Engineering (Aug 2023)

Artificial Intelligence in Pharmaceutical Sciences

  • Mingkun Lu,
  • Jiayi Yin,
  • Qi Zhu,
  • Gaole Lin,
  • Minjie Mou,
  • Fuyao Liu,
  • Ziqi Pan,
  • Nanxin You,
  • Xichen Lian,
  • Fengcheng Li,
  • Hongning Zhang,
  • Lingyan Zheng,
  • Wei Zhang,
  • Hanyu Zhang,
  • Zihao Shen,
  • Zhen Gu,
  • Honglin Li,
  • Feng Zhu

Journal volume & issue
Vol. 27
pp. 37 – 69

Abstract

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Drug discovery and development affects various aspects of human health and dramatically impacts the pharmaceutical market. However, investments in a new drug often go unrewarded due to the long and complex process of drug research and development (R&D). With the advancement of experimental technology and computer hardware, artificial intelligence (AI) has recently emerged as a leading tool in analyzing abundant and high-dimensional data. Explosive growth in the size of biomedical data provides advantages in applying AI in all stages of drug R&D. Driven by big data in biomedicine, AI has led to a revolution in drug R&D, due to its ability to discover new drugs more efficiently and at lower cost. This review begins with a brief overview of common AI models in the field of drug discovery; then, it summarizes and discusses in depth their specific applications in various stages of drug R&D, such as target discovery, drug discovery and design, preclinical research, automated drug synthesis, and influences in the pharmaceutical market. Finally, the major limitations of AI in drug R&D are fully discussed and possible solutions are proposed.

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