Department of Pharmaceutics, National Institute of Pharmaceutical Education and Research (NIPER)-Raebareli, Near CRPF Base Camp, Bijnor-Sisendi Road, Sarojini Nagar, Lucknow (UP)-226002, India.
Curr Pharm Des. 2024;30(28):2187-2205. doi: 10.2174/0113816128308066240529121148.
Over the period of the preceding decade, artificial intelligence (AI) has proved an outstanding performance in entire dimensions of science including pharmaceutical sciences. AI uses the concept of machine learning (ML), deep learning (DL), and neural networks (NNs) approaches for novel algorithm and hypothesis development by training the machines in multiple ways. AI-based drug development from molecule identification to clinical approval tremendously reduces the cost of development and the time over conventional methods. The COVID-19 vaccine development and approval by regulatory agencies within 1-2 years is the finest example of drug development. Hence, AI is fast becoming a boon for scientific researchers to streamline their advanced discoveries. AI-based FDA-approved nanomedicines perform well as target selective, synergistic therapies, recolonize the theragnostic pharmaceutical stream, and significantly improve drug research outcomes. This comprehensive review delves into the fundamental aspects of AI along with its applications in the realm of pharmaceutical life sciences. It explores AI's role in crucial areas such as drug designing, drug discovery and development, traditional Chinese medicine, integration of multi-omics data, as well as investigations into drug repurposing and polypharmacology studies.
在过去的十年中,人工智能(AI)在包括药物科学在内的各个科学领域都表现出了卓越的性能。AI 通过机器学习(ML)、深度学习(DL)和神经网络(NNs)方法的概念,通过多种方式训练机器,从而开发新的算法和假设。基于 AI 的药物开发,从分子识别到临床批准,极大地降低了开发成本和传统方法所需的时间。COVID-19 疫苗在 1-2 年内获得监管机构的批准就是药物开发的最佳范例。因此,AI 正在迅速成为科学研究人员简化其先进发现的福音。基于 AI 的美国食品和药物管理局批准的纳米药物作为靶向选择性、协同疗法表现良好,重新成为治疗药物的主流,并显著改善药物研究结果。这篇全面的综述深入探讨了 AI 的基本方面及其在药物生命科学领域的应用。它探讨了 AI 在药物设计、药物发现和开发、中药、多组学数据整合以及药物再利用和多效性研究等关键领域的作用。