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Quantitative Reconstruction of Dielectric Properties Based on Deep-Learning-Enabled Microwave-Induced Thermoacoustic Tomography

机译:基于深度学习微波诱导热声层析成像的介电特性定量重建

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摘要

Quantitative reconstruction of dielectric properties has enabled a wealth of biomedical applications. Although traditional microwave imaging and microwave-induced thermoacoustic tomography (MITAT) techniques have been widely explored for quantitative reconstruction, it is still highly challenging for them to deal with biological samples with high permittivity and conductivity. This work leverages deep-learning-enabled MITAT (DL-MITAT) approach to quantitatively reconstruct dielectric properties of biological samples with high quality. We construct a new network structure to separately reconstruct the permittivity and conductivity. By simulation and experimental testing, we demonstrate that the DL-MITAT technique is able to reliably reconstruct inhomogeneous biological samples with tumor, muscle, and fat. The experimental reconstruction error is only 5#x0025;. The network exhibits excellent generalization capability in terms of sample#x2019;s geometry. This work provides a useful paradigm and alternative way for quantitative reconstruction of dielectric properties and paves the way toward practical applications.
机译:介电特性的定量重建使丰富的生物医学应用成为可能。尽管传统的微波成像和微波诱导热声断层扫描(MITAT)技术在定量重建中得到了广泛的探索,但处理高介电常数和电导率的生物样品仍然极具挑战性。这项工作利用深度学习的MITAT(DL-MITAT)方法,高质量地定量重建了生物样品的介电特性。我们构建了一种新的网络结构,分别重构了介电常数和电导率。通过模拟和实验测试,我们证明了DL-MITAT技术能够可靠地重建具有肿瘤、肌肉和脂肪的不均匀生物样本。实验重构误差仅为5%。该网络在样品几何形状方面表现出优异的泛化能力。本工作为介电特性的定量重建提供了有用的范式和替代方法,为实际应用铺平了道路。

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