When bioprocess engineering meets machine learning: A survey from the perspective of automated bioprocess development

被引:21
作者
Duong-Trung, Nghia [1 ]
Born, Stefan [1 ]
Kim, Jong Woo [1 ,4 ]
Schermeyer, Marie-Therese [1 ]
Paulick, Katharina [1 ]
Borisyak, Maxim [1 ]
Cruz-Bournazou, Mariano Nicolas [1 ]
Werner, Thorben [2 ]
Scholz, Randolf [2 ]
Schmidt-Thieme, Lars [2 ]
Neubauer, Peter [1 ]
Martinez, Ernesto [1 ,3 ]
机构
[1] Tech Univ Berlin, Inst Biotechnol, Fac Process Sci 3, Chair Bioproc Engn, Strass 17 Juni 135, D-10623 Berlin, Germany
[2] Univ Hildesheim, Informat Syst & Machine Learning Lab ISMLL, Univ pl 1, D-31141 Hildesheim, Germany
[3] INGAR CONICET UTN, Avellaneda 3657, S3002GJC, RA-3002 Santa Fe, Argentina
[4] Incheon Natl Univ, Dept Energy & Chem Engn, Incheon 22012, South Korea
关键词
Active learning; Automation; Bioprocess development; Reinforcement learning; Reproducibility crisis; MICROBIAL FUEL-CELL; ARTIFICIAL NEURAL-NETWORK; ANALYTICAL TECHNOLOGY PAT; LIQUID HANDLING STATIONS; ELECTRICITY-GENERATION; REPRODUCIBILITY; OPTIMIZATION; PREDICTION; MODEL; CHALLENGES;
D O I
10.1016/j.bej.2022.108764
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Machine learning (ML) is becoming increasingly crucial in many fields of engineering but has not yet played out its full potential in bioprocess engineering. While experimentation has been accelerated by increasing levels of lab automation, experimental planning and data modeling are still largerly depend on human intervention. ML can be seen as a set of tools that contribute to the automation of the whole experimental cycle, including model building and practical planning, thus allowing human experts to focus on the more demanding and overarching cognitive tasks. First, probabilistic programming is used for the autonomous building of predictive models. Second, machine learning automatically assesses alternative decisions by planning experiments to test hypoth-eses and conducting investigations to gather informative data that focus on model selection based on the un-certainty of model predictions. This review provides a comprehensive overview of ML-based automation in bioprocess development. On the one hand, the biotech and bioengineering community should be aware of the potential and, most importantly, the limitation of existing ML solutions for their application in biotechnology and biopharma. On the other hand, it is essential to identify the missing links to enable the easy implementation of ML and Artificial Intelligence (AI) tools in valuable solutions for the bio-community. There is no one-fits-all procedure; however, this review should help identify the potential for automating model building by combining first-principles biotechnology knowledge and ML methods to address the reproducibility crisis in bioprocess development.
引用
收藏
页数:21
相关论文
共 249 条
[1]   Challenges for the Repeatability of Deep Learning Models [J].
Alahmari, Saeed S. ;
Goldgof, Dmitry B. ;
Mouton, Peter R. ;
Hall, Lawrence O. .
IEEE ACCESS, 2020, 8 :211860-211868
[2]   Bioprocess control: Advances and challenges [J].
Alford, Joseph S. .
COMPUTERS & CHEMICAL ENGINEERING, 2006, 30 (10-12) :1464-1475
[3]   Unified rational protein engineering with sequence-based deep representation learning [J].
Alley, Ethan C. ;
Khimulya, Grigory ;
Biswas, Surojit ;
AlQuraishi, Mohammed ;
Church, George M. .
NATURE METHODS, 2019, 16 (12) :1315-+
[4]   Principal component analysis of proteomics (PCAP) as a tool to direct metabolic engineering [J].
Alonso-Gutierrez, Jorge ;
Kim, Eun-Mi ;
Batth, Tanveer S. ;
Cho, Nathan ;
Hu, Qijun ;
Chan, Leanne Jade G. ;
Petzold, Christopher J. ;
Hinson, Nathan J. ;
Adams, Paul D. ;
Keasling, Jay D. ;
Martin, Hector Garcia ;
Lee, Taek Soon .
METABOLIC ENGINEERING, 2015, 28 :123-133
[5]   A Comprehensive Evaluation and Benchmarking of Convolutional Neural Networks for Melanoma Diagnosis [J].
Alzahrani, Saeed ;
Al-Bander, Baidaa ;
Al-Nuaimy, Waleed .
CANCERS, 2021, 13 (17)
[6]   Novel Micro-Bioreactor High Throughput Technology for Cell Culture Process Development: Reproducibility and Scalability Assessment of Fed-Batch CHO Cultures [J].
Amanullah, Ashraf ;
Otero, Jose Manuel ;
Mikola, Mark ;
Hsu, Amy ;
Zhang, Jinyou ;
Aunins, John ;
Schreyer, H. Brett ;
Hope, James A. ;
Russo, A. Peter .
BIOTECHNOLOGY AND BIOENGINEERING, 2010, 106 (01) :57-67
[7]  
[Anonymous], 2019, MOF MECH PROPERTIES
[8]   A NanoFE simulation-based surrogate machine learning model to predict mechanical functionality of protein networks from live confocal imaging [J].
Asgharzadeh, Pouyan ;
Birkhold, Annette, I ;
Trivedi, Zubin ;
Oezdemir, Bugra ;
Reski, Ralf ;
Roehrle, Oliver .
COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2020, 18 :2774-2788
[9]  
Ash J.T., 2021, GONE FISHING NEURAL, P13
[10]   Assuring the Machine Learning Lifecycle: Desiderata, Methods, and Challenges [J].
Ashmore, Rob ;
Calinescu, Radu ;
Paterson, Colin .
ACM COMPUTING SURVEYS, 2021, 54 (05)