A Review of Dynamic Modeling Approaches and Their Application in Computational Strain Optimization for Metabolic Engineering

被引:56
|
作者
Kim, Osvaldo D. [1 ,2 ]
Rocha, Miguel [2 ]
Maia, Paulo [1 ]
机构
[1] SilicoLife Lda, Braga, Portugal
[2] Univ Minho, Ctr Biol Engn, Braga, Portugal
来源
关键词
dynamic modeling; strain optimization; phenotype prediction; metabolic engineering; hybrid modeling; CENTRAL CARBON METABOLISM; CONSTRAINT-BASED MODELS; FLUX BALANCE ANALYSIS; PARAMETER-ESTIMATION; SYSTEMS BIOLOGY; IDENTIFIABILITY ANALYSIS; BIOCHEMICAL NETWORKS; KINETIC-MODELS; RATE LAWS; GROWTH;
D O I
10.3389/fmicb.2018.01690
中图分类号
Q93 [微生物学];
学科分类号
071005 ; 100705 ;
摘要
Mathematical modeling is a key process to describe the behavior of biological networks. One of the most difficult challenges is to build models that allow quantitative predictions of the cells' states along time. Recently, this issue started to be tackled through novel in silico approaches, such as the reconstruction of dynamic models, the use of phenotype prediction methods, and pathway design via efficient strain optimization algorithms. The use of dynamic models, which include detailed kinetic information of the biological systems, potentially increases the scope of the applications and the accuracy of the phenotype predictions. New efforts in metabolic engineering aim at bridging the gap between this approach and other different paradigms of mathematical modeling, as constraint-based approaches. These strategies take advantage of the best features of each method, and deal with the most remarkable limitation-the lack of available experimental information-which affects the accuracy and feasibility of solutions. Parameter estimation helps to solve this problem, but adding more computational cost to the overall process. Moreover, the existing approaches include limitations such as their scalability, flexibility, convergence time of the simulations, among others. The aim is to establish a trade-off between the size of the model and the level of accuracy of the solutions. In this work, we review the state of the art of dynamic modeling and related methods used for metabolic engineering applications, including approaches based on hybrid modeling. We describe approaches developed to undertake issues regarding the mathematical formulation and the underlying optimization algorithms, and that address the phenotype prediction by including available kinetic rate laws of metabolic processes. Then, we discuss how these have been used and combined as the basis to build computational strain optimization methods for metabolic engineering purposes, how they lead to bi-level schemes that can be used in the industry, including a consideration of their limitations.
引用
收藏
页数:22
相关论文
共 50 条
  • [41] A systematic review of modeling approaches in green supply chain optimization
    Md Doulotuzzaman Xames
    Jannatul Shefa
    Fahima Akter Azrin
    Abu Saleh Md. Nakib Uddin
    Umme Habiba
    Washima Zaman
    Environmental Science and Pollution Research, 2023, 30 : 113218 - 113241
  • [42] Enhancing in silico strain design predictions through next generation metabolic modeling approaches
    Alsiyabi, Adil
    Chowdhury, Niaz Bahar
    Long, Dianna
    Saha, Rajib
    BIOTECHNOLOGY ADVANCES, 2022, 54
  • [43] Dynamic simulation modeling for CNC machining optimization based on concurrent engineering
    Wang, TY
    Wang, WJ
    Li, QX
    Li, HY
    Wang, CG
    CONCURRENT ENGINEERING: THE WORLDWIDE ENGINEERING GRID, PROCEEDINGS, 2004, : 727 - 733
  • [44] Development of an integrating systems metabolic engineering and bioprocess modeling approach for rational strain improvement
    Rangel, Albert E. Tafur
    Oviedo, Abel Garcia
    Mojica, Freddy Cabrera
    Gomez, Jorge M.
    Barrios, Andres Fernando Gonzalez
    BIOCHEMICAL ENGINEERING JOURNAL, 2022, 178
  • [45] Development of an integrating systems metabolic engineering and bioprocess modeling approach for rational strain improvement
    Tafur Rangel, Albert E.
    Oviedo, Abel García
    Mojica, Freddy Cabrera
    Gómez, Jorge M.
    Gónzalez Barrios, Andrés Fernando
    Biochemical Engineering Journal, 2022, 178
  • [46] Simulation, Modeling, and Optimization of Intelligent Kidney Disease Predication Empowered with Computational Intelligence Approaches
    Khan, Abdul Hannan
    Khan, Muhammad Adnan
    Abbas, Sagheer
    Siddiqui, Shahan Yamin
    Saeed, Muhammad Aanwar
    Alfayad, Majed
    Elmitwally, Nouh Sabri
    CMC-COMPUTERS MATERIALS & CONTINUA, 2021, 67 (02): : 1399 - 1412
  • [47] Computational Advances in Drug Safety: Systematic and Mapping Review of Knowledge Engineering Based Approaches
    Natsiavas, Pantelis
    Malousi, Andigoni
    Bousquet, Cedric
    Jaulent, Marie-Christine
    Koutkias, Vassilis
    FRONTIERS IN PHARMACOLOGY, 2019, 10
  • [48] Towards Engineering an Ecosystem: A Review of Computational Approaches to Explore and Exploit the Human Microbiome for Healthcare
    Anirban Dutta
    Sharmila S. Mande
    Transactions of the Indian National Academy of Engineering, 2022, 7 (1) : 29 - 45
  • [49] Application of metabolic modeling for targeted optimization of high seeding density processes
    Brunner, Matthias
    Kolb, Klara
    Keitel, Alena
    Stiefel, Fabian
    Wucherpfennig, Thomas
    Bechmann, Jan
    Unsoeld, Andreas
    Schaub, Jochen
    BIOTECHNOLOGY AND BIOENGINEERING, 2021, 118 (05) : 1793 - 1804
  • [50] Prospects and progress in the production of valuable carotenoids: Insights from metabolic engineering, synthetic biology, and computational approaches
    Mohan, Sankari
    Rao, Priya Rajendra
    Hemachandran, Hridya
    Pullela, Phani Kumar
    Doss, George Priya C.
    Tayubi, Iftikhar Aslam
    Subramanian, Babu
    Km, Gothandam
    Singh, Pooja
    Ramamoorthy, Siva
    JOURNAL OF BIOTECHNOLOGY, 2018, 266 : 89 - 101