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HRIBO: High-throughput Analysis of Bacterial Ribosome Profiling Data

Overview
Journal Bioinformatics
Specialty Biology
Date 2020 Nov 11
PMID 33175953
Citations 9
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Abstract

Motivation: Ribosome profiling (Ribo-seq) is a powerful approach based on deep sequencing of cDNA libraries generated from ribosome-protected RNA fragments to explore the translatome of a cell, and is especially useful for the detection of small proteins (50-100 amino acids) that are recalcitrant to many standard biochemical and in silico approaches. While pipelines are available to analyze Ribo-seq data, none are designed explicitly for the automatic processing and analysis of data from bacteria, nor are they focused on the discovery of unannotated open reading frames (ORFs).

Results: We present HRIBO (High-throughput annotation by Ribo-seq), a workflow to enable reproducible and high-throughput analysis of bacterial Ribo-seq data. The workflow performs all required pre-processing and quality control steps. Importantly, HRIBO outputs annotation-independent ORF predictions based on two complementary bacteria-focused tools, and integrates them with additional feature information and expression values. This facilitates the rapid and high-confidence discovery of novel ORFs and their prioritization for functional characterization.

Availability And Implementation: HRIBO is a free and open source project available under the GPL-3 license at: https://github.com/RickGelhausen/HRIBO.

Citing Articles

How Small Proteins Adjust the Metabolism of Cyanobacteria Under Stress: The Role of Small Proteins in Cyanobacterial Stress Responses.

Kraus A, Hess W Bioessays. 2024; 47(3):e202400245.

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Uncovering the small proteome of Methanosarcina mazei using Ribo-seq and peptidomics under different nitrogen conditions.

Tufail M, Jordan B, Hadjeras L, Gelhausen R, Cassidy L, Habenicht T Nat Commun. 2024; 15(1):8659.

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A review of Ribosome profiling and tools used in Ribo-seq data analysis.

Limbu M, Xiong T, Wang S Comput Struct Biotechnol J. 2024; 23:1912-1918.

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Characterization of the zinc finger μ-protein HVO_0758 from : biological roles, zinc binding, and NMR solution structure.

Uresin D, Pyper D, Borst A, Hadjeras L, Gelhausen R, Backofen R Front Microbiol. 2023; 14:1280972.

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Ribosome profiling reveals the fine-tuned response of to mild and severe acid stress.

Schumacher K, Gelhausen R, Kion-Crosby W, Barquist L, Backofen R, Jung K mSystems. 2023; 8(6):e0103723.

PMID: 37909716 PMC: 10746267. DOI: 10.1128/msystems.01037-23.


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