Calibration methods to fit parameters within complex biological models

IF 1.3 Q3 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS Frontiers in Applied Mathematics and Statistics Pub Date : 2023-10-18 DOI:10.3389/fams.2023.1256443
Pariksheet Nanda, Denise E. Kirschner
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Abstract

Mathematical and computational models of biological systems are increasingly complex, typically comprised of hybrid multi-scale methods such as ordinary differential equations, partial differential equations, agent-based and rule-based models, etc. These mechanistic models concurrently simulate detail at resolutions of whole host, multi-organ, organ, tissue, cellular, molecular, and genomic dynamics. Lacking analytical and numerical methods, solving complex biological models requires iterative parameter sampling-based approaches to establish appropriate ranges of model parameters that capture corresponding experimental datasets. However, these models typically comprise large numbers of parameters and therefore large degrees of freedom. Thus, fitting these models to multiple experimental datasets over time and space presents significant challenges. In this work we undertake the task of reviewing, testing, and advancing calibration practices across models and dataset types to compare methodologies for model calibration. Evaluating the process of calibrating models includes weighing strengths and applicability of each approach as well as standardizing calibration methods. Our work compares the performance of our model agnostic Calibration Protocol (CaliPro) with approximate Bayesian computing (ABC) to highlight strengths, weaknesses, synergies, and differences among these methods. We also present next-generation updates to CaliPro. We explore several model implementations and suggest a decision tree for selecting calibration approaches to match dataset types and modeling constraints.
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复杂生物模型参数拟合的标定方法
生物系统的数学和计算模型越来越复杂,通常由多尺度混合方法组成,如常微分方程、偏微分方程、基于agent的模型和基于规则的模型等。这些机制模型同时模拟整个宿主、多器官、器官、组织、细胞、分子和基因组动力学的细节。由于缺乏解析和数值方法,求解复杂的生物模型需要基于迭代参数采样的方法来建立适当的模型参数范围,以捕获相应的实验数据集。然而,这些模型通常包含大量参数,因此自由度很大。因此,将这些模型拟合到多个随时间和空间变化的实验数据集提出了重大挑战。在这项工作中,我们承担了审查、测试和推进跨模型和数据集类型的校准实践的任务,以比较模型校准的方法。对模型校准过程的评估包括衡量每种方法的强度和适用性以及标准化校准方法。我们的工作比较了我们的模型不可知校准协议(CaliPro)与近似贝叶斯计算(ABC)的性能,以突出这些方法之间的优势,劣势,协同作用和差异。我们还提供下一代更新的CaliPro。我们探索了几种模型实现,并提出了一种决策树,用于选择校准方法来匹配数据集类型和建模约束。
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来源期刊
Frontiers in Applied Mathematics and Statistics
Frontiers in Applied Mathematics and Statistics Mathematics-Statistics and Probability
CiteScore
1.90
自引率
7.10%
发文量
117
审稿时长
14 weeks
期刊最新文献
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