4.6 Article

Comparison of partial least square, artificial neural network, and support vector regressions for real-time monitoring of CHO cell culture processes using in situ near-infrared spectroscopy

期刊

BIOTECHNOLOGY AND BIOENGINEERING
卷 119, 期 2, 页码 535-549

出版社

WILEY
DOI: 10.1002/bit.27997

关键词

artificial neural network regression (ANNR); in situ real-time monitoring by near-infrared spectroscopy; partial least squares regression (PLSR); process analytical technology; support vector regression (SVR)

资金

  1. National Council of Science and Technology of Mexico (CONACyT)
  2. Veracruz Institute of Technology
  3. University of Lorraine
  4. French Ministry of Europe and Foreign Affairs
  5. French National Agency for Research (ANR)
  6. Consejo Veracruzano de Investigacion Cientifica y Desarrollo Tecnologico (COVEICYDET)

向作者/读者索取更多资源

Research indicates that spectroscopic models based on ANNR and SVR show superior performance in cell culture monitoring, with better management of inter-batch heterogeneity and enhanced specificity. PLSR performs less effectively, while SVR and ANNR models show better results for all monitored parameters such as glucose.
The biopharmaceutical industry must guarantee the efficiency and biosafety of biological medicines, which are quite sensitive to cell culture process variability. Real-time monitoring procedures based on vibrational spectroscopy such as near-infrared (NIR) spectroscopy, are then emerging to support innovative strategies for retro-control of key parameters as substrates and by-product concentration. Whereas monitoring models are mainly constructed using partial least squares regression (PLSR), spectroscopic models based on artificial neural networks (ANNR) and support vector regression (SVR) are emerging with promising results. Unfortunately, analysis of their performance in cell culture monitoring has been limited. This study was then focused to assess their performance and suitability for the cell culture process challenges. PLSR had inferior values of the determination coefficient (R-2) for all the monitored parameters (i.e., 0.85, 0.93, and 0.98, respectively for the PLSR, SVR, and ANNR models for glucose). In general, PLSR had a limited performance while models based on ANNR and SVR have been shown superior due to better management of inter-batch heterogeneity and enhanced specificity. Overall, the use of SVR and ANNR for the generation of calibration models enhanced the potential of NIR spectroscopy as a monitoring tool.

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