SynopSet: Multiscale Visual Abstraction Set for Explanatory Analysis of
DNA Nanotechnology Simulations
- URL: http://arxiv.org/abs/2205.01628v1
- Date: Mon, 18 Apr 2022 06:53:52 GMT
- Title: SynopSet: Multiscale Visual Abstraction Set for Explanatory Analysis of
DNA Nanotechnology Simulations
- Authors: Deng Luo, Alexandre Kouyoumdjian, Ond\v{r}ej Strnad, Haichao Miao,
Ivan Bari\v{s}i\'c, Ivan Viola
- Abstract summary: We propose a new abstraction set (SynopSet) that has a continuum of visual representations for the explanatory analysis of molecular dynamics simulations (MDS) in the DNA nanotechnology domain.
This set is also designed to be capable of showing all spatial and temporal details, and all structural complexity.
We have shown that our set of representations can be systematically located in a visualization space, dubbed SynopSpace.
- Score: 60.05887213349294
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: We propose a new abstraction set (SynopSet) that has a continuum of visual
representations for the explanatory analysis of molecular dynamics simulations
(MDS) in the DNA nanotechnology domain. By re-purposing the commonly used
progress bar and designing novel visuals, as well as transforming the data from
the domain format to a format that better fits the newly designed visuals, we
compose this new set of representations. This set is also designed to be
capable of showing all spatial and temporal details, and all structural
complexity, or abstracting these to various degrees, enabling both the slow
playback of the simulation for detailed examinations or very fast playback for
an overview that helps to efficiently identify events of interest, as well as
several intermediate levels between these two extremes. For any pair of
successive representations, we demonstrate smooth, continuous transitions,
enabling users to keep track of relevant information from one representation to
the next. By providing multiple representations suited to different temporal
resolutions and connected by smooth transitions, we enable time-efficient
simulation analysis, giving users the opportunity to examine and present
important phases in great detail, or leverage abstract representations to go
over uneventful phases much faster. Domain experts can thus gain actionable
insight about their simulations and communicate it in a much shorter time.
Further, the novel representations are more intuitive and also enable
researchers unfamiliar with MDS analysis graphs to better understand the
simulation results. We assessed the effectiveness of SynopSet on 12 DNA
nanostructure simulations together with a domain expert. We have also shown
that our set of representations can be systematically located in a
visualization space, dubbed SynopSpace.
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