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Multi-contrast reconstruction with Bayesian compressed sensing

机译:贝叶斯压缩感知的多对比度重建

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摘要

Clinical imaging with structural MRI routinely relies on multiple acquisitions of the same region of interest under several different contrast preparations. This work presents a reconstruction algorithm based on Bayesian compressed sensing to jointly reconstruct a set of images from undersampled k-space data with higher fidelity than when the images are reconstructed either individually or jointly by a previously proposed algorithm, M-FOCUSS. The joint inference problem is formulated in a hierarchical Bayesian setting, wherein solving each of the inverse problems corresponds to finding the parameters (here, image gradient coefficients) associated with each of the images. The variance of image gradients across contrasts for a single volumetric spatial position is a single hyperparameter. All of the images from the same anatomical region, but with different contrast properties, contribute to the estimation of the hyperparameters, and once they are found, the k-space data belonging to each image are used independently to infer the image gradients. Thus, commonality of image spatial structure across contrasts is exploited without the problematic assumption of correlation across contrasts. Examples demonstrate improved reconstruction quality (up to a factor of 4 in root-mean-square error) compared with previous compressed sensing algorithms and show the benefit of joint inversion under a hierarchical Bayesian model.
机译:使用结构MRI的临床成像通常依赖于在几种不同对比剂准备下对同一感兴趣区域的多次采集。这项工作提出了一种基于贝叶斯压缩感测的重建算法,可以从欠采样k空间数据中以比由先前提出的算法M-FOCUSS单独或联合重建图像时更高的保真度联合重建一组图像。联合推理问题以分层贝叶斯设置表示,其中解决每个反问题对应于找到与每个图像相关联的参数(此处为图像梯度系数)。单个体积空间位置的跨对比度图像梯度的变化是单个超参数。来自相同解剖区域但具有不同对比度属性的所有图像都有助于超参数的估计,一旦找到它们,就可以独立使用属于每个图像的k空间数据来推断图像梯度。因此,可以利用跨对比的图像空间结构的通用性,而不会出现跨对比的相关问题。与先前的压缩感测算法相比,示例证明了改进的重构质量(均方根误差高达4倍),并显示了在分层贝叶斯模型下联合反演的好处。

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