Support Vector Regression Approach to Predict the Design Space for the Extraction Process of Pueraria lobata

Molecules. 2018 Sep 20;23(10):2405. doi: 10.3390/molecules23102405.

Abstract

A support vector regression (SVR) method was introduced to improve the robustness and predictability of the design space in the implementation of quality by design (QbD), taking the extraction process of Pueraria lobata as a case study. In this paper, extraction time, number of extraction cycles, and liquid⁻solid ratio were identified as critical process parameters (CPPs), and the yield of puerarin, total isoflavonoids, and extracta sicca were the critical quality attributes (CQAs). Models between CQAs and CPPs were constructed using both a conventional quadratic polynomial model (QPM) and the SVR algorithm. The results of the two models indicated that the SVR model had better performance, with a higher R² and lower root-mean-square error (RMSE) and mean absolute deviation (MAD) than those of the QPM. Furthermore, the design space was predicted using a grid search technique. The operational range was extraction time, 24⁻51 min; number of extraction cycles, 3; and liquid⁻solid ratio, 14⁻18 mL/g. This study is the first reported work optimizing the design space of the extraction process of P. lobata based on an SVR model. SVR modeling, with its better prediction accuracy and generalization ability, could be a reliable tool for predicting the design space and shows great potential for the quality control of QbD.

Keywords: Pueraria lobata; QPM; QbD; SVR; design space; extraction process.

MeSH terms

  • Isoflavones / chemistry
  • Isoflavones / isolation & purification*
  • Models, Statistical
  • Plant Extracts / chemistry
  • Plant Roots / chemistry*
  • Pueraria / chemistry*
  • Quality Control
  • Regression Analysis
  • Support Vector Machine

Substances

  • Isoflavones
  • Plant Extracts
  • puerarin