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A cross-omics data analysis strategy for metabolite-microbe pair identification.

Tao SunDongnan SunJunliang KuangXiaowen ChaoYihan GuoMengci LiTianlu Chen
Published in: Proteomics (2024)
Given the pivotal roles of metabolomics and microbiomics, numerous data mining approaches aim to uncover their intricate connections. However, the complex many-to-many associations between metabolome-microbiome profiles yield numerous statistically significant but biologically unvalidated candidates. To address these challenges, we introduce BiOFI, a strategic framework for identifying metabolome-microbiome correlation pairs (Bi-Omics). BiOFI employs a comprehensive scoring system, incorporating intergroup differences, effects on feature correlation networks, and organism abundance. Meanwhile, it establishes a built-in database of metabolite-microbe-KEGG functional pathway linking relationships. Furthermore, BiOFI can rank related feature pairs by combining importance scores and correlation strength. Validation on a dataset of cesarean-section infants confirms the strategy's validity and interpretability. The BiOFI R package is freely accessible at https://github.com/chentianlu/BiOFI.
Keyphrases
  • data analysis
  • machine learning
  • single cell
  • deep learning
  • electronic health record
  • emergency department
  • big data
  • adverse drug
  • artificial intelligence