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利用光谱表型分析鉴别转基因水稻种子的简明级联方法

Concise Cascade Methods for Transgenic Rice Seed Discrimination using Spectral Phenotyping.

作者信息

Zhang Jinnuo, Feng Xuping, Jin Jian, Fang Hui

机构信息

Department of Agricultural and Biological Engineering, Purdue University, West Lafayette, IN 47907, USA.

College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou, China.

出版信息

Plant Phenomics. 2023 Jul 28;5:0071. doi: 10.34133/plantphenomics.0071. eCollection 2023.

Abstract

Currently, the presence of genetically modified (GM) organisms in agro-food markets is strictly regulated by enacted legislation worldwide. It is essential to ensure the traceability of these transgenic products for food safety, consumer choice, environmental monitoring, market integrity, and scientific research. However, detecting the existence of GM organisms involves a combination of complex, time-consuming, and labor-intensive techniques requiring high-level professional skills. In this paper, a concise and rapid pipeline method to identify transgenic rice seeds was proposed on the basis of spectral imaging technologies and the deep learning approach. The composition of metabolome across 3 rice seed lines containing the gene was compared and studied, substantiating the intrinsic variability induced by these GM traits. Results showed that near-infrared and terahertz spectra from different genotypes could reveal the regularity of GM metabolic variation. The established cascade deep learning model divided GM discrimination into 2 phases including variety classification and GM status identification. It could be found that terahertz absorption spectra contained more valuable features and achieved the highest accuracy of 97.04% for variety classification and 99.71% for GM status identification. Moreover, a modified guided backpropagation algorithm was proposed to select the task-specific characteristic wavelengths for further reducing the redundancy of the original spectra. The experimental validation of the cascade discriminant method in conjunction with spectroscopy confirmed its viability, simplicity, and effectiveness as a valuable tool for the detection of GM rice seeds. This approach also demonstrated its great potential in distilling crucial features for expedited transgenic risk assessment.

摘要

目前,全球范围内的农业食品市场中,转基因生物的存在受到已颁布法规的严格监管。确保这些转基因产品的可追溯性对于食品安全、消费者选择、环境监测、市场诚信和科学研究至关重要。然而,检测转基因生物的存在涉及复杂、耗时且 labor-intensive 的技术组合,需要高水平的专业技能。本文基于光谱成像技术和深度学习方法,提出了一种简洁快速的管道方法来识别转基因水稻种子。比较并研究了包含该基因的 3 个水稻种子品系的代谢组组成,证实了这些转基因性状引起的内在变异性。结果表明,不同基因型的近红外和太赫兹光谱可以揭示转基因代谢变化的规律。所建立的级联深度学习模型将转基因鉴别分为品种分类和转基因状态识别两个阶段。可以发现,太赫兹吸收光谱包含更多有价值的特征,品种分类的最高准确率达到 97.04%,转基因状态识别的最高准确率达到 99.71%。此外,还提出了一种改进的引导反向传播算法来选择特定任务的特征波长,以进一步减少原始光谱的冗余。结合光谱学对级联判别方法的实验验证证实了其作为检测转基因水稻种子的有价值工具的可行性、简便性和有效性。这种方法还展示了其在提取关键特征以加快转基因风险评估方面的巨大潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2594/10380542/16578e9ea3f2/plantphenomics.0071.fig.003.jpg

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