Automated Brain Tumor Segmentation in MRI using Superpixel Over-segmentation and Classification

Aya Mourad, A. Afifi, A. Keshk
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引用次数: 1

Abstract

Brain tumor segmentation is a challenging task due to the strong fluctuation in intensity and shape. It has attracted the attention of medical imaging community for several years. This work introduces a fully automated brain tumor segmentation approach from multimodal MRI images. Segmentation in three different MRI modalities; T1 (gadolinium-enhanced), T2, and Fluid-Attenuated Inversion-Recovery (FLAIR) are compared to choose the best one. The proposed approach utilizes a super-pixel over-segmentation technique and applying a classification for each super-pixel which leads to more smooth segmentation. Several features including statistical, fractal, and texture features are calculated from each super-pixel of the normalized (T1, T2, and flair) images to ensure a robust classification. Additionally, the class imbalance problem is tackled to allow the algorithm to accurately segment abnormal tissue. The Random Forest (RF) classification algorithm is utilized for final segmentation. The RF classifier is being chosen in the proposed approach because it provides a better performance according to the confusion matrix results. The proposed approach has been trained using 10 Low-Grade and 20 High-Grade cases and evaluated using different 5 Low-Grade and 5 High-Grade cases from BRATS 2013 dataset. Dice, average precision, sensitivity, and F1-score metrics are used for segmentation accuracy evaluation. The average precision, sensitivity, fl-score and dice overlap for tumor segmentation are 92%, 95%, 96% and 94% for flair images, 89%, 92%, 90% and 93% for T2 and 89%, 90%, 89% and 90% for T1. Finally, the voting strategy is being used to get the best segmentation between these different modalities.
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基于超像素过分割和分类的MRI自动脑肿瘤分割
脑肿瘤的分割由于其强度和形状的波动较大,是一项具有挑战性的任务。近年来引起了医学影像界的广泛关注。本研究介绍了一种基于多模态MRI图像的全自动脑肿瘤分割方法。三种不同MRI模式的分割比较T1(钆增强)、T2和流体衰减反转恢复(FLAIR)以选择最佳。该方法利用超像素过分割技术,并对每个超像素进行分类,使分割更加平滑。从归一化(T1、T2和flair)图像的每个超像素计算包括统计、分形和纹理特征在内的几个特征,以确保鲁棒分类。此外,还解决了类不平衡问题,使算法能够准确地分割异常组织。最后利用随机森林(RF)分类算法进行分割。根据混淆矩阵的结果,选择射频分类器可以提供更好的性能。该方法使用10个低等级和20个高等级病例进行训练,并使用BRATS 2013数据集中的5个低等级和5个高等级病例进行评估。骰子、平均精度、灵敏度和f1评分指标用于分割精度评估。flair图像的肿瘤分割平均精度、灵敏度、fl-score和dice重叠度分别为92%、95%、96%和94%,T2为89%、92%、90%和93%,T1为89%、90%、89%和90%。最后,利用投票策略对这些不同的模式进行最佳分割。
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