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Patterns of Missing Data With Ecological Momentary Assessment Among People Who Use Drugs: Feasibility Study Using Pilot Study Data

机译:使用药物的人们缺失数据与生态瞬间评估的模式:使用试点研究数据的可行性研究

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Background Ecological momentary assessment (EMA) is a set of research methods that capture events, feelings, and behaviors as they unfold in their real-world setting. Capturing data in the moment reduces important sources of measurement error but also generates challenges for noncompliance (ie, missing data). To date, EMA research has only examined the overall rates of noncompliance. Objective In this study, we identify four types of noncompliance among people who use drugs and aim to examine the factors associated with the most common types. Methods Data were obtained from a recent pilot study of 28 Nebraskan people who use drugs who answered EMA questions for 2 weeks. We examined questions that were not answered because they were skipped, they expired, the phone was switched off, or the phone died after receiving them. Results We found that the phone being switched off and questions expiring comprised 93.34% (1739/1863 missing question-instances) of our missing data. Generalized structural equation model results show that participant-level factors, including age (relative risk ratio [RRR]=0.93; P=.005), gender (RRR=0.08; P=.006), homelessness (RRR=3.80; P=.04), personal device ownership (RRR=0.14; P=.008), and network size (RRR=0.57; P=.001), are important for predicting off missingness, whereas only question-level factors, including time of day (ie, morning compared with afternoon, RRR=0.55; P.001) and day of week (ie, Tuesday-Saturday compared with Sunday, RRR=0.70, P=.02; RRR=0.64, P=.005; RRR=0.58, P=.001; RRR=0.55, P.001; and RRR=0.66, P=.008, respectively) are important for predicting expired missingness. The week of study is important for both (ie, week 2 compared with week 1, RRR=1.21, P=.03, for off missingness and RRR=1.98, P.001, for expired missingness). Conclusions We suggest a three-pronged strategy to preempt missing EMA data with high-risk populations: first, provide additional resources for participants likely to experience phone charging problems (eg, people experiencing homelessness); second, ask questions when participants are not likely to experience competing demands (eg, morning); and third, incentivize continued compliance as the study progresses. Attending to these issues can help researchers ensure maximal data quality.
机译:背景技术生态瞬间评估(EMA)是一套研究方法,捕获在其真实世界中展开的事件,感受和行为。捕获数据时的捕获减少了重要的测量误差源,但也会为非融合(即缺少数据)产生挑战。迄今为止,EMA研究亦已审查了不合规的总体率。目的在这项研究中,我们确定了使用药物的人们的四种不合规性,并旨在检查与最常见类型相关的因素。方法数据是从最近的28个内布拉斯坎人的试点研究获得,这些研究员使用回答EMA问题2周的药物。我们检查了未回答的问题,因为它们跳过,他们已过期,手机已关闭,或者手机在收到它们后死亡。结果我们发现,电话关闭的电话和问题过期为我们缺少数据的93.34%(缺少的问题实例)。广义结构方程模型结果表明,参与者级因子,包括年龄(相对风险比[RRR] = 0.93; p = .005),性别(RRR = 0.08; p = .006),无家可归(RRR = 3.80; P = .04),个人设备所有权(RRR = 0.14; p = .008),网络大小(RRR = 0.57; p = .001)对于预测失踪非常重要,而只有质疑级别因素,包括一天中的时间(即,早上与下午相比,RRR = 0.55; P&。 = 0.58,p = .001; rrr = 0.55,p <.001;和rrr = 0.66,p = .008,p = .008,分别对预测到期缺失很重要。研究周对两者(即第2周,与第1周相比,RRR = 1.21,P = .03,用于关闭缺失和RRR = 1.98,P&LT; .001,用于过期缺失)。结论我们建议采用高风险群体抢占失踪的EMA数据的三管齐下的战略:首先,为参与者提供额外的资源,可能会遇到电话收费问题(例如,经历无家可归者的人);其次,当参与者不太可能经历竞争需求时提出问题(例如,早上);第三,随着研究进展的进展,激励持续遵守。参加这些问题可以帮助研究人员确保最大的数据质量。

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