Department of Electrical and Electronics Engineering, University of Rochester, Rochester, NY, United States of America.
Department of Imaging Sciences, University of Rochester Medical Center, Rochester, NY, United States of America.
PLoS One. 2023 Dec 13;18(12):e0289195. doi: 10.1371/journal.pone.0289195. eCollection 2023.
Segmentation of breast ultrasound images is a crucial and challenging task in computer-aided diagnosis systems. Accurately segmenting masses in benign and malignant cases and identifying regions with no mass is a primary objective in breast ultrasound image segmentation. Deep learning (DL) has emerged as a powerful tool in medical image segmentation, revolutionizing how medical professionals analyze and interpret complex imaging data. The UNet architecture is a highly regarded and widely used DL model in medical image segmentation. Its distinctive architectural design and exceptional performance have made it popular among researchers. With the increase in data and model complexity, optimization and fine-tuning models play a vital and more challenging role than before. This paper presents a comparative study evaluating the effect of image preprocessing and different optimization techniques and the importance of fine-tuning different UNet segmentation models for breast ultrasound images. Optimization and fine-tuning techniques have been applied to enhance the performance of UNet, Sharp UNet, and Attention UNet. Building upon this progress, we designed a novel approach by combining Sharp UNet and Attention UNet, known as Sharp Attention UNet. Our analysis yielded the following quantitative evaluation metrics for the Sharp Attention UNet: the Dice coefficient, specificity, sensitivity, and F1 score values obtained were 0.93, 0.99, 0.94, and 0.94, respectively. In addition, McNemar's statistical test was applied to assess significant differences between the approaches. Across a number of measures, our proposed model outperformed all other models, resulting in improved breast lesion segmentation.
乳腺超声图像分割是计算机辅助诊断系统中的一项关键且具有挑战性的任务。准确分割良性和恶性病例中的肿块,并识别无肿块区域是乳腺超声图像分割的主要目标。深度学习(DL)已成为医学图像分割的强大工具,彻底改变了医学专业人员分析和解释复杂成像数据的方式。UNet 架构是医学图像分割中一种备受推崇且广泛应用的深度学习模型。其独特的架构设计和卓越的性能使其在研究人员中广受欢迎。随着数据和模型复杂性的增加,优化和微调模型比以往任何时候都更加重要和具有挑战性。本文进行了一项比较研究,评估了图像预处理和不同优化技术的效果,以及微调不同 UNet 分割模型对乳腺超声图像的重要性。我们已经将优化和微调技术应用于 UNet、Sharp UNet 和 Attention UNet 以增强其性能。在此基础上,我们设计了一种新方法,将 Sharp UNet 和 Attention UNet 结合起来,称为 Sharp Attention UNet。我们的分析为 Sharp Attention UNet 得出了以下定量评估指标:Dice 系数、特异性、敏感性和 F1 评分分别为 0.93、0.99、0.94 和 0.94。此外,还应用了 McNemar 统计检验来评估这些方法之间的显著差异。在多项指标中,我们提出的模型均优于其他所有模型,从而实现了更好的乳腺病变分割。