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K-Bayes Reconstruction for Perfusion MRI II: Modeling and Technical Development

机译:灌注MRI II的K-Bayes重建:建模和技术开发

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Despite the continued spread of magnetic resonance imaging (MRI) methods in scientific studies and clinical diagnosis, MRI applications are mostly restricted to high-resolution modalities such as structural MRI. While perfusion MRI gives complementary information on blood flow in the brain, its reduced resolution limits its power for detecting specific disease effects on perfusion patterns. This reduced resolution is compounded by artifacts such as partial volume effects, Gibbs ringing, and aliasing, which are caused by necessarily limited k-space sampling and the subsequent use of discrete Fourier transform (DFT) reconstruction. Here, a Bayesian modeling procedure (K-Bayes) is developed for the reconstruction of perfusion MRI. The K-Bayes approach combines a process model for the MRI signal in k-space with a Markov random field prior distribution that incorporates high-resolution segmented structural MRI information. A simulation study, described in Part I (Concepts and Applications), was performed to determine qualitative and quantitative improvements in K-Bayes reconstructed images compared with those obtained via DFT. The improvements were validated using in vivo perfusion MRI data of the human brain. The K-Bayes reconstructed images were demonstrated to provide reduced bias, increased precision, greater effect sizes, and higher resolution than those obtained using DFT.
机译:尽管磁共振成像(MRI)方法在科学研究和临床诊断中继续普及,但MRI应用主要局限于高分辨率模式,例如结构MRI。尽管灌注MRI可提供有关大脑血流的补充信息,但其降低的分辨率限制了其检测特定疾病对灌注方式的影响的能力。这种降低的分辨率由诸如部分体积效应,吉布斯振铃和混叠之类的伪影加剧,这些伪影是由必然受限的k空间采样以及随后使用离散傅里叶变换(DFT)重建引起的。在这里,贝叶斯建模程序(K-Bayes)被开发用于重建MRI。 K-Bayes方法将k空间中MRI信号的处理模型与包含高分辨率分段结构MRI信息的Markov随机场先验分布相结合。进行了第一部分(概念和应用)中描述的模拟研究,以确定与通过DFT获得的图像相比,K-Bayes重建图像的定性和定量改进。使用人脑的体内灌注MRI数据验证了这些改进。与使用DFT获得的图像相比,K-Bayes重建的图像具有更低的偏差,更高的精度,更大的效果尺寸以及更高的分辨率。

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