利用差分图像和放射学特征评估双侧静态额乳热成像的不对称性

M. Madhavi, T. Bobby
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引用次数: 0

摘要

双侧热成像图像的不对称性分析是癌症检测的一种重要的初步方法。这项工作的目的是开发一种自动算法来检测和分类对称和不对称的双侧静态正面乳房体温图(N=63)。使用各向异性扩散滤波器对图像进行预处理以去除噪声。此外,使用水平集分割来执行完整乳房区域的分割,而无需重新初始化。根据在边界像素上使用多项式曲线拟合获得的乳下内曲线的交点来计算分叉点。将所获得的乳房区域沿着该分叉点垂直切片,以获得右乳房切片和左乳房切片。在右乳房图像和翻转的左乳房图像之间执行图像相减以获得差图像。对获得的差异图像进行锐化,提取144个纹理特征,如一阶统计、共现、游程长度和定律能量特征,并计算每个特征的对称和非对称对象之间的绝对差(AD)。AD值大于0.1的特征被视为实质特征。获得了二十四个实质性特征,并将其作为最小二乘支持向量机(LSSVM)的输入,以实现分类的自动化。结果表明,最大分割重叠测度为98.3%,LSSVM与径向基函数(RBF)的分类准确率为95.65%,敏感性、特异性和曲线下面积(AUC)分别为100%、90.9%和0.9545。因此,所提出的方法在检测不对称热模式方面似乎是有效的,因此可以部署在热屏蔽系统中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ASSESSMENT OF ASYMMETRY IN BILATERAL STATIC FRONTAL BREAST THERMOGRAMS USING DIFFERENCE IMAGE AND RADIOMIC FEATURES
Asymmetry analysis of bilateral thermogram images is an important preliminary approach for breast cancer detection. The purpose of this work is to develop an automated algorithm to detect and classify symmetric and asymmetric bilateral static frontal breast thermograms (N=63). The images are pre-processed using anisotropic diffusion filter for removal of noise. Further, segmentation of complete breast region is carried out using level set segmentation without re-initialization. The bifurcation point is computed from the intersection point of interior inframammary curves attained using polynomial curve fitting on the boundary pixels. The obtained breast region is sliced vertically along this bifurcation point to obtain right and left breast sections. Image subtraction is performed between right breast image and flipped left breast image to obtain the difference image. The obtained difference image is sharpened and 144 texture features such as first-order statistical, co- occurrence, run length and laws energy features are extracted and Absolute Difference (AD) between symmetric and asymmetric subjects for each feature is computed. The features for which the value of AD is greater than 0.1 is considered as substantial features. Twenty four substantial features are obtained and are given as an input to Least Square Support Vector Machine (LSSVM) to automate the classification. The results shows that the maximum segmentation overlap measure obtained is 98.3%. The classification accuracy obtained using LSSVM with Radial Basis Function (RBF) is 95.65% and sensitivity, specificity and Area Under the Curve (AUC) are 100%, 90.9% and 0.9545 respectively. Thus the proposed methodology appears to be effective in detecting asymmetric heat patterns and hence can be deployed in thermal screening systems.
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