CNN-Based Approach for Non-Invasive Estimation of Breast Tumor Size and Location Using Thermographic Images

Zakaryae Khomsi, Mohamed El Fezazi, L. Bellarbi
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Abstract

The characterization of tumors is crucial for guiding appropriate treatment strategies and enhancing patient survival rates. Surface thermography shows promise in the non-invasive detection of thermal patterns associated with the existence of breast tumors. Nevertheless, the precise prediction of both tumor size and location using temperature characteristics presents a critical challenge. This is due to the limited availability of thermal images labeled with the corresponding tumor size and location. This work proposes a deep learning approach based on convolutional neural networks (CNN) in combination with thermographic images for estimating breast tumor size and location. Successive COMSOL-based simulations are conducted, including a 3D breast model with various tumor scenarios. Thus, different noise levels were included in the development of the thermographic image dataset. Every image was accordingly labeled with the corresponding tumor location and size to train the CNN model. Mean absolute error (MAE) and the coefficient of determination (R²) were considered as evaluation metrics. The results show that the proposed CNN model achieved a reasonable prediction performance with MAE–R² values of 0.872–98.6% for tumor size, 1.161–96.8% for x location, 1.086–97.1% for y location, and 0.954–96.7% for z location. This study indicates that the combination of surface thermography and deep learning is a convenient tool for predicting breast tumor parameters.
基于 CNN 的方法,利用热成像图像无创估计乳腺肿瘤大小和位置
肿瘤的特征对于指导适当的治疗策略和提高患者存活率至关重要。表面热成像技术在无创检测与乳腺肿瘤存在相关的热模式方面大有可为。然而,利用温度特征精确预测肿瘤大小和位置是一项严峻的挑战。这是因为标有相应肿瘤大小和位置的热图像有限。这项研究提出了一种基于卷积神经网络(CNN)的深度学习方法,结合热成像图像来估计乳腺肿瘤的大小和位置。我们进行了基于 COMSOL 的连续模拟,包括具有各种肿瘤情况的三维乳房模型。因此,在开发热成像图像数据集时包含了不同的噪声水平。每张图像都相应地标注了相应的肿瘤位置和大小,以训练 CNN 模型。平均绝对误差(MAE)和决定系数(R²)被视为评估指标。结果表明,所提出的 CNN 模型取得了合理的预测性能,肿瘤大小的 MAE-R² 值为 0.872-98.6%,X 位置的 MAE-R² 值为 1.161-96.8%,Y 位置的 MAE-R² 值为 1.086-97.1%,Z 位置的 MAE-R² 值为 0.954-96.7%。这项研究表明,表面热成像与深度学习的结合是预测乳腺肿瘤参数的一种便捷工具。
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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