制药工业
药物开发
管道(软件)
药物发现
风险分析(工程)
损耗
设计质量
计算机科学
药品
过程(计算)
生化工程
工程类
计算生物学
药理学
医学
生物信息学
运营管理
生物
牙科
程序设计语言
下游(制造业)
操作系统
作者
Adam Serghini,Stephanie Portelli,David B. Ascher
标识
DOI:10.1007/978-1-0716-3441-7_15
摘要
The greatest challenge in drug discovery remains the high rate of attrition across the different phases of the process, which cost the industry billions of dollars every year. While all phases remain crucial to ensure pharmaceutical-level safety, quality, and efficacy of the end product, streamlining these efforts toward compounds with success potential is pivotal for a more efficient and cost-effective process. The use of artificial intelligence (AI) within the pharmaceutical industry aims at just this, and has applications in preclinical screening for biological activity, optimization of pharmacokinetic properties for improved drug formulation, early toxicity prediction which reduces attrition, and pre-emptively screening for genetic changes in the biological target to improve therapeutic longevity. Here, we present a series of in silico tools that address these applications in small molecule development and describe how they can be embedded within the current pharmaceutical development pipeline.
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