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RNA transcription and degradation of Alu retrotransposons depends on sequence features and evolutionary history
Author(s) -
Till Baar,
Sebastian Dümcke,
Saskia Gressel,
Björn Schwalb,
Alexander Dilthey,
Patrick Cramer,
Achim Tresch
Publication year - 2022
Publication title -
g3 genes genomes genetics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.468
H-Index - 66
ISSN - 2160-1836
DOI - 10.1093/g3journal/jkac054
Subject(s) - biology , retrotransposon , alu element , genetics , rna , intron , transcription (linguistics) , rna polymerase iii , gene , rna editing , rna polymerase ii , computational biology , genome , gene expression , rna polymerase , human genome , promoter , transposable element , linguistics , philosophy
Alu elements are one of the most successful groups of RNA retrotransposons and make up 11% of the human genome with over 1 million individual loci. They are linked to genetic defects, increases in sequence diversity, and influence transcriptional activity. Still, their RNA metabolism is poorly understood yet. It is even unclear whether Alu elements are mostly transcribed by RNA Polymerase II or III. We have conducted a transcription shutoff experiment by α-amanitin and metabolic RNA labeling by 4-thiouridine combined with RNA fragmentation (TT-seq) and RNA-seq to shed further light on the origin and life cycle of Alu transcripts. We find that Alu RNAs are more stable than previously thought and seem to originate in part from RNA Polymerase II activity, as previous reports suggest. Their expression however seems to be independent of the transcriptional activity of adjacent genes. Furthermore, we have developed a novel statistical test for detecting the expression of quantitative trait loci in Alu elements that relies on the de Bruijn graph representation of all Alu sequences. It controls for both statistical significance and biological relevance using a tuned k-mer representation, discovering influential sequence features missed by regular motif search. In addition, we discover several point mutations using a generalized linear model, and motifs of interest, which also match transcription factor-binding motifs.

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