Professor Jeffrey L. Thorne
Jeffrey L. Thorne, Ph.D. is Professor of Genetics and Statistics,
Bioinformatics Research Center, North Carolina State
University. He is on the Editorial Boards of
Evolutionary Bioinformatics,
Journal of Experimental Zoology-B: Molecular and Developmental
Evolution,
Molecular Biology and Evolution, and
Systematic Biology.
Jeff studies evolution. He does this by developing
statistical techniques for analyzing DNA and protein sequence data. His
main efforts concern:
(1) Improving probabilistic models of DNA sequence evolution by
incorporating phenotype and reconciling these models with population
genetics
The relationship between phenotype and survival of the genotype is
central to both genetics and evolution. The field of population
genetics has a rich body of theory for explaining how within-species
genetic variation is shaped by fitness, mutation, recombination,
population size, and population structure. However, this theory does
not purport to map genotypes to phenotypes nor does it map phenotypes to
fitness. A wide variety of computational biology schemes aim to predict
phenotype from genotype.
He is working to improve models
of molecular
evolution by incorporating these computational biology prediction
systems. He has concentrated on protein tertiary structure and RNA
secondary structure, but is very excited by the potential to quantify
the impacts on evolution of diverse other aspects of phenotype. Rather
than designing his statistical techniques exclusively for understanding
within-species genetic variation, he has been attempting to apply
population genetic theory to data sets representing sequences from
different species. This is a challenging endeavor but a paucity of
intraspecific genetic variation means that many of the most important
evolutionary questions can only be addressed via interspecific
comparisons.
(2) Evolution of the rate of evolution
Evolutionary analysis of DNA and protein sequences is typically
performed by either assuming that all evolutionary lineages change at
the same rate or by avoiding any attempt to directly consider the fact
that the rate of evolution changes over time. Factors that affect the
rate of molecular evolution (e.g., mutation, population size, generation
time, selection) change over time and therefore the rate of molecular
evolution is extremely unlikely to be identical for different
evolutionary lineages.
However, it is reasonable to expect
an
autocorrelation of rates over time. Closely related evolutionary
lineages tend to evolve at similar rates and distantly related lineages
might evolve at more different rates. His collaborators (especially
Hirohisa Kishino of the University of Tokyo) and him are developing
methods for estimating dates of evolutionary events from molecular
sequence data. These methods lack the restrictive and implausible
assumption that rates of evolution have been constant over time. He
also feels that these methods have great potential for illuminating
patterns of evolutionary rate variation over time.
Jeff authored
Models and Their Evolution and
Protein evolution constraints and model-based techniques to study
them,
and coauthored
A TABU search algorithm for maximum parsimony phylogeny
inference,
Population genetics without intraspecific data,
Quantifying the impact of protein tertiary structure on molecular
evolution,
Testing for spatial clustering of amino acid replacements within
protein tertiary structure, and
Dependence among sites in RNA evolution.
Jeff’s undergraduate degrees were earned in Molecular
Biology and in Mathematics from the University of Wisconsin-Madison in
1986. In
1991,
he earned a Ph.D. in Genetics from the University of
Washington.