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首页> 外文期刊>Scandinavian journal of statistics >Nonparametric detection of changes over time in image data from fluorescence microscopy of living cells
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Nonparametric detection of changes over time in image data from fluorescence microscopy of living cells

机译:非参数检测从活细胞荧光显微镜图像数据中的图像数据中的变化

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摘要

The question whether structural changes in time-resolved images are of statistical significance or merely emerge from random noise is of great relevance in many practical applications such as live cell fluorescence microscopy, where intracellular diffusion processes are investigated. Using bootstrap-methods, we construct nonparametric confidence bands for time-resolved images from fluorescence microscopy and use these to detect and visualize temporal changes between individual frames in imaging of living cells. We model the images frames as two-dimensional fields of Poisson random variables and provide a strong approximation result for independent and standardized but not necessarily identically distributed Poisson random variables. The latter result is used to derive a limit result for the maximal difference between the reconstructed and the true image. This provides the theoretical foundation of our method. We apply regularization techniques to cope with the ill-posedness of the convolution problem induced by the imaging system. Our approach provides a criterion to assess time-resolved small scale structural changes, for example, in the nanometer range. It can also be adopted for use in other imaging systems. Moreover, a data-driven selection method for the regularization parameter based on statistical multiscale methods is discussed.
机译:该问题是时间分辨图像的结构变化是否具有统计学意义,或者仅从随机噪声中出现在许多实际应用中具有很大的相关性,例如实时细胞荧光显微镜,其中调查细胞内扩散过程。使用引导方法,我们构造来自荧光显微镜的时间分辨图像的非参数置信带,并使用这些来检测和可视化活细胞成像中的单个帧之间的时间变化。我们将图像帧模拟为泊松随机变量的二维字段,并为独立和标准化提供了强的近似结果,但不一定相同地分布泊松随机变量。后一种结果用于导出重建和真实图像之间的最大差异的限制结果。这为我们的方法提供了理论基础。我们应用正规化技术来应对成像系统引起的卷积问题的不良姿势。我们的方法提供了评估时间分辨的小规模结构变化的标准,例如,在纳米范围内。它也可以用于其他成像系统。此外,讨论了基于统计多尺度方法的正则化参数的数据驱动选择方法。

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