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Feature selection for self-organizing feature map neural networks with applications in medical image segmentation.

机译:自组织特征图神经网络的特征选择及其在医学图像分割中的应用。

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This thesis presents a novel feature selection algorithm for medical image segmentation. A multiobjective optimization genetic algorithm is used to search among the candidate features to find an optimal subset which results in the highest segmentation. A self-organizing feature map serves as the classifier such that the fitness of the genetic algorithm is determined by two quality measures of the map, quantization error and topology preservation. The algorithm is applied to a 3D simulation model of the human brain and six MRI data sets, and shows promising results in comparison with using principal component analysis as the basis for feature selection. This indicates that tailoring a self-organizing feature map to a specific subset of features has the potential to increase the segmentation accuracy of medical images.
机译:本文提出了一种新的医学图像分割特征选择算法。使用多目标优化遗传算法在候选特征之间搜索,以找到导致最高分割的最优子集。自组织特征图用作分类器,从而遗传算法的适用性由该图的两个质量度量,量化误差和拓扑保留来确定。该算法已应用于人脑和六个MRI数据集的3D仿真模型,与使用主成分分析作为特征选择的基础相比,显示出了可喜的结果。这表明为特定特征子集定制自组织特征图可能会提高医学图像的分割精度。

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