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Sparse Regularization-Based Reconstruction for Bioluminescence Tomography Using a Multilevel Adaptive Finite Element Method

机译:基于多级自适应有限元方法的基于稀疏正则化的生物发光层析成像重建。

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摘要

Bioluminescence tomography (BLT) is a promising tool for studying physiological and pathological processes at cellular and molecular levels. In most clinical or preclinical practices, fine discretization is needed for recovering sources with acceptable resolution when solving BLT with finite element method (FEM). Nevertheless, uniformly fine meshes would cause large dataset and overfine meshes might aggravate the ill-posedness of BLT. Additionally, accurately quantitative information of density and power has not been simultaneously obtained so far. In this paper, we present a novel multilevel sparse reconstruction method based on adaptive FEM framework. In this method, permissible source region gradually reduces with adaptive local mesh refinement. By using sparse reconstruction with l1 regularization on multilevel adaptive meshes, simultaneous recovery of density and power as well as accurate source location can be achieved. Experimental results for heterogeneous phantom and mouse atlas model demonstrate its effectiveness and potentiality in the application of quantitative BLT.
机译:生物发光层析成像(BLT)是一种有前途的工具,可用于研究细胞和分子水平的生理和病理过程。在大多数临床或临床前实践中,当使用有限元方法(FEM)解决BLT时,需要精细离散化以恢复具有可接受分辨率的源。但是,均匀精细的网格将导致大型数据集,而超精细的网格可能会加剧BLT的不适性。另外,到目前为止,还没有同时获得密度和功率的准确定量信息。在本文中,我们提出了一种新的基于自适应有限元框架的多级稀疏重建方法。在这种方法中,通过自适应局部网格细化,可允许的源区域逐渐减小。通过在多级自适应网格上使用具有l1正则化的稀疏重建,可以同时恢复密度和功率以及精确的源位置。异构体模和小鼠图谱模型的实验结果证明了其在定量BLT应用中的有效性和潜力。

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