代达罗斯数据医疗制造中粒子的探索、知识外部化和标记--一项设计研究。

Alexander Wyss, Gabriela Morgenshtern, Amanda Hirsch-Husler, Jurgen Bernard
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引用次数: 0

摘要

在早期疾病检测和常规病人护理的医疗诊断中,体外诊断耗材的微粒污染对病人构成重大威胁。对污染严重程度进行客观的数据驱动决策是降低患者风险的关键,同时还能节省质量评估的时间和成本。我们的合作者向我们介绍了他们的质量控制流程,包括通过图像识别获取颗粒数据、特征提取和反映颗粒生产环境的属性。当前流程的不足之处在于,在探索成千上万的图像、数据驱动决策和知识外部化方面存在局限性。按照设计研究的方法,我们的贡献包括对问题空间和需求的描述、代达罗斯数据(DaedalusData)的开发和验证、对研究心得的全面讨论以及知识外部化的通用框架。代达罗斯数据是一个可视化分析系统,它能让领域专家探索粒子污染模式,用标签字母表为粒子贴标签,并通过半监督标签信息数据投影将知识外部化。我们的案例研究和用户研究结果表明,DaedalusData 具有很高的可用性,能有效地支持专家生成数千个颗粒的综合概览、标记大量颗粒以及将知识外部化以进一步扩充数据集。在反思我们的方法时,我们讨论了通过人类知识外部化扩充数据集的见解,以及在实践中采用这种方法时的可扩展性和权衡问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DaedalusData: Exploration, Knowledge Externalization and Labeling of Particles in Medical Manufacturing - A Design Study.

In medical diagnostics of both early disease detection and routine patient care, particle-based contamination of in-vitro diagnostics consumables poses a significant threat to patients. Objective data-driven decision-making on the severity of contamination is key for reducing patient risk, while saving time and cost in quality assessment. Our collaborators introduced us to their quality control process, including particle data acquisition through image recognition, feature extraction, and attributes reflecting the production context of particles. Shortcomings in the current process are limitations in exploring thousands of images, data-driven decision making, and ineffective knowledge externalization. Following the design study methodology, our contributions are a characterization of the problem space and requirements, the development and validation of DaedalusData, a comprehensive discussion of our study's learnings, and a generalizable framework for knowledge externalization. DaedalusData is a visual analytics system that enables domain experts to explore particle contamination patterns, label particles in label alphabets, and externalize knowledge through semi-supervised label-informed data projections. The results of our case study and user study show high usability of DaedalusData and its efficient support of experts in generating comprehensive overviews of thousands of particles, labeling of large quantities of particles, and externalizing knowledge to augment the dataset further. Reflecting on our approach, we discuss insights on dataset augmentation via human knowledge externalization, and on the scalability and trade-offs that come with the adoption of this approach in practice.

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