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AUTOMATIC BRAIN TUMOR SEGMENTATION USING TISSUE DIFFISIVITY CHARACTERISTICS

机译:使用组织差异性特征自动脑肿瘤分割

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Water diffusion measurements have been shown to be sensitive to tissue cellular size, extra cellular volume, and membrane permeability. Therefore, diffusion tensor imaging (DTI) by MRI can be used to characterize highly cellular regions of tumors versus acellular regions, distinguishing cystic regions from solid regions. An automatic segmentation method is proposed in this paper based on a multi-phase clustering algorithm to segment the brain tumors in a feature space extracted from DTI images. The algorithm is applied on images of a total of 20 patients with 4 different types of tumors. The tumor region segmentation was 92% accurate based on the segmentation results using anatomical images and 100% accurate based on biopsy results. In general, the segmentation results obtained by the proposed method revealed a strong agreement with the biopsy results and anatomical images, providing support for the accuracy and robustness of the proposed feature space and the segmentation procedure.
机译:已经显示水扩散测量对组织细胞尺寸,额外细胞体积和膜渗透性敏感。因此,通过MRI的扩散张量成像(DTI)可用于表征肿瘤的高细胞区域与牙细胞区域,与固体区域区分囊性区域。本文基于多相聚类算法在本文中提出了一种自动分段方法,以在从DTI图像提取的特征空间中分段脑肿瘤。该算法应用于共20例不同类型肿瘤的20名患者的图像上。基于使用解剖学图像的分段结果和基于活检结果的100%准确,肿瘤区分割为92%。通常,通过该方法获得的分割结果揭示了与活检结果和解剖图像的强烈一致性,为所提出的特征空间和分割程序的准确性和鲁棒性提供支持。

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