ArXiv TLDR

A Zero-Inflated Beta Mixture Model for Marginal Mediation Analysis with Compositional Microbiome Mediators

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2605.04372

Seungjun Ahn, Quran Wu, Alicia Yang, Zhigang Li

stat.MEq-bio.QMstat.AP

TLDR

Introduces ZIBM, a new statistical model for robust mediation analysis of compositional microbiome data, addressing sparsity and heterogeneity.

Key contributions

  • Proposes ZIBM, a zero-inflated beta mixture model for mediation analysis of compositional microbiome data.
  • Handles excess zeros with a zero-inflation component and heterogeneity with a beta mixture distribution.
  • Provides accurate estimation of marginal microbiome-mediated causal effects, outperforming existing methods.

Why it matters

Microbiome data is challenging for causal analysis due to sparsity and compositionality. This paper offers a robust statistical framework to accurately assess the microbiome's role in disease, improving our understanding of disease pathogenesis.

Original Abstract

The role of the microbiome in disease pathogenesis is an emerging field with strong evidence suggesting that dysbiosis is associated with precancerous and cancerous states. Microbiome data present substantial challenges for causal mediation analysis due to sparsity, compositional constraints, and latent heterogeneity. To address these issues, we propose a zero-inflated beta mixture (ZIBM) method for mediation analysis with compositional microbiome mediators. The proposed method accommodates excess zeros through a zero-inflation component and captures heterogeneity in non-zero relative abundances using a beta mixture distribution. Within the potential-outcomes framework, the ZIBM provides estimates of marginal microbiome-mediated causal effects, and model parameters are estimated using an expectation-maximization algorithm. Simulation studies demonstrate that the ZIBM yields more accurate estimation and reliable inference under conditions commonly observed in microbiome data, compared with existing approaches. An application to a real microbiome study further illustrates its practical utility. These results indicate that the proposed method provides a more flexible and robust statistical framework for mediation analysis involving compositional microbiome data.

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