Statistical computation methods for microbiome compositional data network inference
Liang Chen, Qiuyan He, Hui Wan, Shun He, Minghua Deng

TL;DR
This paper reviews statistical methods for inferring microbial interaction networks from compositional microbiome data, highlighting challenges, categories of networks, and future research directions.
Contribution
It provides a comprehensive classification and evaluation of emerging microbiome network inference methods based on compositional data.
Findings
Networks are categorized into correlation, conditional correlation, mixture, and differential networks.
Challenges include compositionality, sparsity, and high-dimensionality of microbiome data.
Future prospects involve integrating statistical methods with experimental techniques.
Abstract
Microbes can affect processes from food production to human health. Such microbes are not isolated, but rather interact with each other and establish connections with their living environments. Understanding these interactions is essential to an understanding of the organization and complex interplay of microbial communities, as well as the structure and dynamics of various ecosystems. A common and essential approach toward this objective involves the inference of microbiome interaction networks. Although network inference methods in other fields have been studied before, applying these methods to estimate microbiome associations based on compositional data will not yield valid results. On the one hand, features of microbiome data such as compositionality, sparsity and high-dimensionality challenge the data normalization and the design of computational methods. On the other hand,…
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Taxonomy
TopicsMetabolomics and Mass Spectrometry Studies · Oral microbiology and periodontitis research · Gut microbiota and health
