利用分子指纹对利什曼原虫活动进行预测建模的集成技术。

IF 3.8 3区 医学 Q2 MEDICAL INFORMATICS
Saif Nalband, Pallavi Kiratkar, Maulik Gupta, Mansi Gambhir, Surabhi Sonam, Femi Robert, A Amalin Prince
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引用次数: 0

摘要

背景:利什曼病是一种被忽视的热带病,由利什曼原虫寄生虫引起,由白蛉传播,对全球卫生构成重大挑战,特别是在资源有限的环境中。寄生虫的生命周期包括关键的无尾虫和promastigote阶段,每个阶段对感染过程都有重要贡献。由于相当大的副作用和耐药菌株的增加,目前的利什曼病治疗面临局限性,这突出表明迫切需要新的、有效的和安全的治疗方案。利什曼病疫苗开发的最新进展包括减毒活疫苗、重组疫苗和合成生物学的使用。这些方法旨在诱导强大的免疫反应,同时确保安全性。还在探索控制人类感染的研究,以加速疫苗的开发。然而,获得许可的疫苗仍然难以捉摸。方法:介绍了一种针对利什曼病的药物发现新方法,利用机器学习和化学信息学预测化合物对利什曼原虫的疗效。利用来自PubChem数据库的65,057个分子的详细数据集,使用基于Alamar blue的检测来评估药物敏感性。数据编码依赖于源自简化分子输入行输入系统(SMILES)符号的分子指纹。我们采用了三种不同的指纹算法,Avalon, MACCS Key和药效团,用于开发机器学习模型。包括随机森林、多层感知器、梯度增强和决策树在内的各种算法被用来创建模型,根据分子的结构和化学特征有效地将分子分类为活性或非活性,这可能会对利什曼病的药物发现过程产生重大影响。结果:引入了基于集成的模型,峰值精度为83.65%,曲线下面积为0.8367。这项研究为加强药物发现工作提供了重大希望,重点是解决利什曼病的全球问题。结论:此外,拟议的方法有可能作为解决其他被忽视的热带病的框架,为传统药物发现方法及其相关困难提供了一种有希望的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble techniques for predictive modeling of leishmanial activity via molecular fingerprints.

Background: Leishmaniasis, a neglected tropical disease caused by Leishmania protozoan parasites and transmitted by sandflies, poses a significant global health challenge, especially in resource-limited environments. The life cycle of the parasite includes crucial amastigote and promastigote stages, each contributing importantly to the infection process. The current therapies for leishmaniasis face limitations due to considerable side effects and the rise of drug-resistant strains, underscoring the pressing need for new, effective, and safe treatment options. Recent advancements in leishmaniasis vaccine development include live attenuated vaccines, recombinant vaccines, and the use of synthetic biology. These approaches aim to induce robust immune responses while ensuring safety. Controlled human infection studies are also being explored to accelerate vaccine development. However, a licensed vaccine remains elusive.

Method: This study introduces a novel method for drug discovery targeting leishmaniasis, employing machine learning and cheminformatics to forecast the efficacy of compounds against Leishmania promastigotes. A detailed dataset consisting of 65,057 molecules sourced from the PubChem database is utilized, with the Alamar Blue-based assay applied to assess drug susceptibility. The data encoding relies on molecular fingerprints derived from Simplified Molecular Input Line Entry System (SMILES) notations. We employed three distinct fingerprint algorithms, Avalon, MACCS Key, and Pharmacophore, for the development of machine learning models. Various algorithms, including random forest, multilayer perceptron, gradient boosting, and decision tree, are utilized to create models that effectively classify molecules as either active or inactive based on their structural and chemical characteristics, which could significantly impact the drug discovery process for leishmaniasis.

Results: We additionally introduced a model based on ensembles, achieving a peak accuracy of 83.65% and an area under the curve of 0.8367. This study offers significant promise in enhancing drug discovery efforts focused on tackling the global issue of leishmaniasis.

Conclusion: Furthermore, the proposed approach has the potential to serve as a framework for addressing other overlooked tropical diseases, offering a promising alternative to conventional drug discovery methods and their associated difficulties.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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