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首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >A novel content-based active contour model for brain tumor segmentation
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A novel content-based active contour model for brain tumor segmentation

机译:一种基于内容的新颖的脑肿瘤分割主动轮廓模型

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摘要

Brain tumor segmentation is a crucial step in surgical and treatment planning. Intensity-based active contour models such as gradient vector flow (GVF), magneto static active contour (MAC) and fluid vector flow (FVF) have been proposed to segment homogeneous objects/tumors in medical images. In this study, extensive experiments are done to analyze the performance of intensity-based techniques for homogeneous tumors on brain magnetic resonance (MR) images. The analysis shows that the state-of-art methods fail to segment homogeneous tumors against similar background or when these tumors show partial diversity toward the background. They also have preconvergence problem in case of false edges/saddle points. However, the presence of weak edges and diffused edges (due to edema around the tumor) leads to oversegmentation by intensity-based techniques. Therefore, the proposed method content-based active contour (CBAC) uses both intensity and texture information present within the active contour to overcome above-stated problems capturing large range in an image. It also proposes a novel use of Gray-Level Co-occurrence Matrix to define texture space for tumor segmentation. The effectiveness of this method is tested on two different real data sets (55 patients - more than 600 images) containing five different types of homogeneous, heterogeneous, diffused tumors and synthetic images (non-MR benchmark images). Remarkable results are obtained in segmenting homogeneous tumors of uniform intensity, complex content heterogeneous, diffused tumors on MR images (T1-weighted, postcontrast T1-weighted and T2-weighted) and synthetic images (non-MR benchmark images of varying intensity, texture, noise content and false edges). Further, tumor volume is efficiently extracted from 2-dimensional slices and is named as 2.5-dimensional segmentation.
机译:脑肿瘤分割是外科手术和治疗计划中的关键步骤。已经提出了基于强度的活动轮廓模型,例如梯度矢量流(GVF),静磁活动轮廓(MAC)和流体矢量流(FVF),以分割医学图像中的均匀对象/肿瘤。在这项研究中,进行了广泛的实验以分析基于强度的技术在脑磁共振(MR)图像上对均质肿瘤的性能。分析表明,现有技术方法无法在相似背景下或当这些肿瘤向背景显示部分多样性时将同质肿瘤分割。在错误的边缘/鞍点的情况下,它们还具有预收敛问题。然而,弱边缘和扩散边缘的存在(由于肿瘤周围的水肿)导致基于强度的技术过度分割。因此,所提出的基于内容的活动轮廓(CBAC)方法使用活动轮廓中存在的强度和纹理信息来克服上述捕获图像中较大范围的问题。它还提出了一种新颖的使用灰度共生矩阵来定义用于肿瘤分割的纹理空间的方法。在两种不同的真实数据集(55位患者-600幅图像)上测试了该方法的有效性,该数据集包含五种不同类型的均质,异质,弥漫性肿瘤和合成图像(非MR基准图像)。在MR图像(T1加权,对比度T1加权和T2加权)和合成图像(强度,纹理,噪声含量和虚假边缘)。此外,从二维切片中有效地提取出肿瘤体积,并将其称为2.5维分割。

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