MetalinksDB: a flexible and contextualizable resource of metabolite-protein interactions.
Elias FarrDaniel DimitrovChristina SchmidtDenes TureiSebastian LobentanzerAurelien DugourdJulio Saez-RodriguezPublished in: Briefings in bioinformatics (2024)
From the catalytic breakdown of nutrients to signaling, interactions between metabolites and proteins play an essential role in cellular function. An important case is cell-cell communication, where metabolites, secreted into the microenvironment, initiate signaling cascades by binding to intra- or extracellular receptors of neighboring cells. Protein-protein cell-cell communication interactions are routinely predicted from transcriptomic data. However, inferring metabolite-mediated intercellular signaling remains challenging, partially due to the limited size of intercellular prior knowledge resources focused on metabolites. Here, we leverage knowledge-graph infrastructure to integrate generalistic metabolite-protein with curated metabolite-receptor resources to create MetalinksDB. MetalinksDB is an order of magnitude larger than existing metabolite-receptor resources and can be tailored to specific biological contexts, such as diseases, pathways, or tissue/cellular locations. We demonstrate MetalinksDB's utility in identifying deregulated processes in renal cancer using multi-omics bulk data. Furthermore, we infer metabolite-driven intercellular signaling in acute kidney injury using spatial transcriptomics data. MetalinksDB is a comprehensive and customizable database of intercellular metabolite-protein interactions, accessible via a web interface (https://metalinks.omnipathdb.org/) and programmatically as a knowledge graph (https://github.com/biocypher/metalinks). We anticipate that by enabling diverse analyses tailored to specific biological contexts, MetalinksDB will facilitate the discovery of disease-relevant metabolite-mediated intercellular signaling processes.
Keyphrases
- single cell
- protein protein
- acute kidney injury
- small molecule
- cell therapy
- healthcare
- ms ms
- rna seq
- electronic health record
- stem cells
- big data
- cell adhesion
- emergency department
- cardiac surgery
- induced apoptosis
- risk assessment
- binding protein
- deep learning
- signaling pathway
- cell proliferation
- oxidative stress
- mesenchymal stem cells
- data analysis
- amino acid
- artificial intelligence
- cell cycle arrest
- lymph node metastasis