C2A: Crowd Consensus Analytics for Virtual Colonoscopy
Ji Hwan Park, Saad Nadeem, Seyedkoosha Mirhosseini, Arie Kaufman

TL;DR
C2A is a visual analytics platform that leverages crowdsourcing to analyze virtual colonoscopy videos, aiming to improve diagnostic accuracy and efficiency by building consensus and filtering anomalies in crowd responses.
Contribution
This paper introduces C2A, a novel visual analytics system for crowdsourced medical diagnosis, specifically applied to virtual colonoscopy, enhancing consensus-building and anomaly detection.
Findings
Crowd consensus improves diagnostic accuracy.
The platform reduces radiologists' interpretation time.
Effective anomaly detection in crowd responses.
Abstract
We present a medical crowdsourcing visual analytics platform called C{}A to visualize, classify and filter crowdsourced clinical data. More specifically, CA is used to build consensus on a clinical diagnosis by visualizing crowd responses and filtering out anomalous activity. Crowdsourcing medical applications have recently shown promise where the non-expert users (the crowd) were able to achieve accuracy similar to the medical experts. This has the potential to reduce interpretation/reading time and possibly improve accuracy by building a consensus on the findings beforehand and letting the medical experts make the final diagnosis. In this paper, we focus on a virtual colonoscopy (VC) application with the clinical technicians as our target users, and the radiologists acting as consultants and classifying segments as benign or malignant. In particular, CA is used to analyze…
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