Hori J, He B
Department of EECS, University of Illinois at Chicago, 60607, USA.
Ann Biomed Eng. 2001 May;29(5):436-45. doi: 10.1114/1.1366674.
In the present study, spatial filters for inverse estimation of an equivalent dipole layer from the scalp-recorded potentials have been explored for their suitability in achieving high-resolution electroencephalogram (EEG) imaging. The performance of the parametric projection filter (PPF), which we propose to use for high-resolution EEG imaging, has been evaluated by computer simulations in the presence of a priori information on noise. An inhomogeneous three-concentric-sphere head model was used in the present simulation study to represent the head volume conductor. An equivalent dipole layer was used to model brain electric sources and estimated from the scalp potentials. Various noise conditions were simulated and the parametric projection filter was compared with standard regularization procedures such as the truncated singular value decomposition (TSVD) and the Tikhonov regularization (TKNV). The present simulation results suggest that the proposed method performs better than that of commonly used inverse regularization techniques, such as the general inverse using the TSVD and the TKNV, when the correlation between the original source distribution and the noise distribution is low, and performs similarly when the correlation is high. A method for determining the optimum regularization parameter, which can be applied to parametric inverse techniques, has also been developed.
在本研究中,已对用于从头皮记录电位反向估计等效偶极子层的空间滤波器在实现高分辨率脑电图(EEG)成像方面的适用性进行了探索。我们提议用于高分辨率EEG成像的参数投影滤波器(PPF)的性能,已在存在噪声先验信息的情况下通过计算机模拟进行了评估。在本模拟研究中,使用了非均匀三同心球头部模型来表示头部容积导体。使用等效偶极子层对脑电源进行建模,并从头皮电位进行估计。模拟了各种噪声条件,并将参数投影滤波器与标准正则化程序(如截断奇异值分解(TSVD)和蒂霍诺夫正则化(TKNV))进行了比较。本模拟结果表明,当原始源分布与噪声分布之间的相关性较低时,所提出的方法比常用的反向正则化技术(如使用TSVD和TKNV的广义逆)表现更好,而当相关性较高时,表现相似。还开发了一种可应用于参数反向技术的确定最佳正则化参数的方法。