QS-Net: Reconstructing Phylogenetic Networks Based on Quartet and Sextet

Tan, Ming and Long, Haixia and Liao, Bo and Cao, Zhi and Yuan, Dawei and Tian, Geng and Zhuang, Jujuan and Yang, Jialiang (2019) QS-Net: Reconstructing Phylogenetic Networks Based on Quartet and Sextet. Frontiers in Genetics, 10. ISSN 1664-8021

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Abstract

Phylogenetic networks are used to estimate evolutionary relationships among biological entities or taxa involving reticulate events such as horizontal gene transfer, hybridization, recombination, and reassortment. In the past decade, many phylogenetic tree and network reconstruction methods have been proposed. Despite that they are highly accurate in reconstructing simple to moderate complex reticulate events, the performance decreases when several reticulate events are present simultaneously. In this paper, we proposed QS-Net, a phylogenetic network reconstruction method taking advantage of information on the relationship among six taxa. To evaluate the performance of QS-Net, we conducted experiments on three artificial sequence data simulated from an evolutionary tree, an evolutionary network involving three reticulate events, and a complex evolutionary network involving five reticulate events. Comparison with popular phylogenetic methods including Neighbor-Joining, Split-Decomposition, Neighbor-Net, and Quartet-Net suggests that QS-Net is comparable with other methods in reconstructing tree-like evolutionary histories, while it outperforms them in reconstructing reticulate events. In addition, we also applied QS-Net in real data including a bacterial taxonomy data consisting of 36 bacterial species and the whole genome sequences of 22 H7N9 influenza A viruses. The results indicate that QS-Net is capable of inferring commonly believed bacterial taxonomy and influenza evolution as well as identifying novel reticulate events. The software QS-Net is publically available at https://github.com/Tmyiri/QS-Net.

Item Type: Article
Subjects: GO STM Archive > Medical Science
Depositing User: Unnamed user with email support@gostmarchive.com
Date Deposited: 08 Feb 2023 08:27
Last Modified: 23 May 2024 06:57
URI: http://journal.openarchivescholar.com/id/eprint/258

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