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Self-Trained Supervised Segmentation of Subcortical Brain Structures Using Multispectral Magnetic Resonance Images

机译:利用多光谱磁共振图像自训练的细胞脑结构监督分割

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摘要

The aim of this paper is investigate the feasibility of automatically training supervised methods, such as k-nearest neighbor (kNN) and principal component discriminant analysis (PCDA), and to segment the four subcortical brain structures: caudate, thalamus, pallidum, and putamen. The adoption of supervised classification methods so far has been limited by the need to define a representative training dataset, operation that usually requires the intervention of an operator. In this work the selection of the training data was performed on the subject to be segmented in a fully automated manner by registering probabilistic atlases. Evaluation of automatically trained kNN and PCDA classifiers that combine voxel intensities and spatial coordinates was performed on 20 real datasets selected from two publicly available sources of multispectral magnetic resonance studies. The results demonstrate that atlas-guided training is an effective way to automatically define a representative and reliable training dataset, thus giving supervised methods the chance to successfully segment magnetic resonance brain images without the need for user interaction.
机译:本文的目的是调查自动培训监督方法的可行性,例如K-CORMATE邻居(KNN)和主成分判别分析(PCDA),并分段为四个脑脑结构:尾部,丘脑,苍白和腐烂。到目前为止通过了监督分类方法的需要受到限制,需要定义代表培训数据集,通常需要运营商干预的操作。在这项工作中,通过注册概率的地图集,以完全自动化的方式进行训练数据的选择。对自动训练的KNN和PCDA分类器的评估在20个真实数据集中进行了组合体素强度和空间坐标的分类器,该数据集中选择的20个公共光谱磁共振研究的两个实际数据集。结果表明,标准培训是自动定义代表性和可靠的训练数据集的有效方法,从而使监督方法有机会成功地在不需要用户交互的情况下成功分割磁共振大脑图像。

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