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首页> 外文期刊>Current topics in medicinal chemistry >3D MI-DRAGON: New Model for the Reconstruction of US FDA Drug- Target Network and Theoretical-Experimental Studies of Inhibitors of Rasagiline Derivatives for AChE.
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3D MI-DRAGON: New Model for the Reconstruction of US FDA Drug- Target Network and Theoretical-Experimental Studies of Inhibitors of Rasagiline Derivatives for AChE.

机译:3D MI-DRAGON:用于重建美国FDA药物靶标网络的新模型以及雷沙吉兰衍生物AChE抑制剂的理论实验研究。

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The number of neurodegenerative diseases has been increasing in recent years. Many of the drug candidates to be used in the treatment of neurodegenerative diseases present specific 3D structural features. An important protein in this sense is the acetylcholinesterase (AChE), which is the target of many Alzheimer's dementia drugs. Consequently, the prediction of Drug-Protein Interactions (DPIsDPIs) between new drug candidates and specific 3D structure and targets is of major importance. To this end, we can use Quantitative Structure-Activity Relationships (QSAR) models to carry out a rational DPIs prediction. Unfortunately, many previous QSAR models developed to predict DPIs take into consideration only 2D structural information and codify the activity against only one target. To solve this problem we can develop some 3D multi-target QSAR (3D mt-QSAR) models. In this study, using the 3D MI-DRAGON technique, we have introduced a new predictor for DPIs based on two different well-known software. We have used the MARCH-INSIDE (MI) and DRAGON software to calculate 3D structural parameters for drugs and targets respectively. Both classes of 3D parameters were used as input to train Artificial Neuronal Network (ANN) algorithms using as benchmark dataset the complex network (CN) made up of all DPIs between US FDA approved drugs and their targets. The entire dataset was downloaded from the DrugBank database. The best 3D mt-QSAR predictor found was an ANN of Multi-Layer Perceptron-type (MLP) with profile MLP 37:37-24-1:1. This MLP classifies correctly 274 out of 321 DPIs (Sensitivity = 85.35%) and 1041 out of 1190 nDPIs (Specificity = 87.48%), corresponding to training Accuracy = 87.03%. We have validated the model with external predicting series with Sensitivity = 84.16% (542/644 DPIs; Specificity = 87.51% (2039/2330 nDPIs) and Accuracy = 86.78%. The new CNs of DPIs reconstructed from US FDA can be used to explore large DPI databases in order to discover both new drugs and/or targets. We have carried out some theoretical-experimental studies to illustrate the practical use of 3D MI-DRAGON. First, we have reported the prediction and pharmacological assay of 22 different rasagiline derivatives with possible AChE inhibitory activity. In this work, we have reviewed different computational studies on Drug- Protein models. First, we have reviewed 10 studies on DP computational models. Next, we have reviewed 2D QSAR, 3D QSAR, CoMFA, CoMSIA and Docking with different compounds to find Drug-Protein QSAR models. Last, we have developped a 3D multi-target QSAR (3D mt-QSAR) models for the prediction of the activity of new compounds against different targets or the discovery of new targets.
机译:近年来,神经退行性疾病的数量一直在增加。用于治疗神经退行性疾病的许多候选药物具有特定的3D结构特征。从这个意义上讲,重要的蛋白质是乙酰胆碱酯酶(AChE),它是许多老年痴呆症药物的靶标。因此,预测新药候选物与特定3D结构和目标之间的药物-蛋白质相互作用(DPI / nDPI)至关重要。为此,我们可以使用定量结构-活动关系(QSAR)模型来进行合理的DPI预测。不幸的是,许多先前开发的用于预测DPI的QSAR模型仅考虑了2D结构信息,并且仅将针对一个目标的活动编码。为了解决这个问题,我们可以开发一些3D多目标QSAR(3D mt-QSAR)模型。在这项研究中,我们使用3D MI-DRAGON技术,基于两个不同的知名软件,为DPI引入了一种新的预测器。我们已使用MARCH-INSIDE(MI)和DRAGON软件分别计算药物和靶标的3D结构参数。这两类3D参数均用作训练人工神经元网络(ANN)算法的输入,该算法使用由美国FDA批准的药物与其靶标之间的所有DPI组成的复杂网络(CN)作为基准数据集。整个数据集是从DrugBank数据库下载的。发现的最佳3D mt-QSAR预测因子是多层感知器类型(MLP)的ANN,其轮廓为MLP 37:37-24-1:1。该MLP正确地对321个DPI中的274个(灵敏度= 85.35%)和1190个nDPI中的1041个(特异性= 87.48%)进行了正确分类,相当于训练准确率= 87.03%。我们已使用外部预测序列验证了该模型,该模型的灵敏度= 84.16%(542/644 DPIs;特异性= 87.51%(2039/2330 nDPIs);准确度= 86.78%。美国FDA重建的DPI的新CNs可用于探索大型DPI数据库以发现新药和/或靶标我们已经进行了一些理论实验研究来说明3D MI-DRAGON的实际应用:首先,我们报告了22种不同雷沙吉兰衍生物的预测和药理分析在这项工作中,我们回顾了有关药物-蛋白质模型的不同计算研究,首先,回顾了10个关于DP计算模型的研究,其次,我们回顾了2D QSAR,3D QSAR,CoMFA,CoMSIA和Docking最后,我们开发了3D多目标QSAR(3D mt-QSAR)模型,用于预测新化合物针对不同目标的活性或发现新的药物。 w目标。

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