Quantification of Syringic Acid in Real Samples Based on UV-Vis Spectroscopy

Dipan Bandyopadhyay, S. Nag, R. B. Roy
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Abstract

In this research work, a reliable, as well as rapid Ultraviolet-visible (UV-Vis) spectroscopy technique, was employed for assessing syringic acid (SGA) contents in real samples-cauliflower (CLF), oregano (ORG) and black olive (BOL). Data measurements were performed using UV Spectrophotometer, operating in the wavelength range of 200-400 nm. Principal component analysis (PCA) was applied for analyzing and distinguishing different samples. PCA plot confirmed the effective clustering of the samples. A high-class separability index of 313.52 was obtained for the UV-vis absorbance data. Moreover, for prediction and correlation of SGA levels in the samples, principal component regression (PCR) as well as Partial least square regression (PLSR) analysis were performed. These prediction algorithms showed high average prediction accuracy of 99.68% and 99.65% respectively and almost the same correlation factor (CF) as high as 0.99 was obtained for both models. Further, high precision was observed with a low RSD value of 0.33 % for the peak absorbance at around 220nm. The primary investigation results recommend that for detecting and assessing SGA contents in real samples, the UV-Vis spectroscopy technique coupled with multivariate analysis may be a viable approach.
紫外可见光谱法测定实际样品中丁香酸的含量
本文建立了一种可靠、快速的紫外-可见光谱法测定菜花(CLF)、牛至(ORG)和黑橄榄(BOL)中丁香酸(SGA)的含量。使用紫外分光光度计进行数据测量,工作波长范围为200-400 nm。采用主成分分析(PCA)对不同样品进行分析和区分。PCA图证实了样本的有效聚类。紫外-可见吸光度数据的可分离性指数为313.52。此外,对样品中SGA水平的预测和相关性进行了主成分回归(PCR)和偏最小二乘回归(PLSR)分析。两种预测算法的平均预测准确率分别达到99.68%和99.65%,且两种模型的相关因子(CF)几乎相同,均高达0.99。此外,该方法在220nm附近的吸光度峰的RSD值为0.33%,精度较高。初步研究结果表明,紫外可见光谱技术与多变量分析相结合可能是检测和评估实际样品中SGA含量的可行方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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