Hanying Jiang, Xinran Miao, Margaret W Thairu, Mara Beebe, Dan W Grupe, Richard J Davidson, Jo Handelsman, Kris Sankaran
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引用次数: 0
Abstract
Mediation analysis has emerged as a versatile tool for answering mechanistic questions in microbiome research because it provides a statistical framework for attributing treatment effects to alternative causal pathways. Using a series of linked regressions, this analysis quantifies how complementary data relate to one another and respond to treatments. Despite these advances, existing software's rigid assumptions often result in users viewing mediation analysis as a black box. We designed the multimedia R package to make advanced mediation analysis techniques accessible, ensuring that statistical components are interpretable and adaptable. The package provides a uniform interface to direct and indirect effect estimation, synthetic null hypothesis testing, bootstrap confidence interval construction, and sensitivity analysis, enabling experimentation with various mediator and outcome models while maintaining a simple overall workflow. The software includes modules for regularized linear, compositional, random forest, hierarchical, and hurdle modeling, making it well-suited to microbiome data. We illustrate the package through two case studies. The first re-analyzes a study of the microbiome and metabolome of Inflammatory Bowel Disease patients, uncovering potential mechanistic interactions between the microbiome and disease-associated metabolites, not found in the original study. The second analyzes new data about the influence of mindfulness practice on the microbiome. The mediation analysis highlights shifts in taxa previously associated with depression that cannot be explained indirectly by diet or sleep behaviors alone. A gallery of examples and further documentation can be found at https://go.wisc.edu/830110.
中介分析是回答微生物组研究中机理问题的一种通用工具,因为它提供了一种统计框架,可将治疗效果归因于其他因果途径。这种分析使用一系列关联回归模型,量化互补数据模式之间的关系以及对治疗的反应。尽管取得了这些进步,但现有软件僵化的建模假设往往导致用户将中介分析视为一个黑箱,无法对其进行检查、批判和改进。我们设计了多媒体 R 软件包,使广大用户能够使用先进的中介分析技术,确保所有统计组件都易于解释,并能适应特定的问题情境。该软件包为直接和间接效应估计、合成零假设检验和自举置信区间构建提供了统一的界面。我们通过两个案例研究来说明该软件包。第一个案例对炎症性肠病患者的微生物组和代谢组进行了重新分析,发现了微生物组和疾病相关代谢物之间潜在的机理相互作用,这在原始研究中是没有发现的。第二项研究分析了正念练习对微生物组影响的新数据。中介分析确定了随机正念干预与微生物组组成之间的直接影响,突出了以前与抑郁症相关的类群的变化,而这些变化无法仅用饮食或睡眠行为来解释。更多实例和文献资料请访问 https://go.wisc.edu/830110。