Wolfson Centre for Mathematical Biology, Mathematical Institute, University of Oxford, Oxford, United Kingdom.
Ludwig Institute for Cancer Research, Nuffield Department of Medicine, University of Oxford, Oxford, United Kingdom.
PLoS Comput Biol. 2023 Mar 27;19(3):e1010994. doi: 10.1371/journal.pcbi.1010994. eCollection 2023 Mar.
We introduce a new spatial statistic, the weighted pair correlation function (wPCF). The wPCF extends the existing pair correlation function (PCF) and cross-PCF to describe spatial relationships between points marked with combinations of discrete and continuous labels. We validate its use through application to a new agent-based model (ABM) which simulates interactions between macrophages and tumour cells. These interactions are influenced by the spatial positions of the cells and by macrophage phenotype, a continuous variable that ranges from anti-tumour to pro-tumour. By varying model parameters that regulate macrophage phenotype, we show that the ABM exhibits behaviours which resemble the 'three Es of cancer immunoediting': Equilibrium, Escape, and Elimination. We use the wPCF to analyse synthetic images generated by the ABM. We show that the wPCF generates a 'human readable' statistical summary of where macrophages with different phenotypes are located relative to both blood vessels and tumour cells. We also define a distinct 'PCF signature' that characterises each of the three Es of immunoediting, by combining wPCF measurements with the cross-PCF describing interactions between vessels and tumour cells. By applying dimension reduction techniques to this signature, we identify its key features and train a support vector machine classifier to distinguish between simulation outputs based on their PCF signature. This proof-of-concept study shows how multiple spatial statistics can be combined to analyse the complex spatial features that the ABM generates, and to partition them into interpretable groups. The intricate spatial features produced by the ABM are similar to those generated by state-of-the-art multiplex imaging techniques which distinguish the spatial distribution and intensity of multiple biomarkers in biological tissue regions. Applying methods such as the wPCF to multiplex imaging data would exploit the continuous variation in biomarker intensities and generate more detailed characterisation of the spatial and phenotypic heterogeneity in tissue samples.
我们引入了一种新的空间统计量,加权对相关函数(wPCF)。wPCF 扩展了现有的对相关函数(PCF)和交叉 PCF,以描述带有离散和连续标签组合标记的点之间的空间关系。我们通过应用于新的基于代理的模型(ABM)来验证其用途,该模型模拟巨噬细胞和肿瘤细胞之间的相互作用。这些相互作用受到细胞的空间位置和巨噬细胞表型的影响,巨噬细胞表型是一个连续变量,范围从抗肿瘤到促肿瘤。通过改变调节巨噬细胞表型的模型参数,我们表明 ABM 表现出类似于“癌症免疫编辑的三个 E”的行为:平衡、逃逸和消除。我们使用 wPCF 分析 ABM 生成的合成图像。我们表明,wPCF 生成了一个“人类可读”的统计摘要,其中显示了具有不同表型的巨噬细胞相对于血管和肿瘤细胞的位置。我们还通过将 wPCF 测量值与描述血管和肿瘤细胞之间相互作用的交叉 PCF 相结合,定义了一个独特的“PCF 特征”,该特征表征了免疫编辑的三个 E 中的每一个。通过将降维技术应用于该特征,我们确定了其关键特征,并训练支持向量机分类器来根据其 PCF 特征区分模拟输出。这项概念验证研究表明,如何结合多种空间统计量来分析 ABM 生成的复杂空间特征,并将其划分为可解释的组。ABM 产生的复杂空间特征类似于最先进的多重成像技术产生的空间特征,这些技术区分了生物组织区域中多个生物标志物的空间分布和强度。将 wPCF 等方法应用于多重成像数据将利用生物标志物强度的连续变化,并生成组织样本中空间和表型异质性的更详细特征。