Laboratory of Pharmacogenomics and Individualized Therapy, Department of Pharmacy, School of Health Sciences, University of Patras, Patras, Greece.
Department of Pathology, College of Medicine and Health Sciences, United Arab Emirates University, Al-Ain, Abu Dhabi.
OMICS. 2019 Nov;23(11):539-548. doi: 10.1089/omi.2019.0151. Epub 2019 Oct 25.
Pharmaceutical industry and the art and science of drug development are sorely in need of novel transformative technologies in the current age of digital health and artificial intelligence (AI). Often described as game-changing technologies, AI and machine learning algorithms have slowly but surely begun to revolutionize pharmaceutical industry and drug development over the past 5 years. In this expert review, we describe the most frequently used machine learning algorithms in drug development pipelines and the -omics databases well poised to support machine learning and drug discovery. Subsequently, we analyze the emerging new computational approaches to drug discovery and the pipelines for drug repositioning and the synergies among -omics system sciences, AI and machine learning. As with system sciences, AI and machine learning embody a system scale and Big Data driven vision for drug discovery and development. We conclude with a future outlook on the ways in which machine learning approaches can be implemented to buttress and expedite drug discovery and precision medicine. As AI and machine learning are rapidly entering pharmaceutical industry and the art and science of drug development, we need to critically examine the attendant prospects and challenges to benefit patients and public health.
制药行业以及药物研发的艺术与科学在当前数字健康和人工智能(AI)时代迫切需要新颖的变革性技术。通常被描述为具有变革意义的技术,人工智能和机器学习算法在过去 5 年中缓慢但稳步地开始彻底改变制药行业和药物研发。在这篇专家评论中,我们描述了药物开发管道中最常用的机器学习算法,以及准备好支持机器学习和药物发现的组学数据库。随后,我们分析了新兴的药物发现计算方法以及药物重定位和组学系统科学、人工智能和机器学习之间的协同作用的管道。与系统科学一样,人工智能和机器学习体现了药物发现和开发的系统规模和大数据驱动愿景。我们对机器学习方法可以实施的方式进行了未来展望,以支持和加速药物发现和精准医学。随着人工智能和机器学习迅速进入制药行业以及药物研发的艺术与科学领域,我们需要批判性地审视随之而来的前景和挑战,以造福患者和公共健康。