Li Junmeng, Ren Jie, Cui Ruiyan, Yu Keqiang, Zhao Yanru
College of Mechanical and Electronic Engineering, Northwest A &F University, Yangling, China.
Key Lab Agricultural Internet Things, Ministry of Agriculture & Rural Affairs, Yangling, China.
Front Plant Sci. 2022 Oct 24;13:1007991. doi: 10.3389/fpls.2022.1007991. eCollection 2022.
Heavy metal elements, which inhibit plant development by destroying cell structure and wilting leaves, are easily absorbed by plants and eventually threaten human health the food chain. Recently, with the increasing precision and refinement of optical instruments, optical imaging spectroscopy has gradually been applied to the detection and reaction of heavy metals in plants due to its , real-time, and simple operation compared with traditional chemical analysis methods. Moreover, the emergence of machine learning helps improve detection accuracy, making optical imaging spectroscopy comparable to conventional chemical analysis methods in some situations. This review (a): summarizes the progress of advanced optical imaging spectroscopy techniques coupled with artificial neural network algorithms for plant heavy metal detection over ten years from 2012-2022; (b) briefly describes and compares the principles and characteristics of spectroscopy and traditional chemical techniques applied to plants heavy metal detection, and the advantages of artificial neural network techniques including machine learning and deep learning techniques in combination with spectroscopy; (c) proposes the solutions such as coupling with other analytical and detection methods, portability, to address the challenges of unsatisfactory sensitivity of optical imaging spectroscopy and expensive instruments.
重金属元素通过破坏细胞结构和使叶片枯萎来抑制植物生长发育,它们很容易被植物吸收,并最终通过食物链威胁人类健康。近年来,随着光学仪器的精度和精细化程度不断提高,光学成像光谱技术因其与传统化学分析方法相比具有快速、实时和操作简单的特点,已逐渐应用于植物中重金属的检测和反应研究。此外,机器学习的出现有助于提高检测精度,使光学成像光谱技术在某些情况下可与传统化学分析方法相媲美。本综述:(a)总结了2012年至2022年这十年间先进的光学成像光谱技术结合人工神经网络算法用于植物重金属检测的进展;(b)简要描述和比较了应用于植物重金属检测的光谱技术和传统化学技术的原理及特点,以及包括机器学习和深度学习技术在内的人工神经网络技术与光谱技术相结合的优势;(c)提出了诸如与其他分析和检测方法联用、便携性等解决方案,以应对光学成像光谱技术灵敏度不尽人意和仪器昂贵的挑战。