首页> 外文期刊>Journal of medical Internet research >Seeing the “Big” Picture: Big Data Methods for Exploring Relationships Between Usage, Language, and Outcome in Internet Intervention Data
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Seeing the “Big” Picture: Big Data Methods for Exploring Relationships Between Usage, Language, and Outcome in Internet Intervention Data

机译:看到“大”图景:探索互联网干预数据中用法,语言和结果之间关系的大数据方法

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Background: Assessing the efficacy of Internet interventions that are already in the market introduces both challenges and opportunities. While vast, often unprecedented amounts of data may be available (hundreds of thousands, and sometimes millions of participants with high dimensions of assessed variables), the data are observational in nature, are partly unstructured (eg, free text, images, sensor data), do not include a natural control group to be used for comparison, and typically exhibit high attrition rates. New approaches are therefore needed to use these existing data and derive new insights that can augment traditional smaller-group randomized controlled trials.Objective: Our objective was to demonstrate how emerging big data approaches can help explore questions about the effectiveness and process of an Internet well-being intervention.Methods: We drew data from the user base of a well-being website and app called Happify. To explore effectiveness, multilevel models focusing on within-person variation explored whether greater usage predicted higher well-being in a sample of 152,747 users. In addition, to explore the underlying processes that accompany improvement, we analyzed language for 10,818 users who had a sufficient volume of free-text response and timespan of platform usage. A topic model constructed from this free text provided language-based correlates of individual user improvement in outcome measures, providing insights into the beneficial underlying processes experienced by users.Results: On a measure of positive emotion, the average user improved 1.38 points per week (SE 0.01, t122,455=113.60, P<.001, 95% CI 1.36–1.41), about an 11% increase over 8 weeks. Within a given individual user, more usage predicted more positive emotion and less usage predicted less positive emotion (estimate 0.09, SE 0.01, t6047=9.15, P=.001, 95% CI .07–.12). This estimate predicted that a given user would report positive emotion 1.26 points (or 1.26%) higher after a 2-week period when they used Happify daily than during a week when they didn’t use it at all. Among highly engaged users, 200 automatically clustered topics showed a significant (corrected P<.001) effect on change in well-being over time, illustrating which topics may be more beneficial than others when engaging with the interventions. In particular, topics that are related to addressing negative thoughts and feelings were correlated with improvement over time.Conclusions: Using observational analyses on naturalistic big data, we can explore the relationship between usage and well-being among people using an Internet well-being intervention and provide new insights into the underlying mechanisms that accompany it. By leveraging big data to power these new types of analyses, we can explore the workings of an intervention from new angles, and harness the insights that surface to feed back into the intervention and improve it further in the future.
机译:背景:评估市场上已有的Internet干预的有效性会带来挑战和机遇。尽管可能会提供大量的,通常是前所未见的数据(数十万,有时数百万的参与者具有较高的评估变量维度),但这些数据本质上是观察性的,部分是非结构化的(例如,自由文本,图像,传感器数据) ,不包括用于比较的自然对照组,通常显示出高的损耗率。因此,需要使用新方法来利用这些现有数据并获得新的见解,以增强传统的小规模随机对照试验。目的:我们的目标是演示新兴的大数据方法如何帮助探索有关互联网良好性和有效性的问题。方法:我们从一个幸福的网站和名为Happify的应用程序的用户群中提取数据。为了探索有效性,针对人际差异的多层次模型探讨了在152,747个用户样本中,更大的使用量是否预示了更高的幸福感。此外,为了探索伴随改进的基本过程,我们分析了10,818名用户的语言,这些用户具有足够的自由文本响应和平台使用时间。由此自由文本构建的主题模型提供了基于语言的个人用户在结果度量方面的改进的相关性,从而洞察了用户所经历的有益的基本过程。结果:在积极情绪的度量上,平均用户每周可提高1.38分( SE 0.01,t122,455 = 113.60,P <.001,95%CI 1.36–1.41),在8周内增加了约11%。在给定的单个用户中,更多的使用量预测更多的积极情绪,而更少的使用量预测较少的积极情绪(估计0.09,SE 0.01,t6047 = 9.15,P = .001,95%CI .07–.12)。此估计值预测,与每天不使用Happify的用户相比,每天使用Happify的2周时间段内,给定用户报告的积极情绪要高出1.26分(或1.26%)。在参与度很高的用户中,有200个自动聚集的主题对幸福感随时间的变化表现出显着的影响(校正后的P <.001),这说明在进行干预时,哪些主题可能比其他主题更有利。特别是,与解决消极思想和情感有关的主题与随着时间的推移而改善相关。结论:通过对自然主义大数据的观察性分析,我们可以探讨使用互联网幸福感干预的人们使用与幸福感之间的关系。并提供有关其潜在机制的新见解。通过利用大数据来支持这些新型分析,我们可以从新的角度探索干预措施的工作原理,并利用浮出水面的见识来反馈到干预措施中,并在将来进一步加以改进。

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