A robust platform for integrative spatial multi-omics analysis to map immune responses to SARS-CoV-2 infection in lung tissues.
Xiao TanLaura F GriceMinh TranOnkar MulayJames MonkmanTony BlickTuan VoAna C S F AlmeidaJarbas da Silva MottaKaren Fernandes de MouraCleber Machado-SouzaPaulo Souza-Fonseca-GuimaraesCristina Pellegrino BaenaLucia de NoronhaFernanda Simoes Fortes GuimaraesHung Nguyen LuuTingsheng Yu DrennonStephen WilliamsJacob SternCedric R UytingcoLiuliu PanAndy NamCaroline CooperKirsty ShortGabrielle T BelzFernando Souza-Fonseca GuimaraesChamindie PunyadeeraQuan NguyenPublished in: Immunology (2023)
The SARS-CoV-2 (COVID-19) virus has caused a devastating global pandemic of respiratory illness. To understand viral pathogenesis, methods are available for studying dissociated cells in blood, nasal samples, bronchoalveolar lavage fluid and similar, but a robust platform for deep tissue characterization of molecular and cellular responses to virus infection in the lungs is still lacking. We developed an innovative spatial multi-omics platform to investigate COVID-19-infected lung tissues. Five tissue-profiling technologies were combined by a novel computational mapping methodology to comprehensively characterize and compare the transcriptome and targeted proteome of virus infected and uninfected tissues. By integrating spatial transcriptomics data (Visium, GeoMx and RNAScope) and proteomics data (CODEX and PhenoImager HT) at different cellular resolutions across lung tissues, we found strong evidence for macrophage infiltration and defined the broader microenvironment surrounding these cells. By comparing infected and uninfected samples, we found an increase in cytokine signalling and interferon responses at different sites in the lung and showed spatial heterogeneity in the expression level of these pathways. These data demonstrate that integrative spatial multi-omics platforms can be broadly applied to gain a deeper understanding of viral effects on cellular environments at the site of infection and to increase our understanding of the impact of SARS-CoV-2 on the lungs.
Keyphrases
- sars cov
- single cell
- respiratory syndrome coronavirus
- high throughput
- gene expression
- rna seq
- induced apoptosis
- immune response
- electronic health record
- coronavirus disease
- cell cycle arrest
- hiv infected
- big data
- stem cells
- poor prognosis
- dendritic cells
- mass spectrometry
- adipose tissue
- inflammatory response
- high resolution
- machine learning
- signaling pathway
- cell death
- drug delivery
- toll like receptor
- deep learning
- chronic rhinosinusitis