Recent advances in deep-learning-enhanced photoacoustic imaging

Jinge Yang, Seongwook Choi, Jiwoong Kim, Byullee Park, Chulhong Kim
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引用次数: 1

Abstract

. Photoacoustic imaging (PAI), recognized as a promising biomedical imaging modality for preclinical and clinical studies, uniquely combines the advantages of optical and ultrasound imaging. Despite PAI ’ s great potential to provide valuable biological information, its wide application has been hindered by technical limitations, such as hardware restrictions or lack of the biometric information required for image reconstruction. We first analyze the limitations of PAI and categorize them by seven key challenges: limited detection, low-dosage light delivery, inaccurate quantification, limited numerical reconstruction, tissue heterogeneity, imperfect image segmentation/classification, and others. Then, because deep learning (DL) has increasingly demonstrated its ability to overcome the physical limitations of imaging modalities, we review DL studies from the past five years that address each of the seven challenges in PAI. Finally, we discuss the promise of future research directions in DL-enhanced PAI.
深度学习增强光声成像的最新进展
. 光声成像(PAI)独特地结合了光学和超声成像的优点,是临床前和临床研究中公认的一种有前途的生物医学成像方式。尽管PAI具有提供有价值的生物信息的巨大潜力,但其广泛应用受到技术限制的阻碍,例如硬件限制或缺乏图像重建所需的生物特征信息。我们首先分析了PAI的局限性,并将其分为七个主要挑战:检测受限、低剂量光传递、不准确的量化、有限的数值重建、组织异质性、不完善的图像分割/分类等。然后,由于深度学习(DL)越来越多地证明了其克服成像模式物理限制的能力,我们回顾了过去五年的深度学习研究,这些研究解决了PAI中的七个挑战。最后,对dl增强PAI的未来研究方向进行了展望。
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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