首页> 外文会议>Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2011 IEEE >High-resolution dynamic cardiac MRI on small animals using reconstruction based on Split Bregman methodology
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High-resolution dynamic cardiac MRI on small animals using reconstruction based on Split Bregman methodology

机译:基于Split Bregman方法的重建高分辨率小动物动态心脏MRI

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Dynamic cardiac magnetic resonance imaging in small animals is an important tool in the study of cardiovascular diseases. The reduction of the long acquisition times required for cardiovascular applications is crucial to achieve good spatiotemporal resolution and signal-to-noise ratio. Nowadays there are many acceleration techniques which can reduce acquisition time, including compressed sensing technique. Compressed sensing allows image reconstruction from undersampled data, by means of a non linear reconstruction which minimizes the total variation of the image. The recently appeared Split Bregman methodology has proved to be more computationally efficient to solve this problem than classic optimization methods. In the case of dynamic magnetic resonance imaging, compressed sensing can exploit time sparsity by the minimization of total variation across both space and time. In this work, we propose and validate the Split Bregman method to minimize spatial and time total variation, and apply this method to accelerate cardiac cine acquisitions in rats. We found that applying a quasi-random variable density pattern along the phase-encoding direction, accelerations up to a factor 5 are possible with low error. In the future, we expect to obtain higher accelerations using spatiotemporal undersampling.
机译:小动物的动态心脏磁共振成像是研究心血管疾病的重要工具。减少心血管应用所需的长采集时间对于实现良好的时空分辨率和信噪比至关重要。如今,有很多可以减少采集时间的加速技术,包括压缩传感技术。压缩感测允许通过非线性重构从欠采样数据重构图像,该非线性重构使图像的总变化最小。与经典的优化方法相比,最近出现的Split Bregman方法已被证明在解决此问题上具有更高的计算效率。在动态磁共振成像的情况下,压缩传感可以通过最小化整个空间和时间的总变化来利用时间稀疏性。在这项工作中,我们提出并验证了斯普利特Bregman方法以最小化空间和时间的总变化,并应用该方法加速大鼠心脏电影的获取。我们发现,沿相位编码方向应用准随机可变密度模式,可以以低误差将系数提高到5。将来,我们期望使用时空欠采样获得更高的加速度。

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