Abstract

In recent years, the rapid development of genetically modified (GM) technology has raised concerns about the safety of GM crops and foods for human health and the ecological environment. Gene flow from GM crops to other crops, especially in the Brassicaceae family, might pose a threat to the environment due to their weediness. Hence, finding reliable, quick, and low-cost methods to detect and monitor the presence of GM crops and crop products is important. In this study, we used visible near-infrared (Vis-NIR) spectroscopy for the effective discrimination of GM and non-GM Brassica napus, B. rapa, and F1 hybrids (B. rapa X GM B. napus). Initially, Vis-NIR spectra were collected from the plants, and the spectra were preprocessed. A combination of different preprocessing methods (four methods) and various modeling approaches (eight methods) was used for effective discrimination. Among the different combinations, the Savitzky-Golay and Support Vector Machine combination was found to be an optimal model in the discrimination of GM, non-GM, and hybrid plants with the highest accuracy rate (100%). The use of a Convolutional Neural Network with Normalization resulted in 98.9%. The same higher accuracy was found in the use of Gradient Boosted Trees and Fast Large Margin approaches. Later, phenolic acid concentration among the different plants was assessed using GC-MS analysis. Partial least squares regression analysis of Vis-NIR spectra and biochemical characteristics showed significant correlations in their respective changes. The results showed that handheld Vis-NIR spectroscopy combined with chemometric analyses could be used for the effective discrimination of GM and non-GM B. napus, B. rapa, and F1 hybrids. Biochemical composition analysis can also be combined with the Vis-NIR spectra for efficient discrimination.

Highlights

  • IntroductionOilseed rape (Brassica napus L.), known as canola, is one of the most important oil crops, belongs to the Brassicaceae family which has 338 genera and 3709 species [1]

  • This article is an open access articleOilseed rape (Brassica napus L.), known as canola, is one of the most important oil crops, belongs to the Brassicaceae family which has 338 genera and 3709 species [1]

  • In the present study, we aimed to explore the feasibility of effective discrimination between genetically modified (GM) and non-GM B. napus, and their hybrids with B. rapa (B. rapa X GM B. napus), by using visible near-infrared (Vis-NIR) spectroscopy in combination with different preprocessing and machine learning methods and assessing the phenolic compounds using GC-MS analysis

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Summary

Introduction

Oilseed rape (Brassica napus L.), known as canola, is one of the most important oil crops, belongs to the Brassicaceae family which has 338 genera and 3709 species [1]. It produces 75 million tonnes per year of oil globally, among which approximately 60% of rapeseed oil is used for food, 38% for industrial uses, and 3% for feed [2]. B. napus (AACC, 2n = 38) originated by natural hybridization between two diploid progenitors, B. rapa Several studies have reported on the hybridization of B. napus with close relative species, among which B. rapa is the most common [8,9]

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