Kumar Rajnish, Sharma Anju, Alexiou Athanasios, Ashraf Ghulam Md
Amity Institute of Biotechnology, Amity University Uttar Pradesh Lucknow Campus, Uttar Pradesh, India.
Department of Applied Science, Indian Institute of Information Technology, Allahabad, Uttar Pradesh, India.
Curr Top Med Chem. 2022;22(30):2483-2492. doi: 10.2174/1568026623666221017143244.
The artificial intelligence (AI)-assisted design of drug candidates with novel structures and desired properties has received significant attention in the recent past, so related areas of forward prediction that aim to discover chemical matters worth synthesizing and further experimental investigation.
The purpose behind developing AI-driven models is to explore the broader chemical space and suggest new drug candidate scaffolds with promising therapeutic value. Moreover, it is anticipated that such AI-based models may not only significantly reduce the cost and time but also decrease the attrition rate of drug candidates that fail to reach the desirable endpoints at the final stages of drug development. In an attempt to develop AI-based models for de novo drug design, numerous methods have been proposed by various study groups by applying machine learning and deep learning algorithms to chemical datasets. However, there are many challenges in obtaining accurate predictions, and real breakthroughs in de novo drug design are still scarce.
In this review, we explore the recent trends in developing AI-based models for de novo drug design to assess the current status, challenges, and opportunities in the field.
The consistently improved AI algorithms and the abundance of curated training chemical data indicate that AI-based de novo drug design should perform better than the current models. Improvements in the performance are warranted to obtain better outcomes in the form of potential drug candidates, which can perform well in in vivo conditions, especially in the case of more complex diseases.
具有新颖结构和理想性质的候选药物的人工智能(AI)辅助设计在最近受到了广泛关注,因此,旨在发现值得合成并进行进一步实验研究的化学物质的相关正向预测领域也备受关注。
开发人工智能驱动模型的目的是探索更广阔的化学空间,并提出具有潜在治疗价值的新候选药物支架。此外,预计这种基于人工智能的模型不仅可以显著降低成本和时间,还可以降低在药物开发后期未能达到理想终点的候选药物的淘汰率。为了开发用于从头药物设计的人工智能模型,各个研究小组通过将机器学习和深度学习算法应用于化学数据集,提出了许多方法。然而,获得准确预测存在许多挑战,从头药物设计的真正突破仍然很少。
在这篇综述中,我们探讨了开发用于从头药物设计的人工智能模型的最新趋势,以评估该领域的现状、挑战和机遇。
不断改进的人工智能算法和大量经过整理的训练化学数据表明,基于人工智能的从头药物设计应该比当前模型表现更好。为了以潜在候选药物的形式获得更好的结果,尤其是在更复杂疾病的情况下,在体内条件下表现良好,性能的提升是有必要的。