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A compressed sensing-based iterative algorithm for CT reconstruction and its possible application to phase contrast imaging

机译:基于压缩感知的CT迭代迭代算法及其在相衬成像中的应用

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Background Computed Tomography (CT) is a technology that obtains the tomogram of the observed objects. In real-world applications, especially the biomedical applications, lower radiation dose have been constantly pursued. To shorten scanning time and reduce radiation dose, one can decrease X-ray exposure time at each projection view or decrease the number of projections. Until quite recently, the traditional filtered back projection (FBP) method has been commonly exploited in CT image reconstruction. Applying the FBP method requires using a large amount of projection data. Especially when the exposure speed is limited by the mechanical characteristic of the imaging facilities, using FBP method may prolong scanning time and cumulate with a high dose of radiation consequently damaging the biological specimens. Methods In this paper, we present a compressed sensing-based (CS-based) iterative algorithm for CT reconstruction. The algorithm minimizes the l1-norm of the sparse image as the constraint factor for the iteration procedure. With this method, we can reconstruct images from substantially reduced projection data and reduce the impact of artifacts introduced into the CT reconstructed image by insufficient projection information. Results To validate and evaluate the performance of this CS-base iterative algorithm, we carried out quantitative evaluation studies in imaging of both software Shepp-Logan phantom and real polystyrene sample. The former is completely absorption based and the later is imaged in phase contrast. The results show that the CS-based iterative algorithm can yield images with quality comparable to that obtained with existing FBP and traditional algebraic reconstruction technique (ART) algorithms. Discussion Compared with the common reconstruction from 180 projection images, this algorithm completes CT reconstruction from only 60 projection images, cuts the scan time, and maintains the acceptable quality of the reconstructed images.
机译:背景计算机断层摄影(CT)是一种获取观察对象的断层图像的技术。在实际应用中,特别是在生物医学应用中,一直在追求更低的辐射剂量。为了缩短扫描时间并减少辐射剂量,可以减少每个投影视图的X射线曝光时间或减少投影数量。直到最近,传统的滤波反投影(FBP)方法已被广泛用于CT图像重建中。应用FBP方法需要使用大量的投影数据。特别是当曝光速度受到成像设备的机械特性的限制时,使用FBP方法可能会延长扫描时间并累积高剂量的辐射,从而损坏生物样本。方法在本文中,我们提出了一种用于CT重建的基于压缩感知(基于CS)的迭代算法。该算法将稀疏图像的l 1 -范数最小化,将其作为迭代过程的约束因子。使用这种方法,我们可以从实质上减少的投影数据中重建图像,并通过不足的投影信息来减少引入CT重建图像中的伪影的影响。结果为了验证和评估这种基于CS的迭代算法的性能,我们对Shepp-Logan体模软件和真实聚苯乙烯样品的成像进行了定量评估研究。前者完全基于吸收,而后者则以相衬成像。结果表明,基于CS的迭代算法可以产生质量与现有FBP和传统代数重建技术(ART)算法相当的图像。讨论与从180个投影图像进行的常见重建相比,该算法仅从60个投影图像完成了CT重建,减少了扫描时间,并保持了重建图像的可接受质量。

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