Dual-Tree Complex Wavelet Pooling and Attention-Based Modified U-Net Architecture for Automated Breast Thermogram Segmentation and Classification.

Lalit Garia, Hariharan Muthusamy
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Abstract

Thermography is a non-invasive and non-contact method for detecting cancer in its initial stages by examining the temperature variation between both breasts. Preprocessing methods such as resizing, ROI (region of interest) segmentation, and augmentation are frequently used to enhance the accuracy of breast thermogram analysis. In this study, a modified U-Net architecture (DTCWAU-Net) that uses dual-tree complex wavelet transform (DTCWT) and attention gate for breast thermal image segmentation for frontal and lateral view thermograms, aiming to outline ROI for potential tumor detection, was proposed. The proposed approach achieved an average Dice coefficient of 93.03% and a sensitivity of 94.82%, showcasing its potential for accurate breast thermogram segmentation. Classification of breast thermograms into healthy or cancerous categories was carried out by extracting texture- and histogram-based features and deep features from segmented thermograms. Feature selection was performed using Neighborhood Component Analysis (NCA), followed by the application of machine learning classifiers. When compared to other state-of-the-art approaches for detecting breast cancer using a thermogram, the proposed methodology showed a higher accuracy of 99.90% for VGG16 deep features with NCA and Random Forest classifier. Simulation results expound that the proposed method can be used in breast cancer screening, facilitating early detection, and enhancing treatment outcomes.

Abstract Image

用于自动乳腺热图分割和分类的双树复合小波池化和基于注意力的修正 U-Net 架构
乳房热成像是一种非侵入性、非接触式方法,可通过检测双侧乳房的温度变化,在癌症初期对其进行检测。为了提高乳房热成像分析的准确性,经常使用调整大小、ROI(感兴趣区)分割和增强等预处理方法。本研究提出了一种改进的 U-Net 架构(DTCWAU-Net),该架构使用双树复小波变换(DTCWT)和注意门对正面和侧面视图的乳房热图像进行分割,旨在勾勒出潜在肿瘤检测的 ROI。该方法的平均骰子系数(Dice coefficient)为 93.03%,灵敏度为 94.82%,展示了其准确分割乳房热图像的潜力。通过从分割的热图中提取基于纹理和直方图的特征以及深度特征,将乳房热图分类为健康或癌症类别。特征选择采用邻域成分分析法(NCA),然后应用机器学习分类器。与其他利用温度图检测乳腺癌的先进方法相比,所提出的方法在使用 NCA 和随机森林分类器检测 VGG16 深度特征时,准确率高达 99.90%。仿真结果表明,所提出的方法可用于乳腺癌筛查,促进早期检测并提高治疗效果。
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