两个中心的故事:癌症护理中健康差异的视觉探索。

Sanjana Srabanti, Michael Tran, Virginie Achim, David Fuller, Guadalupe Canahuate, Fabio Miranda, G Elisabeta Marai
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引用次数: 2

摘要

全世界头颈癌(HNC)的年发病率超过55万例,每年约有30万人死亡。然而,由于不确定的原因,HNC的发病率和疾病特征在治疗中心和不同人群之间存在差异,这些原因可能包括也可能不包括社会经济因素。在新兴的健康差异研究领域中,数据的多面性和多变量性使得自动化分析不切实际。因此,我们提出了一种视觉分析方法来探索来自两个癌症护理中心的两个不同队列的HNC患者数据中的健康差异。我们的方法集成了来自多个来源的数据,包括人口普查数据和城市数据,使用自定义视觉编码和最近邻方法。我们的设计是与肿瘤学专家合作创建的,可以分析患者的人口统计学、疾病特征、治疗和结果,并对这两个队列和单个患者进行重大比较。我们通过与领域专家一起进行的两个案例研究来评估这种方法。结果表明,这种可视化分析方法成功地实现了从不同显著因素方面比较两个队列的目标,并可以深入了解两个中心之间健康差异的主要来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Tale of Two Centers: Visual Exploration of Health Disparities in Cancer Care.

The annual incidence of head and neck cancers (HNC) worldwide is more than 550,000 cases, with around 300,000 deaths each year. However, the incidence rates and disease-characteristics of HNC differ between treatment centers and different populations, due to undetermined reasons, which may or not include socioeconomic factors. The multi-faceted and multi-variate nature of the data in the context of the emerging field of health disparities research makes automated analysis impractical. Hence, we present a visual analysis approach to explore the health disparities in the data of HNC patients from two different cohorts at two cancer care centers. Our approach integrates data from multiple sources, including census data and city data, with custom visual encodings and with a nearest neighbor approach. Our design, created in collaboration with oncology experts, makes it possible to analyze the patients' demographic, disease characteristics, treatments and outcomes, and to make significant comparisons of these two cohorts and of individual patients. We evaluate this approach through two case studies performed with domain experts. The results demonstrate that this visual analysis approach successfully accomplishes the goal of comparing two cohorts in terms of different significant factors, and can provide insights into the main source of health disparities between the two centers.

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