Machine learning methods for predicting the key metabolic parameters of Halomonas elongata DSM 2581 T

被引:1
|
作者
Lai, Guanxue [1 ]
Yu, Junxiong [2 ]
Wang, Jing [3 ]
Li, Weihua [1 ]
Liu, Guixia [1 ]
Wang, Zejian [2 ]
Guo, Meijin [2 ]
Tang, Yun [1 ]
机构
[1] East China Univ Sci & Technol, Shanghai Frontiers Sci Ctr Optogenet Tech Cell Met, Sch Pharm, Shanghai 200237, Peoples R China
[2] East China Univ Sci & Technol, State Key Lab Bioreactor Engn, Shanghai 200237, Peoples R China
[3] East China Univ Sci & Technol, Dept Chem Engn Energy Resources, Shanghai 200237, Peoples R China
关键词
Halomonas elongata DSM 2581( T); Machine learning; Fermentation kinetics; Feature engineering; Predictive analytics; SOFT-SENSOR; TRANSPORTER TEAABC; MODEL; ECTOINE; HYDROXYECTOINE; KINETICS; GROWTH;
D O I
10.1007/s00253-023-12633-x
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
Ectoine is generally produced by the fermentation process of Halomonas elongata DSM 2581( T), which is one of the primary industrial ectoine production techniques. To effectively monitor and control the fermentation process, the important parameters require accurate real-time measurement. However, for ectoine fermentation, three critical parameters (cell optical density, glucose, and product concentration) cannot be measured conveniently in real-time due to time variation, strong coupling, and other constraints. As a result, our work effectively created a series of hybrid models to predict the values of these three parameters incorporating both fermentation kinetics and machine learning approaches. Compared with the traditional machine learning models, our models solve the problem of insufficient data which is common in fermentation. In addition, a simple kinetic modeling is only applicable to specific physical conditions, so different physical conditions require refitting the function, which is tedious to operate. However, our models also overcome this limitation. In this work, we compared different hybrid models based on 5 feature engineering methods, 11 machine-learning approaches, and 2 kinetic models. The best models for predicting three key parameters, respectively, are as follows: CORR-Ensemble (R-2: 0.983 & PLUSMN; 0.0, RMSE: 0.086 & PLUSMN; 0.0, MAE: 0.07 & PLUSMN; 0.0), SBE-Ensemble (R-2: 0.972 & PLUSMN; 0.0, RMSE: 0.127 & PLUSMN; 0.0, MAE: 0.078 & PLUSMN; 0.0), and SBE-Ensemble (R-2:0.98 & PLUSMN; 0.0, RMSE: 0.023 & PLUSMN; 0.001, MAE: 0.018 & PLUSMN; 0.001). To verify the universality and stability of constructed models, we have done an experimental verification, and its results showed that our proposed models have excellent performance.
引用
收藏
页码:5351 / 5365
页数:15
相关论文
共 50 条
  • [31] Predicting the concentration of sulfate using machine learning methods
    Tahraoui, Hichem
    Belhadj, Abd-Elmouneim
    Amrane, Abdeltif
    Houssein, Essam H.
    EARTH SCIENCE INFORMATICS, 2022, 15 (02) : 1023 - 1044
  • [32] Predicting Cervical Cancer using Machine Learning Methods
    Alsmariy, Riham
    Healy, Graham
    Abdelhafez, Hoda
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2020, 11 (07) : 173 - 184
  • [33] Predicting the concentration of sulfate using machine learning methods
    Hichem Tahraoui
    Abd-Elmouneïm Belhadj
    Abdeltif Amrane
    Essam H. Houssein
    Earth Science Informatics, 2022, 15 : 1023 - 1044
  • [34] Predicting cervical cancer using machine learning methods
    Alsmariy R.
    Healy G.
    Abdelhafez H.
    1600, Science and Information Organization (11): : 173 - 184
  • [35] Applying Machine Learning Methods for Predicting Sand Storms
    Shaiba, Hadil Ahmed
    Alaashoub, Naseem Sulaiman
    Alzahrani, Anfal Ahmed
    2018 1ST INTERNATIONAL CONFERENCE ON COMPUTER APPLICATIONS & INFORMATION SECURITY (ICCAIS' 2018), 2018,
  • [36] Predicting preterm birth using machine learning methods
    Kloska, Anna
    Harmoza, Alicja
    Kloska, Sylwester M.
    Marciniak, Tomasz
    Sadowska-Krawczenko, Iwona
    SCIENTIFIC REPORTS, 2025, 15 (01):
  • [37] Assessing and predicting water quality index with key water parameters by machine learning models in coastal cities, China
    Xu, Jing
    Mo, Yuming
    Zhu, Senlin
    Wu, Jinran
    Jin, Guangqiu
    Wang, You-Gan
    Ji, Qingfeng
    Li, Ling
    HELIYON, 2024, 10 (13)
  • [38] Machine Learning Methods for Analysis of Metabolic Data and Metabolic Pathway Modeling
    Cuperlovic-Culf, Miroslava
    METABOLITES, 2018, 8 (01)
  • [39] Predicting the Occurrence of Metabolic Syndrome Using Machine Learning Models
    Trigka, Maria
    Dritsas, Elias
    Lahoz-Beltra, Rafael
    Zhang, Yudong
    COMPUTATION, 2023, 11 (09)
  • [40] Predicting Renal Toxicity of Compounds with Deep Learning and Machine Learning Methods
    Bitopan Mazumdar
    Pankaj Kumar Deva Sarma
    Hridoy Jyoti Mahanta
    SN Computer Science, 4 (6)