Online Machine Learning for Accelerating Molecular Dynamics Modeling of Cells

被引:3
|
作者
Zhang, Ziji [1 ]
Zhang, Peng [1 ]
Han, Changnian [1 ]
Cong, Guojing [2 ]
Yang, Chih-Chieh [3 ]
Deng, Yuefan [1 ,4 ]
机构
[1] SUNY Stony Brook, Dept Appl Math & Stat, Stony Brook, NY 11794 USA
[2] Oak Ridge Natl Lab, Oak Ridge, TN USA
[3] IBM Thomas J Watson Res Ctr, Yorktown Hts, NY USA
[4] New York Univ Abu Dhabi, Div Sci, Math, Abu Dhabi, U Arab Emirates
关键词
online machine learning; molecular dynamics; computational fluid dynamics; equation of motion; multiscale modeling; NEURAL-NETWORKS; PLATELETS; ALGORITHMS; PARTICLES; FLOW;
D O I
10.3389/fmolb.2021.812248
中图分类号
Q5 [生物化学]; Q7 [分子生物学];
学科分类号
071010 ; 081704 ;
摘要
We developed a biomechanics-informed online learning framework to learn the dynamics with ground truth generated with multiscale modeling simulation. It was built on Summit-like supercomputers, which were also used to benchmark and validate our framework on one physiologically significant modeling of deformable biological cells. We generalized the century-old equation of Jeffery orbits to a new equation of motion with additional parameters to account for the flow conditions and the cell deformability. Using simulation data at particle-based resolutions for flowing cells and the learned parameters from our framework, we validated the new equation by the motions, mostly rotations, of a human platelet in shear blood flow at various shear stresses and platelet deformability. Our online framework, which surrogates redundant computations in the conventional multiscale modeling by solutions of our learned equation, accelerates the conventional modeling by three orders of magnitude without visible loss of accuracy.
引用
收藏
页数:15
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