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首页> 外文期刊>BMC Medical Research Methodology >Analyzing repeated data collected by mobile phones and frequent text messages. An example of Low back pain measured weekly for 18 weeks
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Analyzing repeated data collected by mobile phones and frequent text messages. An example of Low back pain measured weekly for 18 weeks

机译:分析手机收集的重复数据和频繁的短信。一个每周测量18周的下腰痛的示例

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Background Repeated data collection is desirable when monitoring fluctuating conditions. Mobile phones can be used to gather such data from large groups of respondents by sending and receiving frequently repeated short questions and answers as text messages. The analysis of repeated data involves some challenges. Vital issues to consider are the within-subject correlation, the between measurement occasion correlation and the presence of missing values. The overall aim of this commentary is to describe different methods of analyzing repeated data. It is meant to give an overview for the clinical researcher in order for complex outcome measures to be interpreted in a clinically meaningful way. Methods A model data set was formed using data from two clinical studies, where patients with low back pain were followed with weekly text messages for 18?weeks. Different research questions and analytic approaches were illustrated and discussed, as well as the handling of missing data. In the applications the weekly outcome “number of days with pain” was analyzed in relation to the patients’ “previous duration of pain” (categorized as more or less than 30?days in the previous year). Research questions with appropriate analytical methods 1: How many days with pain do patients experience? This question was answered with data summaries. 2: What is the proportion of participants “recovered” at a specific time point? This question was answered using logistic regression analysis. 3: What is the time to recovery? This question was answered using survival analysis, illustrated in Kaplan-Meier curves, Proportional Hazard regression analyses and spline regression analyses. 4: How is the repeatedly measured data associated with baseline (predictor) variables? This question was answered using generalized Estimating Equations, Poisson regression and Mixed linear models analyses. 5: Are there subgroups of patients with similar courses of pain within the studied population? A visual approach and hierarchical cluster analyses revealed different subgroups using subsets of the model data. Conclusions We have illustrated several ways of analysing repeated measures with both traditional analytic approaches using standard statistical packages, as well as recently developed statistical methods that will utilize all the vital features inherent in the data.
机译:背景技术在监视波动情况时,需要重复收集数据。通过发送和接收频繁重复的简短问题和答案作为文本消息,可以使用移动电话从大批受访者那里收集此类数据。对重复数据的分析涉及一些挑战。要考虑的重要问题是受试者内部相关性,测量时机相关性与缺失值之间的关系。本评论的总体目的是描述分析重复数据的不同方法。它旨在为临床研究人员提供概述,以便以临床上有意义的方式解释复杂的结局指标。方法使用两个临床研究的数据形成模型数据集,其中对腰痛患者进行每周18周的文本信息随访。说明和讨论了不同的研究问题和分析方法,以及丢失数据的处理。在申请中,针对患者的“先前疼痛持续时间”(分类为上一年的少于或少于30天),分析了每周的结果“疼痛天数”。使用适当的分析方法的研究问题1:患者经历多少天的疼痛?数据摘要回答了这个问题。 2:在特定时间点“恢复”的参与者比例是多少?使用逻辑回归分析回答了这个问题。 3:什么时候恢复?使用生存分析回答了这个问题,如Kaplan-Meier曲线,比例风险回归分析和样条回归分析所示。 4:重复测量的数据如何与基线(预测变量)变量关联?使用广义估计方程,泊松回归和混合线性模型分析回答了这个问题。 5:在所研究的人群中,是否存在具有类似疼痛过程的患者亚组?可视化方法和层次聚类分析使用模型数据的子集揭示了不同的子组。结论我们已经说明了几种使用标准统计软件包的传统分析方法以及最近开发的利用数据固有的所有重要特征的统计方法来分析重复测量的几种方法。

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