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Step Detection in Single-Molecule Real Time Trajectories Embedded in Correlated Noise

机译:相关噪声中嵌入的单分子实时轨迹中的步检测

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摘要

Single-molecule real time trajectories are embedded in high noise. To extract kinetic or dynamic information of the molecules from these trajectories often requires idealization of the data in steps and dwells. One major premise behind the existing single-molecule data analysis algorithms is the Gaussian ‘white’ noise, which displays no correlation in time and whose amplitude is independent on data sampling frequency. This so-called ‘white’ noise is widely assumed but its validity has not been critically evaluated. We show that correlated noise exists in single-molecule real time trajectories collected from optical tweezers. The assumption of white noise during analysis of these data can lead to serious over- or underestimation of the number of steps depending on the algorithms employed. We present a statistical method that quantitatively evaluates the structure of the underlying noise, takes the noise structure into account, and identifies steps and dwells in a single-molecule trajectory. Unlike existing data analysis algorithms, this method uses Generalized Least Squares (GLS) to detect steps and dwells. Under the GLS framework, the optimal number of steps is chosen using model selection criteria such as Bayesian Information Criterion (BIC). Comparison with existing step detection algorithms showed that this GLS method can detect step locations with highest accuracy in the presence of correlated noise. Because this method is automated, and directly works with high bandwidth data without pre-filtering or assumption of Gaussian noise, it may be broadly useful for analysis of single-molecule real time trajectories.
机译:高噪声中嵌入了单分子实时轨迹。为了从这些轨迹中提取分子的动力学或动态信息,通常需要逐步地进行数据的理想化。现有的单分子数据分析算法背后的一个主要前提是高斯“白”噪声,该噪声在时间上没有相关性,其幅度与数据采样频率无关。人们普遍认为这种所谓的“白噪声”,但尚未对其有效性进行严格评估。我们表明相关的噪声存在于从光镊子收集的单分子实时轨迹中。在分析这些数据期间假设白噪声会导致严重高估或低估步数,具体取决于所采用的算法。我们提出了一种统计方法,该方法可以定量评估基础噪声的结构,将噪声结构考虑在内,并确定单分子轨迹中的步长和驻留位置。与现有的数据分析算法不同,此方法使用广义最小二乘(GLS)来检测步长和驻留时间。在GLS框架下,使用模型选择标准(例如贝叶斯信息准则(BIC))选择最佳步骤数。与现有步检测算法的比较表明,这种GLS方法可以在存在相关噪声的情况下以最高精度检测步位置。由于此方法是自动的,并且无需预先过滤或假设高斯噪声即可直接处理高带宽数据,因此对于分析单分子实时轨迹可能广泛有用。

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