Molecules (Feb 2024)

Machine Learning Empowering Drug Discovery: Applications, Opportunities and Challenges

  • Xin Qi,
  • Yuanchun Zhao,
  • Zhuang Qi,
  • Siyu Hou,
  • Jiajia Chen

DOI
https://doi.org/10.3390/molecules29040903
Journal volume & issue
Vol. 29, no. 4
p. 903

Abstract

Read online

Drug discovery plays a critical role in advancing human health by developing new medications and treatments to combat diseases. How to accelerate the pace and reduce the costs of new drug discovery has long been a key concern for the pharmaceutical industry. Fortunately, by leveraging advanced algorithms, computational power and biological big data, artificial intelligence (AI) technology, especially machine learning (ML), holds the promise of making the hunt for new drugs more efficient. Recently, the Transformer-based models that have achieved revolutionary breakthroughs in natural language processing have sparked a new era of their applications in drug discovery. Herein, we introduce the latest applications of ML in drug discovery, highlight the potential of advanced Transformer-based ML models, and discuss the future prospects and challenges in the field.

Keywords