基于分形建模和概率神经网络分类的乳房x光片癌区检测

A. S. Noodeh, H. Rabbani, A. M. Dehnavi, H. Ahmadi Noubari
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引用次数: 10

摘要

最近对分形几何的研究表明,不规则形状的肿瘤可以用于癌症病例的形态学研究和诊断。本文研究了乳房x线摄影图像的分形建模及其背景形态。结果表明,使用分形建模应用于给定的图像可以清楚地区分癌变区域和非癌变区域。我们的研究结果表明,图像的分形建模可以作为识别癌细胞的有效工具。对于分形建模,首先将原始图像分割成合适的分形框,然后识别每个窗口部分的分形维数。我们使用了二维盒计数算法,然后根据计算的顺序,将它们放置在合适的矩阵中,以方便所需的计算。最后利用从乳房x线图像中提取的8个特征作为肿瘤的特征特征,将初步分析阶段得到的结果用于神经网络中进行细胞的恶性和良性分类,分类结果的准确率为89.21%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of cancerous zones in mammograms using fractal modeling and classification by probabilistic neural network
Recent studies on the geometry of fractals indicate that tumors with irregular shapes can be utilized for the study of the morphology and diagnosis of cancerous cases. In this paper, we deal with the fractal modeling of the mammographic images and their background morphology. It is shown that the use of fractal modeling as applied to a given image can clearly discern cancerous zones from noncancerous areas. Our results show that fractal modeling of images can be used as an effective tool for identification of cancerous cells. For fractal modeling, the original image is first segmented into appropriate fractal boxes followed by identifying the fractal dimension of each windowed section. We have used two dimensional box counting algorithm after which based on the order of the computations, they are placed in an appropriate matrix to facilitate the required computations. Finally using eight features identified as characteristic features of tumors extracted from mammogram images, the results obtained from the preliminary analysis stages, were utilized in a neural network for classification of cells into malignant and benign with the accuracy of 89.21 % classification results.
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