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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Reconstruction of Organ Boundaries With Deep Learning in the D-Bar Method for Electrical Impedance Tomography
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Reconstruction of Organ Boundaries With Deep Learning in the D-Bar Method for Electrical Impedance Tomography

机译:电气阻抗断层扫描D-Bar方法深度学习的器官边界的重建

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Objective: Medical electrical impedance tomography is a non-ionizing imaging modality in which low-amplitude, low-frequency currents are applied on electrodes on the body, the resulting voltages are measured, and an inverse problem is solved to determine the conductivity distribution in the region of interest. Due the ill-posedness of the inverse problem, the boundaries of internal organs are typically blurred in the reconstructed image. Methods: A deep learning approach is introduced in the D-bar method for reconstructing a 2-D slice of the thorax to recover the boundaries of organs. This is accomplished by training a deep neural network on labeled pairs of scattering transforms and the boundaries of the organs in the data from which the transforms were computed. This allows the network to "learn" the nonlinear mapping between them by minimizing the error between the output of the network and known actual boundaries. Further, a "sparse" reconstruction is computed by fusing the results of the standard D-bar reconstruction with reconstructed organ boundaries from the neural network. Results: Results are shown on simulated and experimental data collected on a saline-filled tank with agar targets simulating the conductivity of the heart and lungs. Conclusions and Significance: The results demonstrate that deep neural networks can successfully learn the mapping between scattering transforms and the internal boundaries of structures.
机译:目的:医学电阻断层扫描是一种非电离成像模型,其中低幅度,低频电流在主体上施加在电极上,测量所得到的电压,并解决了逆问题以确定导电性分布兴趣区域。由于逆问题的不良呈现,内器官的边界通常在重建图像中模糊。方法:在D-Bar方法中引入了深度学习方法,用于重建胸部的2-D切片以恢复器官的边界。这是通过训练在标记的散射变换成对的深度神经网络上实现的,并且在计算变换的数据中的器官的边界上实现。这允许网络通过最小化网络输出与已知实际边界之间的误差来“学习”它们之间的非线性映射。此外,通过与神经网络的重建器官边界融合标准D杆重建的结果来计算“稀疏”重建。结果:结果显示在盐水填充罐上收集的模拟和实验数据,琼脂靶模拟心脏和肺的电导率。结论和意义:结果表明,深神经网络可以成功地学习散射变换与结构内部边界之间的映射。

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