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Automatic segmentation of brain tumors in magnetic resonance imaging

机译:磁共振成像中脑肿瘤的自动分割

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OBJECTIVE:To develop a computational algorithm applied to magnetic resonance imaging for automatic segmentation of brain tumors.METHODS:A total of 130 magnetic resonance images were used in the T1c, T2 and FSPRG T1C sequences and in the axial, sagittal and coronal planes of patients with brain cancer. The algorithms employed contrast correction, histogram normalization and binarization techniques to disconnect adjacent structures from the brain and enhance the region of interest. Automatic segmentation was performed through detection by coordinates and arithmetic mean of the area. Morphological operators were used to eliminate undesirable elements and reconstruct the shape and texture of the tumor. The results were compared with manual segmentations by two radiologists to determine the efficacy of the algorithms implemented.RESULTS:The correlated correspondence between the segmentation obtained and the gold standard was 89.23%.CONCLUSION:It is possible to locate and define the tumor region automatically with no the need for user interaction, based on two innovative methods to detect brain extreme sites and exclude non-tumor tissues on magnetic resonance images.
机译:目的:开发应用于磁共振成像的计算算法,用于脑肿瘤的自动分割。方法:在T1C,T2和FSPRG T1C序列中使用130个磁共振图像,并在患者的轴向,矢状和冠状平面中使用患脑癌。该算法采用对比校正,直方图归一化和二值化技术来断开大脑的相邻结构并增强感兴趣的区域。通过坐标检测和该区域的算术平均值进行自动分割。使用形态学算子消除不希望的元素并重建肿瘤的形状和质地。将结果与两个放射科医生的手动分段进行比较,以确定所实施的算法的功效。结果:获得的分段与黄金标准之间的相关对应率为89.23%。结论:可以自动定位和定位肿瘤区不需要用户交互,基于两种创新方法来检测脑极端位点,排除在磁共振图像上的非肿瘤组织。

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