Literature DB >> 28675490

The significance of negative correlations in brain connectivity.

Liang Zhan1, Lisanne M Jenkins2, Ouri E Wolfson3, Johnson Jonaris GadElkarim4, Kevin Nocito4, Paul M Thompson5, Olusola A Ajilore2, Moo K Chung6, Alex D Leow2,3,4.   

Abstract

Understanding the modularity of functional magnetic resonance imaging (fMRI)-derived brain networks or "connectomes" can inform the study of brain function organization. However, fMRI connectomes additionally involve negative edges, which may not be optimally accounted for by existing approaches to modularity that variably threshold, binarize, or arbitrarily weight these connections. Consequently, many existing Q maximization-based modularity algorithms yield variable modular structures. Here, we present an alternative complementary approach that exploits how frequent the blood-oxygen-level-dependent (BOLD) signal correlation between two nodes is negative. We validated this novel probability-based modularity approach on two independent publicly-available resting-state connectome data sets (the Human Connectome Project [HCP] and the 1,000 functional connectomes) and demonstrated that negative correlations alone are sufficient in understanding resting-state modularity. In fact, this approach (a) permits a dual formulation, leading to equivalent solutions regardless of whether one considers positive or negative edges; (b) is theoretically linked to the Ising model defined on the connectome, thus yielding modularity result that maximizes data likelihood. Additionally, we were able to detect novel and consistent sex differences in modularity in both data sets. As data sets like HCP become widely available for analysis by the neuroscience community at large, alternative and perhaps more advantageous computational tools to understand the neurobiological information of negative edges in fMRI connectomes are increasingly important.
© 2017 Wiley Periodicals, Inc.

Entities:  

Keywords:  F1000; Human Connectome Project; RRID: SCR_005361; RRID: SCR_006942; functional connectome; modularity; negative correlations; resting state

Mesh:

Substances:

Year:  2017        PMID: 28675490      PMCID: PMC6625529          DOI: 10.1002/cne.24274

Source DB:  PubMed          Journal:  J Comp Neurol        ISSN: 0021-9967            Impact factor:   3.215


  15 in total

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6.  From Default Mode Network to the Basal Configuration: Sex Differences in the Resting-State Brain Connectivity as a Function of Age and Their Clinical Correlates.

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Review 9.  The Locus Coeruleus- Norepinephrine System in Stress and Arousal: Unraveling Historical, Current, and Future Perspectives.

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10.  NeuroCave: A web-based immersive visualization platform for exploring connectome datasets.

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Journal:  Netw Neurosci       Date:  2018-09-01
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