U-Net迁移学习主干在乳腺超声图像病变分割中的应用

Q2 Computer Science
Mohamed Bal-Ghaoui, My Hachem El Yousfi Alaoui, A. Jilbab, Abdennacer Bourouhou
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引用次数: 2

摘要

乳腺超声图像对于癌症的早期检测具有很高的价值。然而,这些图像的缺点是低质量分辨率和斑点噪声的存在,这影响了它们的可解释性,并使它们依赖于放射科医生的专业知识。作为医学图像,乳腺超声数据集稀缺且不平衡,对其进行注释既繁琐又耗时。迁移学习作为一种深度学习技术,可以用来克服现有图像中数据集的不足。本文介绍了用于乳腺超声病变自动分割的迁移学习U-Net主干的实现,并实现了阈值选择机制,以提供乳腺肿瘤的最佳广义分割结果。该工作使用公共乳腺超声图像(BUSI)数据集,并实现了十个最先进的候选模型作为U-Net骨干。我们在630张良性和恶性病例的图像上使用五倍交叉验证技术训练了这些模型。十个模型中有五个显示出良好的结果,发现最好的U-Net主干是DenseNet121。它获得了0.7370的平均Dice系数和0.7255的灵敏度。该模型的稳健性也针对正常情况进行了评估,该模型准确地检测到113张图像中的72张,高于四个最佳模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
U-Net transfer learning backbones for lesions segmentation in breast ultrasound images
Breast ultrasound images are highly valuable for the early detection of breast cancer. However, the drawback of these images is low-quality resolution and the presence of speckle noise, which affects their interpretability and makes them radiologists’ expertise-dependent. As medical images, breast ultrasound datasets are scarce and imbalanced, and annotating them is tedious and time-consuming. Transfer learning, as a deep learning technique, can be used to overcome the dataset deficiency in available images. This paper presents the implementation of transfer learning U-Net backbones for the automatic segmentation of breast ultrasound lesions and implements a threshold selection mechanism to deliver optimal generalized segmentation results of breast tumors. The work uses the public breast ultrasound images (BUSI) dataset and implements ten state-of-theart candidate models as U-Net backbones. We have trained these models with a five-fold cross-validation technique on 630 images with benign and malignant cases. Five out of ten models showed good results, and the best U-Net backbone was found to be DenseNet121. It achieved an average Dice coefficient of 0.7370 and a sensitivity of 0.7255. The model’s robustness was also evaluated against normal cases, and the model accurately detected 72 out of 113 images, which is higher than the four best models.
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来源期刊
International Journal of Electrical and Computer Engineering
International Journal of Electrical and Computer Engineering Computer Science-Computer Science (all)
CiteScore
4.10
自引率
0.00%
发文量
177
期刊介绍: International Journal of Electrical and Computer Engineering (IJECE) is the official publication of the Institute of Advanced Engineering and Science (IAES). The journal is open to submission from scholars and experts in the wide areas of electrical, electronics, instrumentation, control, telecommunication and computer engineering from the global world. The journal publishes original papers in the field of electrical, computer and informatics engineering which covers, but not limited to, the following scope: -Electronics: Electronic Materials, Microelectronic System, Design and Implementation of Application Specific Integrated Circuits (ASIC), VLSI Design, System-on-a-Chip (SoC) and Electronic Instrumentation Using CAD Tools, digital signal & data Processing, , Biomedical Transducers and instrumentation, Medical Imaging Equipment and Techniques, Biomedical Imaging and Image Processing, Biomechanics and Rehabilitation Engineering, Biomaterials and Drug Delivery Systems; -Electrical: Electrical Engineering Materials, Electric Power Generation, Transmission and Distribution, Power Electronics, Power Quality, Power Economic, FACTS, Renewable Energy, Electric Traction, Electromagnetic Compatibility, High Voltage Insulation Technologies, High Voltage Apparatuses, Lightning Detection and Protection, Power System Analysis, SCADA, Electrical Measurements; -Telecommunication: Modulation and Signal Processing for Telecommunication, Information Theory and Coding, Antenna and Wave Propagation, Wireless and Mobile Communications, Radio Communication, Communication Electronics and Microwave, Radar Imaging, Distributed Platform, Communication Network and Systems, Telematics Services and Security Network; -Control[...] -Computer and Informatics[...]
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