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PyRosetta Jupyter Notebooks Teach Biomolecular Structure Prediction and Design

Authors :
Morgan L. Nance
Steven J. Bertolani
William R. Schief
Rebecca F. Alford
Daniel W. Kulp
Jason C. Klima
Shourya S. Roy Burman
Yuanhan Wu
Jack Maguire
Jordan R. Willis
Roland L. Dunbrack
Andrew Leaver-Fay
Jason W. Labonte
Aleexsan Adal
Ramya Rangan
Brian Kuhlman
Sergey Lyskov
Jared Adolf-Bryfogle
Justin B. Siegel
Kathy H. Le
Rhiju Das
Jeffrey J. Gray
Brian D. Weitzner
Matt A. Adrianowycz
Source :
Biophysicist (Rockv)
Publication Year :
2021
Publisher :
Biophysical Society, 2021.

Abstract

Biomolecular structure drives function, and computational capabilities have progressed such that the prediction and computational design of biomolecular structures is increasingly feasible. Because computational biophysics attracts students from many different backgrounds and with different levels of resources, teaching the subject can be challenging. One strategy to teach diverse learners is with interactive multimedia material that promotes self-paced, active learning. We have created a hands-on education strategy with a set of 16 modules that teach topics in biomolecular structure and design, from fundamentals of conformational sampling and energy evaluation to applications, such as protein docking, antibody design, and RNA structure prediction. Our modules are based on PyRosetta, a Python library that encapsulates all computational modules and methods in the Rosetta software package. The workshop-style modules are implemented as Jupyter Notebooks that can be executed in the Google Colaboratory, allowing learners access with just a Web browser. The digital format of Jupyter Notebooks allows us to embed images, molecular visualization movies, and interactive coding exercises. This multimodal approach may better reach students from different disciplines and experience levels, as well as attract more researchers from smaller labs and cognate backgrounds to leverage PyRosetta in science and engineering research. All materials are freely available at https://github.com/RosettaCommons/PyRosetta.notebooks.

Details

ISSN :
25786970
Volume :
2
Database :
OpenAIRE
Journal :
The Biophysicist
Accession number :
edsair.doi.dedup.....eb58dd22c2bb7028a8c98596909a46ca
Full Text :
https://doi.org/10.35459/tbp.2019.000147