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A Novel Radial Basis Neural Network-Leveraged Fast Training Method for Identifying Organs in MR Images

机译:一种新颖的径向基础神经网络 - 利用MR图像中的器官识别器官的快速训练方法

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We propose a new method for fast organ classification and segmentation of abdominal magnetic resonance (MR) images. Magnetic resonance imaging (MRI) is a new type of high-tech imaging examination fashion in recent years. Recognition of specific target areas (organs) based on MR images is one of the key issues in computer-aided diagnosis of medical images. Artificial neural network technology has made significant progress in image processing based on the multimodal MR attributes of each pixel in MR images. However, with the generation of large-scale data, there are few studies on the rapid processing of large-scale MRI data. To address this deficiency, we present a fast radial basis function artificial neural network (Fast-RBF) algorithm. The importance of our efforts is as follows: (1) The proposed algorithm achieves fast processing of large-scale image data by introducing the ε-insensitive loss function, the structural risk term, and the core-set principle. We apply this algorithm to the identification of specific target areas in MR images. (2) For each abdominal MRI case, we use four MR sequences (fat, water, in-phase (IP), and opposed-phase (OP)) and the position coordinates (x, y) of each pixel as the input of the algorithm. We use three classifiers to identify the liver and kidneys in the MR images. Experiments show that the proposed method achieves a higher precision in the recognition of specific regions of medical images and has better adaptability in the case of large-scale datasets than the traditional RBF algorithm.
机译:我们为腹部磁共振(MR)图像的快速器官分类和分段提出了一种新方法。磁共振成像(MRI)是近年来一种新型的高科技成像考试时尚。基于MR图像的特定目标区域(ORGANS)的识别是医学图像的计算机辅助诊断中的关键问题之一。基于MR图像中每个像素的多模式MR属性,人工神经网络技术在图像处理中取得了重大进展。然而,随着大规模数据的产生,很少有关于大规模MRI数据的快速处理的研究。为解决这一缺陷,我们呈现了一种快速径向基函数人工神经网络(FAST-RBF)算法。我们努力的重要性如下:(1)所提出的算法通过引入ε - 不敏感损失功能,结构风险术语和核心设定原理来实现大规模图像数据的快速处理。我们将该算法应用于MR图像中的特定目标区域的识别。 (2)对于每个腹部MRI案例,我们使用四个MR序列(脂肪,水,同相(IP)和相对阶段(OP))和每个像素的位置坐标(x,y)作为输入算法。我们使用三个分类器来识别MR图像中的肝脏和肾脏。实验表明,该方法在识别医学图像的特定区域方面实现了更高的精度,并且在大规模数据集的情况下具有比传统的RBF算法更好的适应性。

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