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Predicting intercellular communication based on metabolite-related ligand-receptor interactions with MRCLinkdb.

Authors :
Zhang, Yuncong
Yang, Yu
Ren, Liping
Zhan, Meixiao
Sun, Taoping
Zou, Quan
Zhang, Yang
Source :
BMC Biology; 7/8/2024, Vol. 22 Issue 1, p1-12, 12p
Publication Year :
2024

Abstract

Background: Metabolite-associated cell communications play critical roles in maintaining human biological function. However, most existing tools and resources focus only on ligand-receptor interaction pairs where both partners are proteinaceous, neglecting other non-protein molecules. To address this gap, we introduce the MRCLinkdb database and algorithm, which aggregates and organizes data related to non-protein L-R interactions in cell-cell communication, providing a valuable resource for predicting intercellular communication based on metabolite-related ligand-receptor interactions. Results: Here, we manually curated the metabolite-ligand-receptor (ML-R) interactions from the literature and known databases, ultimately collecting over 790 human and 670 mouse ML-R interactions. Additionally, we compiled information on over 1900 enzymes and 260 transporter entries associated with these metabolites. We developed Metabolite-Receptor based Cell Link Database (MRCLinkdb) to store these ML-R interactions data. Meanwhile, the platform also offers extensive information for presenting ML-R interactions, including fundamental metabolite information and the overall expression landscape of metabolite-associated gene sets (such as receptor, enzymes, and transporter proteins) based on single-cell transcriptomics sequencing (covering 35 human and 26 mouse tissues, 52 human and 44 mouse cell types) and bulk RNA-seq/microarray data (encompassing 62 human and 39 mouse tissues). Furthermore, MRCLinkdb introduces a web server dedicated to the analysis of intercellular communication based on ML-R interactions. MRCLinkdb is freely available at . Conclusions: In addition to supplementing ligand-receptor databases, MRCLinkdb may provide new perspectives for decoding the intercellular communication and advancing related prediction tools based on ML-R interactions. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
17417007
Volume :
22
Issue :
1
Database :
Complementary Index
Journal :
BMC Biology
Publication Type :
Academic Journal
Accession number :
178344889
Full Text :
https://doi.org/10.1186/s12915-024-01950-w