AI Article Synopsis

  • Near-infrared (NIR) spectroscopy is a rapid and cost-effective method used for analyzing bioactive compounds in tea, but overlapping spectra of catechins in black tea challenge its accuracy.
  • A new wavelength selection algorithm called feature interval combination sensitivity segmentation (FIC-SS) improves the extraction of relevant wavelengths, enabling more precise analysis of catechins.
  • Four predictive models utilizing extreme learning machines (ELMs) demonstrate superior accuracy for estimating catechins in black tea, surpassing traditional methods and offering a novel approach for quantifying bioactive compounds.

Article Abstract

As a non-destructive, fast, and cost-effective technique, near-infrared (NIR) spectroscopy has been widely used to determine the content of bioactive components in tea. However, due to the similar chemical structures of various catechins in black tea, the NIR spectra of black tea severely overlap in certain bands, causing nonlinear relationships and reducing analytical accuracy. In addition, the number of NIR spectral wavelengths is much larger than that of the modeled samples, and the small-sample learning problem is rather typical. These issues make the use of NIRS to simultaneously determine black tea catechins challenging. To address the above problems, this study innovatively proposed a wavelength selection algorithm based on feature interval combination sensitivity segmentation (FIC-SS). This algorithm extracts wavelengths at both coarse-grained and fine-grained levels, achieving higher accuracy and stability in feature wavelength extraction. On this basis, the study built four simultaneous prediction models for catechins based on extreme learning machines (ELMs), utilizing their powerful nonlinear learning ability and simple model structure to achieve simultaneous and accurate prediction of catechins. The experimental results showed that for the full spectrum, the ELM model has better prediction performance than the partial least squares model for epicatechin (EC), epicatechin gallate (ECG), epigallocatechin (EGC), and epigallocatechin gallate (EGCG). For the feature wavelengths, our proposed FIC-SS-ELM model enjoys higher prediction performance than ELM models based on other wavelength selection algorithms; it can simultaneously and accurately predict the content of EC (Rp2 = 0.91, RMSEP = 0.019), ECG (Rp2 = 0.96, RMSEP = 0.11), EGC (Rp2 = 0.97, RMSEP = 0.15), and EGCG (Rp2 = 0.97, RMSEP = 0.35) in black tea. The results of this study provide a new method for the quantitative determination of the bioactive components of black tea.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11174505PMC
http://dx.doi.org/10.3390/s24113362DOI Listing

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