英文摘要 |
Data-driven approaches have become a critical method in the drug discovery field. Traditionally, drug development has been a lengthy and costly process that requires huge and extensive experimentation and clinical trials. However, with the rapid advancements in data science and artificial intelligence, datadriven methods are changing the traditional research and development method, accelerating the life cycle of new drug development. The transformation of data-driven drug discovery relies primarily on the collection, integration, and analysis of data. Using big data technologies, data is gathered from various sources, including chemical databases, disease mechanisms, genomics, proteomics, and physiology. This data can be analyzed using machine learning and artificial intelligence techniques, revealing complex relationships and patterns. Such data-driven approaches not only help scientists gain a better understanding of the nature of diseases but also aid in the discovery of new drug targets and treatment methods. |