Statistical modeling and analysis of cell counts from multiplexed imaging data.

Pierre Bost, Ruben Casanova, Uria Mor, Martina Haberecker, Chantal Pauli, Susanne Dettwiler, Bernd Bodenmiller
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Abstract

The rapid development of multiplexed imaging technologies has enabled the spatial cartography of various healthy and tumor tissues. However, adequate statistical models are still lacking to compare tissue compositions across sample groups. Here, we developed two statistical models that accurately describe the distributions of cell counts in an imaging mass cytometry dataset comprising tissues from a lymph node, COVID-19-affected lung samples, and Hashimoto disease. The parameters of these distributions are directly linked to the field of view size and to cellular properties, including density and spatial aggregation. We identified statistical tests that improved statistical power for differential abundance testing compared with the commonly used rank-based test. Our analysis revealed spatial aggregation as the main determinant of statistical power and that high numbers of fields of view are required when cells are highly aggregated. To overcome this challenge, we propose a stratified sampling strategy that considerably reduces the required sample size.

统计建模和分析细胞计数从多路复用成像数据。
多路成像技术的快速发展使各种健康组织和肿瘤组织的空间制图成为可能。然而,仍然缺乏足够的统计模型来比较不同样本组的组织成分。在这里,我们开发了两个统计模型,可以准确描述成像细胞计数数据集中细胞计数的分布,该数据集包括来自淋巴结的组织、受covid -19影响的肺样本和桥本病。这些分布的参数与视场大小和细胞属性(包括密度和空间聚集)直接相关。与常用的基于秩的检验相比,我们确定了提高差异丰度检验统计能力的统计检验。我们的分析表明,空间聚集是统计能力的主要决定因素,当单元格高度聚集时,需要大量的视场。为了克服这一挑战,我们提出了一种分层抽样策略,大大减少了所需的样本量。
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