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Combined head phantom and neural mass model validation of effective connectivity measures

机译:有效连通措施的组合头幻影和神经质量模型验证

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Objective. Due to its high temporal resolution, electroencephalography (EEG) has become a promising tool for quantifying cortical dynamics and effective connectivity in a mobile setting. While many connectivity estimators are available, the efficacy of these measures has not been rigorously validated in real-world scenarios. The goal of this study was to quantify the accuracy of independent component analysis and multiple connectivity measures on ground-truth connections while exposed real-world volume conduction and head motion. Approach. We collected high-density EEG from a phantom head with embedded antennae, using neural mass models to generate transiently interconnected signals. The head was mounted upon a motion platform that mimicked recorded human head motion at various walking speeds. We used cross-correlation and signal to noise ratio to determine how well independent component analysis recovered the original antenna signals. For connectivity measures, we computed the average and standard deviation across frequency of each estimated connectivity peak. Main results. Independent component analysis recovered most antenna signals, as evidenced by cross-correlations primarily above 0.8, and maintained consistent signal to noise ratio values near 10 dB across walking speeds compared to scalp channel data, which had decreased signal to noise ratios of similar to 2 dB at fast walking speeds. The connectivity measures used were generally able to identify the true interconnections, but some measures were susceptible to spurious high-frequency connections inducing large standard deviations of similar to 10 Hz. Significance. Our results indicate that independent component analysis and some connectivity measures can be effective at recovering underlying connections among brain areas. These results highlight the utility of validating EEG processing techniques with a combination of complex signals, phantom head use, and realistic head motion.
机译:客观的。由于其高时间分辨率,脑电图(EEG)已成为用于量化皮质动力学和在移动设置中的有效连接的有前途的工具。虽然有许多连接估算器可用,但这些措施的效果并未在现实世界的情况下严格验证。本研究的目标是量化独立分量分析的准确性和在地面真实连接上的多种连接措施,同时暴露的现实世界传导和头部动作。方法。我们使用嵌入式天线从幽灵头中收集高密度脑电图,使用神经质量模型来产生瞬时互连的信号。头部安装在一个运动平台上,这些运动平台以各种步行速度模仿被记录的人头运动。我们使用互相关和信噪比来确定独立分量分析如何恢复原始天线信号。对于连接措施,我们计算了每个估计连接峰值频率的平均值和标准偏差。主要结果。独立的分量分析恢复了大多数天线信号,如主要高于0.8的互相关所证明,与SPARP信道数据相比,步行速度与步行速度相比保持一致的信号与步行速度相比,这与类似于2 dB的噪声比率降低快速行走速度。所使用的连接措施通常能够识别真正的互连,但是一些措施易于诱导类似于10 Hz的大标准偏差的寄生高频连接。意义。我们的结果表明,独立的分量分析和一些连接措施可以有效地恢复脑区之间的基础连接。这些结果突出了验证脑电图处理技术的效用,具有复杂信号,幻象头使用和现实头部运动的组合。

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