Evolutionary Bioinformatics (Dec 2020)

Hypergraph Clustering Based on Game-Theory for Mining Microbial High-Order Interaction Module

  • Limin Yu,
  • Xianjun Shen,
  • Jincai Yang,
  • Kaiping Wei,
  • Duo Zhong,
  • Ruilong Xiang

DOI
https://doi.org/10.1177/1176934320970572
Journal volume & issue
Vol. 16

Abstract

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Microbial community is ubiquitous in nature, which has a great impact on the living environment and human health. All these effects of microbial communities on the environment and their hosts are often referred to as the functions of these communities, which depend largely on the composition of the communities. The study of microbial higher-order module can help us understand the dynamic development and evolution process of microbial community and explore community function. Considering that traditional clustering methods depend on the number of clusters or the influence of data that does not belong to any cluster, this paper proposes a hypergraph clustering algorithm based on game theory to mine the microbial high-order interaction module (HCGI), and the hypergraph clustering problem naturally turns into a clustering game problem, the partition of network modules is transformed into finding the critical point of evolutionary stability strategy (ESS). The experimental results show HCGI does not depend on the number of classes, and can get more conservative and better quality microbial clustering module, which provides reference for researchers and saves time and cost. The source code of HCGI in this paper can be downloaded from https://github.com/ylm0505/HCGI .