Utilization of multiple-dilution fluorescence fingerprint facilitates prediction of chemical attributes in spice extracts

Food Chem. 2024 Apr 16:438:138028. doi: 10.1016/j.foodchem.2023.138028. Epub 2023 Dec 12.

Abstract

Fluorescence Fingerprint (FF) is a powerful tool for rapid quality assessment of various foods and plant-derived products. However, the conventional utilization of FFs measured at a single dilution level (DL) to substitute chemical analyses is extremely challenging, especially for multicomponent materials like spice extracts because fluorescence intensity and concentration widely differ between components, with complex phenomena like inner filter effects. Here, we proposed a new strategy to use the meta-data comprised of FFs measured at multiple DLs with machine learning to estimate common chemical attributes including total polyphenol and flavonoid contents, and antioxidant abilities. This strategy achieved more consistently satisfactory performance in estimation of all chemical attributes of spice extracts compared to using a single DL. Hence, the workflow employed in this study is expected to serve as an alternative method to quickly evaluate the chemical quality of spice extracts, as well as other plant products and food materials.

Keywords: Artificial neural network; Dilution level; Excitation-emission matrix; Fluorescence fingerprint; Heterogenous ensemble; Partial least squares; Random forest; Spice seed extract; Support vector machine.

MeSH terms

  • Antioxidants* / chemistry
  • Fluorescence
  • Plant Extracts / chemistry
  • Spices*

Substances

  • Antioxidants
  • Plant Extracts