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Brain Tumor Segmentation from Multi-Spectral MRI Data Using Cascaded Ensemble Learning*

机译:使用级联集成学习从多光谱MRI数据中进行脑肿瘤分割*

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Ensemble learning methods are frequently employed in medical decision support. In image segmentation problems the ensemble based decisions require a postprocessing, because the ensemble cannot adequately handle the strong correlation of neighbor voxels. This paper proposes a brain tumor segmentation procedure based on an ensemble cascade. The first ensemble consisting of binary decision trees is trained to separate focal lesions from normal tissues based on four observed and 100 computed features. Starting from the intermediary labels provided by the first ensemble, six local features are computed for each voxel that serve as input for the second ensemble. The second ensemble is a classical random forest that enforces the correlation between neighbor pixels, regularizes the shape of the lesions. The segmentation accuracy is characterized by 85.5% overall Dice Score, 0.5% above previous solutions.
机译:集成学习方法经常用于医疗决策支持中。在图像分割问题中,基于整体的决策需要后处理,因为整体无法充分处理相邻体素的强相关性。本文提出了一种基于整体级联的脑肿瘤分割方法。训练由二元决策树组成的第一集合,以根据四个观察到的特征和100个计算出的特征将病灶从正常组织中分离出来。从第一集合提供的中间标签开始,为每个体素计算六个局部特征,以用作第二集合的输入。第二个合奏是一个经典的随机森林,它增强了相邻像素之间的相关性,使病变的形状规则化。细分准确度的特征是总体骰子得分为85.5%,比以前的解决方案高0.5%。

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