Suppr超能文献

基于信息论差异的多色 X 射线层析迭代重建(IDIR)。

Information-theoretic discrepancy based iterative reconstructions (IDIR) for polychromatic x-ray tomography.

机构信息

Advanced Media Laboratory, Samsung Advanced Institute of Technology (SAIT), San 14, Nongseo Dong, Giheung Gu, Yongin, Gyeonggi 446-712, Republic of Korea.

出版信息

Med Phys. 2013 Sep;40(9):091908. doi: 10.1118/1.4816945.

Abstract

PURPOSE

X-ray photons generated from a typical x-ray source for clinical applications exhibit a broad range of wavelengths, and the interactions between individual particles and biological substances depend on particles' energy levels. Most existing reconstruction methods for transmission tomography, however, neglect this polychromatic nature of measurements and rely on the monochromatic approximation. In this study, we developed a new family of iterative methods that incorporates the exact polychromatic model into tomographic image recovery, which improves the accuracy and quality of reconstruction.

METHODS

The generalized information-theoretic discrepancy (GID) was employed as a new metric for quantifying the distance between the measured and synthetic data. By using special features of the GID, the objective function for polychromatic reconstruction which contains a double integral over the wavelength and the trajectory of incident x-rays was simplified to a paraboloidal form without using the monochromatic approximation. More specifically, the original GID was replaced with a surrogate function with two auxiliary, energy-dependent variables. Subsequently, the alternating minimization technique was applied to solve the double minimization problem. Based on the optimization transfer principle, the objective function was further simplified to the paraboloidal equation, which leads to a closed-form update formula. Numerical experiments on the beam-hardening correction and material-selective reconstruction were conducted to compare and assess the performance of conventional methods and the proposed algorithms.

RESULTS

The authors found that the GID determines the distance between its two arguments in a flexible manner. In this study, three groups of GIDs with distinct data representations were considered. The authors demonstrated that one type of GIDs that comprises "raw" data can be viewed as an extension of existing statistical reconstructions; under a particular condition, the GID is equivalent to the Poisson log-likelihood function. The newly proposed GIDs of the other two categories consist of log-transformed measurements, which have the advantage of imposing linearized penalties over multiple discrepancies. For all proposed variants of the GID, the aforementioned strategy was used to obtain a closed-form update equation. Even though it is based on the exact polychromatic model, the derived algorithm bears a structural resemblance to conventional methods based on the monochromatic approximation. The authors named the proposed approach as information-theoretic discrepancy based iterative reconstructions (IDIR). In numerical experiments, IDIR with raw data converged faster than previously known statistical reconstruction methods. IDIR with log-transformed data exhibited superior reconstruction quality and faster convergence speed compared with conventional methods and their variants.

CONCLUSIONS

The authors' new framework for tomographic reconstruction allows iterative inversion of the polychromatic data model. The primary departure from the traditional iterative reconstruction was the employment of the GID as a new metric for quantifying the inconsistency between the measured and synthetic data. The proposed methods outperformed not only conventional methods based on the monochromatic approximation but also those based on the polychromatic model. The authors have observed that the GID is a very flexible means to design an objective function for iterative reconstructions. Hence, the authors expect that the proposed IDIR framework will also be applicable to other challenging tasks.

摘要

目的

临床应用中典型 X 射线源产生的 X 射线光子具有很宽的波长范围,而单个粒子与生物物质之间的相互作用取决于粒子的能级。然而,大多数现有的透射断层成像重建方法忽略了这种多色测量的性质,依赖于单色近似。在这项研究中,我们开发了一组新的迭代方法,将精确的多色模型纳入断层成像图像恢复中,从而提高了重建的准确性和质量。

方法

广义信息论差异(GID)被用作一种新的度量,用于量化测量数据和合成数据之间的距离。通过使用 GID 的特殊性质,将包含波长和入射 X 射线轨迹的双重积分的多色重建的目标函数简化为抛物面形式,而无需使用单色近似。更具体地说,原始 GID 被具有两个辅助、能量相关变量的替代函数所取代。随后,应用交替最小化技术来解决双重最小化问题。基于优化传递原理,目标函数进一步简化为抛物面方程,从而得到一个闭式更新公式。对束硬化校正和材料选择性重建进行了数值实验,以比较和评估传统方法和所提出算法的性能。

结果

作者发现 GID 以灵活的方式确定其两个参数之间的距离。在本研究中,考虑了三组具有不同数据表示的 GID。作者证明了包含“原始”数据的一类 GID 可以看作是现有统计重建的扩展;在特定条件下,GID 等同于泊松对数似然函数。其他两类新提出的 GID 由对数变换的测量值组成,它们具有对多个差异施加线性惩罚的优势。对于所有提出的 GID 变体,都使用上述策略获得闭式更新方程。尽管它基于精确的多色模型,但所得到的算法与基于单色近似的传统方法具有相似的结构。作者将所提出的方法命名为基于信息论差异的迭代重建(IDIR)。在数值实验中,基于原始数据的 IDIR 比以前已知的统计重建方法收敛得更快。基于对数变换数据的 IDIR 与传统方法及其变体相比,具有更好的重建质量和更快的收敛速度。

结论

作者提出的层析成像重建新框架允许对多色数据模型进行迭代反演。与传统迭代重建的主要区别是使用 GID 作为一种新的度量,用于量化测量数据和合成数据之间的不一致性。所提出的方法不仅优于基于单色近似的传统方法,也优于基于多色模型的方法。作者观察到,GID 是设计迭代重建目标函数的一种非常灵活的手段。因此,作者期望所提出的 IDIR 框架也将适用于其他具有挑战性的任务。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验