ArXiv TLDR

Functional Connectivity-Guided Band Selection for Motor Imagery Brain-Computer Interfaces

🐦 Tweet
2605.00746

Natália Araújo do Carmo, Aarthy Nagarajan

q-bio.NCeess.SPphysics.optics

TLDR

This paper introduces a functional connectivity-guided method for selecting optimal frequency bands in motor imagery BCIs, improving decoding efficiency.

Key contributions

  • Introduces a functional connectivity (FC)-guided method for selecting optimal frequency bands in MI-BCIs.
  • Ranks spectral bands using phase-based connectivity (wPLI, PLV, PLI) to identify the most discriminative ones.
  • Reduces required CSP fits by 22.2%-77.8% while maintaining near-baseline decoding accuracy.
  • Shows PLV enables aggressive dimensionality reduction and wPLI provides superior inter-session robustness.

Why it matters

Current MI-BCI decoding methods like FBCSP rely on predefined frequency bands, which aren't subject-specific. This paper offers a principled, data-driven approach using functional connectivity to select optimal bands. This improves decoding efficiency and interpretability, making BCIs more reliable and personalized.

Original 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 filter bank are ranked by the effect size of their hemispheric coupling differences and pruned to the top K bands for feature extraction and classification via FBCSP and a Support Vector Regressor. This framework was tested for K values ranging from 1 to 8 across the BCI Competition IV-2a (n = 9) and OpenBMI (n = 54) datasets. Performance was benchmarked against standard nine-band FBCSP and random ablation to determine the minimum number of bands (K*) required to maintain accuracy within a 2% baseline equivalence zone. Results show FC-guided selection can outperform random ablation and achieve near-baseline performance while reducing required CSP fits by 22.2% to 77.8%. PLV enables the most aggressive dimensionality reduction by prioritizing the μ and low-\b{eta} ranges, while wPLI demonstrates superior inter-session robustness by mitigating volume conduction. These findings establish FC-guided selection as a principled and interpretable alternative to heuristic filter bank designs.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.