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Identification of clustered microRNAs using an ab initio prediction method

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TLDR
This work describes a computational method for miRNA prediction and the results of its application to the discovery of novel mammalian miRNAs, and shows that although the overall miRNA content in the observed clusters is very similar across the three considered species, the internal organization of the clusters changes in evolution.
Abstract
MicroRNAs (miRNAs) are endogenous 21 to 23-nucleotide RNA molecules that regulate protein-coding gene expression in plants and animals via the RNA interference pathway. Hundreds of them have been identified in the last five years and very recent works indicate that their total number is still larger. Therefore miRNAs gene discovery remains an important aspect of understanding this new and still widely unknown regulation mechanism. Bioinformatics approaches have proved to be very useful toward this goal by guiding the experimental investigations. In this work we describe our computational method for miRNA prediction and the results of its application to the discovery of novel mammalian miRNAs. We focus on genomic regions around already known miRNAs, in order to exploit the property that miRNAs are occasionally found in clusters. Starting with the known human, mouse and rat miRNAs we analyze 20 kb of flanking genomic regions for the presence of putative precursor miRNAs (pre-miRNAs). Each genome is analyzed separately, allowing us to study the species-specific identity and genome organization of miRNA loci. We only use cross-species comparisons to make conservative estimates of the number of novel miRNAs. Our ab initio method predicts between fifty and hundred novel pre-miRNAs for each of the considered species. Around 30% of these already have experimental support in a large set of cloned mammalian small RNAs. The validation rate among predicted cases that are conserved in at least one other species is higher, about 60%, and many of them have not been detected by prediction methods that used cross-species comparisons. A large fraction of the experimentally confirmed predictions correspond to an imprinted locus residing on chromosome 14 in human, 12 in mouse and 6 in rat. Our computational tool can be accessed on the world-wide-web. Our results show that the assumption that many miRNAs occur in clusters is fruitful for the discovery of novel miRNAs. Additionally we show that although the overall miRNA content in the observed clusters is very similar across the three considered species, the internal organization of the clusters changes in evolution.

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Journal ArticleDOI

Exosomal cell-to-cell transmission of alpha synuclein oligomers

TL;DR: The data suggest that αsyn may be secreted via different secretory pathways, and hypothesize that exosome-mediated release of αsyn oligomers is a mechanism whereby cells clear toxic α synuclein oligomers when autophagic mechanisms fail to be sufficient.
Journal ArticleDOI

MiPred: classification of real and pseudo microRNA precursors using random forest prediction model with combined features.

TL;DR: The results suggest that the RF method predicts at 98.21% specificity and 95.09% sensitivity, which is nearly 10% greater in total accuracy than the previous study, Triplet-SVM-classifier, which indicated that the improvement was due to both the combined features and the RF algorithm.
Journal ArticleDOI

Approaches to microRNA discovery

TL;DR: Current methods for identifying and validating miRNAs are summarized and criteria used to define an miRNA are discussed.
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Integration of microRNA miR-122 in hepatic circadian gene expression.

TL;DR: It is shown that rhythmic transcription extends to the locus specifying miR-122, a highly abundant, hepatocyte-specific microRNA, and the identification of Pparbeta/delta and the peroxisome proliferator-activated receptor alpha (PPARalpha) coactivator Smarcd1/Baf60a as novel miR,122 targets suggests an involvement of the circadian metabolic regulators of the PPAR family in miR -122-mediated metabolic control.
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The miR-15/107 group of microRNA genes: evolutionary biology, cellular functions, and roles in human diseases.

TL;DR: The miR-15/107 group of microRNA genes is a fascinating topic of study for evolutionary biologists, miRNA biochemists, and clinically oriented translational researchers alike and the roles played by these miRNAs in human diseases are investigated.
References
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Journal ArticleDOI

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TL;DR: Although they escaped notice until relatively recently, miRNAs comprise one of the more abundant classes of gene regulatory molecules in multicellular organisms and likely influence the output of many protein-coding genes.
Journal ArticleDOI

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The functions of animal microRNAs

TL;DR: Evidence is mounting that animal miRNAs are more numerous, and their regulatory impact more pervasive, than was previously suspected.
Journal ArticleDOI

MicroRNAs: small RNAs with a big role in gene regulation

TL;DR: Two founding members of the microRNA family were originally identified in Caenorhabditis elegans as genes that were required for the timed regulation of developmental events and indicate the existence of multiple RISCs that carry out related but specific biological functions.
Proceedings ArticleDOI

Advances in kernel methods: support vector learning

TL;DR: Support vector machines for dynamic reconstruction of a chaotic system, Klaus-Robert Muller et al pairwise classification and support vector machines, Ulrich Kressel.
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