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Stability study of some neural networks applied to tissue characterization of brain magnetic resonance images

机译:应用于神经磁共振图像组织表征的某些神经网络的稳定性研究

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This study investigates the segmentation ability of unsupervised clustering of the image feature space. A self-organizing map, a feed-forward neural network and a k-nearest neighbor classifier were compared in labeling brain slices from magnetic resonance imaging. Qualitative and quantitative tests were carried out using brain images of a patient with an infarction. Five different tissue classes were partitioned: white matter, gray matter, cerebrospinal fluid, fluid in the infarct region and gray matter in the infarct region. The SOM based method performed best in all the cases that were investigated. Especially, the stability of the method concerning the influence of the training set was superior.
机译:这项研究调查了图像特征空间的无监督聚类的分割能力。在标记磁共振成像的脑切片时,比较了自组织图,前馈神经网络和k近邻分类器。使用梗塞患者的大脑图像进行了定性和定量测试。划分了五种不同的组织类别:白质,灰质,脑脊液,梗塞区域的液体和梗塞区域的灰质。在所有调查的案例中,基于SOM的方法效果最好。特别地,与训练集的影响有关的方法的稳定性是优异的。

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