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Brain Tumour Segmentation from Multispectral MR Image Data Using Ensemble Learning Methods

机译:使用集成学习方法从多光谱MR图像数据中进行脑肿瘤分割

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The number of medical imaging devices is quickly and steadily rising, generating an increasing amount of image records day by day. The number of qualified human experts able to handle this data cannot follow this trend, so there is a strong need to develop reliable automatic segmentation and decision support algorithms. The Brain Tumor Segmentation Challenge (BraTS), first organized seven years ago, provoked a strong intensification of the development of brain tumor detection and segmentation algorithms. Beside many others, several ensemble learning solutions have been proposed lately to the above mentioned problem. This study presents an evaluation framework developed to evaluate the accuracy and efficiency of these algorithms deployed in brain tumor segmentation, based on the BraTS 2016 train data set. All evaluated algorithms proved suitable to provide acceptable accuracy in segmentation, but random forest was found the best, both in terms of precision and efficiency.
机译:医学成像设备的数量正在快速,稳定地增长,每天生成的图像记录量越来越多。能够处理这些数据的合格的人类专家数量无法跟随这一趋势,因此迫切需要开发可靠的自动分段和决策支持算法。七年前首次组织的脑肿瘤分割挑战赛(BraTS)激起了脑肿瘤检测和分割算法的发展。除了许多其他方法外,最近还针对上述问题提出了几种集成学习解决方案。这项研究基于BraTS 2016训练数据集,提出了一个评估框架,旨在评估在脑肿瘤分割中部署的这些算法的准确性和效率。事实证明,所有经过评估的算法都可以提供可接受的分割精度,但是就准确性和效率而言,随机森林被认为是最好的。

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