project is ready!'
Project info
to automate the evaluation of quality metrics (such as snr, cnr, fwhm, etc.) for neuroimaging data using deep learning methodsTitle:
**Brain-QC**Project lead:
Dhritiman Das (@dhritimandas)
@Hoda1394,
@Aakanksha-Rana
@satra
Timezone:
Eastern Time (UTC -04)Description:
The goal of this project is to create an automated deep-learning based pipeline for evaluation of quality metrics for 3D brain imaging data and providing a decision on the quality and usability of the data.Link to project: https://github.com/neuronets/auto-qc
Mattermost handle: @dhritiman @Hoda, @Aakanksha-Rana
Goals for the OHBM Brainhack
Create a dataset for benchmarking quality metrics: many open-access datasets are available via DataLad, OpenNeuro and https://sensein.github.io/open-data-processing/
the goal is to gather the dataset, organize them and prepare for further quality assessment.
Pipeline development: develop automated, robust machine learning methods to assess image quality metrics for a given scan
Develop tutorials: if a successful pipeline is developed, then create suitable tutorials for dissemination within and outside the community
Good first issues:
Skills:
Python-confirmed
MRI:
FSL: beginner
Nipype: beginner
BIDS: beginner
Git: 1
and most importantly,
Enthusiasm: Expert
Willingness to learn and collaborate: Expert
Chat channel:
https://mattermost.brainhack.org/brainhack/channels/hbmhack-brain_qc
Image for the OHBM brainhack website
Project submission
Submission checklist
Once the issue is submitted, please check items in this list as you add under 'Additional project info'
Please include the following above (all required):
You can also include information about (all optional):
We would like to think about how you will credit and onboard new members to your project. We recommend reading references from this section. If you'd like to share your thoughts with future project participants, you can include information about (recommended):
QMENTA has agreed to sponsor the event and provide computational resources through their platform.
The text was updated successfully, but these errors were encountered: