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Modeling in the Time of COVID-19: Statistical and Rule-based Mesoscale Models

Authors :
Nguyen, Ngan
Strnad, Ondrej
Klein, Tobias
Luo, Deng
Alharbi, Ruwayda
Wonka, Peter
Maritan, Martina
Mindek, Peter
Autin, Ludovic
Goodsell, David S.
Viola, Ivan
Publication Year :
2020

Abstract

We present a new technique for rapid modeling and construction of scientifically accurate mesoscale biological models. Resulting 3D models are based on few 2D microscopy scans and the latest knowledge about the biological entity represented as a set of geometric relationships. Our new technique is based on statistical and rule-based modeling approaches that are rapid to author, fast to construct, and easy to revise. From a few 2D microscopy scans, we learn statistical properties of various structural aspects, such as the outer membrane shape, spatial properties and distribution characteristics of the macromolecular elements on the membrane. This information is utilized in 3D model construction. Once all imaging evidence is incorporated in the model, additional information can be incorporated by interactively defining rules that spatially characterize the rest of the biological entity, such as mutual interactions among macromolecules, their distances and orientations to other structures. These rules are defined through an intuitive 3D interactive visualization and modeling feedback loop. We demonstrate the utility of our approach on a use case of the modeling procedure of the SARS-CoV-2 virus particle ultrastructure. Its first complete atomistic model, which we present here, can steer biological research to new promising directions in fighting spread of the virus.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2005.01804
Document Type :
Working Paper
Full Text :
https://doi.org/10.1109/TVCG.2020.3030415