Wang Xing, Shen Shen, Sun Ning, Zhu Yong, Zhang Jie
Key Laboratory of Optoelectronic Technology & Systems, Ministry of Education, Chongqing University, Chongqing 400044, China.
ACS Sens. 2025 Feb 28;10(2):1197-1205. doi: 10.1021/acssensors.4c03096. Epub 2025 Feb 18.
To enhance the sensitivity, integration, and practicality of the Raman detection system, a deep learning-based dual-functional subregional microfluidic integrated hydrogel surface-enhanced Raman scattering (SERS) platform is proposed in this paper. First, silver nanoparticles (Ag NPs) with a homogeneous morphology were synthesized using a one-step reduction method. Second, these Ag NPs were embedded in -isopropylacrylamide/poly(vinyl alcohol) (Ag NPs-NIPAM/PVA) hydrogels. Finally, a dual-functional SERS platform featuring four channels, each equipped with a switch and a detection region, was developed in conjunction with microfluidics. This platform effectively allows the flow of the test material to be directed to a specific detection region by sequential activation of the hydrogel switches with an external heating element. It then utilizes the corresponding heating element in the detection region to adjust the gaps between Ag NPs, enabling the measurement of the Raman enhancement performance in the designated SERS detection area. The dual-functional microfluidic-integrated hydrogel SERS platform enables subregional sampling and simultaneous detection of multiple molecules. The platform demonstrated excellent detection performance for Rhodamine 6G (R6G), achieving a detection limit as low as 10 mol/L and an enhancement factor of 10, with relative standard deviations of the main characteristic peaks below 10%. Additionally, the platform is capable of simultaneous subarea detection of four real molecules─thiram, pyrene, anthracene, and dibutyl phthalate─combined with fully connected neural network technology, which offers improved predictability, practicality, and applicability for their classification and identification.
为提高拉曼检测系统的灵敏度、集成度和实用性,本文提出了一种基于深度学习的双功能亚区域微流控集成水凝胶表面增强拉曼散射(SERS)平台。首先,采用一步还原法合成了形态均匀的银纳米颗粒(Ag NPs)。其次,将这些Ag NPs嵌入N-异丙基丙烯酰胺/聚乙烯醇(Ag NPs-NIPAM/PVA)水凝胶中。最后,结合微流控技术开发了一个具有四个通道的双功能SERS平台,每个通道都配备有一个开关和一个检测区域。通过用外部加热元件依次激活水凝胶开关,该平台有效地使测试材料流向特定的检测区域。然后,它利用检测区域中的相应加热元件来调整Ag NPs之间的间隙,从而能够在指定的SERS检测区域测量拉曼增强性能。双功能微流控集成水凝胶SERS平台能够进行亚区域采样和多种分子的同时检测。该平台对罗丹明6G(R6G)表现出优异的检测性能,检测限低至10 mol/L,增强因子为10,主要特征峰的相对标准偏差低于10%。此外,该平台结合全连接神经网络技术,能够同时对四种实际分子——福美双、芘、蒽和邻苯二甲酸二丁酯——进行分区检测,为它们的分类和识别提供了更高的可预测性、实用性和适用性。