BMC Psychiatry (Aug 2023)

Functional connectivity analysis on electroencephalography signals reveals potential biomarkers for treatment response in major depression

  • Shiau-Shian Huang,
  • Yu-Hsiang Yu,
  • His-Han Chen,
  • Chia-Chun Hung,
  • Yao-Ting Wang,
  • Chieh Hsin Chang,
  • Syu-Jyun Peng,
  • Po-Hsiu Kuo

DOI
https://doi.org/10.1186/s12888-023-04958-8
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 11

Abstract

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Abstract Background The treatment efficacy varies across individual patients with major depressive disorder (MDD). It lacks robust electroencephalography (EEG) markers for an antidepressant-responsive phenotype. Method This is an observational study enrolling 28 patients with MDD and 33 healthy controls (mean age of 40.7 years, and 71.4% were women). Patients underwent EEG exams at baseline (week0) and week1, while controls’ EEG recordings were acquired only at week0. A resting eye-closing EEG segment was analyzed for functional connectivity (FC). Four parameters were used in FC analysis: (1) node strength (NS), (2) global efficiency (GE), (3) clustering coefficient (CC), and (4) betweenness centrality (BC). Results We found that controls had higher values in delta wave in the indices of NS, GE, BC, and CC than MDD patients at baseline. After treatment with antidepressants, patients’ FC indices improved significantly, including GE, mean CC, and mean NS in the delta wave. The FC in the alpha and beta bands of the responders were higher than those of the non-responders. Conclusions The FC of the MDD patients at baseline without treatment was worse than that of controls. After treatment, the FC improved and was close to the values of controls. Responders showed better FC in the high-frequency bands than non-responders, and this feature exists in both pre-treatment and post-treatment EEG.

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