Please use this identifier to cite or link to this item:
https://hdl.handle.net/10356/152402
Title: | Sounding out the hidden data : a concise review of deep learning in photoacoustic imaging | Authors: | DiSpirito, Anthony Vu, Tri Pramanik, Manojit Yao, Junjie |
Keywords: | Engineering::Bioengineering | Issue Date: | 2021 | Source: | DiSpirito, A., Vu, T., Pramanik, M. & Yao, J. (2021). Sounding out the hidden data : a concise review of deep learning in photoacoustic imaging. Experimental Biology and Medicine, 246(12), 1355-1367. https://dx.doi.org/10.1177/15353702211000310 | Journal: | Experimental Biology and Medicine | Abstract: | 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 in vivo-with endogenous or exogenous contrast-that 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. | URI: | https://hdl.handle.net/10356/152402 | ISSN: | 1535-3702 | DOI: | 10.1177/15353702211000310 | Schools: | School of Chemical and Biomedical Engineering | Rights: | © 2021 The Society for Experimental Biology and Medicine. All rights reserved. This paper was published by SAGE Publications in Experimental Biology and Medicine and is made available with permission of the Society for Experimental Biology and Medicine. | Fulltext Permission: | open | Fulltext Availability: | With Fulltext |
Appears in Collections: | SCBE Journal Articles |
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File | Description | Size | Format | |
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duke_pa_ai_minireview_manuscript v2 JY_MP.pdf | 1.06 MB | Adobe PDF | ![]() View/Open |
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