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Malignant Brain Tumor Classification Using the Random Forest Method

机译:随机森林法对脑肿瘤进行分类

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摘要

Brain tumor grading is pivotal in treatment planning. Contrast-enhanced T1-weighted MR image is commonly used for grading. However, the classification of different types of high-grade gliomas using Tl-weighted MR images is still challenging, due to the lack of imaging biomarkers. Previous studies only focused on simple visual features, ignoring rich information provided by MR images. In this paper, we propose an automatic classification pipeline using random forest to differentiate the WHO Grade Ⅲ and Grade Ⅳ gliomas, by extracting discriminative features based on 3D patches. The proposed pipeline consists of three main steps in both the training and the testing stages. First, we select numerous 3D patches in and around the tumor regions of the given MR images. This can suppress the intensity information from the normal region, which is trivial for the classification process. Second, we extract features based on both patch-wise information and subject-wise clinical information, and then we refine this step to optimize the performance of malignant tumor classification. Third, we incorporate the classification forest for training/testing the classifier. We validate the proposed framework on 96 malignant brain tumor patients that consist of both Grade Ⅲ (N = 38) and Grade IV gliomas (N = 58). The experiments show that the proposed framework has demonstrated its validity in the application of high-grade gliomas classification, which may help improve the poor prognosis of high-grade gliomas.
机译:脑肿瘤分级对治疗计划至关重要。对比度增强的T1加权MR图像通常用于分级。然而,由于缺乏成像生物标志物,使用T1加权MR图像对不同类型的高级神经胶质瘤进行分类仍然具有挑战性。先前的研究仅关注简单的视觉特征,而忽略了MR图像提供的丰富信息。本文提出了一种基于随机森林的自动分类管道,通过提取基于3D斑块的判别特征来区分WHO的Ⅲ级和Ⅳ级神经胶质瘤。拟议中的管道包括培训和测试阶段的三个主要步骤。首先,我们在给定MR图像的肿瘤区域内和周围选择许多3D补丁。这可以抑制来自正常区域的强度信息,这对于分类过程而言是微不足道的。其次,我们基于贴片信息和主题临床信息提取特征,然后优化此步骤以优化恶性肿瘤分类的性能。第三,我们结合分类森林来训练/测试分类器。我们对96例由Ⅲ级神经胶质瘤(N = 38)和IV级神经胶质瘤(N = 58)组成的恶性脑肿瘤患者验证了所提出的框架。实验表明,所提出的框架已经证明了其在高级神经胶质瘤分类中的应用有效性,可能有助于改善高级神经胶质瘤的不良预后。

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