增强荧光相关光谱与机器学习推断异常分子运动。

IF 3.2 3区 生物学 Q2 BIOPHYSICS
Biophysical journal Pub Date : 2025-03-04 Epub Date: 2025-02-06 DOI:10.1016/j.bpj.2025.01.026
Nathan Quiblier, Jan-Michael Rye, Pierre Leclerc, Henri Truong, Abdelkrim Hannou, Laurent Heliot, Hugues Berry
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引用次数: 0

摘要

活细胞中分子的随机运动一直被报道偏离标准布朗运动,这种行为被称为“反常扩散”。为了在活细胞中研究这一现象,荧光相关光谱(FCS)和单粒子跟踪(SPT)是两种主要的参考方法。与SPT相反,FCS的经典分析方法不能考虑没有自相关函数解析表达式的运动模型。这排除了例如异常连续时间随机行走(CTRW)和分形随机行走(RWf)。此外,经典FCS方法的整个捕获过程需要几十分钟。在这里,我们提出了一种新的分析方法,使FCS摆脱这些限制。我们的方法将每个单独的FCS记录与基于自相关函数估计器的特征向量相关联,并使用机器学习来推断潜在的运动模型并估计运动参数的值。通过模拟记录,我们证明了这种方法赋予FCS区分一系列标准和异常随机运动的能力,包括CTRW和RWf。我们的方法表现出与同类最佳的SPT最先进算法相当的性能,并且可以与一系列FCS设置参数一起使用。由于它可以应用于短时间的单个记录,我们表明,用我们的方法,FCS可以用来监测运动参数的快速变化。最后,我们将我们的方法应用于校准的荧光珠在水中增加甘油浓度的实验FCS记录。我们的结果准确地预测了即使在大甘油浓度下,微珠的扩散系数和反常指数也遵循布朗运动,这与斯托克斯-爱因斯坦定律的经典预测一致。综上所述,我们的方法显著增强了FCS的分析能力,达到了与最先进的SPT方法相似的水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing fluorescence correlation spectroscopy with machine learning to infer anomalous molecular motion.

The random motion of molecules in living cells has consistently been reported to deviate from standard Brownian motion, a behavior coined as "anomalous diffusion." To study this phenomenon in living cells, fluorescence correlation spectroscopy (FCS) and single-particle tracking (SPT) are the two main methods of reference. In opposition to SPT, FCS, with its classical analysis methodology, cannot consider models of motion for which no analytical expression of the auto-correlation function is known. This excludes, for instance, anomalous continuous-time random walks and random walk on fractal. Moreover, the whole acquisition sequence of the classical FCS methodology takes several tens of minutes. Here, we propose a new analysis approach that frees FCS of these limitations. Our approach associates each individual FCS recording with a vector of features based on an estimator of the auto-correlation function and uses machine learning to infer the underlying model of motion and to estimate the values of the motion parameters. Using simulated recordings, we show that this approach endows FCS with the capacity to distinguish between a range of standard and anomalous random motions, including continuous-time random walk and random walk on fractal. Our approach exhibits performances comparable to the best-in-class state-of-the-art algorithms for SPT and can be used with a range of FCS setup parameters. Since it can be applied on individual recordings of short duration, we show that, with our method, FCS can be used to monitor rapid changes of the motion parameters. Finally, we apply our method on experimental FCS recordings of calibrated fluorescent beads in increasing concentrations of glycerol in water. Our results accurately predict that the beads follow Brownian motion with a diffusion coefficient and anomalous exponent, which agree with classical predictions from Stokes-Einstein law even at large glycerol concentrations. Taken together, our approach significantly augments the analysis power of FCS to capacities that are similar to state-of-the-art SPT approaches.

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来源期刊
Biophysical journal
Biophysical journal 生物-生物物理
CiteScore
6.10
自引率
5.90%
发文量
3090
审稿时长
2 months
期刊介绍: BJ publishes original articles, letters, and perspectives on important problems in modern biophysics. The papers should be written so as to be of interest to a broad community of biophysicists. BJ welcomes experimental studies that employ quantitative physical approaches for the study of biological systems, including or spanning scales from molecule to whole organism. Experimental studies of a purely descriptive or phenomenological nature, with no theoretical or mechanistic underpinning, are not appropriate for publication in BJ. Theoretical studies should offer new insights into the understanding ofexperimental results or suggest new experimentally testable hypotheses. Articles reporting significant methodological or technological advances, which have potential to open new areas of biophysical investigation, are also suitable for publication in BJ. Papers describing improvements in accuracy or speed of existing methods or extra detail within methods described previously are not suitable for BJ.
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