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Independent component analysis as a model-free approach for the detection of BOLD changes related to epileptic spikes: a simulation study.

机译:独立成分分析作为检测与癫痫发作峰值相关的BOLD变化的无模型方法:一项模拟研究。

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摘要

EEG-fMRI in epileptic patients is commonly analyzed using the general linear model (GLM), which assumes a known hemodynamic response function (HRF) to epileptic spikes in the EEG. In contrast, independent component analysis (ICA) can extract Blood-Oxygenation Level Dependent (BOLD) responses without imposing constraints on the HRF. This technique was evaluated on data generated by superimposing artificial responses on real background fMRI signals. Simulations were run using a wide range of EEG spiking rates, HRF amplitudes, and activation regions. The data were decomposed by spatial ICA into independent components. A deconvolution method then identified component time courses significantly related to the simulated spikes, without constraining the shape of the HRF. Components matching the simulated activation regions ("concordant components") were found in 84.4% of simulations, while components at discordant locations were found in 12.2% of simulations. These false activations were often related to large artifacts that coincidentally occurred simultaneously with some of the random simulated spikes. The performance of the method depended closely on the simulation parameters; when the number of spikes was low, concordant components could only be identified when HRF amplitudes were large. Although ICA did not depend on the shape of the HRF, data processed with the GLM did not reveal the appropriate activation region when the HRF varied slightly from the canonical shape used in the model. ICA may thus be able to extract BOLD responses from EEG-fMRI data in epileptic patients, in a way that is robust to uncertainty and variability in the shape of the HRF.
机译:癫痫患者的EEG-fMRI通常使用通用线性模型(GLM)进行分析,该模型假定已知的对EEG癫痫高峰的血液动力学响应函数(HRF)。相比之下,独立成分分析(ICA)可以提取血液氧合水平依赖性(BOLD)反应,而无需在HRF上施加约束。通过将人工响应叠加在真实的背景fMRI信号上生成的数据对这种技术进行了评估。使用广泛的脑电图尖峰频率,HRF振幅和激活区域进行模拟。数据通过空间ICA分解为独立的分量。然后,解卷积方法可以确定与模拟峰值明显相关的分量时间过程,而不会限制HRF的形状。在84.4%的模拟中发现了与模拟的激活区域匹配的组件(“一致分量”),而在12.2%的模拟中发现了不一致位置的组件。这些错误激活通常与大型伪影有关,这些伪影与一些随机模拟的尖峰同时发生。该方法的性能与仿真参数密切相关。当尖峰数量较少时,只有在HRF振幅较大时才能识别出一致的分量。尽管ICA不依赖于HRF的形状,但是当HRF与模型中使用的标准形状略有不同时,使用GLM处理的数据无法显示适当的激活区域。因此,ICA能够以对HRF形状的不确定性和变异性强的方式从癫痫患者的EEG-fMRI数据中提取BOLD响应。

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