Prospective Current Novel Drug Target for the Identification of Natural Therapeutic Targets for Alzheimer's Disease

Kaman Kumar, Pooja Singh, Divya Sharma, Akanksha Singh, Himanshu Gupta, Arjun Singh
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Abstract

In today's societies, Alzheimer's disease (AD) is a significant issue. In the US, more than five million people, most of whom are 65 or older, suffer from Alzheimer's disease. By 2060, there will be fourteen million Americans living with Alzheimer's disease, according to a report by the Alzheimer's Association. To find hits with polypharmacological activities, libraries of compounds can be biologically screened based on these targets. These hits can have their structural properties altered to improve the overall profile, just like molecules created using techniques based on knowledge or medicinal chemistry. Designing multi-target ligands against key targets of interest would undoubtedly benefit from knowledge of the roles played by various targets in the development of AD as well as pharmacophores with related biological activities. Computational tools are used to assist in the design of potential polypharmacological lead molecular scaffolds, in addition to knowledge-based and biological screening-based approaches. It is becoming more common to use pharmacophore modelling, machine learning, and structure-based virtual screening to forecast biological activity and target-ligand interaction for various chemical libraries.
寻找阿尔茨海默病天然治疗靶点的前瞻性新药物靶点
在当今社会,阿尔茨海默病(AD)是一个重大问题。在美国,超过500万人患有阿尔茨海默病,其中大多数人年龄在65岁或以上。根据阿尔茨海默病协会的一份报告,到2060年,将有1400万美国人患有阿尔茨海默病。为了找到具有多药理活性的靶点,可以根据这些靶点对化合物文库进行生物学筛选。就像利用基于知识或药物化学的技术创造分子一样,这些命中物可以改变其结构特性以改善整体轮廓。针对感兴趣的关键靶点设计多靶点配体无疑将受益于了解各种靶点在AD发展中所起的作用以及具有相关生物活性的药效团。除了基于知识和基于生物筛选的方法外,计算工具还用于协助设计潜在的多药理学先导分子支架。使用药效团建模、机器学习和基于结构的虚拟筛选来预测各种化学文库的生物活性和靶配体相互作用正变得越来越普遍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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