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Software-based Diffusion MR Human Brain Phantom for Evaluating Fiber-tracking Algorithms

机译:基于软件的扩散MR人脑幻影评估光纤跟踪算法

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摘要

Fiber tracking provides insights into the brain white matter network and has become more and more popular in diffusion MR imaging. Hardware or software phantom provides an essential platform to investigate, validate and compare various tractography algorithms towards a “gold standard”. Software phantoms excel due to their flexibility in varying imaging parameters, such as tissue composition, SNR, as well as potential to model various anatomies and pathologies. This paper describes a novel method in generating diffusion MR images with various imaging parameters from realistically appearing, individually varying brain anatomy based on predefined fiber tracts within a high-resolution human brain atlas. Specifically, joint, high resolution DWI and structural MRI brain atlases were constructed with images acquired from 6 healthy subjects (age 22–26) for the DWI data and 56 healthy subject (age 18–59) for the structural MRI data. Full brain fiber tracking was performed with filtered, two-tensor tractography in atlas space. A deformation field based principal component model from the structural MRI as well as unbiased atlas building was then employed to generate synthetic structural brain MR images that are individually varying. Atlas fiber tracts were accordingly warped into each synthetic brain anatomy. Diffusion MR images were finally computed from these warped tracts via a composite hindered and restricted model of diffusion with various imaging parameters for gradient directions, image resolution and SNR. Furthermore, an open-source program was developed to evaluate the fiber tracking results both qualitatively and quantitatively based on various similarity measures.
机译:纤维跟踪提供了对大脑白质网络的见解,并且在扩散MR成像中越来越受欢迎。硬件或软件体模提供了一个必要的平台,可以根据“黄金标准”研究,验证和比较各种牵引术。软件体模之所以出类拔萃,是因为它们在变化的成像参数(如组织组成,SNR)中具有灵活性,并且具有对各种解剖结构和病理模型进行建模的潜力。本文介绍了一种新方法,该方法可以根据高分辨率的人脑图谱中的预定义纤维束,根据实际出现的,个体变化的大脑解剖结构生成具有各种成像参数的弥散MR图像。具体而言,使用从6名健康受试者(22-26岁)获得的DWI数据和56名健康受试者(18-59岁)获得的结构性MRI数据构建关节,高分辨率DWI和结构MRI脑图集。全脑纤维追踪是在图集空间中使用经滤波的两张张线束描记术进行的。然后,使用来自结构MRI的基于变形场的主成分模型以及无偏的图集构建来生成单独变化的合成结构脑MR图像。因此,将Atlas纤维束弯曲到每个合成的大脑解剖结构中。最终,通过具有各种成像参数的梯度方向,图像分辨率和SNR的复合受阻和受限扩散模型,从这些弯曲束中计算出MR图像。此外,开发了一个开源程序,可以基于各种相似性度量对定性和定量的纤维跟踪结果进行评估。

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