论文标题

光声断层扫描中的深度学习:当前的方法和未来方向

Deep Learning in Photoacoustic Tomography: Current approaches and future directions

论文作者

Hauptmann, Andreas, Cox, Ben

论文摘要

基于光学吸收的生物医学光声断层扫描可以提供高分辨率3D软组织图像,已升至从实验室转换为临床环境的阶段。对快速图像形成的需求以及对数据获取的实际限制,这是临床工作流程的限制引起的,这表明了新的图像重建挑战。有许多经典的方法来形象重建,但是通过掺入准确的先验来改善数据不完整或不完美的数据的效果是具有挑战性的,并导致算法减慢。最近,深度学习或深度神经网络在此问题上的应用引起了很多关注。本文回顾了有关学习的图像重建,总结当前趋势的文献,并解释了这些新方法如何适合内部,并在某种程度上从某种程度上出现了一个框架,该框架涵盖了经典的重建方法。特别是,它显示了如何从贝叶斯的角度理解这些新技术,从而提供了有用的见解。该论文还提供了三种典型的图像重建方法的简洁教程演示。这些演示的代码和数据集可供研究人员使用。预计它正在体内应用中 - 数据可能稀疏,快速成像批判性和先验难以通过手工构建 - 深度学习将产生最大的影响。考虑到这一点,本文以一些可能的未来研究方向的迹象得出结论。

Biomedical photoacoustic tomography, which can provide high resolution 3D soft tissue images based on the optical absorption, has advanced to the stage at which translation from the laboratory to clinical settings is becoming possible. The need for rapid image formation and the practical restrictions on data acquisition that arise from the constraints of a clinical workflow are presenting new image reconstruction challenges. There are many classical approaches to image reconstruction, but ameliorating the effects of incomplete or imperfect data through the incorporation of accurate priors is challenging and leads to slow algorithms. Recently, the application of Deep Learning, or deep neural networks, to this problem has received a great deal of attention. This paper reviews the literature on learned image reconstruction, summarising the current trends, and explains how these new approaches fit within, and to some extent have arisen from, a framework that encompasses classical reconstruction methods. In particular, it shows how these new techniques can be understood from a Bayesian perspective, providing useful insights. The paper also provides a concise tutorial demonstration of three prototypical approaches to learned image reconstruction. The code and data sets for these demonstrations are available to researchers. It is anticipated that it is in in vivo applications - where data may be sparse, fast imaging critical and priors difficult to construct by hand - that Deep Learning will have the most impact. With this in mind, the paper concludes with some indications of possible future research directions.

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