计算机科学
声速
卷积神经网络
乳腺超声检查
人工智能
超声波
成像体模
稳健性(进化)
声学
图像质量
乳腺摄影术
模式识别(心理学)
计算机视觉
放射科
物理
图像(数学)
医学
内科学
癌症
化学
基因
乳腺癌
生物化学
作者
Walter Simson,Magdalini Paschali,Vasiliki Sideri‐Lampretsa,Nassir Navab,Jeremy Dahl
出处
期刊:Ultrasonics
[Elsevier BV]
日期:2023-10-29
卷期号:137: 107179-107179
被引量:26
标识
DOI:10.1016/j.ultras.2023.107179
摘要
Ultrasound is an adjunct tool to mammography that can quickly and safely aid physicians in diagnosing breast abnormalities. Clinical ultrasound often assumes a constant sound speed to form diagnostic B-mode images. However, the components of breast tissue, such as glandular tissue, fat, and lesions, differ in sound speed. Given a constant sound speed assumption, these differences can degrade the quality of reconstructed images via phase aberration. Sound speed images can be a powerful tool for improving image quality and identifying diseases if properly estimated. To this end, we propose a supervised deep-learning approach for sound speed estimation from analytic ultrasound signals. We develop a large-scale simulated ultrasound dataset that generates representative breast tissue samples by modeling breast gland, skin, and lesions with varying echogenicity and sound speed. We adopt a fully convolutional neural network architecture trained on a simulated dataset to produce an estimated sound speed map. The simulated tissue is interrogated with a plane wave transmit sequence, and the complex-value reconstructed images are used as input for the convolutional network. The network is trained on the sound speed distribution map of the simulated data, and the trained model can estimate sound speed given reconstructed pulse-echo signals. We further incorporate thermal noise augmentation during training to enhance model robustness to artifacts found in real ultrasound data. To highlight the ability of our model to provide accurate sound speed estimations, we evaluate it on simulated, phantom, and in-vivo breast ultrasound data.
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