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基于深度锥束X射线发光计算机断层扫描网络的双目标和多目标锥束X射线发光计算机断层扫描

Dual and Multi-Target Cone-Beam X-ray Luminescence Computed Tomography Based on the DeepCB-XLCT Network.

作者信息

Liu Tianshuai, Huang Shien, Li Ruijing, Gao Peng, Li Wangyang, Lu Hongbing, Song Yonghong, Rong Junyan

机构信息

Biomedical Engineering Department, Fourth Military Medical University, Xi'an 710032, China.

Shaanxi Provincial Key Laboratory of Bioelectromagnetic Detection and Intelligent Perception, Xi'an 710032, China.

出版信息

Bioengineering (Basel). 2024 Aug 28;11(9):874. doi: 10.3390/bioengineering11090874.

Abstract

BACKGROUND AND OBJECTIVE

Emerging as a hybrid imaging modality, cone-beam X-ray luminescence computed tomography (CB-XLCT) has been developed using X-ray-excitable nanoparticles. In contrast to conventional bio-optical imaging techniques like bioluminescence tomography (BLT) and fluorescence molecular tomography (FMT), CB-XLCT offers the advantage of greater imaging depth while significantly reducing interference from autofluorescence and background fluorescence, owing to its utilization of X-ray-excited nanoparticles. However, due to the intricate excitation process and extensive light scattering within biological tissues, the inverse problem of CB-XLCT is fundamentally ill-conditioned.

METHODS

An end-to-end three-dimensional deep encoder-decoder network, termed DeepCB-XLCT, is introduced to improve the quality of CB-XLCT reconstructions. This network directly establishes a nonlinear mapping between the distribution of internal X-ray-excitable nanoparticles and the corresponding boundary fluorescent signals. To improve the fidelity of target shape restoration, the structural similarity loss (SSIM) was incorporated into the objective function of the DeepCB-XLCT network. Additionally, a loss term specifically for target regions was introduced to improve the network's emphasis on the areas of interest. As a result, the inaccuracies in reconstruction caused by the simplified linear model used in conventional methods can be effectively minimized by the proposed DeepCB-XLCT method.

RESULTS AND CONCLUSIONS

Numerical simulations, phantom experiments, and in vivo experiments with two targets were performed, revealing that the DeepCB-XLCT network enhances reconstruction accuracy regarding contrast-to-noise ratio and shape similarity when compared to traditional methods. In addition, the findings from the XLCT tomographic images involving three targets demonstrate its potential for multi-target CB-XLCT imaging.

摘要

背景与目的

锥形束X射线发光计算机断层扫描(CB-XLCT)作为一种混合成像模态应运而生,它是利用X射线可激发纳米粒子开发的。与传统的生物光学成像技术如生物发光断层扫描(BLT)和荧光分子断层扫描(FMT)相比,CB-XLCT具有成像深度更大的优势,同时由于其使用了X射线激发纳米粒子,可显著减少自发荧光和背景荧光的干扰。然而,由于生物组织内复杂的激发过程和广泛的光散射,CB-XLCT的逆问题本质上是病态的。

方法

引入了一种端到端的三维深度编码器-解码器网络,称为DeepCB-XLCT,以提高CB-XLCT重建的质量。该网络直接在内部X射线可激发纳米粒子的分布与相应的边界荧光信号之间建立非线性映射。为了提高目标形状恢复的保真度,将结构相似性损失(SSIM)纳入DeepCB-XLCT网络的目标函数中。此外,引入了一个专门针对目标区域的损失项,以提高网络对感兴趣区域的关注度。结果,所提出的DeepCB-XLCT方法可以有效地最小化传统方法中使用的简化线性模型所导致的重建不准确问题。

结果与结论

进行了数值模拟、体模实验以及对两个目标的体内实验,结果表明与传统方法相比,DeepCB-XLCT网络在对比度噪声比和形状相似性方面提高了重建精度。此外,涉及三个目标的XLCT断层图像的结果证明了其在多目标CB-XLCT成像方面的潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7d63/11428951/1f71ef8fb9ff/bioengineering-11-00874-g001.jpg

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