Development of an Immersive Virtual Colonoscopy Viewer for Colon Growths
Diagnosis
- URL: http://arxiv.org/abs/2302.02946v2
- Date: Thu, 4 May 2023 11:44:48 GMT
- Title: Development of an Immersive Virtual Colonoscopy Viewer for Colon Growths
Diagnosis
- Authors: Jo\~ao Serras and Anderson Maciel and Soraia Paulo and Andrew
Duchowski and Regis Kopper and Catarina Moreira and Joaquim Jorge
- Abstract summary: We present a new design exploring elements of the VR paradigm to make the immersive analysis more efficient while still effective.
We also plan the conduction of experiments with experts to assess the multi-factor influences of coverage, duration, and diagnostic accuracy.
- Score: 0.4771971685916732
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Desktop-based virtual colonoscopy has been proven to be an asset in the
identification of colon anomalies. The process is accurate, although
time-consuming. The use of immersive interfaces for virtual colonoscopy is
incipient and not yet understood. In this work, we present a new design
exploring elements of the VR paradigm to make the immersive analysis more
efficient while still effective. We also plan the conduction of experiments
with experts to assess the multi-factor influences of coverage, duration, and
diagnostic accuracy.
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