Highly Sensitive and Interference-Free Detection of Multiple Drug Molecules in Serum Using Dual-Modified SERS Substrates Combined with AI Algorithm Analysis

生物分子 毒品检测 化学 药品 干扰(通信) 治疗药物监测 表面增强拉曼光谱 基质(水族馆) 纳米技术 涂层 药物发现 拉曼光谱 药物靶点 计算机科学 色谱法 拉曼散射 材料科学 药理学 频道(广播) 地质学 物理 有机化学 光学 海洋学 医学 生物化学 计算机网络
作者
Yingji Wang,Jin Sun,Liping Zhou,Guangrun Wu,Siqi Gong,Zibo Gao,Jing Wu,Chaochao Ma,Yun Zou,Xiaoyu Liu,Rong Ma,Xin Zhang,Zhaoying Zhang,Yang Li
出处
期刊:Analytical Chemistry [American Chemical Society]
卷期号:97 (6): 3739-3747 被引量:12
标识
DOI:10.1021/acs.analchem.4c06724
摘要

Surface-enhanced Raman spectroscopy (SERS) technology has shown broad potential in drug concentration detection, but its application in blood drug monitoring faces significant challenges. The primary difficulty lies in overcoming the interference caused by various biomolecules present in serum, which can severely obscure the SERS signals of target drug molecules. Traditional enhancement substrates are often limited to detecting single drugs and are prone to interference, making the label-free detection of multiple drugs particularly challenging. To address these issues, we developed a novel SERS substrate based on Au@AgNRs, which undergoes a two-step modification to produce Au@AgDBCNRs. This innovative substrate provides exceptional signal amplification, simultaneously allowing the sensitive detection of multiple drug molecules. Moreover, our method eliminates the need for serum deproteinization, enabling the direct detection of drugs in serum while effectively mitigating interference from blood components. The cetyltrimethylammonium bromide coating on Au@AgDBCNRs is an internal standard for drug quantification without additional standards. The platform significantly improves detection accuracy and efficiency by automatically integrating artificial intelligence to recognize and analyze Raman spectral features. This novel SERS platform provides a new idea for therapeutic drug monitoring and is expected to provide rapid, accurate, and cost-effective drug detection in the clinical environment, which has great potential in improving patient care and optimizing drug dosage strategies.
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