INPHOVIS: Interactive visual analytics for smartphone-based digital phenotyping

IF 3.8 3区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Visual Informatics Pub Date : 2023-06-01 DOI:10.1016/j.visinf.2023.01.002
Hamid Mansoor, Walter Gerych, Abdulaziz Alajaji, Luke Buquicchio, Kavin Chandrasekaran, Emmanuel Agu, Elke Rundensteiner, Angela Incollingo Rodriguez
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引用次数: 1

Abstract

Digital phenotyping is the characterization of human behavior patterns based on data from digital devices such as smartphones in order to gain insights into the users’ state and especially to identify ailments. To support supervised machine learning, digital phenotyping requires gathering data from study participants’ smartphones as they live their lives. Periodically, participants are then asked to provide ground truth labels about their health status. Analyzing such complex data is challenging due to limited contextual information and imperfect health/wellness labels. We propose INteractive PHOne-o-typing VISualization (INPHOVIS), an interactive visual framework for exploratory analysis of smartphone health data to study phone-o-types. Prior visualization work has focused on mobile health data with clear semantics such as steps or heart rate data collected using dedicated health devices and wearables such as smartwatches. However, unlike smartphones which are owned by over 85 percent of the US population, wearable devices are less prevalent thus reducing the number of people from whom such data can be collected. In contrast, the “low-level” sensor data (e.g., accelerometer or GPS data) supported by INPHOVIS can be easily collected using smartphones. Data visualizations are designed to provide the essential contextualization of such data and thus help analysts discover complex relationships between observed sensor values and health-predictive phone-o-types. To guide the design of INPHOVIS, we performed a hierarchical task analysis of phone-o-typing requirements with health domain experts. We then designed and implemented multiple innovative visualizations integral to INPHOVIS including stacked bar charts to show diurnal behavioral patterns, calendar views to visualize day-level data along with bar charts, and correlation views to visualize important wellness predictive data. We demonstrate the usefulness of INPHOVIS with walk-throughs of use cases. We also evaluated INPHOVIS with expert feedback and received encouraging responses.

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INPHOVIS:基于智能手机的数字表型交互式可视化分析
数字表型是基于智能手机等数字设备的数据对人类行为模式进行表征,以深入了解用户的状态,尤其是识别疾病。为了支持有监督的机器学习,数字表型需要在研究参与者生活时从他们的智能手机中收集数据。然后,参与者被要求定期提供有关其健康状况的基本事实标签。由于有限的上下文信息和不完善的健康/健康标签,分析这种复杂的数据具有挑战性。我们提出了INPHOVIS,这是一个交互式视觉框架,用于探索性分析智能手机健康数据,以研究手机类型。先前的可视化工作侧重于具有清晰语义的移动健康数据,如使用专用健康设备和智能手表等可穿戴设备收集的步数或心率数据。然而,与85%以上的美国人口拥有的智能手机不同,可穿戴设备并不普及,因此减少了可以收集此类数据的人数。相比之下,INPHOVIS支持的“低级别”传感器数据(例如加速度计或GPS数据)可以使用智能手机轻松收集。数据可视化旨在提供此类数据的基本上下文,从而帮助分析人员发现观察到的传感器值和健康预测电话类型之间的复杂关系。为了指导INPHOVIS的设计,我们与健康领域专家一起对电话打字需求进行了分层任务分析。然后,我们设计并实现了INPHOVIS集成的多个创新可视化,包括显示昼夜行为模式的堆叠条形图、显示日级数据的日历视图以及条形图,以及显示重要健康预测数据的相关性视图。我们通过用例演练展示了INPHOVIS的有用性。我们还利用专家反馈对INPHOVIS进行了评估,并收到了令人鼓舞的回复。
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来源期刊
Visual Informatics
Visual Informatics Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
6.70
自引率
3.30%
发文量
33
审稿时长
79 days
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