Global Clinical & Real World Evidence Statistics, Global Biometrics, Teva Pharmaceuticals, 145 Brandywine Pkwy, PA, 19380, West Chester, USA.
Statistical and Quantitative Science, Data Sciences Institute, Takeda Pharmaceutical Co. Limited, 300 Mass Ave, West Chester, PA, 19380, USA.
AAPS J. 2022 Jan 4;24(1):19. doi: 10.1208/s12248-021-00644-3.
Over the past decade, artificial intelligence (AI) and machine learning (ML) have become the breakthrough technology most anticipated to have a transformative effect on pharmaceutical research and development (R&D). This is partially driven by revolutionary advances in computational technology and the parallel dissipation of previous constraints to the collection/processing of large volumes of data. Meanwhile, the cost of bringing new drugs to market and to patients has become prohibitively expensive. Recognizing these headwinds, AI/ML techniques are appealing to the pharmaceutical industry due to their automated nature, predictive capabilities, and the consequent expected increase in efficiency. ML approaches have been used in drug discovery over the past 15-20 years with increasing sophistication. The most recent aspect of drug development where positive disruption from AI/ML is starting to occur, is in clinical trial design, conduct, and analysis. The COVID-19 pandemic may further accelerate utilization of AI/ML in clinical trials due to an increased reliance on digital technology in clinical trial conduct. As we move towards a world where there is a growing integration of AI/ML into R&D, it is critical to get past the related buzz-words and noise. It is equally important to recognize that the scientific method is not obsolete when making inferences about data. Doing so will help in separating hope from hype and lead to informed decision-making on the optimal use of AI/ML in drug development. This manuscript aims to demystify key concepts, present use-cases and finally offer insights and a balanced view on the optimal use of AI/ML methods in R&D.
在过去的十年中,人工智能 (AI) 和机器学习 (ML) 已成为最受期待的突破性技术,有望对药物研发 (R&D) 产生变革性影响。这在一定程度上是由于计算技术的革命性进步以及以前在收集/处理大量数据方面的限制的消除。与此同时,将新药推向市场和患者的成本变得高得令人望而却步。认识到这些不利因素,由于其自动化性质、预测能力以及效率的预期提高,AI/ML 技术对制药行业具有吸引力。在过去的 15-20 年中,ML 方法已在药物发现中得到应用,且应用越来越复杂。AI/ML 对药物开发的最新积极影响开始出现在临床试验设计、进行和分析中。由于临床试验进行中对数字技术的依赖增加,COVID-19 大流行可能会进一步加速临床试验中 AI/ML 的使用。随着我们迈向一个越来越多地将 AI/ML 融入 R&D 的世界,重要的是要摆脱相关的炒作和噪音。同样重要的是要认识到,在对数据进行推断时,科学方法并没有过时。这样做将有助于将希望与炒作区分开来,并为在药物开发中最佳使用 AI/ML 做出明智决策。本文旨在阐明关键概念,介绍用例,最后提供对在 R&D 中最佳使用 AI/ML 方法的见解和平衡观点。