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利用巨泡悬浮液对活体人脑的电导率张量成像及实验验证

Conductivity Tensor Imaging of In Vivo Human Brain and Experimental Validation Using Giant Vesicle Suspension.

出版信息

IEEE Trans Med Imaging. 2019 Jul;38(7):1569-1577. doi: 10.1109/TMI.2018.2884440. Epub 2018 Dec 3.

DOI:10.1109/TMI.2018.2884440
PMID:30507528
Abstract

Human brain mapping of low-frequency electrical conductivity tensors can realize patient-specific volume conductor models for neuroimaging and electrical stimulation. We report experimental validation and in vivo human experiments of a new electrodeless conductivity tensor imaging (CTI) method. From CTI imaging of a giant vesicle suspension using a 9.4-T MRI scanner, the relative error in the reconstructed conductivity tensor image was found to be less than 1.7% compared with the measured value using an impedance analyzer. In vivo human brain imaging experiments of five subjects were followed using a 3-T clinical MRI scanner. With the spatial resolution of 1.87 mm, the white matter conductivity showed considerably more position dependency compared with the gray matter and cerebrospinal fluid (CSF). The anisotropy ratio of the white matter was in the range of 1.96-3.25 with a mean value of 2.43, whereas that of the gray matter was in the range of 1.12-1.19 with a mean value of 1.16. The three diagonal components of the reconstructed conductivity tensors were from 0.08 to 0.27 S/m for the white matter, from 0.20 to 0.30 S/m for the gray matter, and from 1.55 to 1.82 S/m for the CSF. The reconstructed conductivity tensor images exhibited significant inter-subject variabilities in terms of frequency and position dependencies. The high-frequency and low-frequency conductivity values can quantify the total and extracellular water contents, respectively, at every pixel. Their difference can quantify the intracellular water content at every pixel. The CTI method can separately quantify the contributions of ion concentrations and mobility to the conductivity tensor.

摘要

人脑低频电导率张量的映射可以实现神经影像学和电刺激的患者特定容积导体模型。我们报告了一种新的无电极电导率张量成像(CTI)方法的实验验证和体内人体实验。通过使用 9.4-T MRI 扫描仪对巨大囊泡悬浮液进行 CTI 成像,与使用阻抗分析仪测量的值相比,重建电导率张量图像的相对误差发现小于 1.7%。使用 3-T 临床 MRI 扫描仪对五名受试者进行了后续的体内人脑成像实验。在 1.87 毫米的空间分辨率下,与灰质和脑脊液(CSF)相比,白质的电导率显示出相当大的位置依赖性。白质的各向异性比在 1.96-3.25 范围内,平均值为 2.43,而灰质的各向异性比在 1.12-1.19 范围内,平均值为 1.16。重建电导率张量的三个对角分量在白质中为 0.08 至 0.27 S/m,在灰质中为 0.20 至 0.30 S/m,在 CSF 中为 1.55 至 1.82 S/m。重建的电导率张量图像在频率和位置依赖性方面表现出显著的个体间变异性。高频和低频电导率值可以分别量化每个像素的总水和细胞外水含量。它们的差值可以量化每个像素的细胞内水含量。CTI 方法可以分别量化离子浓度和迁移率对电导率张量的贡献。

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