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基于分解后的脑电图数据的逆向建模:前进的方向?

Inverse modeling on decomposed electroencephalographic data: a way forward?

作者信息

Lelic Dina, Gratkowski Maciej, Valeriani Massimiliano, Arendt-Nielsen Lars, Drewes Asbjørn Mohr

机构信息

Mech-Sense, Department of Gastroenterology, Aalborg Hospital, Aarhus University, Aalborg, Denmark.

出版信息

J Clin Neurophysiol. 2009 Aug;26(4):227-35. doi: 10.1097/WNP.0b013e3181aed1a1.

Abstract

Inverse modeling is typically applied to instantaneous electroencephalogram signals. However, this approach has several shortcomings including its instability to model multiple and deep located dipole sources and the interference of background noise may hamper the sensitivity, stability, and precision of the estimated dipoles. This article validates different dipole estimation techniques to find the most optimal combination of different analysis principles using both simulations and recordings. Electroencephalogram data were simulated with six known source locations. First, a dataset was simulated with sources chosen to mimic somatosensory-evoked potentials to electrical stimuli. Additionally, 20 further datasets were simulated each containing six randomly located and oriented sources. The simulated sources included superficial, deep, and simultaneously active sources. Furthermore, somatosensory-evoked potentials to median nerve stimuli were recorded from one subject. On both simulated and recorded evoked potential data, three different methods of signal decomposition were compared: independent component analysis (ICA), second-order blind identification (SOBI), and multichannel matching pursuit (MMP). For inverse modeling of the brain sources, the DIPFIT function of the EEGLAB software was used on raw and decomposed data. MMP was able to separate all simulated components that corresponded to superficial, deep, and simultaneously active sources. ICA and SOBI were only able to find components that corresponded to superficial sources. For the 20 randomized simulations, the results from the evoked potential simulation were reproduced. Inverse modeling on MMP components (atoms) was better than on ICA or SOBI components (P < 0.001). DIPFIT on MMP atoms localized 99.2% of the simulated dipoles in correct areas with their correct time/frequency distribution. DIPFIT on ICA and SOBI components localized 35% and 39.6%, respectively of the simulated dipoles in correct areas. As for the real-evoked potentials recorded in one subject, DIPFIT on MMP atoms allowed us to build a dipole model closer to the current physiological knowledge than dipole modeling of ICA and SOBI components. The results show that using MMP before inverse modeling is a reliable way to noninvasively estimate cortical activation.

摘要

逆向建模通常应用于瞬时脑电图信号。然而,这种方法存在几个缺点,包括对多个深部偶极子源建模时的不稳定性,以及背景噪声的干扰可能会影响估计偶极子的灵敏度、稳定性和精度。本文通过模拟和记录来验证不同的偶极子估计技术,以找到不同分析原理的最佳组合。利用六个已知源位置模拟了脑电图数据。首先,模拟了一个数据集,其源被选择用于模拟对电刺激的体感诱发电位。此外,还模拟了另外20个数据集,每个数据集包含六个随机定位和定向的源。模拟的源包括浅表、深部和同时活跃的源。此外,记录了一名受试者对正中神经刺激的体感诱发电位。在模拟和记录的诱发电位数据上,比较了三种不同的信号分解方法:独立成分分析(ICA)、二阶盲辨识(SOBI)和多通道匹配追踪(MMP)。对于脑源的逆向建模,在原始数据和分解后的数据上使用了EEGLAB软件的DIPFIT函数。MMP能够分离出所有与浅表、深部和同时活跃的源相对应的模拟成分。ICA和SOBI只能找到与浅表源相对应的成分。对于20次随机模拟,再现了诱发电位模拟的结果。对MMP成分(原子)进行逆向建模优于对ICA或SOBI成分进行逆向建模(P<0.001)。对MMP原子进行DIPFIT可将99.2%的模拟偶极子定位在正确区域,并具有正确的时间/频率分布。对ICA和SOBI成分进行DIPFIT分别将35%和39.6%的模拟偶极子定位在正确区域。对于在一名受试者中记录的真实诱发电位,与ICA和SOBI成分的偶极子建模相比,对MMP原子进行DIPFIT使我们能够构建一个更接近当前生理知识的偶极子模型。结果表明,在逆向建模之前使用MMP是一种可靠的非侵入性估计皮质激活的方法。

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