Machine learning-enabled flexible luminescent sensor for non-destructive mapping antibiotics distribution on seafood

文献类型: 外文期刊

第一作者: Wu, Lidong

作者: Wu, Lidong;Li, Yuanxin;Qin, Haiyang;Zhao, Jinxue;Zhai, Xuejing;Li, Peiyi;Wu, Lidong;Li, Yuanxin;Qin, Haiyang;Zhao, Jinxue;Zhai, Xuejing;Li, Peiyi;Wu, Lidong;Li, Yuanxin;Zhai, Xuejing;Li, Peiyi;Li, Zhibo;Wu, Lidong;Qin, Haiyang;Zhao, Jinxue;Li, Peiyi;Xiang, Xueping

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关键词: Luminescent hydrogel sensors; Machine learning; Non-destructive identification; Concentration-distribution patterns; Tetracycline

期刊名称:CHEMICAL ENGINEERING JOURNAL ( 影响因子:13.2; 五年影响因子:13.5 )

ISSN: 1385-8947

年卷期: 2025 年 510 卷

页码:

收录情况: SCI

摘要: Fast, simultaneous, and non-destructive identification of antibiotic distribution on food is critical to public health. Here We present a novel methodology for mapping antibiotics using luminescent hydrogel sensors (LHS) enhanced by machine learning. The LHS comprises a hydrogel substrate with luminescent europium ions (Eu3+), undergoing chromatic alterations upon exposure to tetracycline (TC). These luminescent spectral variations are captured using a smartphone and used to train convolutional neural networks (CNNs), resulting in high accuracy (exceeding 92 %) for identifying and quantifying concentration-distribution patterns. The LHS displays a linear detection range of TC (5 similar to 100 mu g L-1) with a detection limit of 0.58 mu g L-1. The trained LHS-CNN system can simultaneously delineate the distribution of TC on cross-sections of animal-derived foods or moistened animal skin, representing a realistic and complex environmental setting. This method has the potential to advance non-destructive detection and identification of molecules on food substrates, including those with curved surfaces, without the need for enrichment or additional sample preparation.

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