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Generic Chemometric Models for Metabolite Concentration Prediction Based on Raman Spectra

Authors :
Yousefi-Darani, Abdolrahim
Paquet-Durand, Olivier
von Wrochem, Almut
Classen, Jens
Trankle, Jens
Mertens, Mario
Snelders, Jeroen
Chotteau, Véronique
Mäkinen, Meeri
Handl, Alina
Kadisch, Marvin
Lang, Dietmar
Dumas, Patrick
Hitzmann, Bernd
Yousefi-Darani, Abdolrahim
Paquet-Durand, Olivier
von Wrochem, Almut
Classen, Jens
Trankle, Jens
Mertens, Mario
Snelders, Jeroen
Chotteau, Véronique
Mäkinen, Meeri
Handl, Alina
Kadisch, Marvin
Lang, Dietmar
Dumas, Patrick
Hitzmann, Bernd
Publication Year :
2022

Abstract

Chemometric models for on-line process monitoring have become well established in pharmaceutical bioprocesses. The main drawback is the required calibration effort and the inflexibility regarding system or process changes. So, a recalibration is necessary whenever the process or the setup changes even slightly. With a large and diverse Raman dataset, however, it was possible to generate generic partial least squares regression models to reliably predict the concentrations of important metabolic compounds, such as glucose-, lactate-, and glutamine-indifferent CHO cell cultivations. The data for calibration were collected from various cell cultures from different sites in different companies using different Raman spectrophotometers. In testing, the developed "generic" models were capable of predicting the concentrations of said compounds from a dilution series in FMX-8 mod medium, as well as from an independent CHO cell culture. These spectra were taken with a completely different setup and with different Raman spectrometers, demonstrating the model flexibility. The prediction errors for the tests were mostly in an acceptable range (<10% relative error). This demonstrates that, under the right circumstances and by choosing the calibration data carefully, it is possible to create generic and reliable chemometric models that are transferrable from one process to another without recalibration.<br />QC 20220830

Details

Database :
OAIster
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1400056897
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.3390.s22155581