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Automated Detection and Classification of Microcalcification Clusters with Enhanced Preprocessing and Fractal Analysis

机译:具有增强的预处理和分形分析的微钙化簇自动检测和分类

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摘要

This paper addresses the automated detection of microcalcification clusters from mammogram images by enhanced preprocessing operations on digital mammograms for automated extraction of breast tissue from background, removing artefacts occurring during image registration using X-rays, followed by fractal analysis of suspicious regions. Identification of breast of either left or right and realigning them to a standard position forms a primitive step in preprocessing of mammograms. As the next step in the process, pectoral muscles are separated. Suspicious regions of microcalcifications are identified and are subjected to further analysis of classifying it as benign or malignant. Texture features are representative of its malignancy and fractal analysis was carried out on extracted suspicious regions for its texture features. Principal Component Analysis was carried out to extract optimal features. Ten features were found to be an optimal number of reduced texture features without compromising on classification accuracy. Scaled conjugate Gradient Back propagation network was used for classification using reduced texture features obtained from PCA analysis. By varying hidden layer neurons, accuracy of results achieved by proposed methods is analysed and is calculated to reach maximum accuracy with an optimal level of 15 neurons. Accuracy of 96.3% was achieved with 10 fractal features as input to neural network and 15 hidden layer neurons in neural network designed. The design of architecture is finalised with maximised accuracy for labelling microcalcification clusters as benign or malignant.
机译:本文介绍了通过对数字乳房X线照片进行增强的预处理操作,从乳房X线照片中自动检测微钙化簇的方法,以从背景中自动提取乳房组织,使用X射线去除图像配准过程中出现的伪像,然后对可疑区域进行分形分析。乳房左侧或右侧的识别以及将其重新排列到标准位置是乳房X线照片预处理的原始步骤。在此过程中的下一步是分离胸肌。确定微钙化的可疑区域,并进行进一步分析,将其分类为良性或恶性。纹理特征代表其恶性,并对提取的可疑区域进行了分形分析,以了解其纹理特征。进行主成分分析以提取最佳特征。发现十个特征是减少纹理特征的最佳数量而又不影响分类精度。使用比例共轭梯度反向传播网络进行分类,使用从PCA分析获得的减少的纹理特征。通过改变隐藏层神经元,分析了所提出的方法获得的结果的准确性,并计算出该准确性以15个神经元的最佳水平达到最大准确性。通过将10个分形特征作为神经网络的输入和设计的神经网络中的15个隐层神经元,可以达到96.3%的精度。以最大的精度完成架构设计,以将微钙化簇标记为良性或恶性。

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