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CAPi:用于预测针对疟原虫的顶质体抑制剂的计算模型。

CAPi: Computational Model for Apicoplast Inhibitors Prediction Against Plasmodium Parasite.

作者信息

Dixit Surabhi, Singla Deepak

机构信息

Infectious Diseases Laboratory, National Institute of Immunology, New Delhi, India.

Center for Microbial Biotechnology, Panjab University, Chandigarh, India.

出版信息

Curr Comput Aided Drug Des. 2017 Nov 10;13(4):303-310. doi: 10.2174/1573409913666170301121110.

Abstract

BACKGROUND

Discovery of apicoplast as a drug target offers a new direction in the development of novel anti-malarial compounds, especially against the drug-resistant strains. Drugs such as azithromycin were reported to block the apicoplast development that leads to unusual phenotypes affecting the parasite. This phenomenon suggests that identification of new apicoplast inhibitors will aid in the anti-malarial drug discovery. Therefore, in this study, we developed a computational model to predict apicoplast inhibitors by applying state-of-the-art machine learning techniques.

METHODS

We have used two high-throughput chemical screening data (AID-504850, AID-504848) from PubChem BioAssay database and applied machine learning techniques. The performance of the models were assessed on various types of binary fingerprints.

RESULTS

In this study, we developed a robust computational algorithm for the prediction of apicoplast inhibition. We observed 73.7% sensitivity and 84% specificity along with 81.4% accuracy rate only on 41 PubChem fingerprints on 48 hrs dataset. Similarly, an accuracy rate of 75.8% was observed for 96 hrs dataset. Additionally, we observed that our model has ~70% positive prediction rate on the independent dataset obtained from ChEMBL-NTD database. Furthermore, the fingerprint analysis suggested that compounds with at least one heteroatom containing hexagonal ring would most likely belong to the antimalarial category as compared to simple aliphatic compounds. We also observed that aromatic compounds with oxygen and chlorine atoms were preferred in inhibitors class as compared to sulphur. Additionally, the compounds with average molecular weight >380Da and XlogP>4 were most likely to belong to the inhibitor category.

CONCLUSION

This study highlighted the significance of simple interpretable molecular properties along with some preferred substructure in designing the novel anti-malarial compounds. In addition to that, robustness and accuracy of models developed in the present work could be utilized to screen a large chemical library. Based on this study, we developed freely available software at http://deepaklab. com/capi. This study would provide the best alternative for searching the novel apicoplast inhibitors against Plasmodium.

摘要

背景

将顶质体作为药物靶点的发现为新型抗疟化合物的开发提供了新方向,尤其是针对耐药菌株。据报道,阿奇霉素等药物会阻断顶质体发育,导致影响疟原虫的异常表型。这一现象表明,鉴定新的顶质体抑制剂将有助于抗疟药物的发现。因此,在本研究中,我们应用最先进的机器学习技术开发了一个计算模型来预测顶质体抑制剂。

方法

我们使用了来自PubChem生物测定数据库的两个高通量化学筛选数据(AID-504850、AID-504848),并应用了机器学习技术。在各种类型的二元指纹上评估模型的性能。

结果

在本研究中,我们开发了一种用于预测顶质体抑制的强大计算算法。仅在48小时数据集的41个PubChem指纹上,我们观察到灵敏度为73.7%,特异性为84%,准确率为81.4%。同样,96小时数据集的准确率为75.8%。此外,我们观察到我们的模型在从ChEMBL-NTD数据库获得的独立数据集上的阳性预测率约为70%。此外,指纹分析表明,与简单脂肪族化合物相比,含有至少一个含杂原子六元环的化合物最有可能属于抗疟类别。我们还观察到,与含硫的芳香化合物相比,含氧基和氯原子的芳香化合物在抑制剂类别中更受青睐。此外,平均分子量>380Da且XlogP>4的化合物最有可能属于抑制剂类别。

结论

本研究强调了简单可解释的分子性质以及一些优选子结构在设计新型抗疟化合物中的重要性。此外,本研究中开发的模型的稳健性和准确性可用于筛选大型化学文库。基于本研究,我们在http://deepaklab.com/capi上开发了免费软件。本研究将为寻找针对疟原虫的新型顶质体抑制剂提供最佳选择。

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