Usman Abdullahi Garba, IŞik Selin, Abba Sani Isah, MerİÇlİ Filiz
Department of Analytical Chemistry, Faculty of Pharmacy, Near East University Nicosia Turkish Republic of Northern Cyprus.
Department of Physical Planning Development, Maitama Sule University, Kano Nigeria.
Turk J Chem. 2020 Oct 26;44(5):1339-1351. doi: 10.3906/kim-2003-6. eCollection 2020.
Isoquercitrin is a flavonoid chemical compound that can be extracted from different plant species such as (mango), , , (tea), and coriander ( L.). It possesses various biological activities such as the prevention of thromboembolism and has anticancer, antiinflammatory, and antifatigue activities. Therefore, there is a critical need to elucidate and predict the qualitative and quantitative properties of this phytochemical compound using the high performance liquid chromatography (HPLC) technique. In this paper, three different nonlinear models including artificial neural network (ANN), adaptive neuro-fuzzy inference system (ANFIS), and support vector machine (SVM),in addition to a classical linear model [multilinear regression analysis (MLR)], were used for the prediction of the retention time (tR) and peak area (PA) for isoquercitrin using HPLC. The simulation uses concentration of the standard, composition of the mobile phases (MP-A and MP-B), and pH as the corresponding input variables. The performance efficiency of the models was evaluated using relative mean square error (RMSE), mean square error (MSE), determination coefficient (DC), and correlation coefficient (CC). The obtained results demonstrated that all four models are capable of predicting the qualitative and quantitative properties of the bioactive compound. A predictive comparison of the models showed that M3 had the highest prediction accuracy among the three models. Further evaluation of the results showed that ANFIS-M3 outperformed the other models and serves as the best model for the prediction of PA. On the other hand, ANN-M3proved its merit and emerged as the best model for tR simulation. The overall predictive accuracy of the best models showed them to be reliable tools for both qualitative and quantitative determination.
异槲皮苷是一种黄酮类化合物,可从不同植物物种中提取,如(芒果)、、、(茶叶)和香菜(L.)。它具有多种生物活性,如预防血栓栓塞,还具有抗癌、抗炎和抗疲劳活性。因此,迫切需要使用高效液相色谱(HPLC)技术来阐明和预测这种植物化学化合物的定性和定量性质。本文除了使用经典线性模型[多元线性回归分析(MLR)]外,还使用了三种不同的非线性模型,包括人工神经网络(ANN)、自适应神经模糊推理系统(ANFIS)和支持向量机(SVM),用于预测HPLC法测定异槲皮苷的保留时间(tR)和峰面积(PA)。模拟使用标准品浓度、流动相组成(MP - A和MP - B)以及pH作为相应的输入变量。使用相对均方误差(RMSE)、均方误差(MSE)、决定系数(DC)和相关系数(CC)对模型的性能效率进行评估。所得结果表明,所有四个模型都能够预测生物活性化合物的定性和定量性质。模型的预测比较表明,M3在三个模型中具有最高的预测精度。对结果的进一步评估表明,ANFIS - M3优于其他模型,是预测PA的最佳模型。另一方面,ANN - M3证明了其优点,成为tR模拟的最佳模型。最佳模型的总体预测准确性表明它们是定性和定量测定的可靠工具。