[婴儿脑电图正演建模方法的Fontanel补偿]。

Ting Zhang, Yan Liu, Bo Peng, Siqi Zhang, Ying Hu, Weifeng Zhong, Yakang Dai
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引用次数: 0

摘要

基于核磁共振成像(MRI)的脑电图(EEG)正演建模方法已成为脑电图领域的主流方法。然而,由于MRI无法获得清晰的婴儿囟门图像,因此在脑电图正演模型中往往缺乏囟门信息,影响了婴儿建模的准确性。为了解决这一问题,我们提出了一种新的方法来实现幼儿脑电图正演建模方法的囟门补偿。首先,我们对头部核磁共振成像进行了成像分割和网格划分,创建了一个无囟门的模型。其次,提出了一种基于投影的表面重建方法,利用先验的孔洞形态信息和无孔洞头部模型,将二维测量孔洞重构为三维孔洞模型,实现孔洞补偿建模;最后,我们在此基础上计算了一个基于囟门补偿的婴儿脑电正演模型。基于真实头部模型的仿真结果表明,方孔补偿有可能提高脑电图正演建模的精度,特别是对于方孔下方的源(相对差值大于0.05)。另外,实验结果表明,婴儿颅骨电导率的不确定性对神经源的影响范围最广,而囟门缺失对囟门以下神经源的影响最大。综上所述fontanel-compensated method可以在不依赖CT采集的情况下提高EEG正演问题的建模精度,更符合实际应用场景的要求。
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[Fontanel compensation for infant electroencephalography forward modeling method].

Magnetic resonance imaging (MRI)-based electroencephalography (EEG) forward modeling method has become prevalent in the field of EEG. However, due to the inability to obtain clear images of an infant's fontanel through MRI, the fontanelle information is often lacking in the EEG forward model, which affects accuracy of modeling in infants. To address this issue, we propose a novel method to achieve fontanel compensation for infant EEG forward modeling method. First, we employed imaging segmentation and meshing to the head MRIs, creating a fontanel-free model. Second, a projection-based surface reconstruction method was proposed, which utilized priori information on fontanel morphology and the fontanel-free head model to reconstruct the two-dimensional measured fontanel into a three-dimensional fontanel model to achieve fontanel-compensation modeling. Finally, we calculated a fontanel compensation-based EEG forward model for infants based on this model. Simulation results, based on a real head model, demonstrated that the compensation of fontanel had a potential to improve EEG forward modeling accuracy, particularly for the sources beneath the fontanel (relative difference measure larger than 0.05). Additional experimental results revealed that the uncertainty of the infant's skull conductivity had the widest impact range on the neural sources, and the absence of fontanel had the strongest impact on the neural sources below the fontanel. Overall, the proposed fontanel-compensated method showcases the potential to improve the modeling accuracy of EEG forward problem without relying on computed tomography (CT) acquisition, which is more in line with the requirements of practical application scenarios.

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来源期刊
生物医学工程学杂志
生物医学工程学杂志 Medicine-Medicine (all)
CiteScore
0.80
自引率
0.00%
发文量
4868
期刊介绍:
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