Li Fang, Peng Hao, Shen Nuotong, Yang Chen, Zhang Limin, Li Bing, He Jianbo
Anhui Province Key Laboratory of Value-Added Catalytic Conversion and Reaction Engineering, Anhui Province Engineering Research Center of Flexible and Intelligent Materials, School of Chemistry and Chemical Engineering, Hefei University of Technology, Hefei 230009, Anhui, China.
ACS Appl Mater Interfaces. 2024 May 29;16(21):27767-27777. doi: 10.1021/acsami.4c03996. Epub 2024 May 16.
Electrochemiluminescence (ECL) luminophores with wavelength-tunable multicolor emissions are essential for multicolor ECL imaging detection and multiplexed analysis. In this work, silver nanoparticle (Ag NP)-decorated graphitic carbon nitride (g-CN@Ag) nanocomposites were synthesized. The morphology, chemical composition, structure, and ECL property of g-CN@Ag were investigated. The prepared g-CN, g-CN@Ag1, g-CN@Ag5, and g-CN@Ag10 can produce blue, blue-green, chartreuse, and yellow colored ECL emissions, respectively, by using KSO as the coreagent. The ECL emission wavelength of g-CN@Ag can be regulated from 460 to 565 nm by modulating the content of the immobilized Ag NPs. Then, a multicolor ECL detection array was fabricated by using g-CN, g-CN@Ag1, g-CN@Ag5, and g-CN@Ag10 as four ECL luminophores. Dopamine was detected based on its inhibition effect on the multicolor ECL emissions. The linear range is from 0.1 nM to 1 mM with the lowest detection limit of 44 pM. Then, machine learning-assisted multiparameter concentration prediction of dopamine was further carried out by combining the deep neural network (DNN) algorithm. This work provides a new avenue to regulate the ECL emission wavelength of g-CN by using the metal nanoparticle modification strategy and presents an effective machine learning-assisted multicolor ECL detection strategy for accurate multiparameter quantitative detection.
具有波长可调谐多色发射的电化学发光(ECL)发光体对于多色ECL成像检测和多重分析至关重要。在这项工作中,合成了银纳米颗粒(Ag NP)修饰的石墨相氮化碳(g-CN@Ag)纳米复合材料。研究了g-CN@Ag的形态、化学成分、结构和ECL性质。通过使用KSO作为共反应剂,制备的g-CN、g-CN@Ag1、g-CN@Ag5和g-CN@Ag10分别可以产生蓝色、蓝绿色、黄绿色和黄色的ECL发射。通过调节固定化Ag NPs的含量,g-CN@Ag的ECL发射波长可以从460 nm调节到565 nm。然后,以g-CN、g-CN@Ag1、g-CN@Ag5和g-CN@Ag10作为四种ECL发光体制备了多色ECL检测阵列。基于多巴胺对多色ECL发射的抑制作用对其进行检测。线性范围为0.1 nM至1 mM,最低检测限为44 pM。然后,结合深度神经网络(DNN)算法进一步进行了机器学习辅助的多巴胺多参数浓度预测。这项工作提供了一种通过金属纳米颗粒修饰策略调节g-CN的ECL发射波长的新途径,并提出了一种有效的机器学习辅助多色ECL检测策略,用于准确的多参数定量检测。