Quantification of experimentally induced nucleotide conversions in high-throughput sequencing datasets

Título

Quantification of experimentally induced nucleotide conversions in high-throughput sequencing datasets

Autor

Tobias Neumann, Veronika A. Herzog, Matthias Muhar, Arndt von Haeseler, Johannes Zuber, Stefan L. Ameres, Philipp Rescheneder

Descripción

Abstract Background Methods to read out naturally occurring or experimentally introduced nucleic acid modifications are emerging as powerful tools to study dynamic cellular processes. The recovery, quantification and interpretation of such events in high-throughput sequencing datasets demands specialized bioinformatics approaches. Results Here, we present Digital Unmasking of Nucleotide conversions in K-mers (DUNK), a data analysis pipeline enabling the quantification of nucleotide conversions in high-throughput sequencing datasets. We demonstrate using experimentally generated and simulated datasets that DUNK allows constant mapping rates irrespective of nucleotide-conversion rates, promotes the recovery of multimapping reads and employs Single Nucleotide Polymorphism (SNP) masking to uncouple true SNPs from nucleotide conversions to facilitate a robust and sensitive quantification of nucleotide-conversions. As a first application, we implement this strategy as SLAM-DUNK for the analysis of SLAMseq profiles, in which 4-thiouridine-labeled transcripts are detected based on T > C conversions. SLAM-DUNK provides both raw counts of nucleotide-conversion containing reads as well as a base-content and read coverage normalized approach for estimating the fractions of labeled transcripts as readout. Conclusion Beyond providing a readily accessible tool for analyzing SLAMseq and related time-resolved RNA sequencing methods (TimeLapse-seq, TUC-seq), DUNK establishes a broadly applicable strategy for quantifying nucleotide conversions.

Fecha

2019

Materia

mapping, epitranscriptomics, Next-generation sequencing, high-throughput sequencing

Identificador

DOI: 10.1186/s12859-019-2849-7

Fuente

BMC Bioinformatics

Editor

BMC

Cobertura

Biology (General), Computer applications to medicine. Medical informatics

Idioma

EN

Archivos

https://socictopen.socict.org/files/to_import/pdfs/article 2061.pdf

Colección

Citación

Tobias Neumann, Veronika A. Herzog, Matthias Muhar, Arndt von Haeseler, Johannes Zuber, Stefan L. Ameres, Philipp Rescheneder, “Quantification of experimentally induced nucleotide conversions in high-throughput sequencing datasets,” SOCICT Open, consulta 18 de abril de 2026, https://www.socictopen.socict.org/items/show/2007.

Formatos de Salida

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