论文标题
ECOG神经信号解码的在线自适应小组稀疏NPLS
Online adaptive group-wise sparse NPLS for ECoG neural signal decoding
论文作者
论文摘要
客观的。脑部计算机界面(BCIS)在没有神经肌肉激活的情况下在大脑和效应器之间创建了新的通信途径。 BCI实验强调了BCI解码器中的高内部和受试者间变异性。尽管BCI模型通常依赖于大多数受试者可推广的神经系统标记,但它需要产生各种神经特征才能包括可能的神经生理模式。但是,嘈杂和高维特征(例如大脑信号)的处理带来了一些要克服的挑战,例如模型校准问题,模型概括和解释问题以及与硬件相关的障碍。方法。提出了一种在线自适应小组稀疏解码器,名为LP-Penalizatized REW-NPLS算法(PREW-NPLS),以减少用于BCI解码的功能空间维度。拟议的解码器旨在创建适合便携式应用程序的计算成本低的BCI系统,并基于离线伪沿线研究,基于在线闭环BCI对左和右3D ARM移动的在线闭环BCI控制来自Tetraplegic患者的ECOG记录的Virtual Avatar。 主要结果。 PREW-NPLS算法至少强调的解码性能与REW-NPLS算法一样好。但是,由于稀疏模型,使用L1-Prew-NPLS分别为左和右手模型设置为0的电极的稀疏模型,可实现使用PREW-NPL的解码性能。 意义。该设计的解决方案提出了一种在线增量自适应算法,适用于在线自适应解码器校准,该算法估计稀疏解码解决方案。 PREW-NPLS型号适用于仅使用少量电极降低解码性能的少量电极。
Objective. Brain-computer interfaces (BCIs) create a new communication pathway between the brain and an effector without neuromuscular activation. BCI experiments highlighted high intra and inter-subjects variability in the BCI decoders. Although BCI model is generally relying on neurological markers generalizable on the majority of subjects, it requires to generate a wide range of neural features to include possible neurophysiological patterns. However, the processing of noisy and high dimensional features, such as brain signals, brings several challenges to overcome such as model calibration issues, model generalization and interpretation problems and hardware related obstacles. Approach. An online adaptive group-wise sparse decoder named Lp-Penalized REW-NPLS algorithm (PREW-NPLS) is presented to reduce the feature space dimension employed for BCI decoding. The proposed decoder was designed to create BCI systems with low computational cost suited for portable applications and tested during offline pseudo-online study based on online closed-loop BCI control of the left and right 3D arm movements of a virtual avatar from the ECoG recordings of a tetraplegic patient. Main results. PREW-NPLS algorithm highlight at least as good decoding performance as REW-NPLS algorithm. However, the decoding performance obtained with PREW-NPLS were achieved thanks to sparse models with up to 64% and 75% of the electrodes set to 0 for the left and right hand models respectively using L1-PREW-NPLS. Significance. The designed solution proposed an online incremental adaptive algorithm suitable for online adaptive decoder calibration which estimate sparse decoding solutions. The PREW-NPLS models are suited for portable applications with low computational power using only small number of electrodes with degrading the decoding performance.