Two-stage Source Reconstruction Algorithm for Bioluminescence Tomography Using Hybrid FEM

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YanBin Hou Heng Zhao XiaoChao Qu DuoFang Chen XiaoRui Wang JiMin Liang Life Sciences Research Center School of Life Sciences and Technology Xidian University Xi an PRC School of Technical Physics Xidian University Xi an PRC [1 ,1 ,1 ,1 ,2 ,1 ,1 ,710071 ,2 ,710071 ]
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A two-stage source reconstruction algorithm for bioluminescence tomography (BLT) is developed using hybrid finite element method (FEM). The proposed algorithm takes full advantages of linear and quadratic FEMs, which can be used to localize and quantify bioluminescent source accurately. In the first stage, a large permissible region is roughly determined and then iteratively evolved to reduce matrix dimension using efficient linear FEM. In the final stage, high-convergence quadratic FEM is applied to improve reconstruction result. Both numerical simulation and physical experiment are performed to evaluate the proposed algorithm. The relevant results demonstrate that quantitative reconstruction can be well achieved in terms of computation efficiency, source position, power density, and total power when compared with previous studies.
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页码:225 / 231
页数:7
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