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Automated brain tumour detection and segmentation using superpixel-based extremely randomized trees in FLAIR MRI

机译:在FLAIR MRI中使用基于超像素的超随机树自动进行脑肿瘤检测和分割

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摘要

Purpose: We propose a fully automated method for detection and segmentation of the abnormal tissue associated with brain tumour (tumour core and oedema) from Fluid Attenuated Inversion Recovery (FLAIR) Magnetic Resonance Imaging (MRI).udMethods: The method is based on superpixel technique and classification of each superpixel. A number of novel imageudfeatures including intensity-based, Gabor textons, fractal analysis and curvatures are calculated from each superpixeludwithin the entire brain area in FLAIR MRI to ensure a robust classification. Extremely randomized trees (ERT) classifier is compared with support vector machine (SVM) to classify each superpixel into tumour and non-tumour.udResults: The proposed method is evaluated on two datasets: (1) Our own clinical dataset: 19 MRI FLAIR images of patients with gliomas of grade II to IV, and (2) BRATS 2012 dataset: 30 FLAIR images with 10 low-grade and 20 highgradeudgliomas. The experimental results demonstrate the high detection and segmentation performance of the proposedudmethod using ERT classifier. For our own cohort, the average detection sensitivity, balanced error rate and the Dice overlap measure for the segmented tumour against the ground truth are 89.48%, 6% and 0.91, respectively, while, for the BRATS dataset, the corresponding evaluation results are 88.09 %, 6 % and 0.88, respectively.udConclusions: This provides a close match to expert delineation across all grades of glioma, leading to a faster andudmore reproducible method of brain tumour detection and delineation to aid patient management.
机译:目的:我们提出了一种全自动方法,该方法可从液化衰减反转恢复(FLAIR)磁共振成像(MRI)中检测和分割与脑肿瘤相关的异常组织(肿瘤核心和水肿)。 ud方法:该方法基于超像素技术和每个超像素的分类。在FLAIR MRI的整个大脑区域中,从每个超像素 ud计算出许多新颖的图像特征,包括基于强度的Gabor纹理,分形分析和曲率,以确保可靠的分类。将超随机树(ERT)分类器与支持向量机(SVM)进行比较,以将每个超像素分为肿瘤和非肿瘤。 ud结果:在两个数据集上评估了所提出的方法:(1)我们自己的临床数据集:19 MRI FLAIR II至IV级神经胶质瘤患者的图像,以及(2)BRATS 2012数据集:30幅FLAIR图像,其中包含10例低度和20例高级别双神经胶质瘤。实验结果证明了使用ERT分类器对提出的 udmethod的高检测和分割性能。对于我们自己的队列,分割后的肿瘤针对地面真实性的平均检测灵敏度,平衡错误率和Dice重叠度分别为89.48%,6%和0.91,而对于BRATS数据集,相应的评估结果为88.09分别为%,6%和0.88。 ud结论:这与所有级别的神经胶质瘤的专家描述非常匹配,从而导致了一种更快,更可再现的脑肿瘤检测和描绘方法,以帮助患者管理。

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