External Control in Markovian Genetic Regulatory Networks

被引:0
作者
Aniruddha Datta
Ashish Choudhary
Michael L. Bittner
Edward R. Dougherty
机构
[1] Texas A&M University,Department of Electrical Engineering
[2] National Human Genome Research Institute,Department of Pathology
[3] National Institutes of Health,undefined
[4] University of Texas M.D. Anderson Cancer Center,undefined
来源
Machine Learning | 2003年 / 52卷
关键词
gene regulatory network; Markov chain; optimal control; dynamic programming;
D O I
暂无
中图分类号
学科分类号
摘要
Probabilistic Boolean Networks (PBN's) have been recently introduced as a rule-based paradigm for modeling gene regulatory networks. Such networks, which form a subclass of Markovian Genetic Regulatory Networks, provide a convenient tool for studying interactions between different genes while allowing for uncertainty in the knowledge of these relationships. This paper deals with the issue of control in probabilistic Boolean networks. More precisely, given a general Markovian Genetic Regulatory Network whose state transition probabilities depend on an external (control) variable, the paper develops a procedure by which one can choose the sequence of control actions that minimize a given performance index over a finite number of steps. The procedure is based on the theory of controlled Markov chains and makes use of the classical technique of Dynamic Programming. The choice of the finite horizon performance index is motivated by cancer treatment applications where one would ideally like to intervene only over a finite time horizon, then suspend treatment and observe the effects over some additional time before deciding if further intervention is necessary. The undiscounted finite horizon cost minimization problem considered here is the simplest one to formulate and solve, and is selected mainly for clarity of exposition, although more complicated costs could be used, provided appropriate technical conditions are satisfied.
引用
收藏
页码:169 / 191
页数:22
相关论文
共 70 条
  • [1] Bittner M.(2000)Molecular classification of cutaneous malignant melanoma by gene expression profiling Nature 406 536-540
  • [2] Meltzer P.(2000)Coefficient of determination in nonlinear signal processing Signal Processing 80 2219-2235
  • [3] Chen Y.(1969)Metabolic stability and epigenesis in randomly constructed genetic nets Theoretical Biology 22 437-467
  • [4] Jiang Y.(1987)Towards a general theory of adaptive walks on rugged landscapes Theoretical Biology 128 11-45
  • [5] Seftor E.(2000)A general dramework for the analysis of multivariate gene interaction via expression arrays Biomedical Optics 4 411-424
  • [6] Hendrix M.(2000)Multivariate measurement of gene-expression relationships Genomics 67 201-209
  • [7] Radmacher M.(2002)Can Markov chain models mimic biological regulation? Journal of Biological Systems 10 447-458
  • [8] Simon R.(2002)Probabilistic Boolean networks: A rule-based uncertainty model for gene regulatory networks Bioinformatics 18 261-274
  • [9] Yakhini Z.(2002)Gene perturbation and intervention in probabilistic Boolean networks Bioinformatics 18 1319-1331
  • [10] Ben-Dor A.(2002)Control of stationary behavior in probabilistic Boolean networks by means of structural intervention Biological Systems 10 431-446