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Tumor Segmentation from Multimodal MRI Using Random Forest with Superpixel and Tensor Based Feature Extraction

机译:使用超像素和张量的特征提取使用随机林的多模式MRI的肿瘤分割

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Identification and localization of brain tumor tissues plays an important role in diagnosis and treatment planning of gliomas. A fully automated superpixel wise two-stage tumor tissue segmentation algorithm using random forest is proposed in this paper. First stage is used to identify total tumor and the second stage to segment sub-regions. Features for random forest classifier are extracted by constructing a tensor from multimodal MRI data and applying multi-linear singular value decomposition. The proposed method is tested on BRATS 2017 validation and test dataset. The first stage model has a Dice score of 83% for the whole tumor on the validation dataset. The total model achieves a performance of 77%, 50% and 61% Dice scores for whole tumor, enhancing tumor and tumor core, respectively on the test dataset.
机译:脑肿瘤组织的鉴定和定位在胶质瘤的诊断和治疗计划中起着重要作用。本文提出了一种使用随机森林的全自动超像素明智的两阶段肿瘤组织分割算法。第一阶段用于识别总肿瘤和第二阶段到分段子区域。随机森林分类器的特征是通过构造来自多模式MRI数据的张量并应用多线性奇异值分解来提取。在Brats 2017验证和测试数据集中测试了该方法。第一阶段模型在验证数据集上的整个肿瘤的骰子得分为83%。总模型可分别在试验数据集上实现全肿瘤,增强肿瘤和肿瘤核心的77%,50%和61%的骰子分数。

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