4.7 Article

Trace Identification and Visualization of Multiple Benzimidazole Pesticide Residues on Toona sinensis Leaves Using Terahertz Imaging Combined with Deep Learning

期刊

出版社

MDPI
DOI: 10.3390/ijms22073425

关键词

pesticide residues; terahertz imaging; deep learning; image visualization; food safety

资金

  1. Key R&D Program of Zhejiang Province [2019C02083]
  2. National key RD Program [2018YFD0701001, 2018YFD0700704]
  3. National Natural Science Foundation of China [31701654]
  4. National key point research and invention program of the thirteenth [2016YFD0700304]
  5. Huzhou PublicWelfare Technology Application Research Project [2018GZ17]

向作者/读者索取更多资源

The study introduced an advanced method for the rapid identification of trace and multiple similar benzimidazole pesticide residues on the surface of Toona sinensis leaves. By combining high-throughput terahertz imaging technology with a deep learning framework, the new approach showed high prediction accuracies and potential for rapid-sensing detection.
Molecular spectroscopy has been widely used to identify pesticides. The main limitation of this approach is the difficulty of identifying pesticides with similar molecular structures. When these pesticide residues are in trace and mixed states in plants, it poses great challenges for practical identification. This study proposed a state-of-the-art method for the rapid identification of trace (10 mg.L-1) and multiple similar benzimidazole pesticide residues on the surface of Toona sinensis leaves, mainly including benzoyl (BNL), carbendazim (BCM), thiabendazole (TBZ), and their mixtures. The new method combines high-throughput terahertz (THz) imaging technology with a deep learning framework. To further improve the model reliability beyond the THz fingerprint peaks (BNL: 0.70, 1.07, 2.20 THz; BCM: 1.16, 1.35, 2.32 THz; TBZ: 0.92, 1.24, 1.66, 1.95, 2.58 THz), we extracted the absorption spectra in frequencies of 0.2-2.2 THz from images as the input to the deep convolution neural network (DCNN). Compared with fuzzy Sammon clustering and four back-propagation neural network (BPNN) models (TrainCGB, TrainCGF, TrainCGP, and TrainRP), DCNN achieved the highest prediction accuracies of 100%, 94.51%, 96.26%, 94.64%, 98.81%, 94.90%, 96.17%, and 96.99% for the control check group, BNL, BCM, TBZ, BNL + BCM, BNL + TBZ, BCM + TBZ, and BNL + BCM + TBZ, respectively. Taking advantage of THz imaging and DCNN, the image visualization of pesticide distribution and residue types on leaves was realized simultaneously. The results demonstrated that THz imaging and deep learning can be potentially adopted for rapid-sensing detection of trace multi-residues on leaf surfaces, which is of great significance for agriculture and food safety.

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