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基于深度学习辅助智能手机的分子印迹电化学发光检测传感平台:便携式装置及呋塞米的可视化监测

Deep learning-assisted smartphone-based molecularly imprinted electrochemiluminescence detection sensing platform: Protable device and visual monitoring furosemide.

作者信息

Zhang Yi, Cui Yuanyuan, Sun Mengmeng, Wang Tanke, Liu Tao, Dai Xianxiang, Zou Ping, Zhao Ying, Wang Xianxiang, Wang Yanying, Zhou Man, Su Gehong, Wu Chun, Yin Huadong, Rao Hanbing, Lu Zhiwei

机构信息

College of Science, Sichuan Agricultural University, Xin Kang Road, Yucheng District, Ya'an, 625014, China, PR China.

College of Information Engineering, Sichuan Agricultural University, Xinkang Road, Yucheng District, Ya'an, 625014, PR China.

出版信息

Biosens Bioelectron. 2022 Aug 1;209:114262. doi: 10.1016/j.bios.2022.114262. Epub 2022 Apr 9.

Abstract

A novel, portable, and smartphone-based molecularly imprinted polymer electrochemiluminescence (MIP-ECL) sensing platform was constructed for sensitive and selective determination of furosemide (FSM). In this platform, MoSe nanoparticles/starch-derived biomass carbon (MoSe/BC) nanocomposites as imprinted material, lucigenin (Luc) as the energy donor, CdS quantum dots (CdS QDs) were used as the luminophore (energy acceptor), and molecularly imprinted polymer (MIP) as the specificity recognition element to construct a MIP-ECL sensing system based on electroluminescence resonance energy transfer (ECL-RET) mechanism, which enhanced the sensitivity and the specificity of this system. Imprinted materials were characterized by SEM, TEM, XRD, FT-IR, etc. and the recognition performance of MIP was characterized using CV, EIS, and ECL methods. The elution and re-sorption of template molecules can be used as a switch to control ECL based on the signal that can be quenched by FSM. Interestingly, deep learning based on convolutional neural networks realizes batch processing of ECL signals. Additionally, this developed MIP-ECL method was established by using the traditional ECL analyzer detector for the assay of FSM with a detection limit of 4 nM in the range of 0.010 μM-100 μM. Besides, the consumer smartphone sensing platform based on deep learning showed an outstanding linear response between the R-value of the picture and the concentration of furosemide in the range of 1-70 μM with a detection limit of 0.25 μΜ, which is much lower than that the reported for other detection methods. More importantly, due to the transferability of deep learning, the smartphone-based MIP-ECL systems can facilitate the real-time monitoring of biochemical analytes in multiple fields.

摘要

构建了一种新型、便携式且基于智能手机的分子印迹聚合物电化学发光(MIP-ECL)传感平台,用于灵敏且选择性地测定呋塞米(FSM)。在该平台中,以硒化钼纳米颗粒/淀粉衍生生物质碳(MoSe/BC)纳米复合材料作为印迹材料,光泽精(Luc)作为能量供体,硫化镉量子点(CdS QDs)用作发光体(能量受体),并以分子印迹聚合物(MIP)作为特异性识别元件,基于电致发光共振能量转移(ECL-RET)机制构建了MIP-ECL传感系统,这提高了该系统的灵敏度和特异性。通过扫描电子显微镜(SEM)、透射电子显微镜(TEM)、X射线衍射(XRD)、傅里叶变换红外光谱(FT-IR)等对印迹材料进行了表征,并使用循环伏安法(CV)、电化学阻抗谱(EIS)和电化学发光法对MIP的识别性能进行了表征。模板分子的洗脱和再吸附可作为一个开关,基于可被FSM淬灭的信号来控制电化学发光。有趣的是,基于卷积神经网络的深度学习实现了电化学发光信号的批量处理。此外,这种开发的MIP-ECL方法是通过使用传统的电化学发光分析仪检测器来测定FSM建立的,在0.010 μM至100 μM范围内的检测限为4 nM。此外,基于深度学习的消费级智能手机传感平台在1至70 μM范围内,图片的R值与呋塞米浓度之间呈现出出色的线性响应,检测限为0.25 μM,这远低于其他检测方法所报道的检测限。更重要的是,由于深度学习的可转移性,基于智能手机的MIP-ECL系统能够促进多个领域中生物化学分析物的实时监测。

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