Inference for Log-Gaussian Cox Point Processes using Bayesian Deep Learning: Application to Human Oral Microbiome Image Data.

ArXiv Pub Date : 2025-03-18
Shuwan Wang, Christopher K Wikle, Athanasios C Micheas, Jessica L Mark Welch, Jacqueline R Starr, Kyu Ha Lee
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Abstract

It is common in nature to see aggregation of objects in space. Exploring the mechanism associated with the locations of such clustered observations can be essential to understanding the phenomenon, such as the source of spatial heterogeneity, or comparison to other event generating processes in the same domain. Log-Gaussian Cox processes (LGCPs) represent an important class of models for quantifying aggregation in a spatial point pattern. However, implementing likelihood-based Bayesian inference for such models presents many computational challenges, particularly in high dimensions. In this paper, we propose a novel likelihood-free inference approach for LGCPs using the recently developed BayesFlow approach, where invertible neural networks are employed to approximate the posterior distribution of the parameters of interest. BayesFlow is a neural simulation-based method based on "amortized" posterior estimation. That is, after an initial training procedure, fast feed-forward operations allow rapid posterior inference for any data within the same model family. Comprehensive numerical studies validate the reliability of the framework and show that BayesFlow achieves substantial computational gain in repeated application, especially for two-dimensional LGCPs. We demonstrate the utility and robustness of the method by applying it to two distinct oral microbial biofilm images.

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基于贝叶斯深度学习的对数高斯Cox点过程推理:在人类口腔微生物组图像数据中的应用。
在自然界中,物体在空间中聚集是很常见的。探索与此类聚集观测的位置相关的机制对于理解这一现象至关重要,例如空间异质性的来源,或与同一域中其他事件产生过程的比较。对数-高斯Cox过程(Log-Gaussian Cox process, LGCPs)是一种用于量化空间点模式聚集的重要模型。然而,为这些模型实现基于似然的贝叶斯推理提出了许多计算挑战,特别是在高维情况下。在本文中,我们使用最近开发的BayesFlow方法提出了一种新的lgcp无似然推理方法,其中使用可逆神经网络来近似感兴趣参数的后验分布。BayesFlow是一种基于“平摊”后验估计的神经仿真方法。也就是说,在初始训练过程之后,快速前馈操作允许对同一模型族中的任何数据进行快速后验推理。全面的数值研究验证了该框架的可靠性,并表明BayesFlow在重复应用中获得了可观的计算增益,特别是对于二维lgcp。我们通过将其应用于两种不同的口腔微生物生物膜图像来证明该方法的实用性和鲁棒性。
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