MDsrv -- visual sharing and analysis of molecular dynamics simulations
- URL: http://arxiv.org/abs/2203.13658v1
- Date: Fri, 25 Mar 2022 14:08:24 GMT
- Title: MDsrv -- visual sharing and analysis of molecular dynamics simulations
- Authors: Michelle Kampfrath, Ren\'e Staritzbichler, Guillermo P\'erez
Hern\'andez, Alexander S. Rose, Johanna K.S. Tiemann, Gerik Scheuermann,
Daniel Wiegreffe, Peter W. Hildebrand
- Abstract summary: The MDsrv is a tool that streams MD trajectories and displays them interactively in web browsers.
We have now enhanced the MDsrv to further simplify the upload and sharing of MD trajectories.
An important innovation is that the MDsrv can now access and visualize trajectories from remote datasets.
- Score: 49.88123522856065
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Molecular dynamics simulation is a proven technique for computing and
visualizing the time-resolved motion of macromolecules at atomic resolution.
The MDsrv is a tool that streams MD trajectories and displays them
interactively in web browsers without requiring advanced skills, facilitating
interactive exploration and collaborative visual analysis. We have now enhanced
the MDsrv to further simplify the upload and sharing of MD trajectories and
improve their online viewing and analysis. With the new instance, the MDsrv
simplifies the creation of sessions, which allows the exchange of MD
trajectories with preset representations and perspectives. An important
innovation is that the MDsrv can now access and visualize trajectories from
remote datasets, which greatly expands its applicability and use, as the data
no longer needs to be accessible on a local server. In addition, initial
analyses such as sequence or structure alignments, distance measurements, or
RMSD calculations have been implemented, which optionally support visual
analysis. Finally, the MDsrv now offers a faster and more efficient
visualization of even large trajectories.
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