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Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence

The inference of gene regulatory networks is a key issue for genomic signal processing. This paper addresses the inference of probabilistic Boolean networks (PBNs) from observed temporal sequences of network states. Since a PBN is composed of a finite number of Boolean networks, a basic observation...

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Detalles Bibliográficos
Autores principales: Marshall, Stephen, Yu, Le, Xiao, Yufei, Dougherty, Edward R
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer 2007
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3171335/
https://www.ncbi.nlm.nih.gov/pubmed/18364987
http://dx.doi.org/10.1155/2007/32454
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author Marshall, Stephen
Yu, Le
Xiao, Yufei
Dougherty, Edward R
author_facet Marshall, Stephen
Yu, Le
Xiao, Yufei
Dougherty, Edward R
author_sort Marshall, Stephen
collection PubMed
description The inference of gene regulatory networks is a key issue for genomic signal processing. This paper addresses the inference of probabilistic Boolean networks (PBNs) from observed temporal sequences of network states. Since a PBN is composed of a finite number of Boolean networks, a basic observation is that the characteristics of a single Boolean network without perturbation may be determined by its pairwise transitions. Because the network function is fixed and there are no perturbations, a given state will always be followed by a unique state at the succeeding time point. Thus, a transition counting matrix compiled over a data sequence will be sparse and contain only one entry per line. If the network also has perturbations, with small perturbation probability, then the transition counting matrix would have some insignificant nonzero entries replacing some (or all) of the zeros. If a data sequence is sufficiently long to adequately populate the matrix, then determination of the functions and inputs underlying the model is straightforward. The difficulty comes when the transition counting matrix consists of data derived from more than one Boolean network. We address the PBN inference procedure in several steps: (1) separate the data sequence into "pure" subsequences corresponding to constituent Boolean networks; (2) given a subsequence, infer a Boolean network; and (3) infer the probabilities of perturbation, the probability of there being a switch between constituent Boolean networks, and the selection probabilities governing which network is to be selected given a switch. Capturing the full dynamic behavior of probabilistic Boolean networks, be they binary or multivalued, will require the use of temporal data, and a great deal of it. This should not be surprising given the complexity of the model and the number of parameters, both transitional and static, that must be estimated. In addition to providing an inference algorithm, this paper demonstrates that the data requirement is much smaller if one does not wish to infer the switching, perturbation, and selection probabilities, and that constituent-network connectivity can be discovered with decent accuracy for relatively small time-course sequences.
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spelling pubmed-31713352011-09-13 Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence Marshall, Stephen Yu, Le Xiao, Yufei Dougherty, Edward R EURASIP J Bioinform Syst Biol Research Article The inference of gene regulatory networks is a key issue for genomic signal processing. This paper addresses the inference of probabilistic Boolean networks (PBNs) from observed temporal sequences of network states. Since a PBN is composed of a finite number of Boolean networks, a basic observation is that the characteristics of a single Boolean network without perturbation may be determined by its pairwise transitions. Because the network function is fixed and there are no perturbations, a given state will always be followed by a unique state at the succeeding time point. Thus, a transition counting matrix compiled over a data sequence will be sparse and contain only one entry per line. If the network also has perturbations, with small perturbation probability, then the transition counting matrix would have some insignificant nonzero entries replacing some (or all) of the zeros. If a data sequence is sufficiently long to adequately populate the matrix, then determination of the functions and inputs underlying the model is straightforward. The difficulty comes when the transition counting matrix consists of data derived from more than one Boolean network. We address the PBN inference procedure in several steps: (1) separate the data sequence into "pure" subsequences corresponding to constituent Boolean networks; (2) given a subsequence, infer a Boolean network; and (3) infer the probabilities of perturbation, the probability of there being a switch between constituent Boolean networks, and the selection probabilities governing which network is to be selected given a switch. Capturing the full dynamic behavior of probabilistic Boolean networks, be they binary or multivalued, will require the use of temporal data, and a great deal of it. This should not be surprising given the complexity of the model and the number of parameters, both transitional and static, that must be estimated. In addition to providing an inference algorithm, this paper demonstrates that the data requirement is much smaller if one does not wish to infer the switching, perturbation, and selection probabilities, and that constituent-network connectivity can be discovered with decent accuracy for relatively small time-course sequences. Springer 2007-05-07 /pmc/articles/PMC3171335/ /pubmed/18364987 http://dx.doi.org/10.1155/2007/32454 Text en Copyright © 2007 Stephen Marshall et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Marshall, Stephen
Yu, Le
Xiao, Yufei
Dougherty, Edward R
Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title_full Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title_fullStr Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title_full_unstemmed Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title_short Inference of a Probabilistic Boolean Network from a Single Observed Temporal Sequence
title_sort inference of a probabilistic boolean network from a single observed temporal sequence
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3171335/
https://www.ncbi.nlm.nih.gov/pubmed/18364987
http://dx.doi.org/10.1155/2007/32454
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