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Next-generation phenomics for the Tree of Life.

Authors :
Burleigh JG
Alphonse K
Alverson AJ
Bik HM
Blank C
Cirranello AL
Cui H
Daly M
Dietterich TG
Gasparich G
Irvine J
Julius M
Kaufman S
Law E
Liu J
Moore L
O'Leary MA
Passarotti M
Ranade S
Simmons NB
Stevenson DW
Thacker RW
Theriot EC
Todorovic S
Velazco PM
Walls RL
Wolfe JM
Yu M
Source :
PLoS currents [PLoS Curr] 2013 Jun 26; Vol. 5. Date of Electronic Publication: 2013 Jun 26.
Publication Year :
2013

Abstract

The phenotype represents a critical interface between the genome and the environment in which organisms live and evolve. Phenotypic characters also are a rich source of biodiversity data for tree building, and they enable scientists to reconstruct the evolutionary history of organisms, including most fossil taxa, for which genetic data are unavailable. Therefore, phenotypic data are necessary for building a comprehensive Tree of Life. In contrast to recent advances in molecular sequencing, which has become faster and cheaper through recent technological advances, phenotypic data collection remains often prohibitively slow and expensive. The next-generation phenomics project is a collaborative, multidisciplinary effort to leverage advances in image analysis, crowdsourcing, and natural language processing to develop and implement novel approaches for discovering and scoring the phenome, the collection of phentotypic characters for a species. This research represents a new approach to data collection that has the potential to transform phylogenetics research and to enable rapid advances in constructing the Tree of Life. Our goal is to assemble large phenomic datasets built using new methods and to provide the public and scientific community with tools for phenomic data assembly that will enable rapid and automated study of phenotypes across the Tree of Life.

Details

Language :
English
ISSN :
2157-3999
Volume :
5
Database :
MEDLINE
Journal :
PLoS currents
Publication Type :
Academic Journal
Accession number :
23827969
Full Text :
https://doi.org/10.1371/currents.tol.085c713acafc8711b2ff7010a4b03733