Journal of Personalized Medicine (Aug 2020)

Resting-State Isolated Effective Connectivity of the Cingulate Cortex as a Neurophysiological Biomarker in Patients with Severe Treatment-Resistant Schizophrenia

  • Masataka Wada,
  • Shinichiro Nakajima,
  • Ryosuke Tarumi,
  • Fumi Masuda,
  • Takahiro Miyazaki,
  • Sakiko Tsugawa,
  • Kamiyu Ogyu,
  • Shiori Honda,
  • Karin Matsushita,
  • Yudai Kikuchi,
  • Shinya Fujii,
  • Daniel M. Blumberger,
  • Zafiris J. Daskalakis,
  • Masaru Mimura,
  • Yoshihiro Noda

DOI
https://doi.org/10.3390/jpm10030089
Journal volume & issue
Vol. 10, no. 3
p. 89

Abstract

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Background: The neural basis of treatment-resistant schizophrenia (TRS) remains unclear. Previous neuroimaging studies suggest that aberrant connectivity between the anterior cingulate cortex (ACC) and default mode network (DMN) may play a key role in the pathophysiology of TRS. Thus, we aimed to examine the connectivity between the ACC and posterior cingulate cortex (PCC), a hub of the DMN, computing isolated effective coherence (iCoh), which represents causal effective connectivity. Methods: Resting-state electroencephalogram with 19 channels was acquired from seventeen patients with TRS and thirty patients with non-TRS (nTRS). The iCoh values between the PCC and ACC were calculated using sLORETA software. We conducted four-way analyses of variance (ANOVAs) for iCoh values with group as a between-subject factor and frequency, directionality, and laterality as within-subject factors and post-hoc independent t-tests. Results: The ANOVA and post-hoc t-tests for the iCoh ratio of directionality from PCC to ACC showed significant findings in delta (t45 = 7.659, p = 0.008) and theta (t45 = 8.066, p = 0.007) bands in the left side (TRS Conclusion: Left delta and theta PCC and ACC iCoh ratio may represent a neurophysiological basis of TRS. Given the preliminary nature of this study, these results warrant further study to confirm the importance of iCoh as a clinical indicator for treatment-resistance.

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