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A multi-phase semi-automatic approach for multisequence brain tumor image segmentation

机译:用于多序列脑肿瘤图像分割的多阶段半自动方法

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摘要

Accurate Magnetic Resonance Imaging (MRI) image segmentation is a clinically challenging task. More often than not, one type of MRI image is insufficient to provide the complete information about a pathological tissue or a visual object from the image. As a result, radiology experts often combine multisequence images of a patient to verify the location, extension, prognosis and diagnosis of an object. There are mainly two challenges in medical image segmentation. One is ambiguous boundary that appears between an object and its neighboring region, and the other is intensity inhomogeneity that appears within a region. Thus, this paper focuses on how to effectively segment multisequence medical images despite these two main challenges. This paper proposes a multi-phase approach that integrates both data and domain knowledge into multisequence MR image segmentation. This study divides the segmentation approach into three phases, which are (i) information modeling, (ii), information fusion, and (iii) visual object extraction. In the first phase, random walks algorithm is modified and used to model the information of an image. Because of the ambiguous boundary and intensity inhomogeneity that appear within an image, extra terms related to homogeneity- and object feature-based components are added into the weighting function of random walks algorithm. In the second phase, weighted averaging method is used to fuse information from the image sequences. Both data information of an image as well as user knowledge are integrated to determine the weights of each sequence for fusion. In the final phase, the concept of information theoretic rough sets (ITRS) is utilized to address the issue of ambiguous boundary that may appear between the visual object and its background for object extraction. The proposed approach is tested on MICCAI brain tumor dataset to extract brain tumor and its performance is compared with other established methods. The experiments show promising results, with an average DICE accuracy of 0.7 and 0.63 for high- and low-grade tumor, respectively. As compared to the other fully- and semi-automatic methods that require training and careful initialization processes, the proposed approach is able to extract the brain tumor with prior knowledge about the image.
机译:准确的磁共振成像(MRI)图像分割是一项临床上具有挑战性的任务。通常,一种类型的MRI图像不足以从图像中提供有关病理组织或视觉对象的完整信息。结果,放射学专家经常组合患者的多序列图像以验证对象的位置,扩展,预后和诊断。医学图像分割主要有两个挑战。一个是出现在对象及其邻近区域之间的模糊边界,另一个是出现在区域内的强度不均匀性。因此,尽管有这两个主要挑战,本文还是着重于如何有效地分割多序列医学图像。本文提出了一种多阶段方法,将数据和领域知识都集成到多序列MR图像分割中。这项研究将分割方法分为三个阶段,即(i)信息建模,(ii),信息融合和(iii)视觉对象提取。在第一阶段,对随机游走算法进行了修改,并将其用于对图像信息进行建模。由于图像中出现模糊的边界和强度不均匀性,因此将与基于均匀性和对象特征的成分相关的额外术语添加到随机游走算法的加权函数中。在第二阶段,使用加权平均方法融合来自图像序列的信息。图像的数据信息以及用户知识都经过整合以确定融合每个序列的权重。在最后阶段,利用信息理论粗糙集(ITRS)的概念来解决可能出现在视觉对象及其背景之间的模糊边界问题。该方法在MICCAI脑肿瘤数据集上进行了测试,以提取脑肿瘤,并将其性能与其他已建立的方法进行了比较。实验显示出令人鼓舞的结果,高和低度肿瘤的平均DICE准确度分别为0.7和0.63。与需要训练和仔细的初始化过程的其他全自动和半自动方法相比,所提出的方法能够利用有关图像的先验知识来提取脑肿瘤。

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