脑磁共振自旋回波图像的神经网络分割

S. Cagnoni , G. Coppini , M. Rucci , D. Caramella , G. Valli
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引用次数: 35

摘要

本文介绍了一种神经网络分割脑磁共振自旋回波图像的方法。我们的方法依赖于对MR信号衰减的分析和解剖学知识;该系统处理一个标准多片序列的两个早期回波。可以区分三个主要子系统。第一部分实现了磁流变信号衰减模型;它合成了一个四回波多回波序列,以便在输入序列中加入具有长回波时间特征的图像。第二个子系统通过生成图像来利用先验的解剖学知识,其中属于脑实质的像素被突出显示。这样的解剖信息允许以下子模块区分具有相似含水量的生物学上不同的组织,因此具有相似的外观,这可能会产生错误分类。重建序列的灰度值和第二模块的输出由第三子系统处理,第三子系统对序列进行分割。每个像素被分配到五种不同的组织类别中的一种,可以用脑磁共振自旋回波成像显示。通过适当的编码,就可以得到五层分割图像。该系统基于用反向传播算法训练的前馈网络;在模拟和临床图像上进行了实验,以评估其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network segmentation of magnetic resonance spin echo images of the brain

This paper describes a neural network system to segment magnetic resonance (MR) spin echo images of the brain. Our approach relies on the analysis of MR signal decay and on anatomical knowledge; the system processes two early echoes of a standard multislice sequence. Three main subsystems can be distinguished. The first implements a model of MR signal decay; it synthesizes a four-echo multiecho sequence, in order to add images characterized by long echo-times to the input sequence. The second subsystem exploits a priori anatomical knowledge by producing an image, in which pixels belonging to brain parenchyma are highlighted. Such anatomical information allows the following submodule to distinguish biologically different tissues with similar water content, and hence similar appearance, which might produce misclassifications. The grey levels of the reconstructed sequence and the output of the second module are processed by the third subsystem, which performs the segmentation of the sequence. Each pixel is assigned to one of five different tissue classes that can be revealed with brain MR spin echo imaging. With a suitable encoding, a five-level segmented image can then be produced. The system is based on feed-forward networks trained with the back-propagation algorithm; experiments to assess its performance have been carried out on both simulated and clinical images.

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