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C2A: Crowd consensus analytics for virtual colonoscopy

机译:C2A:虚拟结肠镜检查的人群共识分析

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We present a medical crowdsourcing visual analytics platform called C2A to visualize, classify and filter crowdsourced clinical data. More specifically, C2A 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, C2A is used to analyze and explore crowd responses on video segments, created from fly-throughs in the virtual colon. C2A provides several interactive visualization components to build crowd consensus on video segments, to detect anomalies in the crowd data and in the VC video segments, and finally, to improve the non-expert user's work quality and performance by A/B testing for the optimal crowdsourcing platform and application-specific parameters. Case studies and domain experts feedback demonstrate the effectiveness of our framework in improving workers' output quality, the potential to reduce the radiologists' interpretation time, and hence, the potential to improve the traditional clinical workflow by marking the majority of the video segments as benign based on the crowd consensus.
机译:我们提供了一个称为C2A的医疗众包视觉分析平台,以可视化,分类和过滤众包的临床数据。更具体地说,C2A用于通过可视化人群反应并滤除异常活动来建立临床诊断的共识。最近,众包医疗应用程序显示了非专家用户(人群)能够达到类似于医疗专家的准确性的希望。通过事先对发现结果达成共识并让医学专家做出最终诊断,这有可能减少解释/阅读时间,并可能提高准确性。在本文中,我们将重点放在虚拟结肠镜检查(VC)应用程序上,其临床技术人员是我们的目标用户,而放射科医生则充当顾问,并将肿瘤的部分分为良性或恶性。特别地,C2A用于分析和探索从虚拟结肠中的飞越创建的视频片段上的人群响应。 C2A提供了几个交互式的可视化组件,以在视频片段上建立人群共识,检测人群数据和VC视频片段中的异常,最后通过A / B测试来提高非专家用户的工作质量和性能,以达到最佳效果。众包平台和特定于应用程序的参数。案例研究和领域专家的反馈表明,我们的框架在提高工人的输出质量方面具有有效性,可以减少放射科医生的解释时间,因此可以通过将大多数视频片段标记为良性来改善传统的临床工作流程基于人群共识。

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