机器学习在时域荧光寿命成像中的应用综述。

IF 2.4 3区 化学 Q3 CHEMISTRY, ANALYTICAL
Dorian Gouzou, Ali Taimori, Tarek Haloubi, Neil Finlayson, Qiang Wang, James R Hopgood, Marta Vallejo
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引用次数: 0

摘要

许多医学成像模式受益于机器学习(ML)的最新进展,特别是在深度学习方面,例如神经网络。计算机可以在不使用宝贵人力资源的情况下进行训练,以调查和增强医学成像方法。近年来,荧光寿命成像(FLIm)越来越受到ML社区的关注。FLIm超越了传统的光谱成像,提供了额外的生命周期信息,并可能导致光学组织病理学支持实时诊断。然而,目前大多数研究并没有充分利用机器/深度学习模型的潜力。作为一种发展中的图像模式,FLIm数据不容易获得,再加上缺乏标准化,阻碍了研究开发可以推进自动诊断和帮助促进FLIm的模型。在本文中,我们描述了提高FLIm图像质量的最新发展,特别是时域系统,我们总结了传感,信噪分析以及在配准和低级跟踪方面的进展。我们回顾了机器学习在电影中的两个主要应用:寿命估计和通过分类和分割进行图像分析。我们建议采取一系列措施来提高应用于FLIm的ML研究的质量。我们的最终目标是推广FLIm,吸引更多的ML从业者探索终身成像的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of machine learning in time-domain fluorescence lifetime imaging: a review.

Many medical imaging modalities have benefited from recent advances in Machine Learning (ML), specifically in deep learning, such as neural networks. Computers can be trained to investigate and enhance medical imaging methods without using valuable human resources. In recent years, Fluorescence Lifetime Imaging (FLIm) has received increasing attention from the ML community. FLIm goes beyond conventional spectral imaging, providing additional lifetime information, and could lead to optical histopathology supporting real-time diagnostics. However, most current studies do not use the full potential of machine/deep learning models. As a developing image modality, FLIm data are not easily obtainable, which, coupled with an absence of standardisation, is pushing back the research to develop models which could advance automated diagnosis and help promote FLIm. In this paper, we describe recent developments that improve FLIm image quality, specifically time-domain systems, and we summarise sensing, signal-to-noise analysis and the advances in registration and low-level tracking. We review the two main applications of ML for FLIm: lifetime estimation and image analysis through classification and segmentation. We suggest a course of action to improve the quality of ML studies applied to FLIm. Our final goal is to promote FLIm and attract more ML practitioners to explore the potential of lifetime imaging.

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来源期刊
Methods and Applications in Fluorescence
Methods and Applications in Fluorescence CHEMISTRY, ANALYTICALCHEMISTRY, PHYSICAL&n-CHEMISTRY, PHYSICAL
CiteScore
6.20
自引率
3.10%
发文量
60
期刊介绍: Methods and Applications in Fluorescence focuses on new developments in fluorescence spectroscopy, imaging, microscopy, fluorescent probes, labels and (nano)materials. It will feature both methods and advanced (bio)applications and accepts original research articles, reviews and technical notes.
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