首页> 外文会议>Nuclear Science Symposium and Medical Imaging Conference (NSS/MIC), 2011 IEEE >Ensuring convergence in total-variation-based reconstruction for accurate microcalcification imaging in breast X-ray CT
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Ensuring convergence in total-variation-based reconstruction for accurate microcalcification imaging in breast X-ray CT

机译:确保基于总变异的重建的收敛性,以在乳房X射线CT中进行精确的微钙化成像

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Breast X-ray CT imaging is being considered in screening as an extension to mammography. As a large fraction of the population will be exposed to radiation, low-dose imaging is essential. Iterative image reconstruction based on solving an optimization problem, such as Total-Variation minimization, shows potential for reconstruction from sparse-view data. For iterative methods it is important to ensure convergence to an accurate solution, since important diagnostic image features, such as presence of microcalcifications indicating breast cancer, may not be visible in a non-converged reconstruction, and this can have clinical significance. To prevent excessively long computational times, which is a practical concern for the large image arrays in CT, it is desirable to keep the number of iterations low, while still ensuring a sufficiently accurate reconstruction for the specific imaging task. This motivates the study of accurate convergence criteria for iterative image reconstruction. In simulation studies with a realistic breast phantom with microcalcifications we investigate the issue of ensuring sufficiently converged solution for reliable reconstruction. Our results show that it can be challenging to ensure a sufficiently accurate microcalcification reconstruction, when using standard convergence criteria. In particular, the gray level of the small microcalcifications may not have converged long after the background tissue is reconstructed uniformly.We propose the use of the individual objective function gradient components to better monitor possible regions of non-converged variables. For microcalcifications we find empirically a large correlation between nonzero gradient components and non-converged variables, which occur precisely within the microcalcifications. This supports our claim that gradient components can be used to ensure convergence to a sufficiently accurate reconstruction.
机译:乳腺X射线CT成像在筛查中被认为是乳房X线摄影的延伸。由于大部分人口将受到辐射,因此低剂量成像必不可少。基于解决优化问题(例如总变化最小化)的迭代图像重建显示了从稀疏视图数据重建的潜力。对于迭代方法,重要的是要确保收敛到准确的解决方案,因为重要的诊断图像特征(例如表示乳腺癌的微钙化)在非融合重建中可能不可见,并且这可能具有临床意义。为了避免过长的计算时间(这是CT中大型图像阵列的实际问题),希望保持迭代次数少,同时仍确保针对特定成像任务的足够准确的重建。这激发了用于迭代图像重建的精确收敛标准的研究。在具有微钙化的逼真的乳房幻影的模拟研究中,我们研究了确保足够收敛的解决方案以进行可靠重建的问题。我们的结果表明,使用标准收敛标准时,要确保足够准确的微钙化重建可能是一项挑战。特别是,在均匀重建背景组织之后,小的微钙化的灰度等级可能尚未收敛。我们建议使用单个目标函数梯度分量来更好地监视未收敛变量的可能区域。对于微钙化,我们从经验上发现非零梯度分量和非收敛变量之间存在很大的相关性,这些相关性正好在微钙化中发生。这支持了我们的观点,即可以使用梯度分量来确保收敛到足够准确的重构。

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