Orthology and Near-Cographs in the Context of Phylogenetic Networks
Anna Lindeberg, Guillaume E. Scholz, Nicolas Wieseke, Marc Hellmuth

TL;DR
This paper investigates how orthology graphs can be explained by phylogenetic networks, especially level-1 networks, providing characterizations and a linear-time recognition algorithm for such graphs.
Contribution
It characterizes level-1 explainable orthology graphs using near-cographs and introduces a linear-time algorithm for recognition and network construction.
Findings
Any orthology graph can be represented by a level-k network.
Level-1 networks provide biologically meaningful explanations.
A linear-time algorithm recognizes level-1 explainable orthology graphs.
Abstract
Orthologous genes, which arise through speciation, play a key role in comparative genomics and functional inference. In particular, graph-based methods allow for the inference of orthology estimates without prior knowledge of the underlying gene or species trees. This results in orthology graphs, where each vertex represents a gene, and an edge exists between two vertices if the corresponding genes are estimated to be orthologs. Orthology graphs inferred under a tree-like evolutionary model must be cographs. However, real-world data often deviate from this property, either due to noise in the data, errors in inference methods or, simply, because evolution follows a network-like rather than a tree-like process. The latter, in particular, raises the question of whether and how orthology graphs can be derived from or, equivalently, are explained by phylogenetic networks. Here, we study the…
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Taxonomy
TopicsGenome Rearrangement Algorithms
