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Imaging performance of a hybrid x-ray computed tomography-fluorescence molecular tomography system using priors.

机译:使用先验的混合X射线计算机断层扫描-荧光分子断层成像系统的成像性能。

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PURPOSE: The performance is studied of two newly introduced and previously suggested methods that incorporate priors into inversion schemes associated with data from a recently developed hybrid x-ray computed tomography and fluorescence molecular tomography system, the latter based on CCD camera photon detection. The unique data set studied attains accurately registered data of high spatially sampled photon fields propagating through tissue along 360 degrees projections. METHODS: Approaches that incorporate structural prior information were included in the inverse problem by adding a penalty term to the minimization function utilized for image reconstructions. Results were compared as to their performance with simulated and experimental data from a lung inflammation animal model and against the inversions achieved when not using priors. RESULTS: The importance of using priors over stand-alone inversions is also showcased with high spatial sampling simulated and experimental data. The approach of optimal performance in resolving fluorescent biodistribution in small animals is also discussed. CONCLUSIONS: Inclusion of prior information from x-ray CT data in the reconstruction of the fluorescence biodistribution leads to improved agreement between the reconstruction and validation images for both simulated and experimental data.
机译:目的:研究两种新引入的和先前建议的方法的性能,该方法将先验结合到与最近开发的混合x射线计算机断层摄影和荧光分子层析成像系统相关的数据相关的反演方案中,后者基于CCD相机光子检测。研究的独特数据集获得了沿360度投影在组织中传播的高空间采样光子场的准确记录数据。方法:通过将惩罚项添加到用于图像重建的最小化函数中,将包含结构先验信息的方法包括在反问题中。将结果与来自肺炎动物模型的模拟和实验数据进行比较,并与不使用先验条件时获得的反演结果进行比较。结果:通过高空间采样模拟和实验数据也显示了使用先验而不是独立反演的重要性。还讨论了解决小动物中荧光生物分布的最佳性能的方法。结论:在荧光生物分布的重建中包括来自X射线CT数据的先验信息,可以改善模拟和实验数据的重建和验证图像之间的一致性。

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