Posted By: NITRC ADMIN - Dec 26, 2017 Tool/Resource: Journals
A Novel Framework for Groupwise Registration of fMRI Images based on Common Functional Networks. Proc IEEE Int Symp Biomed Imaging. 2017 Apr;2017:485-489 Authors: Zhao Y, Zhang S, Chen H, Zhang W, Jinglei L, Jiang X, Shen D, Liu T Abstract Accurate registration plays a critical role in group-wise functional Magnetic Resonance Imaging (fMRI) image analysis, as spatial correspondence among different brain images is a prerequisite for inferring meaningful patterns. However, the problem is challenging and remains open, and more effort should be made to advance the state-of-the-art image registration methods for fMRI images. Inspired by the observation that common functional networks can be reconstructed from fMRI image across individuals, we propose a novel computational framework for simultaneous groupwise fMRI image registration by utilizing those common functional networks as references for spatial alignments. In this framework, firstly, individualized functional networks in each subject are inferred using Independent Component Analysis (ICA); secondly, congealing groupwise registration that takes entropy of stacked independent components (ICs) from all the subjects as objective function is applied to register individual functional maps for maximal matching. The proposed framework is evaluated by and applied to an Alzheimer's Disease (AD) fMRI dataset and shows reasonably good results. PMID: 29276573 [PubMed]
Link to Original Article |
You can link this page to your Slack channel. When you do this, every new posting on this NITRC page will trigger a short message on your Slack channel linking to the update. If you have the RSS App installed in your Slack workspace, you can paste this slash command directly into your channel:
/feed https://www.nitrc.org/export/rss20_forum.php?forum_id=8123
Full instructions for installing and using the RSS app with Slack feed to Slack can be found in the Slack Help Center.
This news item currently has no comments.