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Database Commons

a catalog of worldwide biological databases

Database Profile

General information

URL: https://www.smallrnagroup.uni-mainz.de/piRNAclusterDB
Full name: piRNA cluster database
Description: piRNA cluster database provides comprehensive data on piRNA clusters in multiple species, tissues and developmental stages based on small RNA sequence data deposited at NCBI's Sequence Read Archive (SRA). The new version provides a major update for the piRNA cluster database, expands it from 12 to a total of 51 species with hundreds of new datasets, and revises its overall structure to enable easy navigation through this large amount of data.
Year founded: 2012
Last update: 2021
Version: v2.0
Accessibility:
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Country/Region: Germany

Classification & Tag

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Contact information

University/Institution: Johannes Gutenberg University
Address: Mainz 55099, Germany
City: Mainz
Province/State:
Country/Region: Germany
Contact name (PI/Team): David Rosenkranz
Contact email (PI/Helpdesk): rosenkranz@uni-mainz.de

Publications

34302483
piRNAclusterDB 2.0: update and expansion of the piRNA cluster database. [PMID: 34302483]
Rosenkranz D, Zischler H, Gebert D.

PIWI-interacting RNAs (piRNAs) and their partnering PIWI proteins defend the animal germline against transposable elements and play a crucial role in fertility. Numerous studies in the past have uncovered many additional functions of the piRNA pathway, including gene regulation, anti-viral defense, and somatic transposon repression. Further, comparative analyses across phylogenetic groups showed that the PIWI/piRNA system evolves rapidly and exhibits great evolutionary plasticity. However, the presence of so-called piRNA clusters as the major source of piRNAs is common to nearly all metazoan species. These genomic piRNA-producing loci are highly divergent across taxa and critically influence piRNA populations in different evolutionary lineages. We launched the initial version of the piRNA cluster database to facilitate research on regulation and evolution of piRNA-producing loci across tissues und species. In recent years the amount of small RNA sequencing data that was generated and the abundance of species that were studied has grown rapidly. To keep up with this recent progress, we have released a major update for the piRNA cluster database (https://www.smallrnagroup.uni-mainz.de/piRNAclusterDB), expanding it from 12 to a total of 51 species with hundreds of new datasets, and revised its overall structure to enable easy navigation through this large amount of data.

Nucleic Acids Res. 2022:50(D1) | 10 Citations (from Europe PMC, 2024-04-20)
26582915
piRNA cluster database: a web resource for piRNA producing loci. [PMID: 26582915]
Rosenkranz D.

Piwi proteins and their guiding small RNAs, termed Piwi-interacting (pi-) RNAs, are essential for silencing of transposons in the germline of animals. A substantial fraction of piRNAs originates from genomic loci termed piRNA clusters and sequences encoded in these piRNA clusters determine putative targets for the Piwi/piRNA system. In the past decade, studies of piRNA transcriptomes in different species revealed additional roles for piRNAs beyond transposon silencing, reflecting the astonishing plasticity of the Piwi/piRNA system along different phylogenetic branches. Moreover, piRNA transcriptomes can change drastically during development and vary across different tissues.Since piRNA clusters crucially shape piRNA profiles, analysis of these loci is imperative for a thorough understanding of functional and evolutionary aspects of the piRNA pathway. But despite the ever-growing amount of available piRNA sequence data, we know little about the factors that determine differential regulation of piRNA clusters, nor the evolutionary events that cause their gain or loss.In order to facilitate addressing these subjects, we established a user-friendly piRNA cluster database (http://www.smallrnagroup-mainz.de/piRNAclusterDB.html) that provides comprehensive data on piRNA clusters in multiple species, tissues and developmental stages based on small RNA sequence data deposited at NCBI's Sequence Read Archive (SRA). © The Author(s) 2015. Published by Oxford University Press on behalf of Nucleic Acids Research.

Nucleic Acids Res. 2016:44(D1) | 59 Citations (from Europe PMC, 2024-04-27)
22233380
proTRAC--a software for probabilistic piRNA cluster detection, visualization and analysis. [PMID: 22233380]
Rosenkranz D, Zischler H.

Throughout the metazoan lineage, typically gonadal expressed Piwi proteins and their guiding piRNAs (~26-32nt in length) form a protective mechanism of RNA interference directed against the propagation of transposable elements (TEs). Most piRNAs are generated from genomic piRNA clusters. Annotation of experimentally obtained piRNAs from small RNA/cDNA-libraries and detection of genomic piRNA clusters are crucial for a thorough understanding of the still enigmatic piRNA pathway, especially in an evolutionary context. Currently, detection of piRNA clusters relies on bioinformatics rather than detection and sequencing of primary piRNA cluster transcripts and the stringency of the methods applied in different studies differs considerably. Additionally, not all important piRNA cluster characteristics were taken into account during bioinformatic processing. Depending on the applied method this can lead to: i) an accidentally underrepresentation of TE related piRNAs, ii) overlook duplicated clusters harboring few or no single-copy loci and iii) false positive annotation of clusters that are in fact just accumulations of multi-copy loci corresponding to frequently mapped reads, but are not transcribed to piRNA precursors. We developed a software which detects and analyses piRNA clusters (proTRAC, probabilistic TRacking and Analysis of Clusters) based on quantifiable deviations from a hypothetical uniform distribution regarding the decisive piRNA cluster characteristics. We used piRNA sequences from human, macaque, mouse and rat to identify piRNA clusters in the respective species with proTRAC and compared the obtained results with piRNA cluster annotation from piRNABank and the results generated by different hitherto applied methods.proTRAC identified clusters not annotated at piRNABank and rejected annotated clusters based on the absence of important features like strand asymmetry. We further show, that proTRAC detects clusters that are passed over if a minimum number of single-copy piRNA loci are required and that proTRAC assigns more sequence reads per cluster since it does not preclude frequently mapped reads from the analysis. With proTRAC we provide a reliable tool for detection, visualization and analysis of piRNA clusters. Detected clusters are well supported by comprehensible probabilistic parameters and retain a maximum amount of information, thus overcoming the present conflict of sensitivity and specificity in piRNA cluster detection.

BMC Bioinformatics. 2012:13() | 93 Citations (from Europe PMC, 2024-04-27)

Ranking

All databases:
768/6000 (87.217%)
Gene genome and annotation:
254/1675 (84.896%)
768
Total Rank
159
Citations
13.25
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Record metadata

Created on: 2016-01-04
Curated by:
Lina Ma [2022-06-30]
[2018-11-28]
Lina Ma [2018-06-12]
Shixiang Sun [2016-04-14]
Shixiang Sun [2016-03-25]
Lin Liu [2016-01-29]
Lin Liu [2016-01-04]