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首页> 外文期刊>Computers in Biology and Medicine >Slice interpolation of medical images using enhanced fuzzy radial basis function neural networks
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Slice interpolation of medical images using enhanced fuzzy radial basis function neural networks

机译:使用增强的模糊径向基础函数神经网络切片插值医学图像

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摘要

Volume data composed of complete slice images play an indispensable role in medical diagnoses. However, system or human factors often lead to the loss of slice images. In recent years, various interpolation algorithms have been proposed to solve these problems. Although these algorithms are effective, the interpolated images have some shortcomings, such as less accurate recovery and missing details. In this study, we propose a new method based on an enhanced fuzzy radial basis function neural network to improve the performance of the interpolation method. The neural network includes an input layer (six input neurons), three hidden layers of neurons, and the output layer (one output neuron), and we propose a patch matching method to select the input variables of the neural network. Accordingly, we use two normal pending images to be interpolated as the input. Final output data is obtained by applying the trained neural network. In examining four groups of medical images, the proposed method outperforms five other methods, achieving the highest similarity image metric (ESSIM) values of 0.96, 0.95, 0.94, and 0.92 and the lowest mean squared difference (MSD) values of 35.5, 41.2, 50.9, and 47.1. In addition, for a whole MRI brain volume data experiment, the average MSD and ESSIM values of the proposed method and other methods are (41.62, 0.95) and (57.13, 0.90), respectively. The results indicate that the proposed method is superior to the other methods.
机译:由完整的切片图像组成的卷数据在医学诊断中发挥着不可或缺的作用。然而,系统或人为因素通常导致切片图像的损失。近年来,已经提出了各种插值算法来解决这些问题。虽然这些算法是有效的,但内插图像具有一些缺点,例如较少准确的恢复和缺少细节。在这项研究中,我们提出了一种基于增强的模糊径向基函数神经网络的新方法来提高内插方法的性能。神经网络包括输入层(六个输入神经元),三层神经元,以及输出层(一个输出神经元),并且我们提出了一种补丁匹配方法来选择神经网络的输入变量。因此,我们使用两个正常待处理的图像作为输入插值。通过应用训练的神经网络获得最终输出数据。在检查四组医学图像时,所提出的方法优于其他五种其他方法,实现了0.96,0.95,0.94和0.92的最高相似性图像度量(ESSIM)值,以及35.5,41.2的最低平均平方差(MSD)值。 50.9和47.1。此外,对于整个MRI脑体积数据实验,所提出的方法和其他方法的平均MSD和ESSIM值分别是(41.62,0.95)和(57.13,0.90)。结果表明,该方法优于其他方法。

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