人工智能
反褶积
计算机科学
模式识别(心理学)
深度学习
超声波
点扩散函数
计算机视觉
算法
放射科
医学
作者
Renxian Wang,Wei-Ning Lee
标识
DOI:10.1109/ius54386.2022.9958291
摘要
With the help of microbubbles (MBs), ultrasound localization microscopy (ULM) breaks the diffraction limit of ultrasound imaging. Accurate and robust localization of MBs is central to ULM but still challenged by ultrasound point spread function (PSF) analysis and potential overlapping and clustering of MBs even at a low MB concentration. Current deep learning (DL) methods enable fast acquisitions and high localization rates via prior knowledge of PSFs, consistency between training and test data, or image pre-processing, thus hampering model generality. We hereby propose a general system-independent DL-based ULM framework, which encompasses (1) generation of synthetic ultrasound MB images with a variety of PSFs and medium complexity as training data and (2) two cascaded DL models for de-speckling and deconvolution, respectively, to achieve MB localization. The proposed framework not only achieved a precision of 0.74±0.06 and a recall of 0.68±0.08 at the threshold of half wavelength, but also distinguished overlapped MBs on test data with unseen distinct PSFs provided by 2022 IUS Ultra-SR challenge.
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