Fourth Military Medical University, Department of Biomedical Engineering, Xi'an, Shaanxi, China.
J Biomed Opt. 2018 Feb;23(2):1-11. doi: 10.1117/1.JBO.23.2.026006.
With the advances of x-ray excitable nanophosphors, x-ray luminescence computed tomography (XLCT) has become a promising hybrid imaging modality. In particular, a cone-beam XLCT (CB-XLCT) system has demonstrated its potential in in vivo imaging with the advantage of fast imaging speed over other XLCT systems. Currently, the imaging models of most XLCT systems assume that nanophosphors emit light based on the intensity distribution of x-ray within the object, not completely reflecting the nature of the x-ray excitation process. To improve the imaging quality of CB-XLCT, an imaging model that adopts an excitation model of nanophosphors based on x-ray absorption dosage is proposed in this study. To solve the ill-posed inverse problem, a reconstruction algorithm that combines the adaptive Tikhonov regularization method with the imaging model is implemented for CB-XLCT reconstruction. Numerical simulations and phantom experiments indicate that compared with the traditional forward model based on x-ray intensity, the proposed dose-based model could improve the image quality of CB-XLCT significantly in terms of target shape, localization accuracy, and image contrast. In addition, the proposed model behaves better in distinguishing closer targets, demonstrating its advantage in improving spatial resolution.
随着 X 射线激发纳米荧光粉的发展,X 射线发光计算机断层扫描(XLCT)已成为一种很有前途的混合成像模式。特别是,锥形束 XLCT(CB-XLCT)系统在体内成像方面表现出了其潜力,与其他 XLCT 系统相比,它具有更快的成像速度优势。目前,大多数 XLCT 系统的成像模型假设纳米荧光粉基于物体内 X 射线的强度分布发光,并没有完全反映 X 射线激发过程的本质。为了提高 CB-XLCT 的成像质量,本研究提出了一种采用基于 X 射线吸收剂量的纳米荧光粉激发模型的成像模型。为了解决不适定的逆问题,为 CB-XLCT 重建实现了一种将自适应 Tikhonov 正则化方法与成像模型相结合的重建算法。数值模拟和体模实验表明,与传统的基于 X 射线强度的正向模型相比,所提出的基于剂量的模型可以显著提高 CB-XLCT 的图像质量,在目标形状、定位精度和图像对比度方面都有显著改善。此外,所提出的模型在区分更近的目标方面表现更好,显示出其在提高空间分辨率方面的优势。