Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Robust methods for detecting convergent shifts in evolutionary rates

View through CrossRef
AbstractIdentifying genomic elements underlying phenotypic adaptations is an important problem in evolutionary biology. Comparative analyses learning from convergent evolution of traits are gaining momentum in accurately detecting such elements. We previously developed a method for predicting phenotypic associations of genetic elements by contrasting patterns of sequence evolution in species showing a phenotype with those that do not. Using this method, we successfully demonstrated convergent evolutionary rate shifts in genetic elements associated with two phenotypic adaptations, namely the independent subterranean and marine transitions of terrestrial mammalian lineages. Our method calculates gene-specific rates of evolution on branches of phylogenetic trees using linear regression. These rates represent the extent of sequence divergence on a branch after removing the expected divergence on the branch due to background factors. The rates calculated using this regression analysis exhibit an important statistical limitation, namely heteroscedasticity. We observe that the rates on branches that are longer on average show higher variance, and describe how this problem adversely affects the confidence with which we can make inferences about rate shifts. Using a combination of data transformation and weighted regression, we have developed an updated method that corrects this heteroscedasticity in the rates. We additionally illustrate the improved performance offered by the updated method at robust detection of convergent rate shifts in phylogenetic trees of protein-coding genes across mammals, as well as using simulated tree datasets. Overall, we present an important extension to our evolutionary-rates-based method that performs more robustly and consistently at detecting convergent shifts in evolutionary rates.
Title: Robust methods for detecting convergent shifts in evolutionary rates
Description:
AbstractIdentifying genomic elements underlying phenotypic adaptations is an important problem in evolutionary biology.
Comparative analyses learning from convergent evolution of traits are gaining momentum in accurately detecting such elements.
We previously developed a method for predicting phenotypic associations of genetic elements by contrasting patterns of sequence evolution in species showing a phenotype with those that do not.
Using this method, we successfully demonstrated convergent evolutionary rate shifts in genetic elements associated with two phenotypic adaptations, namely the independent subterranean and marine transitions of terrestrial mammalian lineages.
Our method calculates gene-specific rates of evolution on branches of phylogenetic trees using linear regression.
These rates represent the extent of sequence divergence on a branch after removing the expected divergence on the branch due to background factors.
The rates calculated using this regression analysis exhibit an important statistical limitation, namely heteroscedasticity.
We observe that the rates on branches that are longer on average show higher variance, and describe how this problem adversely affects the confidence with which we can make inferences about rate shifts.
Using a combination of data transformation and weighted regression, we have developed an updated method that corrects this heteroscedasticity in the rates.
We additionally illustrate the improved performance offered by the updated method at robust detection of convergent rate shifts in phylogenetic trees of protein-coding genes across mammals, as well as using simulated tree datasets.
Overall, we present an important extension to our evolutionary-rates-based method that performs more robustly and consistently at detecting convergent shifts in evolutionary rates.

Related Results

Evolution and the cell
Evolution and the cell
Genotype to phenotype, and back again Evolution is intimately linked to biology at the cellular scale- evolutionary processes act on the very genetic material that is carried and ...
Convergent Evolution
Convergent Evolution
An analysis of convergent evolution from molecules to ecosystems, demonstrating the limited number of evolutionary pathways available to life. Charles Darwin famousl...
Convergent transcriptomic and genomic adaptation in xeric rodents
Convergent transcriptomic and genomic adaptation in xeric rodents
ABSTRACTRepeated adaptations rely in part on convergent genetic changes. The extent of convergent changes at the genomic scale is debated and may depend on the interplay between di...
Summaries, Analysis and Simulations of Recent COVID-19 Epidemic in Mainland China During December 31 2021-December 6 2022
Summaries, Analysis and Simulations of Recent COVID-19 Epidemic in Mainland China During December 31 2021-December 6 2022
AbstractBackgroundThe recent COVID-19 epidemic in mainland China is an important issue for studying the prevention and disease control measures and the spread of the COVID-19 epide...
Evolutionary Biomechanics
Evolutionary Biomechanics
Life has diversified on Earth in many stunning ways. Understanding how this diversity arose and has been maintained is a common interest for many evolutionary biologists. One appro...
Evolutionary Medicine
Evolutionary Medicine
Abstract Evolutionary medicine is a fast‐growing research field providing biomedical scientists with evolutionary perspective for the comprehens...
Evolution of Antimicrobial Resistance in Community vs. Hospital-Acquired Infections
Evolution of Antimicrobial Resistance in Community vs. Hospital-Acquired Infections
Abstract Introduction Hospitals are high-risk environments for infections. Despite the global recognition of these pathogens, few studies compare microorganisms from community-acqu...
Complementary evolution of coding and noncoding sequence underlies mammalian hairlessness
Complementary evolution of coding and noncoding sequence underlies mammalian hairlessness
AbstractBody hair is a defining mammalian characteristic, but several mammals, such as whales, naked mole-rats, and humans, have notably less hair than others. To find the genetic ...

Back to Top