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Orthology inference at scale with FastOMA

Sina Majidian, Yannis Nevers, Ali Yazdizadeh Kharrazi, Alex Warwick Vesztrocy, Stefano Pascarelli, David Moi, Natasha Glover, Adrian Altenhoff, Christophe Dessimoz

2025Nature Methods18 citationsDOIOpen Access PDF

Abstract

The surge in genome data, with ongoing efforts aiming to sequence 1.5 M eukaryotes in a decade, could revolutionize genomics, revealing the origins, evolution and genetic innovations of biological processes. Yet, traditional genomics methods scale poorly with such large datasets. Here, addressing this, 'FastOMA' provides linear scalability for orthology inference, enabling the processing of thousands of eukaryotic genomes within a day. FastOMA maintains the high accuracy and resolution of the well-established Orthologous Matrix (OMA) approach in benchmarks. FastOMA is available via GitHub at https://github.com/DessimozLab/FastOMA/ .

Topics & Concepts

InferenceGenomicsScalabilityComputational biologyGenomeComputer scienceScale (ratio)Data scienceBiologyArtificial intelligenceGeneticsGeneDatabasePhysicsQuantum mechanicsGenomics and Phylogenetic StudiesRNA and protein synthesis mechanismsMachine Learning in Bioinformatics
Orthology inference at scale with FastOMA | Litcius