Prediction of peanut protein solubility based on the evaluation model established by supervised principal component regression

Food Chem. 2017 Mar 1:218:553-560. doi: 10.1016/j.foodchem.2016.09.091. Epub 2016 Sep 16.

Abstract

Supervised principal component regression (SPCR) analysis was adopted to establish the evaluation model of peanut protein solubility. Sixty-six peanut varieties were analysed in the present study. Results showed there was intimate correlation between protein solubility and other indexes. At 0.05 level, these 11 indexes, namely crude fat, crude protein, total sugar, cystine, arginine, conarachin I, 37.5kDa, 23.5kDa, 15.5kDa, protein extraction rate, and kernel ratio, were correlated with protein solubility and were extracted to for establishing the SPCR model. At 0.01 level, a simper model was built between the four indexes (crude protein, cystine, conarachin I, and 15.5kDa) and protein solubility. Verification results showed that the coefficients between theoretical and experimental values were 0.815 (p<0.05) and 0.699 (p<0.01), respectively, which indicated both models can forecast the protein solubility effectively. The application of models was more convenient and efficient than traditional determination method.

Keywords: Evaluation model; Peanut protein solubility; Prediction; Supervised principal component analysis.

MeSH terms

  • Arachis / chemistry*
  • Models, Theoretical
  • Plant Proteins / chemistry*
  • Principal Component Analysis*
  • Regression Analysis
  • Solubility

Substances

  • Plant Proteins