Digital staining in optical microscopy using deep learning - a review

IF 15.7 Q1 OPTICS
Lucas Kreiss, Shaowei Jiang, Xiang Li, Shiqi Xu, Kevin C. Zhou, Kyung Chul Lee, Alexander Mühlberg, Kanghyun Kim, Amey Chaware, Michael Ando, Laura Barisoni, Seung Ah Lee, Guoan Zheng, Kyle J. Lafata, Oliver Friedrich, Roarke Horstmeyer
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引用次数: 0

Abstract

Abstract Until recently, conventional biochemical staining had the undisputed status as well-established benchmark for most biomedical problems related to clinical diagnostics, fundamental research and biotechnology. Despite this role as gold-standard, staining protocols face several challenges, such as a need for extensive, manual processing of samples, substantial time delays, altered tissue homeostasis, limited choice of contrast agents, 2D imaging instead of 3D tomography and many more. Label-free optical technologies, on the other hand, do not rely on exogenous and artificial markers, by exploiting intrinsic optical contrast mechanisms, where the specificity is typically less obvious to the human observer. Over the past few years, digital staining has emerged as a promising concept to use modern deep learning for the translation from optical contrast to established biochemical contrast of actual stainings. In this review article, we provide an in-depth analysis of the current state-of-the-art in this field, suggest methods of good practice, identify pitfalls and challenges and postulate promising advances towards potential future implementations and applications.

Abstract Image

使用深度学习的光学显微镜数字染色技术综述
直到最近,常规生化染色作为与临床诊断、基础研究和生物技术相关的大多数生物医学问题的公认基准具有无可争议的地位。尽管作为金标准,染色方案面临着一些挑战,例如需要大量的人工处理样品,大量的时间延迟,改变的组织稳态,有限的造影剂选择,2D成像而不是3D断层扫描等等。另一方面,无标签光学技术不依赖于外源和人工标记,通过利用内在的光学对比机制,其中特异性通常对人类观察者不太明显。在过去的几年里,数字染色已经成为一个有前途的概念,利用现代深度学习将实际染色的光学对比转化为已建立的生化对比。在这篇综述文章中,我们对该领域的最新技术进行了深入分析,提出了良好实践的方法,确定了陷阱和挑战,并对潜在的未来实现和应用提出了有希望的进展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
25.70
自引率
0.00%
发文量
0
审稿时长
13 weeks
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