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Enhancing Surface Enhanced Raman Scattering (SERS) Detection of Propranolol with Multiobjective Evolutionary Optimization

机译:多目标进化优化增强普萘洛尔的表面增强拉曼散射(SERS)检测

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Colloidal-based surface-enhanced Raman scattering (SERS) is a complex technique, where interaction between multiple parameters, such as colloid type, its concentration, and aggregating agent, is poorly understood. As a result SERS has so far achieved limited reproducibility. Therefore the aim of this study was to improve enhancement and reproducibility in SERS, and to achieve this, we have developed a multiobjective evolutionary algorithm (MOEA) based on Pareto optimality. In this MOEA approach, we tested a combination of five different colloids with six different aggregating agents, and a wide range of concentrations for both were explored; in addition we included in the optimization process three laser excitation wavelengths. For this optimization of experimental conditions for SERS, we chose the β-adrenergic blocker drug propranolol as the target analyte. The objective functions chosen suitable for this multiobjective problem were the ratio between the full width at half-maximum and the half-maximum intensity for enhancement and correlation coefficient for reproducibility. To analyze a full search of all the experimental conditions, 7785 experiments would have to be performed empirically; however, we demonstrated the search for acceptable experimental conditions of SERS can be achieved using only 4% of these possible experiments. The MOEA identified several experimental conditions for each objective which allowed a limit of detection of 2.36 ng/mL (7.97 nM) propranolol, and this is significantly lower (>25 times) than previous SERS studies aimed at detecting this β-blocker.
机译:基于胶体的表面增强拉曼散射(SERS)是一项复杂的技术,人们对诸如胶体类型,其浓度和聚集剂等多个参数之间的相互作用了解甚少。结果,到目前为止,SERS的再现性有限。因此,本研究的目的是提高SERS的增强性和可再现性,为了实现这一目标,我们开发了一种基于帕累托最优性的多目标进化算法(MOEA)。在这种MOEA方法中,我们测试了五种不同的胶体与六种不同的聚集剂的组合,并探讨了两种浓度的不同浓度。此外,我们在优化过程中包括了三个激光激发波长。为了优化SERS的实验条件,我们选择了β-肾上腺素能阻断药普萘洛尔作为目标分析物。选择适合该多目标问题的目标函数是最大增强的半峰宽与增强的半最大强度之比和可再现性的相关系数。要分析所有实验条件的完整搜索,必须凭经验进行7785个实验;但是,我们证明了仅使用这些可能实验中的4%即可实现对SERS可接受实验条件的搜索。 MOEA为每个目标确定了几个实验条件,这些条件允许检出限为2.36 ng / mL(7.97 nM)普萘洛尔,这比以前旨在检测该β受体阻滞剂的SERS研究要低得多(> 25倍)。

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