Decuyper Milan, Maebe Jens, Van Holen Roel, Vandenberghe Stefaan
Department of Electronics and Information Systems, Ghent University, Ghent, Belgium.
EJNMMI Phys. 2021 Dec 11;8(1):81. doi: 10.1186/s40658-021-00426-y.
The use of deep learning in medical imaging has increased rapidly over the past few years, finding applications throughout the entire radiology pipeline, from improved scanner performance to automatic disease detection and diagnosis. These advancements have resulted in a wide variety of deep learning approaches being developed, solving unique challenges for various imaging modalities. This paper provides a review on these developments from a technical point of view, categorizing the different methodologies and summarizing their implementation. We provide an introduction to the design of neural networks and their training procedure, after which we take an extended look at their uses in medical imaging. We cover the different sections of the radiology pipeline, highlighting some influential works and discussing the merits and limitations of deep learning approaches compared to other traditional methods. As such, this review is intended to provide a broad yet concise overview for the interested reader, facilitating adoption and interdisciplinary research of deep learning in the field of medical imaging.
在过去几年中,深度学习在医学成像中的应用迅速增加,在整个放射学流程中都有应用,从提高扫描仪性能到自动疾病检测与诊断。这些进展促使人们开发了各种各样的深度学习方法,以解决各种成像模态的独特挑战。本文从技术角度对这些进展进行综述,对不同方法进行分类并总结其实现方式。我们首先介绍神经网络的设计及其训练过程,然后深入探讨它们在医学成像中的应用。我们涵盖放射学流程的不同环节,突出一些有影响力的工作,并讨论深度学习方法与其他传统方法相比的优缺点。因此,本综述旨在为感兴趣的读者提供一个广泛而简洁的概述,促进深度学习在医学成像领域的应用和跨学科研究。