Health and Biomedical Informatics Centre, University of Melbourne, Melbourne, 3010, Australia.
Health Inf Sci Syst. 2015 Feb 24;3(Suppl 1 HISA Big Data in Biomedicine and Healthcare 2013 Con):S1. doi: 10.1186/2047-2501-3-S1-S1. eCollection 2015.
Self-quantification is seen as an emerging paradigm for health care self-management. Self-quantification systems (SQS) can be used for tracking, monitoring, and quantifying health aspects including mental, emotional, physical, and social aspects in order to gain self-knowledge. However, there has been a lack of a systematic approach for conceptualising and mapping the essential activities that are undertaken by individuals who are using SQS in order to improve health outcomes. In this paper, we propose a new model of personal health information self-quantification systems (PHI-SQS). PHI-SQS model describes two types of activities that individuals go through during their journey of health self-managed practice, which are 'self-quantification' and 'self-activation'.
In this paper, we aimed to examine thoroughly the first type of activity in PHI-SQS which is 'self-quantification'. Our objectives were to review the data management processes currently supported in a representative set of self-quantification tools and ancillary applications, and provide a systematic approach for conceptualising and mapping these processes with the individuals' activities.
We reviewed and compared eleven self-quantification tools and applications (Zeo Sleep Manager, Fitbit, Actipressure, MoodPanda, iBGStar, Sensaris Senspod, 23andMe, uBiome, Digifit, BodyTrack, and Wikilife), that collect three key health data types (Environmental exposure, Physiological patterns, Genetic traits). We investigated the interaction taking place at different data flow stages between the individual user and the self-quantification technology used.
We found that these eleven self-quantification tools and applications represent two major tool types (primary and secondary self-quantification systems). In each type, the individuals experience different processes and activities which are substantially influenced by the technologies' data management capabilities.
Self-quantification in personal health maintenance appears promising and exciting. However, more studies are needed to support its use in this field. The proposed model will in the future lead to developing a measure for assessing the effectiveness of interventions to support using SQS for health self-management (e.g., assessing the complexity of self-quantification activities, and activation of the individuals).
自我量化被视为医疗保健自我管理的新兴范例。自我量化系统 (SQS) 可用于跟踪、监测和量化健康方面,包括心理、情感、身体和社交方面,以获得自我知识。然而,对于使用 SQS 来改善健康结果的个人所进行的基本活动,缺乏系统的概念化和映射方法。在本文中,我们提出了个人健康信息自我量化系统 (PHI-SQS) 的新模型。PHI-SQS 模型描述了个人在健康自我管理实践过程中经历的两种类型的活动,即“自我量化”和“自我激活”。
本文旨在深入研究 PHI-SQS 中的第一种活动,即“自我量化”。我们的目标是审查当前在一组有代表性的自我量化工具和辅助应用程序中支持的数据管理流程,并提供一种系统的方法来对这些流程进行概念化和映射,以及与个人活动相关联。
我们审查并比较了 11 种自我量化工具和应用程序(Zeo Sleep Manager、Fitbit、Actipressure、MoodPanda、iBGStar、Sensaris Senspod、23andMe、uBiome、Digifit、BodyTrack 和 Wikilife),这些工具和应用程序收集了三种关键健康数据类型(环境暴露、生理模式、遗传特征)。我们研究了个体用户与使用的自我量化技术之间在不同数据流程阶段发生的交互。
我们发现,这 11 种自我量化工具和应用程序代表了两种主要的工具类型(主要和次要自我量化系统)。在每种类型中,个体经历不同的过程和活动,这些过程和活动受到技术数据管理能力的极大影响。
个人健康维护中的自我量化似乎很有前途和令人兴奋。然而,需要更多的研究来支持其在该领域的使用。拟议的模型将在未来导致开发一种衡量标准,以评估支持使用 SQS 进行健康自我管理的干预措施的有效性(例如,评估自我量化活动的复杂性,以及个体的激活程度)。