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Extending Ripley’s K-Function to Quantify Aggregation in 2-D Grayscale Images

机译:扩展Ripley的K函数以量化二维灰度图像中的聚集

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摘要

In this work, we describe the extension of Ripley’s K-function to allow for overlapping events at very high event densities. We show that problematic edge effects introduce significant bias to the function at very high densities and small radii, and propose a simple correction method that successfully restores the function’s centralization. Using simulations of homogeneous Poisson distributions of events, as well as simulations of event clustering under different conditions, we investigate various aspects of the function, including its shape-dependence and correspondence between true cluster radius and radius at which the K-function is maximized. Furthermore, we validate the utility of the function in quantifying clustering in 2-D grayscale images using three modalities: (i) Simulations of particle clustering; (ii) Experimental co-expression of soluble and diffuse protein at varying ratios; (iii) Quantifying chromatin clustering in the nuclei of wt and crwn1 crwn2 mutant Arabidopsis plant cells, using a previously-published image dataset. Overall, our work shows that Ripley’s K-function is a valid abstract statistical measure whose utility extends beyond the quantification of clustering of non-overlapping events. Potential benefits of this work include the quantification of protein and chromatin aggregation in fluorescent microscopic images. Furthermore, this function has the potential to become one of various abstract texture descriptors that are utilized in computer-assisted diagnostics in anatomic pathology and diagnostic radiology.
机译:在这项工作中,我们描述了Ripley K函数的扩展,以允许在非常高的事件密度下重叠事件。我们证明有问题的边缘效应会在很高的密度和较小的半径下给功能带来明显的偏差,并提出了一种简单的校正方法,可以成功地恢复功能的集中化。使用事件的均匀Poisson分布的模拟以及不同条件下的事件聚类的模拟,我们研究了函数的各个方面,包括函数的形状依赖性以及真实簇半径和K函数最大化处的半径之间的对应关系。此外,我们使用以下三种方式验证了该功能在二维灰度图像中量化聚类的效用:(i)粒子聚类的仿真; (ii)不同比例的可溶性和弥散性蛋白的实验共表达; (iii)使用先前发布的图像数据集量化wt和crwn1 crwn2突变拟南芥植物细胞核中的染色质簇。总的来说,我们的工作表明Ripley的K函数是一种有效的抽象统计量度,其作用范围超出了对非重叠事件的聚类量化的范围。这项工作的潜在好处包括荧光显微镜图像中蛋白质和染色质聚集的定量分析。此外,该功能有可能成为在解剖病理学和放射诊断学中的计算机辅助诊断中使用的各种抽象纹理描述符之一。

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