KETCHUP:使用具有不同参考状态的多个数据集对大规模动力学模型进行参数化。

IF 6.8 1区 生物学 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Mengqi Hu , Patrick F. Suthers , Costas D. Maranas
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引用次数: 0

摘要

大规模动力学模型提供了将代谢反应通量与代谢物浓度和酶水平动态联系起来的计算手段,同时也符合底物水平的调节。然而,开发广泛适用的框架以高效、稳健地设置模型参数仍然是一项挑战。出现挑战的原因既包括通量和/或浓度数据的异质性、稀缺性和获取难度,也包括基本参数识别问题的计算难度。尽管大规模动力学模型具有潜力,但参数化的计算要求、所获参数解的退化性和结果的可解释性迄今为止都限制了其广泛采用。在本文中,我们介绍了使用 Pyomo 捕捉异构数据集的动力学估算工具(KETCHUP),这是一种灵活的参数估计工具,利用基元-双内点算法来解决非线性编程(NLP)问题,从而确定一组参数,这些参数能够再现野生型和扰动型代谢网络中的(非)稳态通量和浓度。KETCHUP 以之前参数化的大规模动力学模型为基准,证明其收敛速度比工具 K-FIT 至少快一个数量级,同时还能获得更好的数据拟合。这个多功能工具箱可在稳态或静态条件下接受不同的动力学描述、代谢通量、酶水平和代谢物浓度,从而实现稳健的动力学模型构建和参数化。KETCHUP 支持 SBML 格式,可通过 https://github.com/maranasgroup/KETCHUP 访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KETCHUP: Parameterizing of large-scale kinetic models using multiple datasets with different reference states

Large-scale kinetic models provide the computational means to dynamically link metabolic reaction fluxes to metabolite concentrations and enzyme levels while also conforming to substrate level regulation. However, the development of broadly applicable frameworks for efficiently and robustly parameterizing models remains a challenge. Challenges arise due to both the heterogeneity, paucity, and difficulty in obtaining flux and/or concentration data but also due to the computational difficulties of the underlying parameter identification problem. Both the computational demands for parameterization, degeneracy of obtained parameter solutions and interpretability of results has so far limited widespread adoption of large-scale kinetic models despite their potential. Herein, we introduce the Kinetic Estimation Tool Capturing Heterogeneous Datasets Using Pyomo (KETCHUP), a flexible parameter estimation tool that leverages a primal-dual interior-point algorithm to solve a nonlinear programming (NLP) problem that identifies a set of parameters capable of recapitulating the (non)steady-state fluxes and concentrations in wild-type and perturbed metabolic networks. KETCHUP is benchmarked against previously parameterized large-scale kinetic models demonstrating an at least an order of magnitude faster convergence than the tool K-FIT while at the same time attaining better data fits. This versatile toolbox accepts different kinetic descriptions, metabolic fluxes, enzyme levels and metabolite concentrations, under either steady-state or instationary conditions to enable robust kinetic model construction and parameterization. KETCHUP supports the SBML format and can be accessed at https://github.com/maranasgroup/KETCHUP.

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来源期刊
Metabolic engineering
Metabolic engineering 工程技术-生物工程与应用微生物
CiteScore
15.60
自引率
6.00%
发文量
140
审稿时长
44 days
期刊介绍: Metabolic Engineering (MBE) is a journal that focuses on publishing original research papers on the directed modulation of metabolic pathways for metabolite overproduction or the enhancement of cellular properties. It welcomes papers that describe the engineering of native pathways and the synthesis of heterologous pathways to convert microorganisms into microbial cell factories. The journal covers experimental, computational, and modeling approaches for understanding metabolic pathways and manipulating them through genetic, media, or environmental means. Effective exploration of metabolic pathways necessitates the use of molecular biology and biochemistry methods, as well as engineering techniques for modeling and data analysis. MBE serves as a platform for interdisciplinary research in fields such as biochemistry, molecular biology, applied microbiology, cellular physiology, cellular nutrition in health and disease, and biochemical engineering. The journal publishes various types of papers, including original research papers and review papers. It is indexed and abstracted in databases such as Scopus, Embase, EMBiology, Current Contents - Life Sciences and Clinical Medicine, Science Citation Index, PubMed/Medline, CAS and Biotechnology Citation Index.
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