荧光寿命预测的深度学习实现高通量体内成像

IF 15.6 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Sofia Kapsiani, Nino F. Läubli, Edward N. Ward, Ana Fernandez-Villegas, Bismoy Mazumder, Clemens F. Kaminski and Gabriele S. Kaminski Schierle*, 
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引用次数: 0

摘要

荧光寿命成像显微镜(FLIM)是一种强大的光学工具,广泛应用于生物医学研究中,用于研究样品微环境的变化。然而,数据收集和解释往往是具有挑战性的,传统的方法,如指数拟合和相量图分析需要大量的光子每像素可靠地测量荧光团的荧光寿命。为了满足这一要求,需要延长数据采集时间,这使得FLIM成为一种低通量技术,在体内应用的能力有限。在这里,我们介绍了fllimngo,一种能够量化从光子匮乏环境中获得的FLIM数据的深度学习模型。fllimgo优于其他深度学习方法和相量图分析,通过利用原始FLIM数据中存在的时间和空间信息,从每像素少于50个光子的衰减曲线中获得准确的荧光寿命预测。因此,fllimgo将FLIM数据采集时间缩短到几秒钟,从而降低了与长时间光暴露相关的光毒性,并将FLIM转变为适用于活标本分析的高通量工具。在模拟数据上对fllimngo进行表征和基准测试之后,我们通过在实时动态样本中的应用来强调其功能。例如,非麻醉秀丽隐杆线虫中疾病相关蛋白聚集物的量化,这为持续评估秀丽隐杆线虫整个生命周期开辟了途径,显著提高了FLIM的适用性。最后,flingo是开源的,可以很容易地跨系统实现,而不需要模型再训练。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Deep Learning for Fluorescence Lifetime Predictions Enables High-Throughput In Vivo Imaging

Deep Learning for Fluorescence Lifetime Predictions Enables High-Throughput In Vivo Imaging

Fluorescence lifetime imaging microscopy (FLIM) is a powerful optical tool widely used in biomedical research to study changes in a sample’s microenvironment. However, data collection and interpretation are often challenging, and traditional methods such as exponential fitting and phasor plot analysis require a high number of photons per pixel for reliably measuring the fluorescence lifetime of a fluorophore. To satisfy this requirement, prolonged data acquisition times are needed, which makes FLIM a low-throughput technique with limited capability for in vivo applications. Here, we introduce FLIMngo, a deep learning model capable of quantifying FLIM data obtained from photon-starved environments. FLIMngo outperforms other deep learning approaches and phasor plot analyses, yielding accurate fluorescence lifetime predictions from decay curves obtained with fewer than 50 photons per pixel by leveraging both time and spatial information present in raw FLIM data. Thus, FLIMngo reduces FLIM data acquisition times to a few seconds, thereby, lowering phototoxicity related to prolonged light exposure and turning FLIM into a higher throughput tool suitable for the analysis of live specimens. Following the characterization and benchmarking of FLIMngo on simulated data, we highlight its capabilities through applications in live, dynamic samples. Examples include the quantification of disease-related protein aggregates in non-anaesthetised Caenorhabditis (C.) elegans, which significantly improves the applicability of FLIM by opening avenues to continuously assess Caenorhabditis elegans throughout their lifespan. Finally, FLIMngo is open-sourced and can be easily implemented across systems without the need for model retraining.

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来源期刊
CiteScore
24.40
自引率
6.00%
发文量
2398
审稿时长
1.6 months
期刊介绍: The flagship journal of the American Chemical Society, known as the Journal of the American Chemical Society (JACS), has been a prestigious publication since its establishment in 1879. It holds a preeminent position in the field of chemistry and related interdisciplinary sciences. JACS is committed to disseminating cutting-edge research papers, covering a wide range of topics, and encompasses approximately 19,000 pages of Articles, Communications, and Perspectives annually. With a weekly publication frequency, JACS plays a vital role in advancing the field of chemistry by providing essential research.
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