| Literature DB >> 34803912 |
Shabana Amanda Ali1,2, Chiara Pastrello3,4, Navdeep Kaur1, Mandy J Peffers5, Michelle J Ormseth6, Igor Jurisica3,4,7,8,9.
Abstract
Discovery of non-coding RNAs continues to provide new insights into some of the key molecular drivers of musculoskeletal diseases. Among these, microRNAs have received widespread attention for their roles in osteoarthritis and rheumatoid arthritis. With evidence to suggest that long non-coding RNAs and circular RNAs function as competing endogenous RNAs to sponge microRNAs, the net effect on gene expression in specific disease contexts can be elusive. Studies to date have focused on elucidating individual long non-coding-microRNA-gene target axes and circular RNA-microRNA-gene target axes, with a paucity of data integrating experimentally validated effects of non-coding RNAs. To address this gap, we curated recent studies reporting non-coding RNA axes in chondrocytes from human osteoarthritis and in fibroblast-like synoviocytes from human rheumatoid arthritis. Using an integrative computational biology approach, we then combined the findings into cell- and disease-specific networks for in-depth interpretation. We highlight some challenges to data integration, including non-existent naming conventions and out-of-date databases for non-coding RNAs, and some successes exemplified by the International Molecular Exchange Consortium for protein interactions. In this perspective article, we suggest that data integration is a useful in silico approach for creating non-coding RNA networks in arthritis and prioritizing interactions for further in vitro and in vivo experimentation in translational research.Entities:
Keywords: cartilage; circular RNA; epigenetics; integrative computational biology; long non-coding RNA; microRNA; network analysis and visualization; synovium
Mesh:
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Year: 2021 PMID: 34803912 PMCID: PMC8595833 DOI: 10.3389/fendo.2021.744747
Source DB: PubMed Journal: Front Endocrinol (Lausanne) ISSN: 1664-2392 Impact factor: 5.555
Figure 1Non-coding RNA network in OA chondrocytes. (A) Literature curated lncRNA-miRNA-gene and circRNA-miRNA-gene axes (green, turquoise, and brown arrows) complemented by physical protein interactions (blue nondirectional lines connecting gene products) showing an interconnected regulatory network of non-coding RNAs in human OA chondrocytes. Node shape represents different molecule types, while gene target color signifies Gene Ontology biological process (as indicated in the legend). (B) The largest connected subgraph from panel A considering only literature curated non-coding, directed interactions and including undirected protein interaction connections among the pertinent gene targets.
Figure 2Non-coding RNA network in RA FLS. Literature curated lncRNA-miRNA-gene and circRNA-miRNA-gene axes (green, turquoise, and brown arrows) complemented by physical protein interactions (blue nondirectional lines connecting gene products) showing an interconnected regulatory network of non-coding RNAs in human RA FLS. Node shape represents different molecule types, while gene target color signifies Gene Ontology biological process (as indicated in the legend).