Online adaptive group-wise sparse Penalized Recursive Exponentially Weighted N-way Partial Least Square for epidural intracranial BCI
Data de publicação:
Autores da FMUP
Participantes de fora da FMUP
- Moly, Alexandre
- Aksenov, Alexandre
- Aksenova, Tetiana
Unidades de investigação
Abstract
IntroductionMotor Brain-Computer Interfaces (BCIs) create new communication pathways between the brain and external effectors for patients with severe motor impairments. Control of complex effectors such as robotic arms or exoskeletons is generally based on the real-time decoding of high-resolution neural signals. However, high-dimensional and noisy brain signals pose challenges, such as limitations in the generalization ability of the decoding model and increased computational demands. MethodsThe use of sparse decoders may offer a way to address these challenges. A sparsity-promoting penalization is a common approach to obtaining a sparse solution. BCI features are naturally structured and grouped according to spatial (electrodes), frequency, and temporal dimensions. Applying group-wise sparsity, where the coefficients of a group are set to zero simultaneously, has the potential to decrease computational time and memory usage, as well as simplify data transfer. Additionally, online closed-loop decoder adaptation (CLDA) is known to be an efficient procedure for BCI decoder training, taking into account neuronal feedback. In this study, we propose a new algorithm for online closed-loop training of group-wise sparse multilinear decoders using L-p-Penalized Recursive Exponentially Weighted N-way Partial Least Square (PREW-NPLS). Three types of sparsity-promoting penalization were explored using L-p with p = 0., 0.5, and 1. ResultsThe algorithms were tested offline in a pseudo-online manner for features grouped by spatial dimension. A comparison study was conducted using an epidural ECoG dataset recorded from a tetraplegic individual during long-term BCI experiments for controlling a virtual avatar (left/right-hand 3D translation). Novel algorithms showed comparable or better decoding performance than conventional REW-NPLS, which was achieved with sparse models. The proposed algorithms are compatible with real-time CLDA. DiscussionThe proposed algorithm demonstrated good performance while drastically reducing the computational load and the memory consumption. However, the current study is limited to offline computation on data recorded with a single patient, with penalization restricted to the spatial domain only.
Dados da publicação
- ISSN/ISSNe:
- 1662-5161,
- Tipo:
- Article
- Páginas:
- -
- PubMed:
- 36950147
Frontiers in Human Neuroscience Frontiers Media S.A.
Citações Recebidas na Web of Science: 2
Documentos
- Não há documentos
Filiações
Keywords
- Brain-Computer Interface; ECoG; penalization; tensor factorization; NPLS; group-wise sparsity; adaptive learning; incremental learning
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Citar a publicação
Moly A,Aksenov A,Martel F,Aksenova T. Online adaptive group-wise sparse Penalized Recursive Exponentially Weighted N-way Partial Least Square for epidural intracranial BCI. Frontiers in Human Neuroscience. 2023. 17. 1075666. IF:2,900. (2).
Portal de investigação
