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Fully automated brain tumour segmentation system in 3D-MRI using symmetry analysis of brain and level sets

机译:使用大脑和水平集的对称性分析在3D-MRI中进行全自动脑肿瘤分割系统

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摘要

This study presents a new fully automated, fast, and accurate brain tumour segmentation method which automatically detects and extracts whole tumours from 3D-MRI. The proposed method is based on a hybrid approach that relies on a brain symmetry analysis method and a combining region-based and boundary-based segmentation methods. The segmentation process consists of three main stages. In the first one, image pre-processing is applied to remove any noise, and to extract the brain from the head image. In the second stage, automated tumour detection is performed. It is based essentially on FBB method using brain symmetry. The obtained result constitutes the automatic initialisation of a deformable model, thus removing the need of selecting the initial region of interest by the user. Finally, the third stage focuses on the application of region growing combined with 3D deformable model based on geodesic level-set to detect the tumour boundaries containing the initial region, computed previously, regardless of its shape and size. The proposed segmentation system has been tested and evaluated on 3D-MRIs of 285 subjects with different tumour types and shapes obtained from BraTS'2017 dataset. The obtained results turn out to be promising and objective as well as close to ground truth data.
机译:这项研究提出了一种新型的全自动,快速且准确的脑肿瘤分割方法,该方法可自动检测并从3D-MRI中提取整个肿瘤。所提出的方法基于混合方法,该方法依赖于大脑对称性分析方法以及基于区域和基于边界的分割方法的组合。细分过程包括三个主要阶段。在第一个中,应用图像预处理以去除任何噪音,并从头部图像中提取大脑。在第二阶段,执行自动肿瘤检测。它基本上基于使用脑对称性的FBB方法。所获得的结果构成了可变形模型的自动初始化,从而消除了用户选择初始感兴趣区域的需要。最后,第三阶段着眼于区域增长与基于测地线水平集的3D变形模型相结合的应用,以检测包含初始区域的肿瘤边界,而无论其形状和大小如何,该边界均已预先计算。拟议的分割系统已通过BraTS'2017数据集获得的285位不同肿瘤类型和形状的受试者的3D-MRIs进行了测试和评估。所获得的结果证明是有希望和客观的,并且接近于地面真实数据。

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