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Bayesian Model Selection Applied to the Analysis of Fluorescence Correlation Spectroscopy Data of Fluorescent Proteins in Vitro and in Vivo

机译:贝叶斯模型选择应用于体外和体内荧光蛋白的荧光相关光谱数据分析

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摘要

Fluorescence correlation spectroscopy (FCS) is a powerful technique to investigate molecular dynamics with single molecule sensitivity. In particular, in the life sciences it has found widespread application using fluorescent proteins as molecularly specific labels. However, FCS data analysis and interpretation using fluorescent proteins remains challenging due to typically low signal-to-noise ratio of FCS data and correlated noise in autocorrelated data sets. As a result, naive fitting procedures that ignore these important issues typically provide similarly good fits for multiple competing models without clear distinction of which model is preferred given the signal-to-noise ratio present in the data. Recently, we introduced a Bayesian model selection procedure to overcome this issue with FCS data analysis. The method accounts for the highly correlated noise that is present in FCS data sets and additionally penalizes model complexity to prevent over interpretation of FCS data. Here, we apply this procedure to evaluate FCS data from fluorescent proteins assayed in vitro and in vivo. Consistent with previous work, we demonstrate that model selection is strongly dependent on the signal-to-noise ratio of the measurement, namely, excitation intensity and measurement time, and is sensitive to saturation artifacts. Under fixed, low intensity excitation conditions, physical transport models can unambiguously be identified. However, at excitation intensities that are considered moderate in many studies, unwanted artifacts are introduced that result in nonphysical models to be preferred. We also determined the appropriate fitting models of a GFP tagged secreted signaling protein, Wnt3, in live zebrafish embryos, which is necessary for the investigation of Wnt3 expression and secretion in development. Bayes model selection therefore provides a robust procedure to determine appropriate transport and photophysical models for fluorescent proteins when appropriate models are provided, to help detect and eliminate experimental artifacts in solution, cells, and in living organisms.
机译:荧光相关光谱法(FCS)是研究具有单分子敏感性的分子动力学的强大技术。特别地,在生命科学中,已发现使用荧光蛋白作为分子特异性标记物得到了广泛的应用。但是,由于FCS数据的信噪比通常较低,并且自相关数据集中的相关噪声较大,因此使用荧光蛋白进行FCS数据分析和解释仍然具有挑战性。结果,忽略这些重要问题的幼稚拟合程序通常会为多个竞争模型提供相似的良好拟合,而在给定数据中存在的信噪比的情况下,没有明确区分哪种模型是优选的。最近,我们引入了贝叶斯模型选择程序来克服FCS数据分析中的这一问题。该方法解决了存在于FCS数据集中的高度相关的噪声,并额外惩罚了模型复杂性,以防止对FCS数据的过度解释。在这里,我们应用此程序来评估来自体外和体内测定的荧光蛋白的FCS数据。与之前的工作一致,我们证明了模型的选择很大程度上取决于测量的信噪比,即激励强度和测量时间,并且对饱和伪影敏感。在固定的低强度激发条件下,可以明确识别物理传输模型。但是,在许多研究中认为适当的激发强度下,会引入不需要的伪像,从而导致非物理模型成为首选。我们还确定了活的斑马鱼胚胎中GFP标记的分泌信号蛋白Wnt3的合适拟合模型,这对于研究Wnt3表达和发育中的分泌是必需的。因此,当提供适当的模型时,贝叶斯模型选择提供了确定荧光蛋白的适当运输和光物理模型的可靠方法,以帮助检测和消除溶液,细胞和活生物体中的实验伪像。

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