Department of Biomedical Engineering, Duke University, Durham, NC 27708, USA.
School of Chemical and Biomedical Engineering, Nanyang Technological University, Singapore 637459, Singapore.
Exp Biol Med (Maywood). 2021 Jun;246(12):1355-1367. doi: 10.1177/15353702211000310. Epub 2021 Mar 27.
The rapidly evolving field of photoacoustic tomography utilizes endogenous chromophores to extract both functional and structural information from deep within tissues. It is this power to perform precise quantitative measurements with endogenous or exogenous contrastthat makes photoacoustic tomography highly promising for clinical translation in functional brain imaging, early cancer detection, real-time surgical guidance, and the visualization of dynamic drug responses. Considering photoacoustic tomography has benefited from numerous engineering innovations, it is of no surprise that many of photoacoustic tomography's current cutting-edge developments incorporate advances from the equally novel field of artificial intelligence. More specifically, alongside the growth and prevalence of graphical processing unit capabilities within recent years has emerged an offshoot of artificial intelligence known as deep learning. Rooted in the solid foundation of signal processing, deep learning typically utilizes a method of optimization known as gradient descent to minimize a loss function and update model parameters. There are already a number of innovative efforts in photoacoustic tomography utilizing deep learning techniques for a variety of purposes, including resolution enhancement, reconstruction artifact removal, undersampling correction, and improved quantification. Most of these efforts have proven to be highly promising in addressing long-standing technical obstacles where traditional solutions either completely fail or make only incremental progress. This concise review focuses on the history of applied artificial intelligence in photoacoustic tomography, presents recent advances at this multifaceted intersection of fields, and outlines the most exciting advances that will likely propagate into promising future innovations.
光声断层成像技术是一个快速发展的领域,利用内源性色团从组织深处提取功能和结构信息。正是这种利用内源性或外源性对比进行精确定量测量的能力,使得光声断层成像技术在功能脑成像、早期癌症检测、实时手术指导和动态药物反应可视化方面具有很高的临床转化前景。考虑到光声断层成像技术受益于众多工程创新,毫不奇怪,光声断层成像技术的许多当前前沿发展都融入了同样新颖的人工智能领域的进展。更具体地说,随着近年来图形处理单元能力的增长和普及,人工智能的一个分支——深度学习应运而生。深度学习植根于信号处理的坚实基础,通常利用称为梯度下降的优化方法来最小化损失函数并更新模型参数。已经有许多创新的努力在光声断层成像中利用深度学习技术用于各种目的,包括分辨率增强、重建伪影去除、欠采样校正和改进量化。这些努力中的大多数都在解决长期存在的技术障碍方面取得了很大的进展,传统的解决方案要么完全失败,要么只取得了渐进式的进展。这篇简明的综述重点介绍了人工智能在光声断层成像中的应用历史,介绍了这一多方面领域交叉的最新进展,并概述了最令人兴奋的进展,这些进展很可能会转化为有前途的未来创新。