论文标题
光声成像的深度学习:调查
Deep learning for photoacoustic imaging: a survey
论文作者
论文摘要
在过去的几年中,机器学习已经大大开发,并在各个领域见证了许多应用程序。这种繁荣起源于2009年,当时出现了一个新模型,即深人造神经网络,该网络开始超过一些重要基准上的其他成熟模型。后来,它被广泛用于学术界和工业。从图像分析到自然语言处理,它充分发挥了魔力,现在成为最新的机器学习模型。深度神经网络在医学成像技术,医学数据分析,医学诊断和其他医疗保健问题方面具有巨大的潜力,并在临床前甚至临床阶段都得到了促进。在这篇评论中,我们概述了机器学习到医学图像分析的一些新发展和挑战,特别关注光声成像中的深度学习。这篇评论的目的是三重:(i)通过一些重要的基础知识引入深度学习,(ii)回顾了最近的著作,这些著作在整个光声成像的整个生态链中应用了深度学习,从图像重建到疾病诊断,(iii),(iii)为有兴趣将深度学习的研究人员提供给对光量表的研究人员提供一些开源材料和其他资源。
Machine learning has been developed dramatically and witnessed a lot of applications in various fields over the past few years. This boom originated in 2009, when a new model emerged, that is, the deep artificial neural network, which began to surpass other established mature models on some important benchmarks. Later, it was widely used in academia and industry. Ranging from image analysis to natural language processing, it fully exerted its magic and now become the state-of-the-art machine learning models. Deep neural networks have great potential in medical imaging technology, medical data analysis, medical diagnosis and other healthcare issues, and is promoted in both pre-clinical and even clinical stages. In this review, we performed an overview of some new developments and challenges in the application of machine learning to medical image analysis, with a special focus on deep learning in photoacoustic imaging. The aim of this review is threefold: (i) introducing deep learning with some important basics, (ii) reviewing recent works that apply deep learning in the entire ecological chain of photoacoustic imaging, from image reconstruction to disease diagnosis, (iii) providing some open source materials and other resources for researchers interested in applying deep learning to photoacoustic imaging.