Abstract

Schizophrenia (SZ) and bipolar disorder (BP) share significant overlap in clinical symptoms, brain characteristics, and risk genes, and both are associated with dysconnectivity among large-scale brain networks. Resting state functional magnetic resonance imaging (rsfMRI) data facilitates studying macroscopic connectivity among distant brain regions. Standard approaches to identifying such connectivity include seed-based correlation and data-driven clustering methods such as independent component analysis (ICA) but typically focus on average connectivity. In this study, we utilize ICA on rsfMRI data to obtain intrinsic connectivity networks (ICNs) in cohorts of healthy controls (HCs) and age matched SZ and BP patients. Subsequently, we investigated difference in functional network connectivity, defined as pairwise correlations among the timecourses of ICNs, between HCs and patients. We quantified differences in both static (average) and dynamic (windowed) connectivity during the entire scan duration. Disease-specific differences were identified in connectivity within different dynamic states. Notably, results suggest that patients make fewer transitions to some states (states 1, 2, and 4) compared to HCs, with most such differences confined to a single state. SZ patients showed more differences from healthy subjects than did bipolars, including both hyper and hypo connectivity in one common connectivity state (dynamic state 3). Also group differences between SZ and bipolar patients were identified in patterns (states) of connectivity involving the frontal (dynamic state 1) and frontal-parietal regions (dynamic state 3). Our results provide new information about these illnesses and strongly suggest that state-based analyses are critical to avoid averaging together important factors that can help distinguish these clinical groups.

Highlights

  • Schizophrenia (SZ) and bipolar disorder (BP) are two common psychiatric conditions characterized by gray and white matter abnormalities and disrupted connectivity across large-scale brain networks (Mohamed et al, 1999; Kubicki et al, 2007)

  • The results show that dynamic functional network connectivity (FNC) captured by sliding time window analysis can reveal significant differences between patients and controls that cannot be found using conventional stationary FNC analysis

  • The AUD network is represented by a single component (IC 36) with bilateral activation of the superior temporal gyrus (STG)

Read more

Summary

Introduction

Schizophrenia (SZ) and bipolar disorder (BP) are two common psychiatric conditions characterized by gray and white matter abnormalities and disrupted connectivity across large-scale brain networks (Mohamed et al, 1999; Kubicki et al, 2007). Such dysconnectivity includes disruption of both structural (Kubicki et al, 2007; Rotarska-Jagiela et al, 2008, 2009) and functional connectivity (FC; Meyer-Lindenberg et al, 2001; Uhlhaas and Singer, 2006; Garrity et al, 2007; Calhoun et al, 2008a, 2011) that may be related to clinical symptoms, including cognitive dysfunction. In seed-based approach, the connectivity patterns are based on a selected seed region of interest (ROI), while ICA-based methods do not Frontiers in Human Neuroscience www.frontiersin.org

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call