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Bayesian Approach to the Analysis of Fluorescence Correlation Spectroscopy Data II: Application to Simulated and In Vitro Data

机译:贝叶斯荧光相关光谱数据分析方法II:应用于模拟和体外数据

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摘要

Fluorescence correlation spectroscopy (FCS) is a powerful approach to characterizing the binding and transport dynamics of macromolecules. The unbiased interpretation of FCS data relies on the evaluation of multiple competing hypotheses to describe an underlying physical process under study, which is typically unknown a priori. Bayesian inference provides a convenient framework for this evaluation based on the temporal autocorrelation function (TACF), as previously shown theoretically using model TACF curves (He, J., Guo, S., and Bathe, M. Anal. Chem. 2012, 84). Here, we apply this procedure to simulated and experimentally measured photon-count traces analyzed using a multitau correlator, which results in complex noise properties in TACF curves that cannot be modeled easily. As a critical component of our technique, we develop two means of estimating the noise in TACF curves based either on multiple independent TACF curves themselves or a single raw underlying intensity trace, including a general procedure to ensure that independent, uncorrelated samples are used in the latter approach. Using these noise definitions, we demonstrate that the Bayesian approach selects the simplest hypothesis that describes the FCS data based on sampling and signal limitations, naturally avoiding overfitting. Further, we show that model probabilities computed using the Bayesian approach provide a reliability test for the downstream interpretation of model parameter values estimated from FCS data. Our procedure is generally applicable to FCS and image correlation spectroscopy and therefore provides an important advance in the application of these methods to the quantitative biophysical investigation of complex analytical and biological systems.
机译:荧光相关光谱(FCS)是表征大分子的结合和运输动态的强大方法。对FCS数据的无偏见解释依赖于对多个竞争假设的评估来描述研究下的底层物理过程,这通常是未知的先验。贝叶斯推理基于时间自相关函数(TACF)为此评估提供了方便的框架,如先前使用模型TACF曲线(HE,J.,Guo,S.和Bathe,M.肛门。Chem.200,84 )。在这里,我们将该过程应用于使用多个相关器分析的模拟和实验测量的光子计数迹线,这导致TACF曲线中无法轻易建模的复杂噪声性能。由于我们的技术的一个关键组成部分,我们开发自己或单一原始底层强度迹上的多个独立的TACF曲线估计基于TACF曲线噪声或者,包括一个一般程序,以确保独立的两种方法,不相关样品在所使用的后一种方法。使用这些噪声定义,我们证明了贝叶斯方法选择了最简单的假设,该假设基于采样和信号限制,自然避免过度装备。此外,我们示出了使用贝叶斯方法计算的模型概率提供了从FCS数据估计的模型参数值的下游解释的可靠性测试。我们的程序通常适用于FCS和图像相关光谱,因此在将这些方法应用于复杂分析和生物系统的定量生物物理研究中提供了重要的进展。

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