Rapid discrimination of different primary processing Arabica coffee beans using FT-IR and machine learning.

Journal: Food research international (Ottawa, Ont.)
PMID:

Abstract

In this study, fourier transform infrared spectroscopy (FT-IR) analysis was combined with machine learning, while various analytical techniques such as colorimetry, low-field nuclear magnetic resonance spectroscopy, scanning electron microscope, two-dimensional correlation spectroscopy (2D-COS), and multivariate statistical analysis were employed to rapidly distinguish and compare three different primary processed Arabica coffee beans. The results showed that the sun-exposed processed beans (SPB) exhibited the highest total color difference value and the largest pore size. Meanwhile, the wet-processed beans (WPB) retained the most bound and immobilized water in green and roast coffee beans. The FT-IR data analysis results indicated that the functional group composition was similar across the three different primary processed coffee beans, while significant differences in structural characteristics were observed in 2D-COS. The multivariate statistical analysis demonstrated that the orthogonal partial least squares-discriminant analysis model could effectively distinguish the different types of coffee beans. The machine learning results indicated that the six models could rapidly identify different samples of primary processed coffee beans. Notably, the SNV-Voting model demonstrated superior predictive performance, with an average precision, recall, and F1-score of 88.67%, 88.67%, and 0.88 for three primary processing coffee beans, respectively.

Authors

  • Zelin Li
    Department of Electrical Engineering, City University of Hong Kong, Hong Kong 999077, China.
  • Ziqi Gao
    Data Science and Analytics, The Hong Kong University of Science and Technology, Guangzhou, 511400, China.
  • Chao Li
    McGill University Health Centre, McGill Adult Unit for Congenital Heart Disease Excellence, Montreal, Québec, Canada.
  • Jing Yan
    Department of Neurology, Shanghai Pudong New Area People's Hospital, Shanghai, China.
  • Yifan Hu
    Tencent You Tu Lab, Tencent, Shenzhen, China.
  • Fangyu Fan
    College of Biological Science and Food Engineering, Southwest Forestry University, Kunming 650224, China.
  • Zhirui Niu
    Yunnan Institute of Product Quality Supervision and Inspection, National Tropical Agricultural By-products Quality Inspection and Testing Center, Kunming 650223, China.
  • Xiuwei Liu
    Agro-Products Processing Research Institute, Yunnan Academy of Agricultural Sciences, Kunming 650223, China. Electronic address: liuxiuwei0305@hotmail.com.
  • Jiashun Gong
    Agro-Products Processing Research Institute, Yunnan Academy of Agricultural Sciences, Kunming 650223, China. Electronic address: gong199@163.com.
  • Hao Tian
    Institute of Medicinal Plants, Yunnan Academy of Agricultural Sciences, Kunming 650200, China; Yunnan Technical Center for Quality of Chinese Materia Medica, Kunming 650200, China.