计算机科学
人工智能
比例(比率)
多尺度建模
领域(数学)
深度学习
数据科学
汇流
机器学习
科学与工程
生物信息学
数学
生物
工程类
物理
工程伦理学
量子力学
程序设计语言
纯数学
作者
Harsh Bhatia,Fikret Aydin,Timothy S. Carpenter,Felice C. Lightstone,Peer‐Timo Bremer,Helgi I. Ingólfsson,Dwight V. Nissley,Frederick H. Streitz
标识
DOI:10.1016/j.sbi.2023.102569
摘要
Multiscale modeling has a long history of use in structural biology, as computational biologists strive to overcome the time- and length-scale limits of atomistic molecular dynamics. Contemporary machine learning techniques, such as deep learning, have promoted advances in virtually every field of science and engineering and are revitalizing the traditional notions of multiscale modeling. Deep learning has found success in various approaches for distilling information from fine-scale models, such as building surrogate models and guiding the development of coarse-grained potentials. However, perhaps its most powerful use in multiscale modeling is in defining latent spaces that enable efficient exploration of conformational space. This confluence of machine learning and multiscale simulation with modern high-performance computing promises a new era of discovery and innovation in structural biology.
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