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Self-Training Strategy Based on Finite Element Method for Adaptive Bioluminescence Tomography Reconstruction

IEEE Transactions on Medical Imaging(2022)CCF BSCI 1区SCI 2区

Xian Univ Posts & Telecommun

Cited 14|Views16
Abstract
Bioluminescence tomography (BLT) is a promising pre-clinical imaging technique for a wide variety of biomedical applications, which can non-invasively reveal functional activities inside living animal bodies through the detection of visible or near-infrared light produced by bioluminescent reactions. Recently, reconstruction approaches based on deep learning have shown great potential in optical tomography modalities. However, these reports only generate data with stationary patterns of constant target number, shape, and size. The neural networks trained by these data sets are difficult to reconstruct the patterns outside the data sets. This will tremendously restrict the applications of deep learning in optical tomography reconstruction. To address this problem, a self-training strategy is proposed for BLT reconstruction in this paper. The proposed strategy can fast generate large-scale BLT data sets with random target numbers, shapes, and sizes through an algorithm named random seed growth algorithm and the neural network is automatically self-trained. In addition, the proposed strategy uses the neural network to build a map between photon densities on surface and inside the imaged object rather than an end-to-end neural network that directly infers the distribution of sources from the photon density on surface. The map of photon density is further converted into the distribution of sources through the multiplication with stiffness matrix. Simulation, phantom, and mouse studies are carried out. Results show the availability of the proposed self-training strategy.
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Key words
Image reconstruction,Neural networks,Mathematical models,Tomography,Photonics,Deep learning,Biomedical imaging,Bioluminescence tomography,deep learning,image reconstruction,finite element method,self-training
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要点】:本文提出了一种基于有限元方法的自我训练策略,用于自适应生物发光断层成像(BLT)重建,解决了传统深度学习模型泛化能力不足的问题。

方法】:通过随机种子生长算法快速生成具有随机目标数量、形状和大小的BLT数据集,并利用神经网络自我训练。

实验】:通过模拟、 phantom和小鼠实验验证了所提策略的有效性,具体使用的实验数据集未在摘要中提及。