Functional Connectivity-Guided Band Selection for Motor Imagery Brain-Computer Interfaces
Nat\'alia Ara\'ujo do Carmo, Aarthy Nagarajan

TL;DR
This study introduces a functional connectivity-guided spectral band selection method for motor imagery BCI that improves efficiency and robustness over traditional fixed-band approaches.
Contribution
It proposes a novel FC-guided band selection framework using phase-based connectivity metrics to optimize spectral bands for MI-BCI decoding.
Findings
FC-guided selection outperforms random ablation in accuracy.
Reduces CSP feature extraction by up to 77.8%.
PLV provides robust inter-session performance.
Abstract
Reliable control in motor imagery brain-computer interfaces (MI-BCIs) requires the precise decoding of user-specific neural rhythms, which vary significantly across individuals. The Common Spatial Pattern (CSP) algorithm is a cornerstone of MI-BCI decoding, yet its performance depends strongly on the spectral range of the input EEG data. Although Filter Bank CSP (FBCSP) extends this as a data-driven decoding framework, its frequency sub-bands are predefined rather than selected using subject-specific physiological criteria. This paper presents a proof-of-concept study of static functional connectivity (FC)-guided band selection for MI-BCI, demonstrated using a conventional FBCSP-based pipeline. The proposed method identifies the most discriminative spectral bands by calculating phase-based connectivity across four sensorimotor channels using wPLI, PLV, and PLI. Nine bands in a 4-40 Hz…
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