首页> 外文期刊>Computerized Medical Imaging and Graphics: The Official Jounal of the Computerized Medical Imaging Society >Segmentation and grading of brain tumors on apparent diffusion coefficient images using self-organizing maps.
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Segmentation and grading of brain tumors on apparent diffusion coefficient images using self-organizing maps.

机译:使用自组织图在表观扩散系数图像上对脑肿瘤进行分割和分级。

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摘要

An accurate computer-assisted method to perform segmentation of brain tumor on apparent diffusion coefficient (ADC) images and evaluate its grade (malignancy state) has been designed using a mixture of unsupervised artificial neural networks (ANN) and hierarchical multiresolution wavelet. Firstly, the ADC images are decomposed by multiresolution wavelets, which are subsequently selectively reconstructed to form wavelet filtered images. These wavelet filtered images along with FLAIR and T2 weighted images have been utilized as the features to unsupervised neural network - self organizing maps (SOM) - to segment the tumor, edema, necrosis, CSF and normal tissue and grade the malignant state of the tumor. A novel segmentation algorithm based on the number of hits experienced by Best Matching Units (BMU) on SOM maps is proposed. The results shows that the SOM performs well in differentiating the tumor, edema, necrosis, CSF and normal tissue pattern vectors on ADC images. Using the trained SOM and proposed segmentation algorithm, we are able to identify high or low grade tumor, edema, necrosis, CSF and normal tissue. The results are validated against manually segmented images and sensitivity and the specificity are observed to be 0.86 and 0.93, respectively.
机译:使用无监督人工神经网络(ANN)和分层多分辨率小波的混合物,设计了一种精确的计算机辅助方法,用于在视扩散系数(ADC)图像上进行脑肿瘤分割并评估其等级(恶性状态)。首先,ADC图像通过多分辨率小波分解,随后对其进行选择性重构以形成小波滤波图像。这些经过小波滤波的图像以及FLAIR和T2加权图像已被用作无监督神经网络的功能-自组织图(SOM)-分割肿瘤,水肿,坏死,CSF和正常组织并分级为恶性肿瘤。提出了一种基于最佳匹配单元(BMU)在SOM图上经历的命中数的新颖分割算法。结果表明,SOM在区分ADC图像上的肿瘤,水肿,坏死,CSF和正常组织模式向量方面表现良好。使用训练有素的SOM和提出的分割算法,我们能够识别出高低级肿瘤,水肿,坏死,CSF和正常组织。针对手动分割的图像验证了结果,并观察到灵敏度和特异性分别为0.86和0.93。

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