利用人工神经网络解决光子计数x射线CT光谱畸变的新方法

M. Touch, D. Clark, W. Barber, C. Badea
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引用次数: 3

摘要

使用光子计数x射线探测器(PCXD)的光谱CT可以潜在地提高测量组织成分的准确性。然而,由于电荷共享、脉冲堆积和Kescape能量损失,PCXD光谱测量受到畸变的影响。本文提出了两种新的基于人工神经网络(ANN)的算法:一种是对失真进行建模和补偿,另一种是直接对失真进行校正。通过训练得到基于人工神经网络的畸变模型,通过校准扫描从一组投影中学习畸变。在正演统计模型中应用人工神经网络畸变来补偿投影分解中的畸变。人工神经网络也被用来学习直接纠正投影中的扭曲。校正后的投影用于重建图像,通过联合双边滤波去噪,并分解为康普顿散射、光电效应和碘三种物质基函数。事实证明,与使用不完善的参数失真模型相比,基于人工神经网络的失真模型对噪声的鲁棒性更强,效果更好。在噪声存在的情况下,人工神经网络模型估计碘浓度的平均相对误差为11.82%,参数模型为16.72%。经过畸变校正后,碘浓度估计的平均相对误差比从畸变数据直接分解的平均相对误差提高了50%。通过我们的联合双边过滤,所得的材料图像质量和碘的可检测性(由对比噪声比定义)大大增强,允许检测低至2 mg/ml的碘浓度。未来的工作将致力于使用3d打印的模型对我们基于人工神经网络的方法进行实验评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel approaches to address spectral distortions in photon counting x-ray CT using artificial neural networks
Spectral CT using a photon-counting x-ray detector (PCXD) can potentially increase accuracy of measuring tissue composition. However, PCXD spectral measurements suffer from distortion due to charge sharing, pulse pileup, and Kescape energy loss. This study proposes two novel artificial neural network (ANN)-based algorithms: one to model and compensate for the distortion, and another one to directly correct for the distortion. The ANN-based distortion model was obtained by training to learn the distortion from a set of projections with a calibration scan. The ANN distortion was then applied in the forward statistical model to compensate for distortion in the projection decomposition. ANN was also used to learn to correct distortions directly in projections. The resulting corrected projections were used for reconstructing the image, denoising via joint bilateral filtration, and decomposition into three-material basis functions: Compton scattering, the photoelectric effect, and iodine. The ANN-based distortion model proved to be more robust to noise and worked better compared to using an imperfect parametric distortion model. In the presence of noise, the mean relative errors in iodine concentration estimation were 11.82% (ANN distortion model) and 16.72% (parametric model). With distortion correction, the mean relative error in iodine concentration estimation was improved by 50% over direct decomposition from distorted data. With our joint bilateral filtration, the resulting material image quality and iodine detectability as defined by the contrast-to-noise ratio were greatly enhanced allowing iodine concentrations as low as 2 mg/ml to be detected. Future work will be dedicated to experimental evaluation of our ANN-based methods using 3D-printed phantoms.
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