Combined B-mode and Nakagami Images for Improved Discrimination of Breast Masses using Deep Learning

Sabiq Muhtadi, Syed Tousiful Haque, C. Gallippi
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引用次数: 2

Abstract

Although ultrasound has become an important screening tool for the non-invasive diagnosis of breast cancer, it is limited by intra- and inter-observer variability, and subjectivity in diagnosis. On the other hand, deep learning-based approaches have the potential for objective and automated diagnosis in a manner that is efficient and reproducible. In this study, we propose a deep learning methodology for the classification of benign and malignant breast lesions based on combined ultrasound B-mode and Nakagami images. We hypothesize that combining the images, which contain complementary information, will provide better classification performance in a deep learning framework than using the images by themselves. The study included 230 patients who had 152 benign and 78 malignant masses. Nakagami images were formed using a sliding window applied to the envelope data of each patient. A superposition approach was adopted to form fused images, where Nakagami images and B-mode images were superimposed onto each other at differing weights. A modified VGG-16 network was trained on the resulting images, and performance was evaluated on a separate test dataset containing 50 images. Models trained using fused images outperformed models trained using individual B-mode and Nakagami images. Furthermore, the AVCs obtained by models trained on fused images were found to be statistically significantly higher than models trained on individual images. The obtained results demonstrate the feasibility of combining information from Nakagami and B-mode images, and its potential to provide improved diagnosis for breast cancer.
结合b模式和Nakagami图像的深度学习改进乳腺肿块识别
虽然超声已成为乳腺癌非侵入性诊断的重要筛查工具,但它受到观察者内部和观察者之间的可变性以及诊断的主观性的限制。另一方面,基于深度学习的方法具有以高效和可重复的方式进行客观和自动诊断的潜力。在这项研究中,我们提出了一种基于超声B-mode和Nakagami图像联合的乳腺良恶性病变分类的深度学习方法。我们假设,在深度学习框架中,结合包含互补信息的图像将比单独使用图像提供更好的分类性能。该研究包括230例良性肿块152例,恶性肿块78例。使用滑动窗口应用于每个患者的包膜数据形成Nakagami图像。采用叠加的方法,将Nakagami图像和b模式图像以不同的权重相互叠加,形成融合图像。在得到的图像上训练改进的VGG-16网络,并在包含50张图像的单独测试数据集上评估性能。使用融合图像训练的模型优于使用单个b模式和Nakagami图像训练的模型。此外,在融合图像上训练的模型获得的avc在统计上显著高于在单个图像上训练的模型。所获得的结果证明了将Nakagami信息与b模式图像相结合的可行性,以及其提供改进的乳腺癌诊断的潜力。
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