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Identifying and visualizing relevant deviations in longitudinal sensor patterns for care professionals

机译:在护理专业人员中识别和可视化纵向传感器模式中的相关偏差

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Sensor technology is increasingly applied for the purpose of monitoring elderly's Activities of Daily Living (ADL), a set of activities used by physicians to benchmark physical and cognitive decline. Visualizing deviations in ADL can help medical specialists and nurses to recognize disease symptoms at an early stage. This paper presents possible visualizations for identifying such deviations. These visualizations have been iteratively explored and developed with three different medical specialists to better understand which deviations are relevant according to the different medical specialisms and explore how these deviations should be best presented. The study results suggest that the participants found a monthly bar graph in which activities are represented by colours as the most suitable from the ones presented. Although the visualizations of every ADL was found to be more or less relevant by the different medical specialists, the preference for focusing on specific ADL's varied from specialist to specialist.
机译:传感器技术越来越多地应用于监测老年日常生活(ADL)的活动,医生使用的一系列活动来基准地标记身体和认知下降。 Adl中的可视化偏差可以帮助医学专家和护士在早期阶段识别疾病症状。本文提出了识别此类偏差的可能可视化。这些可视化已经迭代地探索和发展,并利用三种不同的医学专家开发,更好地了解哪些偏差根据不同的医学专业,探索如何最好地呈现这些偏差。该研究结果表明,参与者发现了一个月的条形图,其中活动由颜色表示,因为最适合呈现的颜色。虽然发现每个ADL的可视化由不同的医学专家或多或少相关,但专注于特定ADL的偏好从专家到专家的偏好。

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