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Filtering artifacts from lifetime distributions when maximizing entropy using a bootstrapped model

机译:使用引导模型最大化熵时从寿命分布中过滤伪影

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摘要

The maximum entropy method (MEM) has been used in many studies to reliably recover effective lifetimes from kinetics, whether measured experimentally or simulated computationally. Here, recent claims made by Mulligan et al. regarding MEM analyses of kinetics (Anal. Biochem. 421 (2012) 181–190) are shown to be unfounded. Their assertion that their software allows “analysis of datasets too noisy to process by existing iterative search algorithms” is refuted with a MEM analysis of their triexponential test case with increased noise. In addition, it is shown that lifetime distributions recovered from noisy kinetics data with the MEM can be improved by using a simple filter when bootstrapping the prior model. When deriving the bootstrapped model from the lifetime distribution obtained using a uniform model, only the slower processes are represented as Gaussians in the bootstrapped model. Using this new approach, results are clearly superior to those of Mulligan et al. despite the presence of increased noise. In a second example, ambiguity in the interpretation of Poisson kinetics in the presence of scattered excitation light is resolved by filtering the prior model.
机译:在许多研究中使用了最大熵方法(MEM)以可靠地从动力学中可靠地恢复有效的生命周期,无论是在实验还是模拟计算的。在这里,近期由Mulligan等人制作的索赔。关于动力学的MEM分析(肛门。Biochem。421(2012)181-190)被证明是没有根据的。他们的主张是,他们的软件允许“通过现有迭代搜索算法的数据集分析太吵了”,通过对噪声的增加,他们的Triexponential测试用例的MEM分析。另外,示出在引导先前模型时,可以通过使用简单的滤波器来提高从嘈杂的动力学数据中恢复的寿命分布。当从使用均匀模型获得的寿命分布导出引导的模型时,只有较慢的进程在引导模型中表示为高斯。使用这种新方法,结果显然优于Mulligan等人。尽管存在增加噪音。在第二个例子中,通过过滤先前的模型来解决在散射激发光存在下解释泊松动力学中的模糊性。

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