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Quantitative study of single molecule location estimation techniques

机译:单分子位置估计技术的定量研究

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摘要

Estimating the location of single molecules from microscopy images is a key step in many quantitative single molecule data analysis techniques. Different algorithms have been advocated for the fitting of single molecule data, particularly the nonlinear least squares and maximum likelihood estimators. Comparisons were carried out to assess the performance of these two algorithms in different scenarios. Our results show that both estimators, on average, are able to recover the true location of the single molecule in all scenarios we examined. However, in the absence of modeling inaccuracies and low noise levels, the maximum likelihood estimator is more accurate than the nonlinear least squares estimator, as measured by the standard deviations of its estimates, and attains the best possible accuracy achievable for the sets of imaging and experimental conditions that were tested. Although neither algorithm is consistently superior to the other in the presence of modeling inaccuracies or misspecifications, the maximum likelihood algorithm emerges as a robust estimator producing results with consistent accuracy across various model mismatches and misspecifications. At high noise levels, relative to the signal from the point source, neither algorithm has a clear accuracy advantage over the other. Comparisons were also carried out for two localization accuracy measures derived previously. Software packages with user-friendly graphical interfaces developed for single molecule location estimation (EstimationTool) and limit of the localization accuracy calculations (FandPLimitTool) are also discussed.
机译:从显微镜图像估计单分子的位置是许多定量单分子数据分析技术中的关键步骤。已经提出了用于拟合单分子数据的不同算法,尤其是非线性最小二乘法和最大似然估计器。进行比较以评估这两种算法在不同情况下的性能。我们的结果表明,在我们检查的所有情况下,两个估计器平均都能恢复单个分子的真实位置。但是,在没有建模误差和低噪声水平的情况下,最大似然估计器比非线性最小二乘估计器(通过其估计值的标准偏差来衡量)更加准确,并且可以实现成像和成像组所能达到的最佳精度。测试的实验条件。尽管在存在模型错误或规格不正确的情况下,这两种算法均始终优于另一种算法,但最大似然算法作为一种可靠的估计器出现,可在各种模型不匹配和规格不正确的情况下产生具有一致精度的结果。在高噪声水平下,相对于来自点源的信号,这两种算法都不比另一种算法具有明显的精度优势。还对先前得出的两种定位精度测量结果进行了比较。还讨论了具有针对单分子位置估计开发的用户友好图形界面的软件包(EstimationTool)和定位精度计算的限制(FandPLimitTool)。

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