基于双侧对称性的热区纹理特征乳腺热图异常检测

Ankita Dey;Ebrahim Ali;Sreeraman Rajan
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引用次数: 1

摘要

随着全球癌症病例数量的增加,迫切需要开发早期异常检测技术。热成像以其在早期发现乳房异常的潜力而闻名。提出了一种新的基于阈值的非机器学习非对称性分析方法,用于乳腺异常检测。乳房异常由温度升高的区域(高温区域)表示,通常由体温图中的红色表示。在这项工作中,对乳房热图进行分割以提取乳房组织轮廓,然后利用RGB热图的红色平面来分析个体左右乳房之间的自然对侧对称性。基于直方图相似性的一种新的纹理特征以及已知的纹理特征,如分形维数、赫斯特指数、谱范数和Frobenius范数,被用作不对称分析的特征。这些特征的双侧比率(BR)表明左右乳房之间对侧对称。BR值接近1表示这种对称性。在纹理特征的所有BR之间进行硬投票,以估计左右乳房之间的不对称性,并检测患有乳房异常的个体。在公开可用的数据集上对所提出的方法进行了评估。它优于现有技术,准确率为96.08%,灵敏度为100%,特异性为93.57%。还对统计和纹理特征进行了比较分析。提出了一种新的基于奇异值分解(SVD)的异常乳腺检测技术,并在有限的数据集上进行了评估。
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Bilateral Symmetry-Based Abnormality Detection in Breast Thermograms Using Textural Features of Hot Regions
With an increase in the number of breast cancer cases worldwide, there is an urgent need to develop techniques for early abnormality detection. Thermography is known for its potential to detect breast abnormalities at an early stage. A novel threshold-based non-machine learning asymmetry analysis using textural features is proposed for breast abnormality detection. Breast abnormalities are indicated by regions of elevated temperatures (hot regions), usually, indicated by red color in thermograms. In this work, the breast thermograms are segmented to extract breast tissue profiles and then the red-plane of an RGB thermogram is utilized to analyze the natural contralateral symmetry between the left and right breast of an individual. A novel textural feature based on histogram similarity along with known textural features, such as fractal dimension, hurst exponent, spectral norm, and Frobenius norm, are used as features for asymmetry analysis. Bilateral ratios (BRs) of these features indicate contralateral symmetry between the left and right breast. A BR value closer to 1 indicates such symmetry. Hard voting is done among all the BRs of the textural features to estimate asymmetry between the left and right breast and detect an individual with breast abnormality. The proposed methodology is evaluated on publicly available datasets. It outperforms the state-of-the-art and achieves an accuracy of 96.08%, sensitivity of 100%, and specificity of 93.57%. A comparative analysis of statistical and textural features has also been demonstrated. A novel singular value decomposition (SVD)-based abnormal breast detection technique has been proposed with evaluations on a limited dataset.
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