Enhancing breast cancer segmentation and classification: An Ensemble Deep Convolutional Neural Network and U-net approach on ultrasound images

Md Rakibul Islam , Md Mahbubur Rahman , Md Shahin Ali , Abdullah Al Nomaan Nafi , Md Shahariar Alam , Tapan Kumar Godder , Md Sipon Miah , Md Khairul Islam
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Abstract

Breast cancer is a condition where the irregular growth of breast cells occurs uncontrollably, leading to the formation of tumors. It poses a significant threat to women’s lives globally, emphasizing the need for enhanced methods of detecting and categorizing the disease. In this work, we propose an Ensemble Deep Convolutional Neural Network (EDCNN) model that exhibits superior accuracy compared to several transfer learning models and the Vision Transformer model. Our EDCNN model integrates the strengths of the MobileNet and Xception models to improve its performance in breast cancer detection and classification. We employ various preprocessing techniques, including image resizing, data normalization, and data augmentation, to prepare the data for analysis. By following these measures, the formatting is optimized, and the model’s capacity to make generalizations is improved. We trained and evaluated our proposed EDCNN model using ultrasound images, a widely available modality for breast cancer imaging. The outcomes of our experiments illustrate that the EDCNN model attains an exceptional accuracy of 87.82% on Dataset 1 and 85.69% on Dataset 2, surpassing the performance of several well-known transfer learning models and the Vision Transformer model. Furthermore, an AUC value of 0.91 on Dataset 1 highlights the robustness and effectiveness of our proposed model. Moreover, we highlight the incorporation of the Grad-CAM Explainable Artificial Intelligence (XAI) technique to improve the interpretability and transparency of our proposed model. Additionally, we performed image segmentation using the U-Net segmentation technique on the input ultrasound images. This segmentation process allowed for the identification and isolation of specific regions of interest, facilitating a more comprehensive analysis of breast cancer characteristics. In conclusion, the study presents a creative approach to detecting and categorizing breast cancer, demonstrating the superior performance of the EDCNN model compared to well-established transfer learning models. Through advanced deep learning techniques and image segmentation, this study contributes to improving diagnosis and treatment outcomes in breast cancer.

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增强乳腺癌的分割和分类:超声图像上的深度卷积神经网络和 U-net 组合方法
乳腺癌是乳腺细胞不受控制地不规则生长,从而形成肿瘤的一种疾病。它对全球妇女的生命构成了重大威胁,因此需要加强对该疾病的检测和分类方法。在这项工作中,我们提出了一种集合深度卷积神经网络(EDCNN)模型,与几种迁移学习模型和 Vision Transformer 模型相比,该模型表现出更高的准确性。我们的 EDCNN 模型整合了 MobileNet 和 Xception 模型的优势,提高了其在乳腺癌检测和分类方面的性能。我们采用了各种预处理技术,包括图像大小调整、数据归一化和数据增强,为分析做好数据准备。通过这些措施,格式得到了优化,模型的泛化能力也得到了提高。我们使用超声波图像(一种广泛用于乳腺癌成像的模式)对所提出的 EDCNN 模型进行了训练和评估。实验结果表明,EDCNN 模型在数据集 1 和数据集 2 上的准确率分别达到了 87.82% 和 85.69%,超过了几个著名的迁移学习模型和 Vision Transformer 模型。此外,数据集 1 上的 AUC 值为 0.91,这凸显了我们提出的模型的鲁棒性和有效性。此外,我们还强调了 Grad-CAM Explainable Artificial Intelligence(XAI)技术的融入,以提高我们所提模型的可解释性和透明度。此外,我们还使用 U-Net 分割技术对输入的超声图像进行了图像分割。这一分割过程可以识别和隔离特定的感兴趣区域,从而有助于对乳腺癌特征进行更全面的分析。总之,本研究提出了一种检测和分类乳腺癌的创新方法,证明了 EDCNN 模型与成熟的迁移学习模型相比具有更优越的性能。通过先进的深度学习技术和图像分割,这项研究有助于改善乳腺癌的诊断和治疗效果。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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