Posted By: NITRC ADMIN - Jul 27, 2018 Tool/Resource: Journals
Weighted Symbolic Dependence Metric (wSDM) for fMRI resting-state connectivity: A multicentric validation for frontotemporal dementia. Sci Rep. 2018 Jul 25;8(1):11181 Authors: Moguilner S, García AM, Mikulan E, Hesse E, García-Cordero I, Melloni M, Cervetto S, Serrano C, Herrera E, Reyes P, Matallana D, Manes F, Ibáñez A, Sedeño L Abstract The search for biomarkers of neurodegenerative diseases via fMRI functional connectivity (FC) research has yielded inconsistent results. Yet, most FC studies are blind to non-linear brain dynamics. To circumvent this limitation, we developed a "weighted Symbolic Dependence Metric" (wSDM) measure. Using symbolic transforms, we factor in local and global temporal features of the BOLD signal to weigh a robust copula-based dependence measure by symbolic similarity, capturing both linear and non-linear associations. We compared this measure with a linear connectivity metric (Pearson's R) in its capacity to identify patients with behavioral variant frontotemporal dementia (bvFTD) and controls based on resting-state data. We recruited participants from two international centers with different MRI recordings to assess the consistency of our measure across heterogeneous conditions. First, a seed-analysis comparison of the salience network (a specific target of bvFTD) and the default-mode network (as a complementary control) between patients and controls showed that wSDM yields better identification of resting-state networks. Moreover, machine learning analysis revealed that wSDM yielded higher classification accuracy. These results were consistent across centers, highlighting their robustness despite heterogeneous conditions. Our findings underscore the potential of wSDM to assess fMRI-derived FC data, and to identify sensitive biomarkers in bvFTD. PMID: 30046142 [PubMed - in process]
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=8857
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.