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Uncovering cell-type-specific immunomodulatory variants and molecular phenotypes in COVID-19 using structurally resolved protein networks

Prabal Chhibbar, Priyamvada Guha Roy, Munesh K. Harioudh, Daniel J. McGrail, Donghui Yang, Harinder Singh, Reinhard Hinterleitner, Yi Nan Gong, S. Stephen Yi, Nidhi Sahni, Saumendra N. Sarkar, Jishnu Das

Research output: Contribution to journalArticlepeer-review

Abstract

Immunomodulatory variants that lead to the loss or gain of specific protein interactions often manifest only as organismal phenotypes in infectious disease. Here, we propose a network-based approach to integrate genetic variation with a structurally resolved human protein interactome network to prioritize immunomodulatory variants in COVID-19. We find that, in addition to variants that pass genome-wide significance thresholds, variants at the interface of specific protein-protein interactions, even though they do not meet genome-wide thresholds, are equally immunomodulatory. The integration of these variants with single-cell epigenomic and transcriptomic data prioritizes myeloid and T cell subsets as the most affected by these variants across both the peripheral blood and the lung compartments. Of particular interest is a common coding variant that disrupts the OAS1-PRMT6 interaction and affects downstream interferon signaling. Critically, our framework is generalizable across infectious disease contexts and can be used to implicate immunomodulatory variants that do not meet genome-wide significance thresholds.

Original languageEnglish (US)
Article number114930
JournalCell Reports
Volume43
Issue number11
DOIs
StatePublished - Nov 26 2024

Keywords

  • CP: Immunology
  • GWAS
  • host-viral interactions
  • machine learning
  • protein networks
  • systems immunology

ASJC Scopus subject areas

  • General Biochemistry, Genetics and Molecular Biology

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