Makkiabadi Bahador, Jarchi Delaram, Sanei Saeid
NICE Group, Faculty of Engineering and Physical Sciences, University of Surrey, Guildford, UK.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:6955-8. doi: 10.1109/IEMBS.2011.6091758.
A novel mathematical model based on multi-way data construction and analysis with the goal of simultaneously separating and localizing the brain sources specially the subcomponents of event related potentials (ERPs) is introduced. We represent multi-channel EEG data using a third-order tensor with modes: space (channels), time samples, and number of segments. Then, a multi-way technique, in particular, generalized version of PARAFAC2 method, is developed to blindly separate and localize mutually/temporally correlated P3a and P3b sources as subcomponents of P300 signal. In this paper the non-orthogonality of the ERP subcomponents is defined within the tensor model. In order to obtain essentially unique estimation of the signal components one parametric and one structural constraint are defined and imposed. The method is applied to both simulated and real data and has been shown to perform very well even in low signal to noise ratio situations. In addition, the method is compared with spatial principal component analysis (sPCA) and its superiority is demonstrated by using simulated signals.
介绍了一种基于多向数据构建和分析的新型数学模型,其目的是同时分离和定位脑源,特别是事件相关电位(ERP)的子成分。我们使用具有模式的三阶张量来表示多通道脑电图数据:空间(通道)、时间样本和段数。然后,开发了一种多向技术,特别是PARAFAC2方法的广义版本,以盲目分离和定位相互/时间相关的P3a和P3b源作为P300信号的子成分。本文在张量模型中定义了ERP子成分的非正交性。为了获得信号成分的基本唯一估计,定义并施加了一个参数约束和一个结构约束。该方法应用于模拟数据和真实数据,并且即使在低信噪比情况下也表现得非常好。此外,将该方法与空间主成分分析(sPCA)进行了比较,并通过使用模拟信号证明了其优越性。