Research Center for Health Sciences, Institute of Health, Department of Occupational Health Engineering, School of Health, Shiraz University of Medical Sciences, Shiraz, Iran.
Medicinal and Natural Products Chemistry Research Center, Shiraz University of Medical Sciences, Shiraz, Iran.
Malar J. 2019 Sep 14;18(1):310. doi: 10.1186/s12936-019-2941-5.
After years of efforts on the control of malaria, it remains as a most deadly infectious disease. A major problem for the available anti-malarial drugs is the occurrence of drug resistance in Plasmodium. Developing of new compounds or modification of existing anti-malarial drugs is an effective approach to face this challenge. Quantitative structure activity relationship (QSAR) modelling plays an important role in design and modification of anti-malarial compounds by estimation of the activity of the compounds.
In this research, the QSAR study was done on anti-malarial activity of 33 imidazolopiperazine compounds based on artificial neural networks (ANN). The structural descriptors of imidazolopiperazine molecules was used as the independents variables and their activity against 3D7 and W2 strains was used as the dependent variables. During modelling process, 70% of compound was used as the training and two 15% of imidazolopiperazines were used as the validation and external test sets. In this work, stepwise multiple linear regression was applied as the valuable selection and ANN with Levenberg-Marquardt algorithm was utilized as an efficient non-linear approach to correlate between structural information of molecules and their anti-malarial activity.
The sufficiency of the suggested method to estimate the anti-malarial activity of imidazolopiperazine compounds at two 3D7 and W2 strains was demonstrated using statistical parameters, such as correlation coefficient (R), mean square error (MSE). For instance R = 0.947, R = 0.959, R = 0.920 shows the potential of the suggested model for the prediction of 3D7 activity. Different statistical approaches such as and applicability domain (AD) and y-scrambling was also showed the validity of models.
QSAR can be an efficient way to virtual screening the molecules to design more efficient compounds with activity against malaria (3D7 and W2 strains). Imidazolopiperazines can be good candidates and change in the structure and functional groups can be done intelligently using QSAR approach to rich more efficient compounds with decreasing trial-error runs during synthesis.
经过多年的努力控制疟疾,它仍然是最致命的传染病。现有的抗疟药物的一个主要问题是疟原虫的耐药性的发生。开发新的化合物或修饰现有的抗疟药物是应对这一挑战的有效方法。定量构效关系(QSAR)模型在通过估计化合物的活性来设计和修饰抗疟化合物方面起着重要作用。
在这项研究中,基于人工神经网络(ANN)对 33 种咪唑哌嗪化合物的抗疟活性进行了 QSAR 研究。咪唑哌嗪分子的结构描述符被用作自变量,它们对 3D7 和 W2 株的活性被用作因变量。在建模过程中,将 70%的化合物用于训练,2 个 15%的咪唑哌嗪化合物分别用于验证和外部测试集。在这项工作中,逐步多元线性回归被应用于有价值的选择,而 Levenberg-Marquardt 算法的 ANN 被用作有效的非线性方法来关联分子的结构信息与其抗疟活性。
该方法足以通过统计参数,如相关系数(R)、均方误差(MSE)来估计咪唑哌嗪化合物在 2 株 3D7 和 W2 中的抗疟活性。例如,R=0.947、R=0.959、R=0.920 表明该模型具有预测 3D7 活性的潜力。不同的统计方法,如适用性域(AD)和 y 混淆,也表明了模型的有效性。
QSAR 可以是一种有效的虚拟筛选分子的方法,用于设计对疟疾(3D7 和 W2 株)更有效的化合物。咪唑哌嗪可以是一个很好的候选者,并且可以通过 QSAR 方法进行智能的结构和官能团的改变,以在合成过程中减少试验和错误的运行次数,从而获得更有效的化合物。