Article, 2024

Computational Methods for Functional Characterization of lncRNAS in Human Diseases: A Focus on Co-Expression Networks

Current Bioinformatics, ISSN 1574-8936, 2212-392X, Volume 19, 1, Pages 21-38, 10.2174/1574893618666230727103257

Contributors

Jha, Prabhash Kumar (Corresponding author) [1] [2] Barbeiro, Miguel Cantadori 0000-0002-8856-4235 (Corresponding author) [1] [2] Lupieri, Adrien 0000-0002-9245-0169 [1] [2] Aikawa, Elena Rabkin 0000-0001-7835-2135 [1] [2] Uchida, Shizuka 0000-0003-4787-8067 [3] Aikawa, Masanori 0000-0002-9275-2079 (Corresponding author) [1] [2]

Affiliations

  1. [1] Brigham and Women's Hospital
  2. [NORA names: United States; America, North; OECD];
  3. [2] Harvard University
  4. [NORA names: United States; America, North; OECD];
  5. [3] Aalborg University
  6. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD]

Abstract

Abstract: Treatment of many human diseases involves small-molecule drugs.Some target proteins, however, are not druggable with traditional strategies. Innovative RNA-targeted therapeutics may overcome such a challenge. Long noncoding RNAs (lncRNAs) are transcribed RNAs that do not translate into proteins. Their ability to interact with DNA, RNA, microRNAs (miRNAs), and proteins makes them an interesting target for regulating gene expression and signaling pathways.In the past decade, a catalog of lncRNAs has been studied in several human diseases. One of the challenges with lncRNA studies include their lack of coding potential, making, it difficult to characterize them in wet-lab experiments functionally. Several computational tools have thus been designed to characterize functions of lncRNAs centered around lncRNA interaction with proteins and RNA, especially miRNAs. This review comprehensively summarizes the methods and tools for lncRNA-RNA interactions and lncRNA-protein interaction prediction.We discuss the tools related to lncRNA interaction prediction using commonlyused models: ensemble-based, machine-learning-based, molecular-docking and network-based computational models. In biology, two or more genes co-expressed tend to have similar functions. Coexpression network analysis is, therefore, one of the most widely-used methods for understanding the function of lncRNAs. A major focus of our study is to compile literature related to the functional prediction of lncRNAs in human diseases using co-expression network analysis. In summary, this article provides relevant information on the use of appropriate computational tools for the functional characterization of lncRNAs that help wet-lab researchers design mechanistic and functional experiments.

Keywords

DNA, RNA, RNA-targeted therapeutics, analysis, article, biology, catalog, catalog of lncRNAs, characterization, characterization of lncRNAs, co-expression, co-expression network, co-expression network analysis, coexpression, coexpression network analysis, computational methods, computational tools, computer, disease, drug, ensemble-based, experiments, expression, focus, function, function of lncRNAs, function prediction, functional characterization, functional characterization of lncRNAs, functional experiments, functions of lncRNAs, gene co-expression, gene expression, genes, human diseases, humans, information, interaction, interaction prediction, lack, lack of coding potential, literature, lncRNA interactions, lncRNA studies, lncRNAs, long noncoding RNAs, machine-learning-based, method, miRNAs, microRNAs, model, molecular docking, network, network analysis, noncoding RNAs, pathway, potential, prediction, prediction of lncRNAs, protein, regulate gene expression, relevant information, research, review, signal, signaling pathway, small molecule drugs, strategies, study, target, target proteins, therapeutics, tools, traditional strategies, transcribed RNA, treatment

Funders

  • National Heart Lung and Blood Institute

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