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Is familial nonmedullary thyroid carcinoma more aggressive than sporadic nonmedullary thyroid carcinoma?

机译:家族性非髓样甲状腺癌是否比散发性非髓样甲状腺癌更具侵略性?

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摘要

Compressed sensing (CS) MRI exploits the sparsity of an image in a transform domain to reconstruct the image from incoherently under-sampled k-space data. However, it has been shown that CS suffers particularly from loss of low-contrast image features with increasing reduction factors. To retain image details in such degraded experimental conditions, in this work we introduce a novel CS reconstruction method exploiting feature-based complementary dual decomposition with joint estimation of local scale mixture (LSM) model and images. Images are decomposed into dual block sparse components: total variation for piecewise smooth parts and wavelets for residuals. The LSM model parameters of residuals in the wavelet domain are estimated and then employed as a regional constraint in spatially adaptive reconstruction of high frequency subbands to restore image details missing in piecewise smooth parts. Alternating minimization of the dual image components subject to data consistency is performed to extract image details from residuals and add them back to their complementary counterparts while the LSM model parameters and images are jointly estimated in a sequential fashion. Simulations and experiments demonstrate the superior performance of the proposed method in preserving low-contrast image features even at high reduction factors.
机译:压缩感测(CS)MRI利用变换域中图像的稀疏性,从非相干欠采样的k空间数据中重建图像。然而,已经显示出CS因减小因子增加而特别遭受低对比度图像特征的损失。为了在这种退化的实验条件下保留图像细节,在这项工作中,我们引入了一种新颖的CS重建方法,该方法利用基于特征的互补双重分解以及局部比例混合(LSM)模型和图像的联合估计。图像被分解为双块稀疏分量:分段平滑部分的总变化和残差的小波。估计小波域中残差的LSM模型参数,然后将其用作高频子带的空间自适应重构中的区域约束,以恢复分段平滑部分中丢失的图像细节。对双图像分量进行交替最小化,使其受到数据一致性的影响,以从残差中提取图像细节,并将其添加回其互补副本中,同时以顺序方式联合估计LSM模型参数和图像。仿真和实验表明,即使在高缩小率的情况下,该方法在保留低对比度图像特征方面也具有出色的性能。

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