“Three-in-One”: Ultrasensitive Lateral Flow Immunoassay Driven by Magnetic Enrichment and Photothermal Signal Amplification

免疫分析 信号(编程语言) 化学 色谱法 流量(数学) 生物 物理 计算机科学 机械 抗体 免疫学 程序设计语言
作者
Chaoying Wang,Yuanyuan Cheng,Xuechi Yin,Qiaoying Wu,Jiaqi Ma,Qingzhe Zhang,Lei Zhao,Jianlong Wang,Daohong Zhang
出处
期刊:Journal of Agricultural and Food Chemistry [American Chemical Society]
卷期号:72 (32): 18171-18180 被引量:13
标识
DOI:10.1021/acs.jafc.4c04261
摘要

Conventional lateral flow immunoassay (LFIA) usually suffers from poor antimatrix interference, unsatisfactory sensitivity, and lack of quantitative ability for target analyte detection in food matrices. In response to these limits, here, multifunctional nanomaterial ZnFe2O4 nanoparticles (ZFOs) were developed and integrated into LFIA for powerful magnetic separation/enrichment and colorimetric/photothermal target sensing. Under optimum conditions, the detection for clenbuterol (CL) with magnetic enrichment achieves 9-fold higher sensitivity compared to that without enrichment and 162-fold higher sensitivity compared to that based on traditional colloidal golds. Attributing the improved performances of ZFOs, CL can be detected at ultralow levels in pork and milk with 10 min of immunoreaction time. The vLODs were 0.01 μg kg–1 for two modes, and the cutoff values of CL were about 5 and 3 μg kg–1, respectively. More importantly, the enrichment ZFO-mediated LFIA (ZE-LFIA) exhibits a similar limit of detection (LOD) in both buffer solution and food matrix, demonstrating a universal resistance to the food matrix. The multitudinous performance merits of this ZE-LFIA with high sensitivity, matrix tolerance, accuracy, and specificity have ensured a broad application potential for target detection of clenbuterol and can serve as an experience for other veterinary drug residues’ detection.
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