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打开电子健康的黑匣子:收集、分析和解读日志数据。

Opening the Black Box of Electronic Health: Collecting, Analyzing, and Interpreting Log Data.

作者信息

Sieverink Floor, Kelders Saskia, Poel Mannes, van Gemert-Pijnen Lisette

机构信息

Centre for eHealth and Wellbeing Research, Department of Psychology, Health and Technology, University of Twente, Enschede, Netherlands.

Optentia Research Focus Area, North-West University, Vanderbijlpark, South Africa.

出版信息

JMIR Res Protoc. 2017 Aug 7;6(8):e156. doi: 10.2196/resprot.6452.

Abstract

In electronic health (eHealth) research, limited insight has been obtained on process outcomes or how the use of technology has contributed to the users' ability to have a healthier life, improved well-being, or activate new attitudes in their daily tasks. As a result, eHealth is often perceived as a black box. To open this black box of eHealth, methodologies must extend beyond the classic effect evaluations. The analyses of log data (anonymous records of real-time actions performed by each user) can provide continuous and objective insights into the actual usage of the technology. However, the possibilities of log data in eHealth research have not been exploited to their fullest extent. The aim of this paper is to describe how log data can be used to improve the evaluation and understand the use of eHealth technology with a broader approach than only descriptive statistics. This paper serves as a starting point for using log data analysis in eHealth research. Here, we describe what log data is and provide an overview of research questions to evaluate the system, the context, the users of a technology, as well as the underpinning theoretical constructs. We also explain the requirements for log data, the starting points for the data preparation, and methods for data collection. Finally, we describe methods for data analysis and draw a conclusion regarding the importance of the results for both scientific and practical applications. The analysis of log data can be of great value for opening the black box of eHealth. A deliberate log data analysis can give new insights into how the usage of the technology contributes to found effects and can thereby help to improve the persuasiveness and effectiveness of eHealth technology and the underpinning behavioral models.

摘要

在电子健康(eHealth)研究中,对于过程结果,或者技术的使用如何有助于用户拥有更健康的生活、改善幸福感或在日常任务中激发新态度,我们了解有限。因此,电子健康常常被视为一个黑匣子。为了打开这个电子健康的黑匣子,方法必须超越经典的效果评估。日志数据(每个用户实时操作的匿名记录)分析可以为技术的实际使用提供持续且客观的见解。然而,日志数据在电子健康研究中的潜力尚未得到充分挖掘。本文旨在描述如何使用日志数据,以比仅描述性统计更广泛的方法来改进评估并理解电子健康技术的使用情况。本文作为在电子健康研究中使用日志数据分析的起点。在此,我们描述了什么是日志数据,并概述了用于评估系统、背景、技术用户以及基础理论结构的研究问题。我们还解释了日志数据的要求、数据准备的起点以及数据收集方法。最后,我们描述了数据分析方法,并就结果对于科学和实际应用的重要性得出结论。日志数据分析对于打开电子健康的黑匣子可能具有巨大价值。经过深思熟虑的日志数据分析可以为技术使用如何促成既定效果提供新见解,从而有助于提高电子健康技术及基础行为模型的说服力和有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cd85/5565791/b0a94b031b9a/resprot_v6i8e156_fig1.jpg

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