Iterative CT Reconstruction using Models of Source and Detector Blur and Correlated Noise.

Steven Tilley, Jeffrey H Siewerdsen, J Webster Stayman
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Abstract

Statistical model-based reconstruction methods derive much of their advantage over traditional methods through more accurate forward models of the imaging system. Typical forward models fail to integrate two important aspects of real imaging systems: system blur and noise correlations in the measurements. This work develops an approach that models both aspects using a two-stage approach that includes a regularization deblurring operation followed by generalized penalized weighted least-squares reconstruction. Different reconstruction noise models including standard uncorrelated and correlated presumptions were explored. Moreover, different imaging systems were investigated in which blur was dominated by source effects, dominated by detector effects, or by a combination of source and detector blur. The proposed reconstruction approach that models the correlated noise demonstrated the best performance across all scenarios with the greatest benefits for increased source blur and for reconstructions with finer spatial resolution. This suggests potential application of the method for high resolution systems like dedicated flat-panel cone-beam CT (e.g., head, extremity, dental, mammography scanners) where system resolution is limited by both source and detector blur effects and noise correlations in measurement data are traditionally ignored.

Abstract Image

Abstract Image

Abstract Image

基于源、检测器模糊和相关噪声模型的迭代CT重建。
基于统计模型的重建方法通过更精确的成像系统正演模型,获得了比传统方法更大的优势。典型的正演模型未能整合真实成像系统的两个重要方面:系统模糊和测量中的噪声相关性。这项工作开发了一种方法,该方法使用两阶段方法对这两个方面进行建模,其中包括正则化去模糊操作,然后是广义惩罚加权最小二乘重建。探讨了不同的重构噪声模型,包括标准的不相关假设和相关假设。此外,还研究了不同的成像系统,在这些系统中,模糊主要由源效应主导,由检测器效应主导,或由源和检测器的组合模糊。所提出的重建方法对相关噪声进行建模,在所有场景中表现出最佳性能,对增加的源模糊和更精细的空间分辨率的重建有最大的好处。这表明该方法在高分辨率系统中的潜在应用,如专用平板锥束CT(例如,头部,四肢,牙科,乳房x线摄影扫描仪),其中系统分辨率受到源和检测器模糊效应和测量数据中的噪声相关性的限制,传统上被忽略。
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