(We are grateful and happy that Alexander Bock, of the Linköping University, Sweden SciVis group could write this short report on the medical visualization-related papers at IEEE PacificVis 2013 for us.)
“Bättre sent än aldrig”, “Besser spät als nie”, “Better late than never”. If a lot of different languages have proverbs for this concept, there must be some truth at the bottom of it. With almost 2 months of delay and after spending the last 2 weeks in PVSD (PostVis Stress Disorder), I will present some of my personal reflections regarding the IEEE PacificVis conference that took place in central Sydney, Australia this year.
The event was hosted by the University of Sydney and three researchers from this university — Peter Eades, Seok-Hee Hong and Karsten Klein were the public faces that guided the conference participants through the event. I am well aware that there are many
andd more people responsible for the organization and execution of the conference and I would like to thank all of those for their splendid work as well. Despite some minor location-related problems — yes, I’m looking at you, projectors! —, the conference was seemingly bug-free and ready to ship! All of the talks at the conference were recorded and I was assured that those videos would see the light of day at some point in the near future. At the time of writing this future has not happened yet, so there will be an update as soon as the presentations are made available.
The greater event started on Tuesday with the opening of the first PacificVAST workshop colocated with PacificVis and a great tutorial on Graph Drawing by Karsten Klein. I can say that for me, as a not graph-ically literate person, it was a very good overview and an even better introduction to the many graph drawing presentations that were to come during the next days. All of the presentations at PacificVAST this year were invited talks, but the organizers are happy to receive nice papers for PacificVAST 2014.
The first day of PacificVis began with a keynote given by Giuseppe Di Battista from the Università Roma Tre, who made one of his few trips outside of Italy to present this insightful thoughts about Graph Animation. Adding the challenge of temporal consistency to the already hard problem of finding good layouts for big graphs was a very interesting topic indeed.
The first two sessions of the day were concerned with “Text and Map Visualization” and “Big Data Visualization”. For brevity’s sake, I’m only highlighting one of the papers, namely “Reordering Massive Sequence Views: Enabling Temporal and Structural Analysis of Dynamic Networks” [1] by Stef van den Elzen et al. from SynerScope and the University of Eindhoven, The Netherlands, since –spoiler-alert– they won the Best Paper Award of the conference. They extended Massive Sequence Views to analyze dynamic networks and enable the user efficiently and effectively detect features in big, time-varying datasets.

Stef van den Elzen, Danny Holten, Jorik Blaas, and Jarke J. van. Wijk: Reordering Massive Sequence Views: Enabling Temporal and Structural Analysis of Dynamic Networks [1]

Liang Zhou and Charles Hansen: Transfer Function Design based on User Selected Samples for Intuitive Multivariate Volume Exploration [4].

A.V. Pascal Grosset, Mathias Schott, Georges-Pierre Bonneau, and Charles Hansen: Evaluation of Depth of Field for Depth Perception in DVR [5].
The first session of the second day was called “Visualization in Medicine and Natural Sciences” and started with “Guiding Deep Brain Stimulation Interventions by Fusing Multimodal Uncertainty Regions” [7] presented by me, Alexander Bock, from Linköping University, Sweden. So much for objectivity, but I will try nevertheless. In this paper we demonstrated a system to support the surgeon during a Deep Brain Stimulation intervention by showing him/her a combined view of all the measured data along with their associated uncertainty.

Alexander Bock, Norbert Land, Gianpaolo Evangelista, Ralph Lehrke, and Timo Ropinski: Guiding Deep Brain Stimulation Interventions by Fusing Multimodal Uncertainty Regions [7].

Erik W. Anderson, Catherine Chong, Gilbert A. Preston, and Cláudio T. Silva: Discovering and Visualizing Patterns in EEG Data [8].

Silvia Born, Michael Markl, Matthias Gutberlet, Gerik Scheuermann: Illustrative Visualization of Cardiac and Aortic Blood Flow from 4D MRI Data [9].

Jung et al.: “Efficient Visibility-driven Transfer Function for Dual-Modal
PET-CT Visualisation using Adaptive Binning” poster.
As this post is already far too long, and none of the remaining sessions (namely: “Time–varying and Multivariate Visualization”, “Visual Analytics”, “Tree and Graph Visualization” and “Vector and Tensor Fields Visualization” contained directly medvis research, I will wrap this one up by thanking all of the speakers and the organizers and by stating that I could unfortunately only present a small subset of all the good papers that were presented at the conference. As soon as the Proceedings are published, I hope that everybody can reach the same conclusion.
- [1] Stef van den Elzen, Danny Holten, Jorik Blaas, and Jarke J. van. Wijk: “Reordering Massive Sequence Views: Enabling Temporal and Structural Analysis of Dynamic Networks.”
- [2] Hanqi Guo and Xiaoru Yuan: “Local WYSIWYG Volume Visualization.” URL: http://vis.pku.edu.cn/research/publication/PacificVis13_ltf.pdf
- [3] Hanqi Guo, Ningyu Mao, and Xiaoru Yuan: “WYSIWYG (What You See is What You Get) Volume Visualization.” URL: http://vis.pku.edu.cn/research/publication/Vis11_wysiwyg-small.pdf
- [4] Liang Zhou and Charles Hansen: “Transfer Function Design based on User Selected Samples for Intuitive Multivariate Volume Exploration.”
- [5] A.V. Pascal Grosset, Mathias Schott, Georges-Pierre Bonneau, and Charles Hansen: “Evaluation of Depth of Field for Depth Perception in DVR.” URL: http://hal.inria.fr/docs/00/76/25/48/PDF/dofEval.pdf
- [6] Steven Martin and Han-Wei Shen: “Transformations for Volumetric Range Distribution Queries.”
- [7] Alexander Bock, Norbert Land, Gianpaolo Evangelista, Ralph Lehrke, and Timo Ropinski: “Guiding Deep Brain Stimulation Interventions by Fusing Multimodal Uncertainty Regions.” URL: http://scivis.itn.liu.se/publications/2013/BLELR13//pavis13-dbs.pdf
- [8] Erik W. Anderson, Catherine Chong, Gilbert A. Preston, and Cláudio T. Silva: “Discovering and Visualizing Patterns in EEG Data.”
- [9] Silvia Born, Michael Markl, Matthias Gutberlet, Gerik Scheuermann: “Illustrative Visualization of Cardiac and Aortic Blood Flow from 4D MRI Data.”
- [10] Silvia Born, Matthias Pfeifle, Michael Markl, Gerik Scheuermann: “Visual 4D MRI Blood Flow Analysis with Line Predicates.” URL: http://ieeexplore.ieee.org/xpl/mostRecentIssue.jsp?punumber=6178307