| Literature DB >> 32563270 |
Katia Grillone1, Caterina Riillo1,2, Francesca Scionti1, Roberta Rocca1,3, Giuseppe Tradigo4, Pietro Hiram Guzzi4, Stefano Alcaro3,5, Maria Teresa Di Martino1,2, Pierosandro Tagliaferri6,7, Pierfrancesco Tassone8,9.
Abstract
The discovery of the role of non-coding RNAs (ncRNAs) in the onset and progression of malignancies is a promising frontier of cancer genetics. It is clear that ncRNAs are candidates for therapeutic intervention, since they may act as biomarkers or key regulators of cancer gene network. Recently, profiling and sequencing of ncRNAs disclosed deep deregulation in human cancers mostly due to aberrant mechanisms of ncRNAs biogenesis, such as amplification, deletion, abnormal epigenetic or transcriptional regulation. Although dysregulated ncRNAs may promote hallmarks of cancer as oncogenes or antagonize them as tumor suppressors, the mechanisms behind these events remain to be clarified. The development of new bioinformatic tools as well as novel molecular technologies is a challenging opportunity to disclose the role of the "dark matter" of the genome. In this review, we focus on currently available platforms, computational analyses and experimental strategies to investigate ncRNAs in cancer. We highlight the differences among experimental approaches aimed to dissect miRNAs and lncRNAs, which are the most studied ncRNAs. These two classes indeed need different investigation taking into account their intrinsic characteristics, such as length, structures and also the interacting molecules. Finally, we discuss the relevance of ncRNAs in clinical practice by considering promises and challenges behind the bench to bedside translation.Entities:
Keywords: Cancer genetics; Long-non coding RNAs; Non-coding RNAs; lncRNAs; miRNAs; microRNAs; ncRNA functions
Mesh:
Substances:
Year: 2020 PMID: 32563270 PMCID: PMC7305591 DOI: 10.1186/s13046-020-01622-x
Source DB: PubMed Journal: J Exp Clin Cancer Res ISSN: 0392-9078
Fig. 1Schematic representation of the approaches discussed in this review for the investigation of the role of ncRNAs in human cancer
Summary table of the most popular databases and tools storing information about micro and long ncRNAs
| DATABASE and TOOLS | BRIEF DESCRIPTION | LINK | AVAILABILITY | PROS (+)/CONS (−) |
|---|---|---|---|---|
| Contains a total of 487.164 lncRNA transcripts and 324.646 lncRNAs genes for 16 different species and allows searching sequences, expression, orthologs, functions and diseases related, to a given input gene or transcript. | PA | (+) High Number of sequences (+) 17 different species (+) Disease Association (+) Simple Analysis (+) High level of manual curation | ||
| Is a web resource for studying lncRNAs in the human genome and currently contains 23.355 lncRNAs with sequences retrieved from Ensembl 65 (GRCH37) | PA | (−) No Analytic potential (−) No recent updates | ||
| Includes 127.802 human lncRNAs transcripts, provides sequence, annotations and manually curated lncRNA articles | PA | (+) Recent Web Interface (+) API Interface for data integration (+) Submission of novel sequences | ||
| Integrates approximately 1000 lncRNAs-to-disease associations, including cancer, obtained using lncRNA -disease prediction tools that compare lncRNA genomic location with the closer gene | PA | (+) Prediction of associations on the basis of user-provided sequences (+) High level of manual curation (+) Submission of novel sequences (−) Web Interface Obsolete | ||
| Is a database of long-noncoding RNAs in eukaryotes storing both raw data about sequence as well as other referenced information such as structural information, genomic context, levels of expression, and functional information | PA | (−) Limited number of sequences (+) Extensive annotation and biological knowledge is provided (+) High level of manual curation | ||
| Expression profiling analysis following lncRNA Knockdown or Overexpression | PA | (−) Limited Scope (−) Obsolete web interface | ||
| Provides comprehensive information on lncRNAs and lncRNA expression data from microarray and In situ Hybridization data | PA | (−) Limited Scope (−) Obsolete web interface | ||
| Contains ncRNA gene annotations in .gtf format and ncRNA transcript sequences in .fasta format. Its goal is the investigation of gene features based on biological evidence | PA | (−) Limited access (only by FTP) (−) Limited Query Capabilities | ||
| Is focused on miRNA-target interaction, including miRNA-lncRNA and protein-lncRNA interaction data | Upon Request | (−) No Simple Access | ||
| Stores functional interactions between ncRNAs and other molecules (DNAs, RNAs and proteins) and is regularly updated with novel interactions coming from manual curation of literature, high throughput screening and in silico predictions. | PA | (+) Regular Updating (+) High level of manual curation | ||
| Is a tool for determining miRNA and lncRNA interaction based on experimental studies and computational prediction | PA | (+) Prediction of Interactions (−) Limited number of stored information on interactions | ||
| Provides comprehensive information about coding and non coding genes | PA | (−) No Analytic Capabilities | ||
| Includes information about somatic mutations in miRNA or miRNA-target site sequences and on biological pathways affected by these alterations | PA | (+) Somatic Information | ||
| Give information about the potential role of miRNAs as cancer biomarker | PA | (+) Highly Tailored for cancer (−) No information for other diseases | ||
| Contain data about miRNA-cancer association obtained through data mining | PA | (+) Highly Tailored for cancer (−) No information for other diseases | ||
| Includes published miRNA sequence and annotation, available for download | PA | (+) Highly Tailored for cancer (−) No information for other diseases | ||
| Provides information about miRNA-target interaction | PA | (+) High potential for custom analysis | ||
| microRNA target prediction tools | PA | (−) Limited Analysis | ||
| PA | (+) High potential for custom analysis | |||
| PA | (+) Possibility of downloading and use in local for batch analysis | |||
| PA | (+) High potential for custom analysis | |||
| microRNA deep sequencing tools | PA | (−) Not user friendy (−) Requires programming skills (−) No recent updates | ||
| PA | (−) Not user friendy (−) Requires programming skills - No recent updates |
PA Public Available
Fig. 2Three of the most important models required for the development of algorithms predicting 2D ncRNAs: Minimal Folding Energy (MFE), Hidden Markov Model (HMM) and Stochastic Context Free Grammar (SCFG)
Fig. 3Possible application of computational biology prediction starting from lncRNAs 3D structure
Summary table of methods that have been developed to globally investigate ncRNAs conformation, relative activity of sites undergoing transcription, or half-life
| TECHNIQUE | BRIEF DESCRIPTION | REF. |
|---|---|---|
| SHAPE (Selective 20-hydroxyl analysed by primer extension) | Is a technique to unravel the secondary structure of lncRNAs | [ |
| PARS (Parallel analysis of RNA structure) | Is a methods able to explore changes in lncRNAs structurome that can occurs in carcinogenesis, recently implemented with the Illumina platform (nextPARS) to provide results with higher throughput and sample multiplexing | [ |
| Frag-Seq (Fragmentation sequencing) | Is an assay for probing RNA structure at transcriptome-wide level by combining RNA-seq and tools determining nuclease accessibility at single base resolution | [ |
| ICE-seq (Inosine chemical erasing sequencing) | Is an approach able to reveal the deregulation that may occur in A-to-I editing of lncRNAs in cancer allowing relevant effect on their secondary structure and then, on the interaction with other RNA molecules | [ |
| BRIC-seq (50-bromo-uridine immunoprecipitation chase–deep sequencing) | Is a method that determine precise RNA half life into cells in physiological and pathological conditions | [ |
| FISSEQ (Fluorescent in situ sequencing) | Is a method, based on SOLiD sequencing, revealing spatial changes in lncRNAs during cancer | [ |
| Gro-seq (Global run-on assay sequencing) | Is an NGS-based method that provide information about location, orientation and density of RNAs undergoing active transcription by RNA pol II. | [ |