Spectral expansion methods for prediction uncertainty quantification in systems biology

被引:0
|
作者
Deneer, Anna [1 ]
Molenaar, Jaap [1 ]
Fleck, Christian [2 ]
机构
[1] Wageningen Univ & Res, Math & Stat Methods Grp Biometris, Wageningen, Netherlands
[2] Univ Freiburg, Freiburg Ctr Data Anal & Modeling, Freiburg, Germany
来源
关键词
systems biology; computational systems biology; mathematical modelling; spectral expansion; surrogate models; GLOBAL SENSITIVITY INDEXES; POLYNOMIAL CHAOS; ARABIDOPSIS TRICHOME; GENE-EXPRESSION; MODEL; NOISE;
D O I
10.3389/fsysb.2024.1419809
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Uncertainty is ubiquitous in biological systems. For example, since gene expression is intrinsically governed by noise, nature shows a fascinating degree of variability. If we want to use a model to predict the behaviour of such an intrinsically stochastic system, we have to cope with the fact that the model parameters are never exactly known, but vary according to some distribution. A key question is then to determine how the uncertainties in the parameters affect the model outcome. Knowing the latter uncertainties is crucial when a model is used for, e.g., experimental design, optimisation, or decision-making. To establish how parameter and model prediction uncertainties are related, Monte Carlo approaches could be used. Then, the model is evaluated for a huge number of parameters sets, drawn from the multivariate parameter distribution. However, when model solutions are computationally expensive this approach is intractable. To overcome this problem, so-called spectral expansion (SE) methods have been developed to quantify prediction uncertainty within a probabilistic framework. Such SE methods have a basis in, e.g., computational mathematics, engineering, physics, and fluid dynamics, and, to a lesser extent, systems biology. The computational costs of SE schemes mainly stem from the calculation of the expansion coefficients. Furthermore, SE effectively leads to a surrogate model which captures the dependence of the model on the uncertainty parameters, but is much simpler to execute compared to the original model. In this paper, we present an innovative scheme for the calculation of the expansion coefficients. It guarantees that the model has to be evaluated only a restricted number of times. Especially for models of high complexity this may be a huge computational advantage. By applying the scheme to a variety of examples we show its power, especially in challenging situations where solutions slowly converge due to high computational costs, bifurcations, and discontinuities.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Data-driven uncertainty quantification of structural systems via B-spline expansion
    Dertimanis, V. K.
    Spiridonakos, M. D.
    Chatzi, E. N.
    COMPUTERS & STRUCTURES, 2018, 207 : 245 - 257
  • [32] Uncertainty quantification of model predictive control for nonlinear systems with parametric uncertainty using hybrid pseudo-spectral method
    Namadchian, Ali
    Ramezani, Mehdi
    COGENT ENGINEERING, 2019, 6 (01):
  • [33] Uncertainty quantification and design under uncertainty of aerospace systems
    Maute, Kurt
    Pettit, Chris L.
    STRUCTURE AND INFRASTRUCTURE ENGINEERING, 2006, 2 (3-4) : 159 - 159
  • [34] Uncertainty quantification and stochastic response prediction for excavator systems under extreme operating conditions
    Wu, Di
    Peng, Denghui
    Wang, Shenlong
    ENGINEERING STRUCTURES, 2024, 308
  • [35] An uncertainty quantification method for nanomaterial prediction models
    Vanli, O.A. (avanli@fsu.edu), 1600, Springer London (70): : 1 - 4
  • [36] Uncertainty quantification and adaptive prediction of underground contaminants
    Shinozuka, Masanobu
    Chaudhuri, Samit Ray
    APPLICATIONS OF STATISICS AND PROBABILITY IN CIVIL ENGINEERING, 2007, : 395 - 395
  • [37] An uncertainty quantification method for nanomaterial prediction models
    Vanli, O. Arda
    Chen, Li-Jen
    Tsai, Chao-his
    Zhang, Chuck
    Wang, Ben
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2014, 70 (1-4): : 33 - 44
  • [38] Physics Constrained Motion Prediction with Uncertainty Quantification
    Tumu, Renukanandan
    Lindemann, Lars
    Truong Nghiem
    Mangharam, Rahul
    2023 IEEE INTELLIGENT VEHICLES SYMPOSIUM, IV, 2023,
  • [39] An uncertainty quantification method for nanomaterial prediction models
    O. Arda Vanli
    Li-Jen Chen
    Chao-his Tsai
    Chuck Zhang
    Ben Wang
    The International Journal of Advanced Manufacturing Technology, 2014, 70 : 33 - 44
  • [40] Uncertainty Quantification for Meningococcus B Carriers Prediction
    Acedo, Luis
    Burgos, Clara
    Cortes, Juan-Carlos
    Villanueva, Rafael J.
    BIOINFORMATICS AND BIOMEDICAL ENGINEERING, IWBBIO 2017, PT II, 2017, 10209 : 560 - 569