RFImageNet framework for segmentation of ultrasound images with spectra-augmented radiofrequency signals

IF 3.8 2区 物理与天体物理 Q1 ACOUSTICS
Zhun Xie , Jiaqi Han , Nan Ji , Lijun Xu , Jianguo Ma
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引用次数: 0

Abstract

Computer-aided segmentation of medical ultrasound images assists in medical diagnosis, promoting accuracy and reducing the burden of sonographers. However, the existing ultrasonic intelligent segmentation models are mainly based on B-mode grayscale images, which lack sufficient clarity and contrast compared to natural images. Previous research has indicated that ultrasound radiofrequency (RF) signals contain rich spectral information that could be beneficial for tissue recognition but is lost in grayscale images. In this paper, we introduce an image segmentation framework, RFImageNet, that leverages spectral and amplitude information from RF signals to segment ultrasound image. Firstly, the positive and negative values in the RF signal are separated into the red and green channels respectively in the proposed RF image, ensuring the preservation of frequency information. Secondly, we developed a deep learning model, RFNet, tailored to the specific input image size requirements. Thirdly, RFNet was trained using RF images with spectral data augmentation and tested against other models. The proposed method achieved a mean intersection over union (mIoU) of 54.99% and a dice score of 63.89% in the segmentation of rat abdominal tissues, as well as a mIoU of 63.28% and a dice score of 68.92% in distinguishing between benign and malignant breast tumors. These results highlight the potential of combining RF signals with deep learning algorithms for enhanced diagnostic capabilities.
利用频谱增强射频信号分割超声图像的 RFImageNet 框架
计算机辅助医学超声图像分割有助于医学诊断,提高准确性并减轻超声技师的负担。然而,现有的超声波智能分割模型主要基于 B 型灰度图像,与自然图像相比缺乏足够的清晰度和对比度。以往的研究表明,超声射频(RF)信号包含丰富的频谱信息,这些信息有利于组织识别,但在灰度图像中却丢失了。本文介绍了一种图像分割框架 RFImageNet,它能利用射频信号的光谱和振幅信息来分割超声图像。首先,在所提出的射频图像中,射频信号中的正负值被分别分离到红色和绿色通道中,确保频率信息的保留。其次,我们开发了一个深度学习模型 RFNet,以满足特定输入图像大小的要求。第三,我们使用带有光谱数据增强功能的射频图像对 RFNet 进行了训练,并与其他模型进行了对比测试。在对大鼠腹部组织进行分割时,所提出的方法取得了 54.99% 的平均交集大于联合(mIoU)和 63.89% 的骰子分数;在区分良性和恶性乳腺肿瘤时,取得了 63.28% 的平均交集大于联合(mIoU)和 68.92% 的骰子分数。这些结果凸显了将射频信号与深度学习算法相结合以增强诊断能力的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Ultrasonics
Ultrasonics 医学-核医学
CiteScore
7.60
自引率
19.00%
发文量
186
审稿时长
3.9 months
期刊介绍: Ultrasonics is the only internationally established journal which covers the entire field of ultrasound research and technology and all its many applications. Ultrasonics contains a variety of sections to keep readers fully informed and up-to-date on the whole spectrum of research and development throughout the world. Ultrasonics publishes papers of exceptional quality and of relevance to both academia and industry. Manuscripts in which ultrasonics is a central issue and not simply an incidental tool or minor issue, are welcomed. As well as top quality original research papers and review articles by world renowned experts, Ultrasonics also regularly features short communications, a calendar of forthcoming events and special issues dedicated to topical subjects.
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