Evaluation of a discrete dynamic systems approach for modeling the hierarchical relationship between genes, biochemistry, and disease susceptibility
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- @Article{Moore:2004:DCDS,
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author = "Jason H. Moore and Lance W. Hahn",
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title = "Evaluation of a discrete dynamic systems approach for
modeling the hierarchical relationship between genes,
biochemistry, and disease susceptibility",
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journal = "Discrete and Continuous Dynamical Systems: Series B",
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year = "2004",
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volume = "4",
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number = "1",
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pages = "275--287",
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month = feb,
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keywords = "genetic algorithms, genetic programming, grammatical
evolution, epistasis, gene-gene interactions, Petri
nets",
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ISSN = "1531-3492",
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DOI = "doi:10.3934/dcdsb.2004.4.275",
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abstract = "A central goal of human genetics is the identification
of combinations of DNA sequence variations that
increase susceptibility to common, complex human
diseases. Our ability to use genetic information to
improve public health efforts to diagnose, prevent, and
treat common human diseases will depend on our ability
to understand the hierarchical relationship between
complex biological systems at the genetic, cellular,
biochemical, physiological, anatomical, and clinical
endpoint levels. We have previously demonstrated that
Petri nets are useful for building discrete dynamic
systems models of biochemical networks that are
consistent with nonlinear gene-gene interactions
observed in epidemiological studies. Further, we have
developed a machine learning approach that facilitates
the automatic discovery of Petri net models thus
eliminating the need for human-based trial and error
approaches. In the present study, we evaluate this
automated model discovery approach using four different
nonlinear gene-gene interaction models. The results
indicate that our model-building approach routinely
identifies accurate Petri net models in a
human-competitive manner. We anticipate that this
general modeling strategy will be useful for generating
hypotheses about the hierarchical relationship between
genes, biochemistry, and measures of human health.",
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notes = "http://www.aimsciences.org/journals/home.jsp?journalID=2
2000 Mathematics Subject Classification.
92D30.
Mathematical Models in Cancer A special issue based on
the Cancer Workshop at Vanderbilt University 2002 Guest
Editors: Mary Ann Horn and Glenn Webb This special
issue can be ordered as a book",
- }
Genetic Programming entries for
Jason H Moore
Lance W Hahn
Citations