Symbolic Modeling of Epistasis
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @Article{Moore:2007:HH,
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author = "Jason H. Moore and Nate Barney and Chia-Ti Tsai and
Fu-Tien Chiang and Jiang Gui and Bill C. White",
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title = "Symbolic Modeling of Epistasis",
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journal = "Human Heredity",
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year = "2007",
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volume = "63",
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number = "2",
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pages = "120--133",
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month = feb,
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keywords = "genetic algorithms, genetic programming, Data mining,
Gene-gene interaction, Function mapping, Symbolic
discriminant analysis",
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publisher = "www.karger.com/hhe",
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ISSN = "0001-5652",
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DOI = "doi:10.1159/000099184",
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size = "14 pages",
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abstract = "The workhorse of modern genetic analysis is the
parametric linear model. The advantages of the linear
modelling framework are many and include a mathematical
understanding of the model fitting process and ease of
interpretation. However, an important limitation is
that linear models make assumptions about the nature of
the data being modelled. This assumption may not be
realistic for complex biological systems such as
disease susceptibility where nonlinearities in the
genotype to phenotype mapping relationship that result
from epistasis, plastic reaction norms, locus
heterogeneity, and phenocopy, for example, are the norm
rather than the exception. We have previously developed
a flexible modelling approach called symbolic
discriminant analysis (SDA) that makes no assumptions
about the patterns in the data. Rather, SDA lets the
data dictate the size, shape, and complexity of a
symbolic discriminant function that could include any
set of mathematical functions from a list of candidates
supplied by the user. Here, we outline a new five step
process for symbolic model discovery that uses genetic
programming (GP) for coarse-grained stochastic
searching, experimental design for parameter
optimisation, graphical modeling for generating expert
knowledge, and estimation of distribution algorithms
for fine-grained stochastic searching. Finally, we
introduce function mapping as a new method for
interpreting symbolic discriminant functions. We show
that function mapping when combined with measures of
interaction information facilitates statistical
interpretation by providing a graphical approach to
decomposing complex models to highlight synergistic,
redundant, and independent effects of polymorphisms and
their composite functions. We illustrate this five step
SDA modeling process with a real case-control
dataset.",
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notes = "PMID: 17283441",
- }
Genetic Programming entries for
Jason H Moore
Nate Barney
Chia-Ti Tsai
Fu-Tien Chiang
Jiang Gui
Bill C White
Citations