可扩展性
计算机科学
实施
领域(数学)
质量(理念)
人工智能
机器学习
力场(虚构)
数据科学
软件工程
哲学
数学
认识论
数据库
纯数学
作者
Mingan Chen,Xinyu Jiang,Lehan Zhang,Xiaoxu Chen,Yiming Wen,Zhiyong Gu,Xutong Li,Mingyue Zheng
摘要
Abstract In the field of molecular simulation for drug design, traditional molecular mechanic force fields and quantum chemical theories have been instrumental but limited in terms of scalability and computational efficiency. To overcome these limitations, machine learning force fields (MLFFs) have emerged as a powerful tool capable of balancing accuracy with efficiency. MLFFs rely on the relationship between molecular structures and potential energy, bypassing the need for a preconceived notion of interaction representations. Their accuracy depends on the machine learning models used, and the quality and volume of training data sets. With recent advances in equivariant neural networks and high‐quality datasets, MLFFs have significantly improved their performance. This review explores MLFFs, emphasizing their potential in drug design. It elucidates MLFF principles, provides development and validation guidelines, and highlights successful MLFF implementations. It also addresses potential challenges in developing and applying MLFFs. The review concludes by illuminating the path ahead for MLFFs, outlining the challenges to be overcome and the opportunities to be harnessed. This inspires researchers to embrace MLFFs in their investigations as a new tool to perform molecular simulations in drug design.
科研通智能强力驱动
Strongly Powered by AbleSci AI