Predicting, Analyzing and Communicating Outcomes of COVID-19 Hospitalizations with Medical Images and Clinical Data

Oliver Stritzel, R. Raidou
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Abstract

We propose PACO , a visual analytics framework to support the prediction, analysis, and communication of COVID-19 hospitalization outcomes. Although several real-world data sets about COVID-19 are openly available, most of the current research focuses on the detection of the disease. Until now, no previous work exists on combining insights from medical image data with knowledge extracted from clinical data, predicting the likelihood of an intensive care unit (ICU) visit, ventilation, or decease. Moreover, available literature has not yet focused on communicating such results to the broader society. To support the prediction, analysis and communication of the outcomes of COVID-19 hospitalizations on the basis of a publicly available data set comprising both electronic health data and medical image data [SSP ∗ 21], we conduct the following three steps: (1) automated segmentation of the available X-ray images and processing of clinical data, (2) development of a model for the prediction of disease outcomes and a comparison to state-of-the-art prediction scores for both data sources, i.e., medical images and clinical data, and (3) the communication of outcomes to two different groups (i.e., clinical experts and the general population) through interactive dashboards. Preliminary results indicate that the prediction, analysis and communication of hospitalization outcomes is a significant topic in the context of COVID-19 prevention.
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利用医学影像和临床数据预测、分析和交流COVID-19住院治疗结果
我们提出PACO,一个可视化分析框架,以支持COVID-19住院结果的预测、分析和交流。尽管关于COVID-19的几个真实数据集是公开的,但目前的大多数研究都集中在疾病的检测上。到目前为止,还没有将医学图像数据的见解与从临床数据中提取的知识结合起来,预测重症监护病房(ICU)就诊、通气或死亡的可能性的工作。此外,现有的文献还没有把重点放在向更广泛的社会传播这些结果上。为了支持基于包括电子健康数据和医学图像数据[SSP * 21]的公开数据集的COVID-19住院结果的预测、分析和交流,我们执行以下三个步骤:(1)对可用的x射线图像进行自动分割和临床数据处理;(2)开发疾病结果预测模型,并对两种数据源(即医学图像和临床数据)与最先进的预测分数进行比较;(3)通过交互式仪表板将结果传达给两个不同的群体(即临床专家和一般人群)。初步结果表明,住院结果的预测、分析和沟通是COVID-19预防背景下的重要课题。
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