Department of Biomedical Engineering, School of Engineering Sciences, College of Basic & Applied Sciences, University of Ghana, PMB LG 77, Legon, Accra, Ghana.
West African Center for Cell Biology of Infectious Pathogens, Department of Biochemistry, Cell and Molecular Biology, College of Basic and Applied Sciences, University of Ghana, Accra, Ghana.
Curr Top Med Chem. 2020;20(5):349-366. doi: 10.2174/1568026620666200128160454.
The global prevalence of leishmaniasis has increased with skyrocketed mortality in the past decade. The causative agent of leishmaniasis is Leishmania species, which infects populations in almost all the continents. Prevailing treatment regimens are consistently inefficient with reported side effects, toxicity and drug resistance. This review complements existing ones by discussing the current state of treatment options, therapeutic bottlenecks including chemoresistance and toxicity, as well as drug targets. It further highlights innovative applications of nanotherapeutics-based formulations, inhibitory potential of leishmanicides, anti-microbial peptides and organometallic compounds on leishmanial species. Moreover, it provides essential insights into recent machine learning-based models that have been used to predict novel leishmanicides and also discusses other new models that could be adopted to develop fast, efficient, robust and novel algorithms to aid in unraveling the next generation of anti-leishmanial drugs. A plethora of enriched functional genomic, proteomic, structural biology, high throughput bioassay and drug-related datasets are currently warehoused in both general and leishmania-specific databases. The warehoused datasets are essential inputs for training and testing algorithms to augment the prediction of biotherapeutic entities. In addition, we demonstrate how pharmacoinformatics techniques including ligand-, structure- and pharmacophore-based virtual screening approaches have been utilized to screen ligand libraries against both modeled and experimentally solved 3D structures of essential drug targets. In the era of data-driven decision-making, we believe that highlighting intricately linked topical issues relevant to leishmanial drug discovery offers a one-stop-shop opportunity to decipher critical literature with the potential to unlock implicit breakthroughs.
在过去的十年中,利什曼病的全球患病率有所增加,死亡率也急剧上升。利什曼病的病原体是利什曼原虫属,几乎所有大陆的人群都受到感染。现有的治疗方案一直效率低下,且有报道称存在副作用、毒性和耐药性等问题。本综述通过讨论现有的治疗选择、治疗瓶颈(包括化疗耐药性和毒性)以及药物靶点,对现有综述进行了补充。此外,本综述还强调了基于纳米治疗的制剂、利什曼原虫抑制剂、抗菌肽和金属有机化合物在利什曼原虫属中的创新应用。此外,本综述还提供了有关最近基于机器学习的模型的重要见解,这些模型已被用于预测新的利什曼原虫抑制剂,并讨论了其他可能被采用的新模型,以开发快速、高效、稳健和新颖的算法,以帮助揭示下一代抗利什曼病药物。目前,大量丰富的功能基因组学、蛋白质组学、结构生物学、高通量生物测定和药物相关数据集都存储在通用数据库和利什曼特定数据库中。这些存储的数据对于训练和测试算法以增强生物治疗实体的预测至关重要。此外,我们还展示了如何利用药物信息学技术,包括配体、结构和药效团虚拟筛选方法,筛选针对重要药物靶点的模拟和实验解决的 3D 结构的配体库。在数据驱动决策的时代,我们认为强调与利什曼病药物发现相关的错综复杂的主题问题提供了一个一站式机会,可以解读具有潜在突破潜力的关键文献。