A robust encoder decoder based weighted segmentation and dual staged feature fusion based meta classification for breast cancer utilizing ultrasound imaging

Md Hasib Al Muzdadid Haque Himel , Pallab Chowdhury , Md. Al Mehedi Hasan
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Abstract

Ultrasound imaging has become one of the most frequently employed modalities to detect and classify breast irregularities, which is a relatively cost-effective and important complement to mammography. To assist radiologists in locating worrisome lesions and improving the accuracy of diagnosis, a computer-aided diagnosis system is proposed which incorporates the knowledge of Generative Adversarial Network (GAN), weighted average based ensemble technique, and feature fusion based ensemble technique. After performing encoder decoder based lesion segmentation incorporating weighted ensemble architecture, a dual-staged feature fusion-based stacked ensemble meta-classifier architecture is employed for the final classification where three deep neural network branches are employed, and the generated feature maps from those branches were fused and fed to the fully connected network to achieve the final diagnosis result. The residual learning architecture and the pretrained foundation made the system faster, whereas compound scaling and ensemble architecture boosted the overall performance. The proposed methodology is evaluated on the BUSI, UDIAT, and Thammasat datasets. The Dice score reached to 0.8397, and the IoU score reached to 0.7482 in segmentation on the benign lesions of BUSI dataset whereas the classifier achieved a highest accuracy of 99.7%, F1-score of 99.7%, and AUC score of 0.999 in classification on the BUSI dataset. The results on the UDIAT and Thammasat datasets also indicate that our proposed method shows better performance than other methods. Thus, the proposed architecture can be considered for easy and automated diagnosis purposes.

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基于加权分割和双阶段特征融合的鲁棒编码器解码器,利用超声波成像对乳腺癌进行元分类
超声波成像已成为最常用的检测和分类乳腺异常的方法之一,是乳腺X光造影术相对经济有效的重要补充。为了协助放射科医生定位令人担忧的病灶并提高诊断的准确性,我们提出了一种计算机辅助诊断系统,该系统融合了生成对抗网络(GAN)知识、基于加权平均的集合技术和基于特征融合的集合技术。在结合加权合集架构进行基于编码器解码器的病变分割后,采用基于特征融合的双阶段堆叠合集元分类器架构进行最终分类,其中使用了三个深度神经网络分支,并将这些分支生成的特征图融合后馈送至全连接网络,以实现最终诊断结果。残差学习架构和预训练基础使系统更快,而复合缩放和集合架构则提高了整体性能。建议的方法在 BUSI、UDIAT 和 Thammasat 数据集上进行了评估。在对 BUSI 数据集良性病变进行分割时,Dice 得分达到了 0.8397,IoU 得分达到了 0.7482;而在对 BUSI 数据集进行分类时,分类器的准确率达到了 99.7%,F1 得分达到了 99.7%,AUC 得分达到了 0.999。在 UDIAT 和 Thammasat 数据集上的结果也表明,我们提出的方法比其他方法表现得更好。因此,建议的架构可以考虑用于简单的自动诊断目的。
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