OneTouch Automated Photoacoustic and Ultrasound Imaging of Breast in Standing Pose

生物医学中的光声成像 超声波 超声成像 超声成像 医学影像学 放射科 计算机视觉 计算机科学 医学物理学 生物医学工程 医学 光学 物理
作者
Huijuan Zhang,Emily Zheng,Wenhan Zheng,Chuqin Huang,Yunqi Xi,Yanda Cheng,Shuliang Yu,Saptarshi Chakraborty,Ermelinda Bonaccio,Kazuaki Takabe,Xinhao Fan,Wenyao Xu,Jun Xia
出处
期刊:IEEE Transactions on Medical Imaging [Institute of Electrical and Electronics Engineers]
卷期号:44 (11): 4617-4626 被引量:2
标识
DOI:10.1109/tmi.2025.3578929
摘要

We developed an automated photoacoustic and ultrasound breast tomography system that images the patient in the standing pose. The system, named OneTouch-PAT, utilized linear transducer arrays with optical-acoustic combiners for effective dual-modal imaging. During scanning, subjects only need to gently attach their breasts to the imaging window, and co-registered three-dimensional ultrasonic and photoacoustic images of the breast can be obtained within one minute. Our system has a large field of view of 17 cm by 15 cm and achieves an imaging depth of 3 cm with sub-millimeter resolution. A three-dimensional deep-learning network was also developed to further improve the image quality by improving the 3D resolution, enhancing vasculature, eliminating skin signals, and reducing noise. The performance of the system was tested on four healthy subjects and 61 patients with breast cancer. Our results indicate that the ultrasound structural information can be combined with the photoacoustic vascular information for better tissue characterization. Representative cases from different molecular subtypes have indicated different photoacoustic and ultrasound features that could potentially be used for imaging-based cancer classification. Statistical analysis among all patients indicates that the regional photoacoustic intensity and vessel branching points are indicators of breast malignancy. These promising results suggest that our system could significantly enhance breast cancer diagnosis and classification.
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