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发展和优化一种用于侧向流动分析中相邻样品定量检测的频率混合传感器。

Development and optimization of a frequency mixing sensor for adjacent samples quantitative detection on a lateral flow assay.

机构信息

School of Sensing Science and Engineering, School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University, Key Laboratory of Thin Film and Microfabrication Technology (Ministry of Education), Shanghai, China.

School of Naval Architecture, Ocean & Civil Engineering, Shanghai Jiao Tong University, Shanghai, China.

出版信息

Biotechnol J. 2024 Jan;19(1):e2300190. doi: 10.1002/biot.202300190. Epub 2023 Nov 30.

Abstract

Frequency-mixing technology has been widely used to precisely identify magnetic nanoparticles in applications of quantitative biomedical detection in recent years. Examples include immune adsorption, lateral flow assays (LFAs), and biomagnetic imaging. However, the signals of magnetic response generated by adjacent magnetic samples interfere with each other owing to the small spacing between them in applications involving multi-sample detection (such as the LFA and multiplexing detection). Such signal interference prevents the biosensor from obtaining characteristic peaks related to the concentration of adjacent biomarkers from the magnetic response signals. Mathematical and physical models of the structure of sensors based on frequency-mixing techniques were developed. The theoretical model was verified and its key parameters were optimized by using simulations. A new frequency-mixing magnetic sensor structure was then designed and developed based on the model, and the key technical problem of signal crosstalk between adjacent samples was structurally solved. Finally, standard cards with stable magnetic properties were used to evaluate the performance of the sensor, and strips of the gastrin-17 (G-17) LFA were used to evaluate its potential for use in clinical applications. The results show that the minimum spacing between samples required by the optimized sensor to accurately identify them was only about 4-5 mm, and the minimum detectable concentration of G-17 was 11 pg mL . This is a significant reduction in the required spacing between samples for multiplexing detection. The optimized sensor also has the potential for use in multi-channel synchronous signal acquisition, and can be used to detect synchronous magnetic signals in vivo.

摘要

近年来,频混技术已广泛应用于定量生物医学检测的医学专业学术文献中,用于精确识别磁性纳米粒子。例如免疫吸附、侧向流动分析(LFA)和生物磁成像。然而,在涉及多样本检测(如 LFA 和多重检测)的应用中,由于相邻磁性样本之间的间隔较小,相邻磁性样本产生的磁响应信号会相互干扰。这种信号干扰使得生物传感器无法从磁响应信号中获得与相邻生物标志物浓度相关的特征峰。基于频混技术的传感器结构的数学和物理模型得到了发展。通过模拟验证了理论模型,并对其关键参数进行了优化。然后,基于该模型设计并开发了一种新型频混磁传感器结构,从结构上解决了相邻样本之间信号串扰的关键技术问题。最后,使用具有稳定磁性能的标准卡评估传感器的性能,并使用胃泌素-17(G-17)LFA 条评估其在临床应用中的潜力。结果表明,优化后的传感器准确识别相邻样本所需的最小间隔仅约为 4-5mm,G-17 的最小可检测浓度为 11pgmL-1。这大大减少了多重检测所需的样本间隔。优化后的传感器还具有用于多通道同步信号采集的潜力,并可用于检测体内的同步磁信号。

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