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Automatic Brain Tumor Segmentation in Multispectral MRI Volumes Using a Random Forest Approach

机译:使用随机森林方法在多光谱MRI中自动进行脑肿瘤分割

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The development of automatic tumor detection and segmentation procedures enables the computers to preprocess huge sets of MRI records and draw the attention of medical staff upon suspected positive cases. This paper proposes a machine learning solution based on binary decision trees and random forest technique, trained to provide accurate segmentation of brain tumors from multispectral MRI volumes. The current version of our system was trained and tested using all 220 high-grade tumor volumes from the MICCAI BRATS 2016 database. Image records were preprocessed to attenuate the effect of relative intensities in the MRI data, and to extend the feature set with neighborhood information of each voxel. The output of the random forest is also validated for each voxel, according to labels given to neighbor voxels. The achieved accuracy is characterized by an overall mean Dice score of 80.1%, sensitivity 83.1%, and specificity 98.6%. The proposed method is likely to detect all gliomas of 2 cm diameter.
机译:自动肿瘤检测和分割程序的发展使计算机能够预处理大量的MRI记录,并在可疑阳性病例上引起医护人员的注意。本文提出了一种基于二元决策树和随机森林技术的机器学习解决方案,该解决方案经过训练可以从多光谱MRI体积中准确分割脑肿瘤。我们的系统的当前版本已使用MICCAI BRATS 2016数据库中的所有220个高级别肿瘤体积进行了培训和测试。对图像记录进行预处理以减弱MRI数据中相对强度的影响,并使用每个体素的邻域信息扩展特征集。根据分配给相邻体素的标签,还针对每个体素验证了随机森林的输出。获得的准确度的特征在于Dice的总体平均得分为80.1%,灵敏度为83.1%,特异性为98.6%。所提出的方法可能会检测出所有直径为2 cm的神经胶质瘤。

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