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Automatic Brain Tumor Tissue Detection based on Hierarchical Centroid Shape Descriptor in T1-weighted MR images

机译:基于T1加权MR图像中分层质心形状描述的自动脑肿瘤组织检测

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The brain tumor tissue detection allows to localize a mass of abnormal cells in a slice of Magnetic Resonance (MR). The automatization of this process is useful for post processing of the extracted region of interest like the tumor segmentation. In order to detect this abnormal growth of tissue in an image, this paper presents a novel scheme which uses a two-step procedure; the k-means method and the Hierarchical Centroid Shape Descriptor (HCSD). The clustering stage is applied to discriminate structures based on pixel intensity while the HCSD allow to select only those having a specific shape. A bounding box is then automatically placed to delineate the region in which the tumor was found. Compared to the tumor delineation performed by an expert, a similarity measure of 91% was reached by using the Dice coefficient. The tests were carried out on 254 T1-weighted MRI images of 14 patients with brain tumors.
机译:脑肿瘤组织检测允许在磁共振(MR)切片中定位一定的异常细胞。该过程的自动化对于肿瘤分割等提取的感兴趣区域的处理是有用的。为了检测图像中组织的这种异常生长,本文提出了一种使用两步程序的新方案; K-均值方法和分层质心形状描述符(HCSD)。聚类阶段基于基于像素强度辨别结构,而HCSD允许仅选择具有特定形状的那些。然后将边界框自动放置以描绘发现肿瘤的区域。与专家进行的肿瘤描绘相比,通过使用骰子系数达到91%的相似性度量。测试是在254名脑肿瘤患者的254次T1加权MRI图像上进行的。

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