贝叶斯多元空间点模式模型在口腔微生物组FISH图像数据中的应用。

ArXiv Pub Date : 2025-02-14
Kyu Ha Lee, Brent A Coull, Suman Majumder, Patrick J La Riviere, Jessica L Mark Welch, Jacqueline R Starr
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引用次数: 0

摘要

细胞成像技术的进步,特别是基于荧光原位杂交(FISH)的技术,现在可以对人类或细菌细胞的空间组织进行详细的可视化。量化这种空间组织对于理解多细胞组织或生物膜的功能至关重要,对人类健康和疾病具有重要意义。为了解决实现这种量化的更好方法的需求,我们提出了一个灵活的多元点过程模型,该模型表征和估计了多种细胞类型之间复杂的空间相互作用。所提出的贝叶斯框架由于其统一的估计过程和直接量化关键估计中的不确定性的能力而具有吸引力,例如类型间相关性和类型间关系引起的方差比例。为了确保稳定和可解释的估计,我们考虑了与潜在过程相关系数的收缩先验。模型的选择和比较采用了针对潜在变量模型设计的偏差信息准则,有效地平衡了过拟合风险和关键量过于简化的风险。此外,我们开发了一种分层建模方法来整合来自给定主题的多个特定图像估计,从而允许在全局和特定主题级别上进行推理。我们将所提出的方法应用于人类舌背的微生物生物膜图像数据,发现特定分类群对,如mitis-Streptococcus salivarius和Streptococcus mitis-Veillonella,表现出很强的正空间相关性,而其他分类群,如放线菌- rothia,则表现出轻微的负相关性。对于大多数分类群而言,很大一部分空间变异可归因于分类群间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian Multivariate Spatial Point Pattern Model: Application to Oral Microbiome FISH Image Data.

Advances in cellular imaging technologies, especially those based on fluorescence in situ hybridization (FISH) now allow detailed visualization of the spatial organization of human or bacterial cells. Quantifying this spatial organization is crucial for understanding the function of multicellular tissues or biofilms, with implications for human health and disease. To address the need for better methods to achieve such quantification, we propose a flexible multivariate point process model that characterizes and estimates complex spatial interactions among multiple cell types. The proposed Bayesian framework is appealing due to its unified estimation process and the ability to directly quantify uncertainty in key estimates of interest, such as those of inter-type correlation and the proportion of variance due to inter-type relationships. To ensure stable and interpretable estimation, we consider shrinkage priors for coefficients associated with latent processes. Model selection and comparison are conducted by using a deviance information criterion designed for models with latent variables, effectively balancing the risk of overfitting with that of oversimplifying key quantities. Furthermore, we develop a hierarchical modeling approach to integrate multiple image-specific estimates from a given subject, allowing inference at both the global and subject-specific levels. We apply the proposed method to microbial biofilm image data from the human tongue dorsum and find that specific taxon pairs, such as Streptococcus mitis-Streptococcus salivarius and Streptococcus mitis-Veillonella, exhibit strong positive spatial correlations, while others, such as Actinomyces-Rothia, show slight negative correlations. For most of the taxa, a substantial portion of spatial variance can be attributed to inter-taxon relationships.

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