# Improving Individual-Specific SSVEP-BCI with Adaptive Channel and Subspace Selection in TRCA

**Authors:** Hui Li, Guanghua Xu, Shanzheng Feng, Chenghang Du, Chengcheng Han, Jiachen Kuang, Sicong Zhang

PMC · DOI: 10.3390/s26041123 · 2026-02-09

## TL;DR

This paper introduces AS-TRCA, a new method for SSVEP-based BCIs that improves performance by using individual-specific channels and subspaces.

## Contribution

AS-TRCA introduces adaptive selection of subject-specific channels and subspaces for SSVEP-BCI, enhancing decoding accuracy.

## Key findings

- AS-TRCA outperformed traditional methods by improving average accuracy by up to 7.70%.
- Combining AS-TRCA with advanced decoding methods further enhanced their performance.
- AS-TRCA adaptively determines the optimal number of task-related subspaces for each subject.

## Abstract

The individual-specific steady-state visual evoked potential (SSVEP)-based brain–computer interface (BCI) is characterized by individual calibration data, resulting in satisfactory performance. However, existing individual-specific SSVEP-BCIs employ generalized channels and task-related subspaces, which seriously limit their potential advantages and lead to suboptimal solutions. In this study, AS-TRCA was proposed to develop a purely individual-specific SSVEP-BCI by fully exploiting individual-specific knowledge. AS-TRCA involves optimal channel learning and selection (OCLS) as well as optimal subspace selection (OSS). OCLS aims to pick the optimal subject-specific channels by employing sparse learning with spatial distance constraints. Meanwhile, OSS adaptively determines the appropriate number of optimal subject-specific task-related subspaces by maximizing profile likelihood. The extensive experimental results demonstrate that AS-TRCA can acquire meaningful channels and determine the proper number of task-related subspaces for each subject compared to traditional methods. Furthermore, combining AS-TRCA with existing advanced calibration-based SSVEP decoding methods, including deep learning methods, to establish a purely individual-specific SSVEP-BCI can further enhance the decoding performance of these methods. Specifically, AS-TRCA improved the average accuracy as follows: TRCA 7.21%, SSCOR 7.61%, TRCA-R 6.58%, msTRCA 7.70%, scTRCA 4.47%, TDCA 2.91%, and bi-SiamCA 3.23%. AS-TRCA is promising for further advancing the performance of SSVEP-BCI and promoting its practical applications.

## Full-text entities

- **Genes:** TRAC (T cell receptor alpha constant) [NCBI Gene 28755] {aka IMD7, TCRA, TRCA}, LINC02605 (long intergenic non-protein coding RNA 2605) [NCBI Gene 112935892] {aka AS, IL-7, IL-7-AS}
- **Diseases:** epileptic seizure (MESH:D004827), injury to (MESH:D014947), OCLS (MESH:D007859), OSS (MESH:D009155), AS (MESH:D018489)
- **Chemicals:** SSVEP (-)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12944370/full.md

---
Source: https://tomesphere.com/paper/PMC12944370