Assessing Seasonal Effects on Identification of Cultivation Methods of Short–Growth Cycle Brassica chinensis L. Using IRMS and NIRS

Author:

Liu Xing12,Fan Kai12,Lu Yangyang12,Zhao Hong12,Rao Qinxiong12,Geng Hao12,Chen Yijiao12,Rogers Karyne Maree34ORCID,Song Weiguo12

Affiliation:

1. Institute for Agro-Food Standards and Testing Technology, Shanghai Academy of Agricultural Sciences, Shanghai 201403, China

2. Shanghai Service Platform of Agro-Products Quality and Safety Evaluation Technology, Shanghai 201403, China

3. National Isotope Centre, GNS Science, 30 Gracefield Road, Lower Hutt 5040, New Zealand

4. Institute of Agro-Product Safety and Nutrition, Zhejiang Academy of Agricultural Sciences, Hangzhou 310021, China

Abstract

Seasonal (temporal) variations can influence the δ13C, δ2H, δ18O, and δ15N values and nutrient composition of organic (ORG), green (GRE), and conventional (CON) vegetables with a short growth cycle. Stable isotope ratio mass spectrometry (IRMS) and near-infrared spectroscopy (NIRS) combined with the partial least squares-discriminant analysis (PLS-DA) method were used to investigate seasonal effects on the identification of ORG, GRE, and CON Brassica chinensis L. samples (BCs). The results showed that δ15N values had significant differences among the three cultivation methods and that δ13C, δ2H, and δ18O values were significantly higher in winter and spring and lower in summer. The NIR spectra were relatively clustered across seasons. Neither IRMS-PLS-DA nor NIRS-PLS-DA could effectively identify all BC cultivation methods due to seasonal effects, while IRMS-NIRS-PLS-DA combined with Norris smoothing and derivative pretreatment had better predictive abilities, with an 89.80% accuracy for ORG and BCs, 88.89% for ORG and GRE BCs, and 75.00% for GRE and CON BCs. The IRMS-NIRS-PLS-DA provided an effective and robust method to identify BC cultivation methods, integrating multi-seasonal differences.

Funder

Shanghai Agriculture Applied Technology Development Program

Shanghai Academy of Agricultural Sciences Program for Excellent Research Team

Publisher

MDPI AG

Reference35 articles.

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