Orthology prediction methods: A quality assessment using curated protein families

Kalliopi Trachana(European Molecular Biology Laboratory), Tomas Larsson(European Molecular Biology Laboratory), Sean Powell(European Molecular Biology Laboratory), Wei‐Hua Chen(European Molecular Biology Laboratory), Tobias Doerks(European Molecular Biology Laboratory), Jean Muller(Centre National de la Recherche Scientifique), Peer Bork(Max Delbrück Center)
BioEssays
August 19, 2011
Cited by 151Open Access
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Abstract

The increasing number of sequenced genomes has prompted the development of several automated orthology prediction methods. Tests to evaluate the accuracy of predictions and to explore biases caused by biological and technical factors are therefore required. We used 70 manually curated families to analyze the performance of five public methods in Metazoa. We analyzed the strengths and weaknesses of the methods and quantified the impact of biological and technical challenges. From the latter part of the analysis, genome annotation emerged as the largest single influencer, affecting up to 30% of the performance. Generally, most methods did well in assigning orthologous group but they failed to assign the exact number of genes for half of the groups. The publicly available benchmark set (http://eggnog.embl.de/orthobench/) should facilitate the improvement of current orthology assignment protocols, which is of utmost importance for many fields of biology and should be tackled by a broad scientific community.


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