Using curvelet transform to detect breast cancer in digital mammogram

M. Eltoukhy, I. Faye, B. Samir
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引用次数: 27

Abstract

This paper presents an approach for breast cancer diagnosis in digital mammogram using curvelet transform. The motivation of this approach is the desire of using the advantages of curvelet transform into mammogram analysis. Curvelet provide stable, efficient and near-optimal representation of otherwise smooth objects having discontinuities along smooth curves. Since medical images have several objects and curved shaped, it is expected that the curvelet transform would be better for classification of cancer classes in digital mammogram. To construct and evaluate a supervised classifier for this problem, by transforming the data of the images in curvelet basis and then using a special set of coefficients as the features tailored towards separating each of those classes. The experimental results indicate that using curvelet transform significantly improves the classification of cancer classes.
曲线变换在数字乳房x光检查中的应用
本文提出了一种基于曲线变换的数字乳房x线摄影诊断乳腺癌的方法。这种方法的动机是希望利用曲线变换的优点进行乳房x光检查分析。曲线图提供了稳定、高效和接近最佳的表示,否则光滑的物体沿着光滑的曲线具有不连续。由于医学图像具有多个目标和弯曲形状,因此期望曲线变换能够更好地用于数字乳房x线照片中癌症类别的分类。为了构建和评估这个问题的监督分类器,通过在曲线基础上转换图像数据,然后使用一组特殊的系数作为定制的特征来分离每个类。实验结果表明,曲波变换显著提高了肿瘤分类的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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