4.7 Review

Miniaturized NIR Spectroscopy in Food Analysis and Quality Control: Promises, Challenges, and Perspectives

期刊

FOODS
卷 11, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/foods11101465

关键词

food quality; food fraud; quality control; near-infrared; NIR sensors; miniaturization; handheld; portable; vibrational spectroscopy

资金

  1. Austrian Science Fund (FWF) [P32004-N28]
  2. Austrian Science Fund (FWF) [P32004] Funding Source: Austrian Science Fund (FWF)

向作者/读者索取更多资源

The ongoing miniaturization of NIR spectrometers provides significant benefits in the field of food analysis. Various factors affect the performance of these devices in different analytical scenarios. Systematic evaluation studies are being conducted to assess the accuracy and reliability of miniaturized spectrometers based on different technologies. Advanced calibration methods and quantum-mechanical simulation improve the performance and information gathered from NIR spectra. A data-fusion framework enables intelligent design of future NIR analyses using miniaturized instruments in the complex matrix of food samples.
The ongoing miniaturization of spectrometers creates a perfect synergy with the common advantages of near-infrared (NIR) spectroscopy, which together provide particularly significant benefits in the field of food analysis. The combination of portability and direct onsite application with high throughput and a noninvasive way of analysis is a decisive advantage in the food industry, which features a diverse production and supply chain. A miniaturized NIR analytical framework is readily applicable to combat various food safety risks, where compromised quality may result from an accidental or intentional (i.e., food fraud) origin. In this review, the characteristics of miniaturized NIR sensors are discussed in comparison to benchtop laboratory spectrometers regarding their performance, applicability, and optimization of methodology. Miniaturized NIR spectrometers remarkably increase the flexibility of analysis; however, various factors affect the performance of these devices in different analytical scenarios. Currently, it is a focused research direction to perform systematic evaluation studies of the accuracy and reliability of various miniaturized spectrometers that are based on different technologies; e.g., Fourier transform (FT)-NIR, micro-optoelectro-mechanical system (MOEMS)-based Hadamard mask, or linear variable filter (LVF) coupled with an array detector, among others. Progressing technology has been accompanied by innovative data-analysis methods integrated into the package of a micro-NIR analytical framework to improve its accuracy, reliability, and applicability. Advanced calibration methods (e.g., artificial neural networks (ANN) and nonlinear regression) directly improve the performance of miniaturized instruments in challenging analyses, and balance the accuracy of these instruments toward laboratory spectrometers. The quantum-mechanical simulation of NIR spectra reveals the wavenumber regions where the best-correlated spectral information resides and unveils the interactions of the target analyte with the surrounding matrix, ultimately enhancing the information gathered from the NIR spectra. A data-fusion framework offers a combination of spectral information from sensors that operate in different wavelength regions and enables parallelization of spectral pretreatments. This set of methods enables the intelligent design of future NIR analyses using miniaturized instruments, which is critically important for samples with a complex matrix typical of food raw material and shelf products.

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