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Uncertainty through Polynomial Chaos: A Sensor Sensitivity and Correlation Analysis in EEG Problems

Uncertainty through Polynomial Chaos: A Sensor Sensitivity and Correlation Analysis in EEG Problems
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摘要 The author studies the effect of uncertain conductivity on the electroencephalography (EEG) forward problem. A three-layer spherical head model with different and random layer conductivities is considered. Polynomial Chaos (PC) is used to model the randomness. The author performs a sensitivity and correlation analysis of EEG sensors influenced by uncertain conductivity. The author addressed the sensitivity analysis at three stages: dipole location and moment averaged out, only the dipole moment averaged out, and both fixed. On average, the author observes the least influenced electrodes along the great longitudinal fissure. Also, sensors located closer to a dipole source, are of greater influence to a change in conductivity. The highly influenced sensors were on average located temporal. This was also the case in the correlation analysis. Sensors in the temporal parts of the brain are highly correlated. Whereas the sensors in the occipital and lower frontal region, though they are close together, are not so highly correlated as in the temporal regions. This study clearly shows that intrinsic sensor correlation exists, and therefore cannot be discarded, especially in the inverse problem. In the latter it makes it possible not to specify the conductivities. It also offers an easy but rigorous modeling of the stochastic propagation of uncertain conductivity to sensorial potentials (e.g., making it suited for research on optimal placing of these sensors).
机构地区 NaM
出处 《Computer Technology and Application》 2011年第9期748-756,共9页 计算机技术与应用(英文版)
关键词 Polynomial Chaos uncertain conductivity sensitivity analysis correlation analysis EEG (electroencephalography) 传感器灵敏度 相关分析 脑电图 多项式 不确定性 混沌 人头模型 相关性分析
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