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Genome-wide signatures of convergent evolution in echolocating mammals

Genome-wide signatures of convergent evolution in echolocating mammals
Genome-wide signatures of convergent evolution in echolocating mammals
Evolution is typically thought to proceed through divergence of genes, proteins and ultimately phenotypes1,2,3. However, similar traits might also evolve convergently in unrelated taxa owing to similar selection pressures4,5. Adaptive phenotypic convergence is widespread in nature, and recent results from several genes have suggested that this phenomenon is powerful enough to also drive recurrent evolution at the sequence level6,7,8,9. Where homoplasious substitutions do occur these have long been considered the result of neutral processes. However, recent studies have demonstrated that adaptive convergent sequence evolution can be detected in vertebrates using statistical methods that model parallel evolution9,10, although the extent to which sequence convergence between genera occurs across genomes is unknown. Here we analyse genomic sequence data in mammals that have independently evolved echolocation and show that convergence is not a rare process restricted to several loci but is instead widespread, continuously distributed and commonly driven by natural selection acting on a small number of sites per locus. Systematic analyses of convergent sequence evolution in 805,053 amino acids within 2,326 orthologous coding gene sequences compared across 22 mammals (including four newly sequenced bat genomes) revealed signatures consistent with convergence in nearly 200 loci. Strong and significant support for convergence among bats and the bottlenose dolphin was seen in numerous genes linked to hearing or deafness, consistent with an involvement in echolocation. Unexpectedly, we also found convergence in many genes linked to vision: the convergent signal of many sensory genes was robustly correlated with the strength of natural selection. This first attempt to detect genome-wide convergent sequence evolution across divergent taxa reveals the phenomenon to be much more pervasive than previously recognized.
0028-0836
228–231
Parker, Joe
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Tsagkogeorga, Georgia
23025c13-047b-49d5-99fc-8bc184a5c375
Cotton, James A.
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Liu, Yuan
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Provero, Paolo
00a40ea5-cdb6-41f7-adba-b89ca5154e9d
Stupka, Elia
03fd8179-6b7b-4602-8556-976169046d2f
Rossiter, Stephen J.
40bd064c-6b33-4f9e-abf8-023c5c17a9ac
Parker, Joe
979fbb42-5897-4fbe-a32e-06793f9f99ed
Tsagkogeorga, Georgia
23025c13-047b-49d5-99fc-8bc184a5c375
Cotton, James A.
2a80a7b9-b59f-49ba-8101-c2746999c20c
Liu, Yuan
bdd8735b-af17-4a2b-8b58-3b90e6e748da
Provero, Paolo
00a40ea5-cdb6-41f7-adba-b89ca5154e9d
Stupka, Elia
03fd8179-6b7b-4602-8556-976169046d2f
Rossiter, Stephen J.
40bd064c-6b33-4f9e-abf8-023c5c17a9ac

Parker, Joe, Tsagkogeorga, Georgia, Cotton, James A., Liu, Yuan, Provero, Paolo, Stupka, Elia and Rossiter, Stephen J. (2013) Genome-wide signatures of convergent evolution in echolocating mammals. Nature, 502, 228–231. (doi:10.1038/nature12511).

Record type: Article

Abstract

Evolution is typically thought to proceed through divergence of genes, proteins and ultimately phenotypes1,2,3. However, similar traits might also evolve convergently in unrelated taxa owing to similar selection pressures4,5. Adaptive phenotypic convergence is widespread in nature, and recent results from several genes have suggested that this phenomenon is powerful enough to also drive recurrent evolution at the sequence level6,7,8,9. Where homoplasious substitutions do occur these have long been considered the result of neutral processes. However, recent studies have demonstrated that adaptive convergent sequence evolution can be detected in vertebrates using statistical methods that model parallel evolution9,10, although the extent to which sequence convergence between genera occurs across genomes is unknown. Here we analyse genomic sequence data in mammals that have independently evolved echolocation and show that convergence is not a rare process restricted to several loci but is instead widespread, continuously distributed and commonly driven by natural selection acting on a small number of sites per locus. Systematic analyses of convergent sequence evolution in 805,053 amino acids within 2,326 orthologous coding gene sequences compared across 22 mammals (including four newly sequenced bat genomes) revealed signatures consistent with convergence in nearly 200 loci. Strong and significant support for convergence among bats and the bottlenose dolphin was seen in numerous genes linked to hearing or deafness, consistent with an involvement in echolocation. Unexpectedly, we also found convergence in many genes linked to vision: the convergent signal of many sensory genes was robustly correlated with the strength of natural selection. This first attempt to detect genome-wide convergent sequence evolution across divergent taxa reveals the phenomenon to be much more pervasive than previously recognized.

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Accepted/In Press date: 30 July 2013
Published date: 4 September 2013

Identifiers

Local EPrints ID: 480606
URI: http://eprints.soton.ac.uk/id/eprint/480606
ISSN: 0028-0836
PURE UUID: d37071ad-28ee-4f5a-aef2-74d8c0ae2e4d
ORCID for Joe Parker: ORCID iD orcid.org/0000-0003-3777-2269

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Date deposited: 07 Aug 2023 16:49
Last modified: 18 Mar 2024 03:50

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Contributors

Author: Joe Parker ORCID iD
Author: Georgia Tsagkogeorga
Author: James A. Cotton
Author: Yuan Liu
Author: Paolo Provero
Author: Elia Stupka
Author: Stephen J. Rossiter

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