化学
纳米传感器
四苯乙烯
聚集诱导发射
鉴定(生物学)
单核细胞增生李斯特菌
阪崎克罗诺杆菌
纳米技术
食品科学
细菌
荧光
植物
遗传学
婴儿配方奶粉
生物
量子力学
材料科学
物理
作者
Yuechun Li,Zhaowen Cui,Ziqi Wang,Longhua Shi,Junchen Zhuo,Shengxue Yan,Yanwei Ji,Yanru Wang,Daohong Zhang,Jianlong Wang
标识
DOI:10.1021/acs.analchem.3c05662
摘要
How timely identification and determination of pathogen species in pathogen-contaminated foods are responsible for rapid and accurate treatments for food safety accidents. Herein, we synthesize four aggregation-induced emissive nanosilicons with different surface potentials and hydrophobicities by encapsulating four tetraphenylethylene derivatives differing in functional groups. The prepared nanosilicons are utilized as receptors to develop a nanosensor array according to their distinctive interactions with pathogens for the rapid and simultaneous discrimination of pathogens. By coupling with machine-learning algorithms, the proposed nanosensor array achieves high performance in identifying eight pathogens within 1 h with high overall accuracy (93.75–100%). Meanwhile, Cronobacter sakazakii and Listeria monocytogenes are taken as model bacteria for the quantitative evaluation of the developed nanosensor array, which can successfully distinguish the concentration of C. sakazakii and L. monocytogenes at more than 103 and 102 CFU mL–1, respectively, and their mixed samples at 105 CFU mL–1 through the artificial neural network. Moreover, eight pathogens at 1 × 104 CFU mL–1 in milk can be successfully identified by the developed nanosensor array, indicating its feasibility in monitoring food hazards.
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