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Automatic selection of regularization parameters for dynamic fluorescence molecular tomography: a comparison of L-curve and U-curve methods

机译:动态荧光分子层析成像的正则化参数的自动选择:L曲线和U曲线方法的比较

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摘要

Dynamic fluorescence molecular tomography (FMT) is a promising technique for the study of the metabolic process of fluorescent agents in the biological body in vivo, and the quality of the parametric images relies heavily on the accuracy of the reconstructed FMT images. In typical dynamic FMT implementations, the imaged object is continuously monitored for more than 50 minutes. During each minute, a set of the fluorescent measurements is acquired and the corresponding FMT image is reconstructed. It is difficult to manually set the regularization parameter in the reconstruction of each FMT image. In this paper, the parametric images obtained with the L-curve and U-curve methods are quantitatively evaluated through numerical simulations, phantom experiments and in vivo experiments. The results illustrate that the U-curve method obtains better accuracy, stronger robustness and higher noise-resistance in parametric imaging. Therefore, it is a promising approach to automatic selection of the regularization parameters for dynamic FMT.
机译:动态荧光分子层析成像(FMT)是研究体内生物体内荧光剂代谢过程的一种有前途的技术,参数图像的质量在很大程度上取决于重建的FMT图像的准确性。在典型的动态FMT实现中,连续监视被成像对象超过50分钟。在每一分钟内,获取一组荧光测量值,并重建相应的FMT图像。在每个FMT图像的重建中很难手动设置正则化参数。在本文中,通过数值模拟,体模实验和体内实验对使用L曲线和U曲线方法获得的参数图像进行了定量评估。结果表明,U曲线方法在参数化成像中具有更好的精度,更强的鲁棒性和更高的抗噪性。因此,这是一种为动态FMT自动选择正则化参数的方法。

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