Fractal analysis for classification of breast lesions

L. Alvarado-Cruz, M. Delgadillo-Herrera, C. Toxqui-Quitl, A. Padilla-Vivanco, R. Castro-Ortega, M. Arreola-Esquivel
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引用次数: 3

Abstract

Nowadays, breast lesions are a common health problem among women. Breast thermograms are images recorded by digital-optical systems with high resolution that use infrared technology in order to show vascular and temperature changes. In the present work, we study benign and malignant breast lesions shape by means of fractal analysis. The Fractal Dimension (FD) is calculated with the Box Counting method and the Hurst exponent is obtained using the Wavelet coefficients and the Detrending Moving Average algorithm. These algorithms was applied to synthetic images and breast thermograms. The Fractal Dimension value is used for patient classification with or without breast injury. The proposed methodology was applied to the Database For Mastology Research (DMR) in order to classify thermographic images. The FD of ROIs for breast thermograms was calculated. Results shows that the FD BCM values ranges from [0.45,0.81] in 4 healthy cases and from [0.92,1.33] in 4 unhealthy cases.
乳腺病变分形分析
如今,乳房病变是妇女中常见的健康问题。乳房热像图是由高分辨率的数字光学系统记录的图像,该系统使用红外技术来显示血管和温度变化。在本工作中,我们用分形分析的方法研究乳腺良恶性病变的形态。采用盒计数法计算分形维数(FD),采用小波系数和去趋势移动平均算法计算Hurst指数。这些算法被应用于合成图像和乳房热像图。分形维数值用于患者有无乳房损伤的分类。提出的方法应用于乳腺研究数据库(DMR),以便对热成像图像进行分类。计算乳腺热像图roi的FD。结果:4例健康患者FD BCM值在[0.45,0.81]之间,4例不健康患者FD BCM值在[0.92,1.33]之间。
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