DeNoFo: a file format and toolkit for standardized, comparable de novo gene annotationOpen Access

Dohmen, Elias; Aubel, Margaux; Eicholt A, Lars; Roginski, Paul; Luria, Victor; Karger Amir; Grandchamp, Anna

Research article (journal) | Peer reviewed

Abstract

Motivation De novo genes emerge from previously non-coding regions of the genome, challenging the traditional view that new genes primarily arise through duplication and adaptation of existing ones. Characterized by their rapid evolution and their novel structural properties or functional roles, de novo genes represent a young area of research. Therefore, the field currently lacks established standards and methodologies, leading to inconsistent terminology and challenges in comparing and reproducing results. Results This work presents a standardized annotation format to document the methodology of de novo gene datasets in a reproducible way. We developed DeNoFo, a toolkit to provide easy access to this format that simplifies annotation of datasets and facilitates comparison across studies. Unifying the different protocols and methods in one standardized format, while providing integration into established file formats, such as fasta or gff, ensures comparability of studies and advances new insights in this rapidly evolving field. Availability and implementation DeNoFo is available through the official Python Package Index (PyPI) and at https://github.com/EDohmen/denofo. All tools have a graphical user interface and a command line interface. The toolkit is implemented in Python3, available for all major platforms and installable with pip and uv.

Details about the publication

JournalBioinformatics
Volume41
Issue10
StatusPublished
Release year2025 (06/10/2025)
Language in which the publication is writtenEnglish
DOI10.1093/bioinformatics/btaf539
Link to the full texthttps://doi.org/10.1093/bioinformatics/btaf539
Keywordsde novo gene emergence, reproducibility, annotation format, comparability, tool development

Authors from the University of Münster

Aubel, Margaux
Research Group Evolutionary Bioinformatics
Dohmen, Elias
Research Group Evolutionary Bioinformatics
Eicholt, Lars Albert
Research Group Evolutionary Bioinformatics
Grandchamp, Anna
Research Group Evolutionary Bioinformatics