Specifying informative experiment stimulation conditions for resolving dynamical uncertainty in biological systems
暂无分享,去创建一个
[1] Xun Huan,et al. Simulation-based optimal Bayesian experimental design for nonlinear systems , 2011, J. Comput. Phys..
[2] Ann E Rundell,et al. A Global Parallel Model Based Design of Experiments Method to Minimize Model Output Uncertainty , 2011, Bulletin of Mathematical Biology.
[3] L. Endrenyi,et al. Design of experiments for the precise estimation of dose-response parameters: the Hill equation. , 1986, Journal of theoretical biology.
[4] Sebastian Bohl,et al. Dynamic Pathway Modeling , 2007, Annals of the New York Academy of Sciences.
[5] Kwang-Hyun Cho,et al. Experimental Design in Systems Biology, Based on Parameter Sensitivity Analysis Using a Monte Carlo Method: A Case Study for the TNFα-Mediated NF-κ B Signal Transduction Pathway , 2003, Simul..
[6] Maia M. Donahue,et al. Experiment design through dynamical characterisation of non-linear systems biology models utilising sparse grids. , 2010, IET systems biology.
[7] James Griffith,et al. Systems Biology of the Clock in Neurospora crassa , 2008, PloS one.
[8] D Rodbard,et al. DESIGN: computerized optimization of experimental design for estimating Kd and Bmax in ligand binding experiments. I. Homologous and heterologous binding to one or two classes of sites. , 1988, Analytical biochemistry.
[9] Nicole Radde,et al. Trajectory-oriented Bayesian experiment design versus Fisher A-optimal design: an in depth comparison study , 2012, Bioinform..
[10] Peng Qiu,et al. Optimal experiment selection for parameter estimation in biological differential equation models , 2012, BMC Bioinformatics.
[11] A. Rundell,et al. Comparative study of parameter sensitivity analyses of the TCR-activated Erk-MAPK signalling pathway. , 2006, Systems biology.
[12] Dirk Lebiedz,et al. A robust optimization approach to experimental design for model discrimination of dynamical systems , 2011, Math. Program..
[13] Sandro Macchietto,et al. Model-based design of experiments for parameter precision: State of the art , 2008 .