Root cause investigation of deviations in protein chromatography based on mechanistic models and artificial neural networks

J Chromatogr A. 2017 Sep 15:1515:146-153. doi: 10.1016/j.chroma.2017.07.089. Epub 2017 Aug 1.

Abstract

In protein chromatography, process variations, such as aging of column or process errors, can result in deviations of the product and impurity levels. Consequently, the process performance described by purity, yield, or production rate may decrease. Based on visual inspection of the UV signal, it is hard to identify the source of the error and almost unfeasible to determine the quantity of deviation. The problem becomes even more pronounced, if multiple root causes of the deviation are interconnected and lead to an observable deviation. In the presented work, a novel method based on the combination of mechanistic chromatography models and the artificial neural networks is suggested to solve this problem. In a case study using a model protein mixture, the determination of deviations in column capacity and elution gradient length was shown. Maximal errors of 1.5% and 4.90% for the prediction of deviation in column capacity and elution gradient length respectively demonstrated the capability of this method for root cause investigation.

Keywords: Artificial neural networks; Ion-exchange chromatography; Protein chromatography modeling; Root cause investigation.

MeSH terms

  • Chromatography, Liquid / instrumentation
  • Chromatography, Liquid / methods*
  • Models, Theoretical
  • Neural Networks, Computer*
  • Proteins / chemistry
  • Proteins / isolation & purification*

Substances

  • Proteins