化学
对接(动物)
密度泛函理论
分子
计算化学
结合能
黄嘌呤
电负性
分子轨道
咪唑
化学物理
质子亲和力
势能面
生物分子
嘌呤
立体化学
原子轨道
分子动力学
星团(航天器)
拉曼散射
光谱学
势能
活动站点
分子结合
作者
Shuai Lian,Zhen Fan,Hui Li,Xuefei Lv,Xiaoqiong Li
出处
期刊:Langmuir
[American Chemical Society]
日期:2026-01-18
标识
DOI:10.1021/acs.langmuir.5c05227
摘要
In this study, we employed density functional theory (DFT) to investigate the interactions of uric acid (UA) and xanthine (Xa), two structurally similar molecules, with Au-enhanced substrates in the surface-enhanced Raman scattering (SERS) effect. Theoretical calculations of the molecular electrostatic potential (ESP) revealed pronounced electronegativity at the carbonyl groups on the purine cores of both molecules, with the N7 nitrogen atom in the imidazole ring of Xa also exhibiting notable electronegativity. These regions are therefore identified as potential active sites for molecule-substrate interactions. To account for possible docking configurations, UA/Xa-Au6 complex models were constructed and their binding energies were calculated. The binding energy results confirmed the formation of stable molecule-metal complexes across different docking scenarios. Analysis of the frontier molecular orbitals (FMOs) and charge density differences (CDDs) of both the isolated molecules and their complexes demonstrated charge-transfer excitations between UA/Xa and the Au6 cluster at various active sites. Theoretical Raman/SERS spectral analyses of the complexes revealed pronounced selective enhancement, shifts, and broadening of characteristic frequencies depending on the docking configuration. Based on the characteristic frequency variations of the two molecules, we propose a label-free detection strategy that is theoretically reproducible, highly sensitive, and high-throughput for analyzing structurally similar small-molecule biomarkers (UA and Xa) in complex physiological matrices. This study not only deepens our understanding of the physical mechanisms underlying molecule-substrate interactions in the SERS effect, but also demonstrates the theoretical feasibility of label-free identification of UA and Xa in complex physiological samples using SERS. Furthermore, it provides a promising and efficient label-free sensing strategy for detecting structurally similar small-molecule biomarkers.
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