# CerebroVis: Designing an Abstract yet Spatially Contextualized Cerebral   Arteries Network Visualization

**Authors:** Aditeya Pandey, Harsh Shukla, Geoffrey S. Young, Lei Qin, Amir A., Zamani, Liangge Hsu, Raymond Huang, Cody Dunne, and Michelle A. Borkin

arXiv: 1907.12663 · 2019-10-17

## TL;DR

CerebroVis is a novel visualization tool that combines abstract network layouts with spatial context to improve neuroradiologists' ability to detect cerebral artery abnormalities in brain scans.

## Contribution

The paper introduces a new network layout technique that integrates spatial context into abstract cerebral artery visualizations, enhancing task performance over traditional 3D methods.

## Key findings

- Participants were more accurate in identifying artery stenoses with CerebroVis.
- The layout technique successfully handled 61 open source brain scans.
- CerebroVis improved domain task performance compared to conventional 3D visualization.

## Abstract

Blood circulation in the human brain is supplied through a network of cerebral arteries. If a clinician suspects a patient has a stroke or other cerebrovascular condition they order imaging tests. Neuroradiologists visually search the resulting scans for abnormalities. Their visual search tasks correspond to the abstract network analysis tasks of browsing and path following. To assist neuroradiologists in identifying cerebral artery abnormalities we designed CerebroVis, a novel abstract---yet spatially contextualized---cerebral artery network visualization. In this design study, we contribute a novel framing and definition of the cerebral artery system in terms of network theory and characterize neuroradiologist domain goals as abstract visualization and network analysis tasks. Through an iterative, user-centered design process we developed an abstract network layout technique which incorporates cerebral artery spatial context. The abstract visualization enables increased domain task performance over 3D geometry representations, while including spatial context helps preserve the user's mental map of the underlying geometry. We provide open source implementations of our network layout technique and prototype cerebral artery visualization tool. We demonstrate the robustness of our technique by successfully laying out 61 open source brain scans. We evaluate the effectiveness of our layout through a mixed methods study with three neuroradiologists. In a formative controlled experiment our study participants used CerebroVis and a conventional 3D visualization to examine real cerebral artery imaging data and to identify a simulated intracranial artery stenosis. Participants were more accurate at identifying stenoses using CerebroVis (absolute risk difference 13%). A free copy of this paper, the evaluation stimuli and data, and source code are available at https://osf.io/e5sxt/.

## Full text

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## Figures

10 figures with captions in the complete paper: https://tomesphere.com/paper/1907.12663/full.md

## References

68 references — full list in the complete paper: https://tomesphere.com/paper/1907.12663/full.md

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Source: https://tomesphere.com/paper/1907.12663