波形
声速
计算机断层摄影术
声学
超声波
断层摄影术
人工神经网络
超声成像
乳腺超声检查
超声成像
反演(地质)
迭代重建
声音(地理)
计算机科学
地质学
医学
物理
人工智能
乳腺摄影术
放射科
电信
地震学
乳腺癌
雷达
构造学
癌症
内科学
作者
Wentao Yan,Qiude Zhang,Yun Wu,Zhaohui Liu,Hui Zhang,Zesong Wang,Jing Yuan,Mingyue Ding,Ming Yuchi,Wu Qiu
标识
DOI:10.1109/tim.2025.3554289
摘要
Quantitative imaging represents a pivotal advantage of ultrasound computed tomography (USCT), significantly distinguishing it from conventional ultrasound imaging techniques. Especially, sound speed imaging in USTC has been documented to play a crucial role in the clinical diagnosis of breast cancer. Due to the high demand for resolution in medical applications, full-waveform inversion (FWI) has gradually become a research hotspot compared to time-of-flight methods due to its potential for high-resolution imaging. However, the main challenge of FWI is its sensitivity to initial values due to its inherent nonconvex and nonlinear properties. An inappropriate initial value can lead it to fall into a local optimal solution, which ultimately produces a sound speed image with no physiological significance, a phenomenon also known as “cycle-skipping,” severely limiting the application of the method to USCT. In this article, we propose a method based on an untrained neural network (UNN), which is embedded into the framework of the conventional iteration-based FWI as a sound speed image generator. The implicit regularization provided by this method can effectively alleviate the ill-posed nature of FWI. Significantly, the proposed UNN method allows for unsupervised training, which is essential in medical imaging due to the lack of ground-truth paired data. Evaluations on numerical simulations, phantom experiments, and in vivo breast experiments demonstrate the effectiveness of the proposed UNN in enhancing imaging robustness and reducing image artifacts compared to the traditional FWI. To the best of authors’ knowledge, this study represents the first to investigate the UNN-based FWI for USCT breast sound speed imaging and validate it on in vivo breast experiments.
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