Evaluating chemometric techniques for non-destructive detection of glyphosate residues in single pulse grains by using FTIR spectroscopy

IF 1.4 3区 农林科学 Q4 FOOD SCIENCE & TECHNOLOGY
Sindhu Sindhu, Sonu Sharma, Annamalai Manickavasagan
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引用次数: 0

Abstract

The measurement of pesticide content in pulses at various stages of the supply chain is important in order to manage the maximum residue level (MRL) set by different government agencies. The objective of this study was to develop a non-destructive detection system to determine the glyphosate content in 6 pulses (chickpea, yellow pea, red lentil, large green lentil, French green lentil, and black beluga lentil) based on Fourier transform infrared spectroscopy (FTIR). Organically grown pulses were artificially spiked with glyphosate at 5 concentrations (0 mg/kg, 5 mg/kg, 10 mg/kg, 15 mg/kg and 20 mg/kg) and used for the development and testing of FTIR spectroscopy and associated chemometric models. Principal component analysis (PCA) led to the discrimination and clustering in the pulse samples based on the applied glyphosate levels. Various preprocessing and variable selection techniques were applied on the spectral dataset and partial least squares (PLS) regression was used to predict the glyphosate levels in pulses. The correlation coefficient for prediction (Rp2) of glyphosate was 0.93, 0.92, 0.96, 0.91, 0.96, and 0.92 for yellow pea, chickpea, large green lentil, red lentil, black beluga, and French green lentil, respectively with optimized preprocessing and variable selection techniques.

Abstract Image

利用FTIR光谱评价单脉冲颗粒中草甘膦残留无损检测的化学计量技术
为了管理不同政府机构设定的最大残留水平(MRL),在供应链的各个阶段测量豆类中的农药含量非常重要。本研究的目的是建立基于傅里叶变换红外光谱(FTIR)的6种豆类(鹰嘴豆、黄豌豆、红扁豆、大绿扁豆、法国绿扁豆和黑白扁豆)中草甘膦含量的无损检测系统。以5种浓度(0 mg/kg、5 mg/kg、10 mg/kg、15 mg/kg和20 mg/kg)的草甘膦人为添加到有机生长的豆类中,并用于FTIR光谱和相关化学计量模型的开发和测试。主成分分析(PCA)对脉冲样本进行了基于施用草甘膦水平的判别和聚类。在光谱数据集上应用了各种预处理和变量选择技术,并使用偏最小二乘(PLS)回归预测脉冲中的草甘膦水平。在优化的预处理和变量选择技术下,黄豌豆、鹰嘴豆、大绿扁豆、红扁豆、黑白鲸和法国绿扁豆对草甘膦的预测相关系数(Rp2)分别为0.93、0.92、0.96、0.91、0.96和0.92。
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来源期刊
CiteScore
3.70
自引率
4.20%
发文量
46
审稿时长
>12 weeks
期刊介绍: The JCF publishes peer-reviewed original Research Articles and Opinions that are of direct importance to Food and Feed Safety. This includes Food Packaging, Consumer Products as well as Plant Protection Products, Food Microbiology, Veterinary Drugs, Animal Welfare and Genetic Engineering. All peer-reviewed articles that are published should be devoted to improve Consumer Health Protection. Reviews and discussions are welcomed that address legal and/or regulatory decisions with respect to risk assessment and management of Food and Feed Safety issues on a scientific basis. It addresses an international readership of scientists, risk assessors and managers, and other professionals active in the field of Food and Feed Safety and Consumer Health Protection. Manuscripts – preferably written in English but also in German – are published as Research Articles, Reviews, Methods and Short Communications and should cover aspects including, but not limited to: · Factors influencing Food and Feed Safety · Factors influencing Consumer Health Protection · Factors influencing Consumer Behavior · Exposure science related to Risk Assessment and Risk Management · Regulatory aspects related to Food and Feed Safety, Food Packaging, Consumer Products, Plant Protection Products, Food Microbiology, Veterinary Drugs, Animal Welfare and Genetic Engineering · Analytical methods and method validation related to food control and food processing. The JCF also presents important News, as well as Announcements and Reports about administrative surveillance.
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