Issue 2, 2023

Nontargeted detection and recognition of adulterants in milk powder using Raman imaging and neural networks

Abstract

Raman imaging technology combined with targeted chemometrics can play a vital role in the rapid detection of milk powder adulteration, which threatens the lives of infants and other people. However, these methods always suffer from a narrow detection range. Nontargeted methods show a broader detection range but cannot recognize adulterants. Here, a novel nontargeted chemometric method, named as the adversarial discrimination neural network (ADNN), is proposed to detect and recognize adulterants simultaneously. The method comprises building a tight boundary in the feature space of Raman images to discriminate milk powder samples from the majority of adulterated cases. Then a first-order partial derivative of the ADNN is calculated to recognize different adulterants through a local approximation strategy. A validation set containing samples adulterated with various adulterants at concentrations ranging from 0.3% to 1.5% w/w was provided to challenge the proposed method. The validated detection accuracy of the proposed method for authentic and adulterated samples was 99.9% and 99.7% and the adulterants were recognized correctly. The ADNN-Raman represents a novel nontargeted and end-to-end tool for detecting and recognizing adulterants in milk powder simultaneously, providing new insights into nontargeted chemometric analysis.

Graphical abstract: Nontargeted detection and recognition of adulterants in milk powder using Raman imaging and neural networks

Supplementary files

Article information

Article type
Paper
Submitted
19 Sep 2022
Accepted
03 Dec 2022
First published
07 Dec 2022

Analyst, 2023,148, 412-421

Nontargeted detection and recognition of adulterants in milk powder using Raman imaging and neural networks

Q. Xia, Z. Huang, P. Zhang, H. Bu, L. Bao and D. Chen, Analyst, 2023, 148, 412 DOI: 10.1039/D2AN01540D

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