Inference of Noisy Nonlinear Differential Equation Models for Gene Regulatory Networks Using Genetic Programming and Kalman Filtering
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- @Article{Qian:2008:ieeeTSP,
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author = "Lijun Qian and Haixin Wang and Edward R. Dougherty",
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title = "Inference of Noisy Nonlinear Differential Equation
Models for Gene Regulatory Networks Using Genetic
Programming and Kalman Filtering",
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journal = "IEEE Transactions on Signal Processing",
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year = "2008",
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month = jul,
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volume = "56",
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number = "7",
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pages = "3327--3339",
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keywords = "genetic algorithms, genetic programming, Kalman
filtering, biological regulation, evolutionary
modeling, gene regulatory networks, genetic-based
diseases, genomic signal processing, intrinsic noise,
iterative algorithm, model identification, noisy
nonlinear differential equation model, phenotypic
determination, random noise parameters, time-series
microarray measurement, Kalman filters, nonlinear
differential equations, signal processing",
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DOI = "doi:10.1109/TSP.2008.919638",
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ISSN = "1053-587X",
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size = "13 pages",
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abstract = "A key issue in genomic signal processing is the
inference of gene regulatory networks. These are used
both to understand the role of biological regulation in
phenotypic determination and to derive therapeutic
strategies for genetic-based diseases. In this paper,
gene regulatory networks are inferred via evolutionary
modeling based on time-series microarray measurements.
A nonlinear differential equation model is adopted. It
includes random noise parameters for intrinsic noise
arising from stochasticity in transcription and
translation and for external noise arising from factors
such as the amount of RNA polymerase, levels of
regulatory proteins, and the effects of mRNA and
protein degradation. An iterative algorithm is proposed
for model identification. Genetic programming is
applied to identify the structure of the model and
Kalman filtering is used to estimate the parameters in
each iteration. Both standard and robust Kalman
filtering are considered. The effectiveness of the
proposed scheme is demonstrated by using synthetic data
and by using microarray measurements pertaining to
yeast protein synthesis.",
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notes = "fig 10: Interactions among the 12 genes of yeast. time
series microarray. Also known as \cite{4531193}
\cite{journals/tsp/QianWD08}",
- }
Genetic Programming entries for
Lijun Qian
Haixin Wang
Edward R Dougherty
Citations