Seal Souvik, Neelon Brian, Angel Peggi, O'Quinn Elizabeth C, Hill Elizabeth, Vu Thao, Ghosh Debashis, Mehta Anand, Wallace Kristin, Alekseyenko Alexander V
Department of Public Health Sciences, Medical University of South Carolina, Charleston, South Carolina.
Department of Cell and Molecular Pharmacology and Experimental Therapeutics, Medical University of South Carolina, Charleston, South Carolina.
bioRxiv. 2023 Jul 9:2023.07.06.548034. doi: 10.1101/2023.07.06.548034.
Multiplex imaging platforms have enabled the identification of the spatial organization of different types of cells in complex tissue or tumor microenvironment (TME). Exploring the potential variations in the spatial co-occurrence or co-localization of different cell types across distinct tissue or disease classes can provide significant pathological insights, paving the way for intervention strategies. However, the existing methods in this context either rely on stringent statistical assumptions or suffer from a lack of generalizability.
We present a highly powerful method to study differential spatial co-occurrence of cell types across multiple tissue or disease groups, based on the theories of the Poisson point process (PPP) and functional analysis of variance (FANOVA). Notably, the method accommodates multiple images per subject and addresses the problem of missing tissue regions, commonly encountered in such a context due to the complex nature of the data-collection procedure. We demonstrate the superior statistical power and robustness of the method in comparison to existing approaches through realistic simulation studies. Furthermore, we apply the method to three real datasets on different diseases collected using different imaging platforms. In particular, one of these datasets reveals novel insights into the spatial characteristics of various types of precursor lesions associated with colorectal cancer.
The associated package can be found here, https://github.com/sealx017/SpaceANOVA.
多重成像平台能够识别复杂组织或肿瘤微环境(TME)中不同类型细胞的空间组织。探索不同细胞类型在不同组织或疾病类别中的空间共现或共定位的潜在差异,可以提供重要的病理学见解,为干预策略铺平道路。然而,在这种情况下,现有的方法要么依赖于严格的统计假设,要么缺乏通用性。
我们基于泊松点过程(PPP)理论和方差功能分析(FANOVA),提出了一种非常强大的方法来研究多种组织或疾病组中细胞类型的差异空间共现。值得注意的是,该方法适用于每个受试者的多张图像,并解决了由于数据收集过程的复杂性而在此类情况下常见的组织区域缺失问题。通过实际模拟研究,我们证明了该方法与现有方法相比具有更高的统计能力和稳健性。此外,我们将该方法应用于使用不同成像平台收集的三个不同疾病的真实数据集。特别是,其中一个数据集揭示了与结直肠癌相关的各种类型前体病变的空间特征的新见解。
相关软件包可在此处找到,https://github.com/sealx017/SpaceANOVA。