Department of Mathematics, Konkuk University, Seoul, 05029, Republic of Korea.
Department of Radiology, Kyung Hee University Hospital at Gangdong, Seoul, 05278, Republic of Korea.
Neuroimage. 2024 Nov 15;302:120900. doi: 10.1016/j.neuroimage.2024.120900. Epub 2024 Oct 30.
The developed magnetic resonance electrical properties tomography (MREPT) techniques visualize the internal conductivity distribution at Larmor frequency by measuring the B1 transceive phase data. In biological tissues, electrical conductivity is influenced by ion concentrations and mobility. To visualize the anisotropic conductivity tensor of biological tissues, we use the Einstein-Smoluchowski equation, which links the diffusion coefficient to particle mobility. By assuming a correlation between ion mobility and water diffusivity, we aim to decompose the internal isotropic conductivity at Larmor frequency into anisotropic conductivity tensors within the intra- and extra-neurite compartments. The multi-compartment spherical mean technique (MC-SMT), utilizing both high and low b-value diffusion-weighted imaging (DWI) data, characterizes the diffusion of water molecules within and across the intra- and extra-neurite compartments by analyzing the microstructural intricacies and the foundational architectural arrangement of the brain's tissues. By analyzing the relationships between the measured DWI data, the microscopic diffusion signal, and the fiber orientation distribution function, we predict the DWI data for the intra- and extra-neurite compartments using spherical harmonic decomposition. Using the predicted DWI data for the intra- and extra-neurite compartments, we develop a conductivity tensor imaging method that operates specifically within the separated compartments. Human brain experiments, involving four healthy volunteers and a brain tumor patient, were performed to assess and confirm the reliability of the proposed method.
所开发的磁共振电特性层析成像(MREPT)技术通过测量 B1 收发器相位数据来可视化拉莫尔频率下的内部电导率分布。在生物组织中,电导率受离子浓度和迁移率的影响。为了可视化生物组织的各向异性电导率张量,我们使用爱因斯坦-斯莫鲁霍夫斯基方程,该方程将扩散系数与粒子迁移率联系起来。通过假设离子迁移率与水扩散率之间存在相关性,我们旨在将拉莫尔频率下的各向同性内部电导率分解为神经元内和神经元外隔室的各向异性电导率张量。利用高和低 b 值扩散加权成像(DWI)数据的多隔室球平均技术(MC-SMT),通过分析大脑组织的微观结构复杂性和基础结构排列,来描述水分子在神经元内和神经元外隔室内及穿过隔室的扩散。通过分析测量的 DWI 数据、微观扩散信号和纤维方向分布函数之间的关系,我们使用球谐分解来预测神经元内和神经元外隔室的 DWI 数据。利用神经元内和神经元外隔室的预测 DWI 数据,我们开发了一种专门在分离隔室中运行的电导率张量成像方法。进行了涉及四名健康志愿者和一名脑肿瘤患者的人脑实验,以评估和确认所提出方法的可靠性。