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Back-Projection Cortical Potential Imaging Using a Multi-Resolution Optimization Algorithm

机译:使用多分辨率优化算法的背投皮层电位成像

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Over the last decade, electroencephalogram (EEG) has evolved to be a well-established brain activity imaging tool. This progress is mainly due to high-resolution (HR) EEG methods. These methods aim to reduce the smearing of the scalp potentials, which is the effect of the low-conductive skull. One type of these HR-EEG is the cortical potential imaging (CPI) that estimates the detailed cortical potential distribution from the measured scalp EEG potentials, known as the inverse problem. Even though some of these methods exhibit good performance, most of them hold inherent inaccuracies and limit out-coming from their principle of operation which is mostly based on a set of constraints on the solution. Some other CPI methods exhibit good results but are computational exhaustive. The back-projection CPI (BP-CPI) method has the advantages of being constraint free and computation inexpensive along with good estimation accuracy. However, better performance must be achieved. This study propose two improvements to the BP-CPI algorithm. Both improvements are successive stages to the BP-CPI and based on the multi-resolution optimization approach. The novel techniques differ in their clustering algorithm that have random and deterministic components, denoted as the rMR-CPI and dMR-CPI, respectively. A series of simulations were performed to examine the proposed improvements. The results have shown fast convergence to highly accurate cortical potential estimations, demonstrating accuracy of 96% (rMR-CPI) and 93% (dMR-CPI), relative to the BP-CPI which has shown accuracy of 85%. The MR-CPI methods were shown to be reliable CPI methods enabling researchers fast and robust high-resolution EEG.
机译:在过去的十年中,脑电图(EEG)已经发展成为一种完善的大脑活动成像工具。这一进展主要归因于高分辨率(HR)脑电图方法。这些方法旨在减少头皮电位的拖尾现象,这是低导电性颅骨的作用。这些HR-EEG的一种类型是皮层电势成像(CPI),该技术可从测得的头皮EEG电势估计出详细的皮层电势分布,这被称为逆问题。尽管这些方法中的某些方法表现出良好的性能,但大多数方法都存在固有的不准确性,并且限制了它们的工作原理,而这些原理主要是基于对解决方案的一组约束。其他一些CPI方法显示出良好的结果,但计算量很大。反投影CPI(BP-CPI)方法具有不受约束,计算成本低以及估计精度高的优点。但是,必须实现更好的性能。这项研究提出了对BP-CPI算法的两个改进。两项改进都是BP-CPI的连续阶段,并基于多分辨率优化方法。新技术的区别在于它们的聚类算法具有随机和确定性成分,分别表示为rMR-CPI和dMR-CPI。进行了一系列模拟,以检查建议的改进。结果表明,可以快速收敛到高精度的皮层电势估计,相对于BP-CPI准确度为85%,其准确度分别为96%(rMR-CPI)和93%(dMR-CPI)。 MR-CPI方法被证明是可靠的CPI方法,使研究人员可以快速而强大地使用高分辨率脑电图。

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