论文标题
Bigbrain-MR:一种新的数字幻影,具有100μm分辨率的解剖学磁共振特性,用于磁共振方法开发
BigBrain-MR: a new digital phantom with anatomically-realistic magnetic resonance properties at 100-μm resolution for magnetic resonance methods development
论文作者
论文摘要
超高场磁共振成像(MRI)对人类的好处,机会和日益增长的可用性促使研究和开发工作扩大,以越来越高级的高分辨率成像技术。为了最大程度地提高其有效性,这些努力需要得到强大的计算模拟平台的支持,这些平台可以充分地以高空间分辨率重现MRI的生物物理特征。在这项工作中,我们试图通过开发一种具有现实的解剖细节的新型数字幻影,最多可解决100-UM分辨率,包括影响图像产生的多种MRI属性。该幻影称为Bigbrain-MR,是由公开可用的Bigbrain组织学数据集和较低分辨率在Vivo 7T-MRI数据中生成的,使用了新开发的图像处理框架,该框架允许将后者的一般属性映射到前者的良好的解剖学量表中。总体而言,发现映射框架是有效且稳健的,在100-UM分辨率下产生了各种逼真的“体内” MRI对比和地图。然后,在三种不同的成像应用(运动效应和插值,超分辨率成像和并行成像重建)中测试了Bigbrain-MR,以研究其特性,价值和有效性作为模拟平台。结果始终表明,与Shepp-Logan Phantom这样的更经典的选项,Bigbrain-MR可以密切近似实际体内数据的行为,具有更广泛的功能。因此,这种新颖的幻影被认为是支持大脑MRI方法论发展的有利选择,并已自由地向社区提供。
The benefits, opportunities and growing availability of ultra-high field magnetic resonance imaging (MRI) for humans have prompted an expansion in research and development efforts towards increasingly more advanced high-resolution imaging techniques. To maximize their effectiveness, these efforts need to be supported by powerful computational simulation platforms that can adequately reproduce the biophysical characteristics of MRI, with high spatial resolution. In this work, we have sought to address this need by developing a novel digital phantom with realistic anatomical detail up to 100-um resolution, including multiple MRI properties that affect image generation. This phantom, termed BigBrain-MR, was generated from the publicly available BigBrain histological dataset and lower-resolution in-vivo 7T-MRI data, using a newly-developed image processing framework that allows mapping the general properties of the latter into the fine anatomical scale of the former. Overall, the mapping framework was found to be effective and robust, yielding a diverse range of realistic "in-vivo-like" MRI contrasts and maps at 100-um resolution. BigBrain-MR was then tested in three different imaging applications (motion effects and interpolation, super-resolution imaging, and parallel imaging reconstruction) to investigate its properties, value and validity as a simulation platform. The results consistently showed that BigBrain-MR can closely approximate the behavior of real in-vivo data, more realistically and with more extensive features than a more classic option such as the Shepp-Logan phantom. This novel phantom is therefore deemed a favorable choice to support methodological development in brain MRI, and has been made freely available to the community.