Physics-informed neural networks guided modelling and multiobjective optimization of a mAb production process

被引:0
作者
Alam, Md Nasre [1 ]
Anurag, Anurag [1 ]
Gangwar, Neelesh [2 ]
Ramteke, Manojkumar [1 ,3 ]
Kodamana, Hariprasad [1 ,3 ]
Rathore, Anurag S. [1 ,2 ,3 ]
机构
[1] Indian Inst Technol Delhi, Dept Chem Engn, New Delhi 110016, India
[2] Indian Inst Technol Delhi, Sch Interdisciplinary Res, New Delhi, India
[3] Indian Inst Technol Delhi, Yardi Sch Artificial Intelligence, New Delhi, India
关键词
bayesian optimization; monoclonal antibodies; multilayer perceptron; multiobjective optimization; ordinary differential equations; physics-informed neural networks; CELL-CULTURE PROCESSES; BAYESIAN OPTIMIZATION; BATCH; FERMENTATION; METABOLISM; REACTOR; DESIGN; IMPACT;
D O I
10.1002/cjce.25446
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
In this paper, we aim to correlate various process and product quality attributes of a mammalian cell culture process with process parameters. To achieve this, we employed physics-informed neural networks that solve the governing ordinary differential equations comprising independent variables (inputs- time, flow rates, and volume) and dependent variables (outputs- viable cell density, dead cell density, glucose concentration, lactate concentration, and monoclonal antibody concentration). The proposed model surpasses the prediction and accuracy capabilities of other commonly used modelling approaches, such as the multilayer perceptron model. It has higher R-squared (R-2), lower root mean square error, and lower mean absolute error than the multilayer perceptron model for all output variables (viable cell density, viability, glucose concentration, lactate concentration, and monoclonal antibody concentration). Furthermore, we incorporate a Bayesian optimization study to maximize viable cell density and monoclonal antibody concentration. Single objective optimization and weighted sum multiobjective optimization were carried out for viable cell density and monoclonal antibody concentration in separate (single objective optimization) and combined (multiobjective optimization) forms. An increment of 13.01% and 18.57% for viable cell density and monoclonal antibody concentration, respectively, were projected under single objective optimization, and 46.32% and 67.86%, respectively, for multiobjective optimization as compared to the base case. This study highlights the potential of the physics-informed neural networks-based modelling and optimization of upstream processing of mammalian cell-based monoclonal antibodies in biopharmaceutical operations.
引用
收藏
页码:1319 / 1334
页数:16
相关论文
共 82 条
  • [61] Design of stochastic neural networks for the fifth order system of singular engineering model
    Sabir, Zulqurnain
    Babatin, M. M.
    Hashem, Atef F.
    Abdelkawy, M. A.
    Salahshour, Soheil
    Umar, Muhammad
    [J]. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE, 2024, 133
  • [62] A bio inspired learning scheme for the fractional order kidney function model with neural networks
    Sabir, Zulqurnain
    Bhat, Shahid Ahmad
    Wahab, Hafiz Abdul
    Camargo, Maria Emilia
    Abildinova, Gulmira
    Zulpykhar, Zhandos
    [J]. CHAOS SOLITONS & FRACTALS, 2024, 180
  • [63] A reliable stochastic computational procedure to solve the mathematical robotic model
    Sabir, Zulqurnain
    Ben Said, Salem
    Al-Mdallal, Qasem
    Bhat, Shahid Ahmad
    [J]. EXPERT SYSTEMS WITH APPLICATIONS, 2024, 238
  • [64] A First Approach towards Adsorption-Oriented Physics-Informed Neural Networks: Monoclonal Antibody Adsorption Performance on an Ion-Exchange Column as a Case Study
    Santana, Vinicius V.
    Gama, Marlon S.
    Loureiro, Jose M.
    Rodrigues, Alirio E.
    Ribeiro, Ana M.
    Tavares, Frederico W.
    Barreto, Amaro G.
    Nogueira, Idelfonso B. R.
    [J]. CHEMENGINEERING, 2022, 6 (02)
  • [65] Mammalian Cell Culture Process for Monoclonal Antibody Production: Nonlinear Modelling and Parameter Estimation
    Selisteanu, Dan
    Sendrescu, Dorin
    Georgeanu, Vlad
    Roman, Monica
    [J]. BIOMED RESEARCH INTERNATIONAL, 2015, 2015
  • [66] Bayesian reaction optimization as a tool for chemical synthesis
    Shields, Benjamin J.
    Stevens, Jason
    Li, Jun
    Parasram, Marvin
    Damani, Farhan
    Alvarado, Jesus I. Martinez
    Janey, Jacob M.
    Adams, Ryan P.
    Doyle, Abigail G.
    [J]. NATURE, 2021, 590 (7844) : 89 - +
  • [67] Revisiting Verhulst and Monod models: analysis of batch and fed-batch cultures
    Shirsat, Nishikant
    Mohd, Avesh
    Whelan, Jessica
    English, Niall J.
    Glennon, Brian
    Al-Rubeai, Mohamed
    [J]. CYTOTECHNOLOGY, 2015, 67 (03) : 515 - 530
  • [68] Can a Computer "Learn" Nonlinear Chromatography?: Experimental Validation of Physics-Based Deep Neural Networks for the Simulation of Chromatographic Processes
    Subraveti, Sai Gokul
    Li, Zukui
    Prasad, Vinay
    Rajendran, Arvind
    [J]. INDUSTRIAL & ENGINEERING CHEMISTRY RESEARCH, 2023, 62 (14) : 5929 - 5944
  • [69] A Customized Bayesian Algorithm to Optimize Enzyme-Catalyzed Reactions
    Tachibana, Ryo
    Zhang, Kailin
    Zou, Zhi
    Burgener, Simon
    Ward, Thomas R.
    [J]. ACS SUSTAINABLE CHEMISTRY & ENGINEERING, 2023, 11 (33) : 12336 - 12344
  • [70] Physics-informed neural networks to solve lumped kinetic model for chromatography process
    Tang, Si-Yuan
    Yuan, Yun-Hao
    Chen, Yu-Cheng
    Yao, Shan-Jing
    Wang, Ying
    Lin, Dong-Qiang
    [J]. JOURNAL OF CHROMATOGRAPHY A, 2023, 1708