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Brain Tumor Segmentation with Optimized Random Forest

机译:优化随机森林的脑肿瘤分割

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摘要

In this paper we propose and tune a discriminative model based on Random Forest (RF) to accomplish brain tumor segmentation in multimodal MR images. The objective of tuning is meant to establish the optimal parameter values and the most significant constraints of the discriminative model. During the building of the RF classifier, the algorithm evaluates the importance of variables, the proximities between data instances and the generalized error. These three properties of RF are employed to optimize the segmentation framework. At the beginning the RF is tuned for variable importance evaluation, and after that it is used to optimize the segmentation framework. The framework was tested on unseen test images from BRATS. The results obtained are similar to the best ones presented in previous BRATS Challenges.
机译:在本文中,我们提出并调整了基于随机森林(RF)的判别模型,以完成多模式MR图像中的脑肿瘤分割。调整的目的是确定判别模型的最佳参数值和最重要的约束条件。在建立RF分类器的过程中,该算法评估变量的重要性,数据实例之间的邻近度以及广义误差。 RF的这三个属性用于优化分割框架。首先,对RF进行调整以进行可变重要性评估,然后将其用于优化细分框架。该框架已在BRATS看不见的测试图像上进行了测试。获得的结果与之前的BRATS挑战赛中展示的最佳结果相似。

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