用于多重成像数据空间分析的扩展相关函数。

Biological imaging Pub Date : 2024-02-15 eCollection Date: 2024-01-01 DOI:10.1017/S2633903X24000011
Joshua A Bull, Eoghan J Mulholland, Simon J Leedham, Helen M Byrne
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引用次数: 0

摘要

用于生成高度复用组织学图像的成像平台正在不断发展和改进。自动细胞分割和分类方法的准确性也有了显著提高。然而,人们对描述单个细胞空间坐标的点云的量化和分析关注较少。我们在此重点介绍一种特殊的空间统计方法--交叉对相关函数(cross-PCF),它可以在一定长度范围内识别细胞之间的正负空间相关性。然而,交叉相关函数的局限性阻碍了它在多重组织学中的广泛应用。例如,它只能考虑成对细胞之间的关系,而且必须使用离散的分类标签(而不是染色强度等连续标签)对细胞进行分类。在本文中,我们介绍了交叉 PCF 的三个扩展,它们解决了这些局限性,并允许对多重图像进行更详细的分析:地形相关图可以直观地显示细胞之间的局部聚类和排斥;邻域相关函数可以识别两种或多种细胞类型的共聚焦;加权 PCF 描述了具有连续(而非离散)标签的点之间的空间相关性。我们将扩展 PCFs 应用于合成数据集和生物数据集,以展示它们所能产生的洞察力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extended correlation functions for spatial analysis of multiplex imaging data.

Imaging platforms for generating highly multiplexed histological images are being continually developed and improved. Significant improvements have also been made in the accuracy of methods for automated cell segmentation and classification. However, less attention has focused on the quantification and analysis of the resulting point clouds, which describe the spatial coordinates of individual cells. We focus here on a particular spatial statistical method, the cross-pair correlation function (cross-PCF), which can identify positive and negative spatial correlation between cells across a range of length scales. However, limitations of the cross-PCF hinder its widespread application to multiplexed histology. For example, it can only consider relations between pairs of cells, and cells must be classified using discrete categorical labels (rather than labeling continuous labels such as stain intensity). In this paper, we present three extensions to the cross-PCF which address these limitations and permit more detailed analysis of multiplex images: topographical correlation maps can visualize local clustering and exclusion between cells; neighbourhood correlation functions can identify colocalization of two or more cell types; and weighted-PCFs describe spatial correlation between points with continuous (rather than discrete) labels. We apply the extended PCFs to synthetic and biological datasets in order to demonstrate the insight that they can generate.

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