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基于高光谱结合可解释人工智能的羊肉中兽药残留监测:以氧氟沙星为例

Monitoring of veterinary drug residues in mutton based on hyperspectral combined with explainable AI: A case study of OFX.

作者信息

Dong Fujia, Ma Zhaoyang, Xu Ying, Feng Yingjie, Shi Yingkun, Li Hui, Xing Fukang, Wang Guangxian, Zhang Zhongxiong, Yi Weiguo, Wang Songlei

机构信息

School of Food Science and Engineering, Ningxia University, Yinchuan 750021, China; College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, China.

School of Food Science and Engineering, Ningxia University, Yinchuan 750021, China.

出版信息

Food Chem. 2025 May 15;474:143087. doi: 10.1016/j.foodchem.2025.143087. Epub 2025 Jan 27.

Abstract

Veterinary drug residues in meat seriously harm human health. Rapid and accurate detection of veterinary drug residues is necessary to minimize contamination. Taking ofloxacin (OFX) residues in mutton as an example, the near-infrared hyperspectral imaging combined with explainable AI was used to evaluate the importance of feature wavelengths in the convolutional neural network-stacked sparse auto-encoder (CNN-SSAE) model for chemical properties. Based on this, the qualitative (residue identification-residue level identification) and quantitative detection of OFX residues in mutton was realized. The results showed that the accuracy of CNN-SSAE in identifying residue and residue level of OFX was 100% and 93.65%, respectively, and the correlation coefficients for validation (R) in quantitative detection of OFX residue was 0.8980. In addition, SHapley Additive exPlanation (SHAP) values were used to identify feature wavelengths that contribute the most in the CNN-SSAE model, which effectively explained the quality attribute information that spectral and chemical values may improve the predicted results in the model decision process. The reliability of the CNN-SSAE model was evaluated by statistical validation methods (F-test and T-test). Finally, the visualization diagram of OFX content distribution was established. This study provides a method reference for explainability detection of veterinary drug residues.

摘要

肉类中的兽药残留严重危害人体健康。快速准确地检测兽药残留对于减少污染至关重要。以羊肉中氧氟沙星(OFX)残留为例,采用近红外高光谱成像结合可解释人工智能技术,评估了卷积神经网络堆叠稀疏自编码器(CNN-SSAE)模型中特征波长对化学性质的重要性。在此基础上,实现了羊肉中OFX残留的定性(残留鉴定-残留水平鉴定)和定量检测。结果表明,CNN-SSAE对OFX残留和残留水平的识别准确率分别为100%和93.65%,OFX残留定量检测的验证相关系数(R)为0.8980。此外,使用SHapley Additive exPlanation(SHAP)值来识别在CNN-SSAE模型中贡献最大的特征波长,这有效地解释了光谱和化学值在模型决策过程中可能改善预测结果的质量属性信息。通过统计验证方法(F检验和T检验)评估了CNN-SSAE模型的可靠性。最后,建立了OFX含量分布的可视化图。本研究为兽药残留的可解释性检测提供了方法参考。

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