Exploiting Expert Knowledge of Protein-Protein Interactions in a Computational Evolution System for Detecting Epistasis
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InCollection{Pattin:2010:GPTP,
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author = "Kristine A. Pattin and Joshua L. Payne and
Douglas P. Hill and Thomas Caldwell and Jonathan M. Fisher and
Jason H. Moore",
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title = "Exploiting Expert Knowledge of Protein-Protein
Interactions in a Computational Evolution System for
Detecting Epistasis",
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booktitle = "Genetic Programming Theory and Practice VIII",
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year = "2010",
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editor = "Rick Riolo and Trent McConaghy and
Ekaterina Vladislavleva",
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series = "Genetic and Evolutionary Computation",
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volume = "8",
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address = "Ann Arbor, USA",
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month = "20-22 " # may,
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publisher = "Springer",
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chapter = "12",
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pages = "195--210",
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keywords = "genetic algorithms, genetic programming, Computational
Evolution, Genetic Epidemiology, Epistasis,
Protein-Protein Interactions",
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isbn13 = "978-1-4419-7746-5",
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URL = "http://www.springer.com/computer/ai/book/978-1-4419-7746-5",
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DOI = "doi:10.1007/978-1-4419-7747-2_12",
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abstract = "The etiology of common human disease often involves a
complex genetic architecture, where numerous points of
genetic variation interact to influence disease
susceptibility. Automating the detection of such
epistatic genetic risk factors poses a major
computational challenge, as the number of possible
gene-gene interactions increases combinatorially with
the number of sequence variations. Previously, we
addressed this challenge with the development of a
computational evolution system (CES) that incorporates
greater biological realism than traditional artificial
evolution methods. Our results demonstrated that CES is
capable of efficiently navigating these large and
rugged epistatic landscapes toward the discovery of
biologically meaningful genetic models of disease
predisposition. Further, we have shown that the
efficacy of CES is improved dramatically when the
system is provided with statistical expert knowledge.
We anticipate that biological expert knowledge, such as
genetic regulatory or protein-protein interaction maps,
will provide complementary information, and further
improve the ability of CES to model the genetic
architectures of common human disease. The goal of this
study is to test this hypothesis, using publicly
available protein-protein interaction information. We
show that by incorporating this source of expert
knowledge, the system is able to identify functional
interactions that represent more concise models of
disease susceptibility with improved accuracy. Our
ability to incorporate biological knowledge into
learning algorithms is an essential step toward the
routine use of methods such as CES for identifying
genetic risk factors for common human diseases.",
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notes = "part of \cite{Riolo:2010:GPTP}",
- }
Genetic Programming entries for
Kristine A Pattin
Joshua L Payne
Douglas P Hill
Thomas Caldwell
Jonathan M Fisher
Jason H Moore
Citations