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首页> 外文期刊>JMIR Research Protocols >Ecological Momentary Assessments and Automated Time Series Analysis to Promote Tailored Health Care: A Proof-of-Principle Study
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Ecological Momentary Assessments and Automated Time Series Analysis to Promote Tailored Health Care: A Proof-of-Principle Study

机译:生态矩评估和自动时间序列分析,以促进量身定制的医疗保健:一项原理验证研究

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Background Health promotion can be tailored by combining ecological momentary assessments (EMA) with time series analysis. This combined method allows for studying the temporal order of dynamic relationships among variables, which may provide concrete indications for intervention. However, application of this method in health care practice is hampered because analyses are conducted manually and advanced statistical expertise is required. Objective This study aims to show how this limitation can be overcome by introducing automated vector autoregressive modeling (VAR) of EMA data and to evaluate its feasibility through comparisons with results of previously published manual analyses. Methods We developed a Web-based open source application, called AutoVAR, which automates time series analyses of EMA data and provides output that is intended to be interpretable by nonexperts. The statistical technique we used was VAR. AutoVAR tests and evaluates all possible VAR models within a given combinatorial search space and summarizes their results, thereby replacing the researcher’s tasks of conducting the analysis, making an informed selection of models, and choosing the best model. We compared the output of AutoVAR to the output of a previously published manual analysis (n=4). Results An illustrative example consisting of 4 analyses was provided. Compared to the manual output, the AutoVAR output presents similar model characteristics and statistical results in terms of the Akaike information criterion, the Bayesian information criterion, and the test statistic of the Granger causality test. Conclusions Results suggest that automated analysis and interpretation of times series is feasible. Compared to a manual procedure, the automated procedure is more robust and can save days of time. These findings may pave the way for using time series analysis for health promotion on a larger scale. AutoVAR was evaluated using the results of a previously conducted manual analysis. Analysis of additional datasets is needed in order to validate and refine the application for general use.
机译:背景信息可以通过将生态瞬时评估(EMA)与时间序列分析相结合来量身定制健康促进措施。这种组合方法允许研究变量之间动态关系的时间顺序,这可以为干预提供具体指示。但是,此方法在医疗保健实践中的应用受到了阻碍,因为需要手动进行分析并且需要高级统计专家。目的这项研究旨在表明如何通过引入EMA数据的自动向量自回归建模(VAR)来克服这一局限性,并通过与先前发布的手动分析结果进行比较来评估其可行性。方法我们开发了一个基于Web的开放源代码应用程序,称为AutoVAR,该应用程序可以自动执行EMA数据的时间序列分析,并提供非专家可以解释的输出。我们使用的统计技术是VAR。 AutoVAR在给定的组合搜索空间内测试和评估所有可能的VAR模型,并汇总其结果,从而取代研究人员进行分析,明智地选择模型并选择最佳模型的任务。我们将AutoVAR的输出与先前发布的手动分析的输出进行了比较(n = 4)。结果提供了一个由4个分析组成的示例。与手动输出相比,AutoVAR输出在Akaike信息标准,贝叶斯信息标准和Granger因果检验的检验统计量方面具有相似的模型特征和统计结果。结论结果表明,时间序列的自动分析和解释是可行的。与手动过程相比,自动化过程更加健壮,可以节省几天的时间。这些发现可能为大规模使用时间序列分析促进健康铺平了道路。使用先前进行的手动分析的结果来评估AutoVAR。需要分析其他数据集,以验证和完善通用应用程序。

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