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基于子空间的少视图微分相衬断层扫描分辨率增强图像重建方法

Subspace-based resolution-enhancing image reconstruction method for few-view differential phase-contrast tomography.

作者信息

Guan Huifeng, Hagen Charlotte Klara, Olivo Alessandro, Anastasio Mark A

机构信息

Washington University in St. Louis, Department of Biomedical Engineering, St. Louis, Missouri, United States.

University College London, Department of Medical Physics and Biomedical Engineering, London, United Kingdom.

出版信息

J Med Imaging (Bellingham). 2018 Apr;5(2):023501. doi: 10.1117/1.JMI.5.2.023501. Epub 2018 Jun 28.

Abstract

It is well known that properly designed image reconstruction methods can facilitate reductions in imaging doses and data-acquisition times in tomographic imaging. The ability to do so is particularly important for emerging modalities, such as differential x-ray phase-contrast tomography (D-XPCT), which are currently limited by these factors. An important application of D-XPCT is high-resolution imaging of biomedical samples. However, reconstructing high-resolution images from few-view tomographic measurements remains a challenging task due to the high-frequency information loss caused by data incompleteness. In this work, a subspace-based reconstruction strategy is proposed and investigated for use in few-view D-XPCT image reconstruction. By adopting a two-step approach, the proposed method can simultaneously recover high-frequency details within a certain region of interest while suppressing noise and/or artifacts globally. The proposed method is investigated by the use of few-view experimental data acquired by an edge-illumination D-XPCT scanner.

摘要

众所周知,设计得当的图像重建方法有助于减少断层成像中的成像剂量和数据采集时间。对于诸如差分X射线相衬断层成像(D-XPCT)等新兴成像模态而言,这样做的能力尤为重要,因为这些模态目前受到这些因素的限制。D-XPCT的一个重要应用是生物医学样本的高分辨率成像。然而,由于数据不完整导致高频信息丢失,从少视图断层测量中重建高分辨率图像仍然是一项具有挑战性的任务。在这项工作中,提出并研究了一种基于子空间的重建策略,用于少视图D-XPCT图像重建。通过采用两步法,该方法可以在抑制全局噪声和/或伪影的同时,在特定感兴趣区域内同时恢复高频细节。通过使用边缘照明D-XPCT扫描仪采集的少视图实验数据对该方法进行了研究。

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