Two-Part Mixed-Effects Location Scale Models for Health Diary Data.

IF 2.2 4区 医学 Q1 NURSING
Nursing Research Pub Date : 2025-05-01 Epub Date: 2025-02-06 DOI:10.1097/NNR.0000000000000810
Shelley A Blozis, Hayat Botan
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引用次数: 0

Abstract

Background: The analysis of health diary data has long relied on inferential statistical methods focusing on sample means and ad hoc methods to calculate each individual's variation in health outcomes.

Objectives: In this paper, an advanced statistical model is applied to daily diary self-reported health outcomes to simultaneously study an individual's likeliness to report an outcome, daily mean intensity level, and variability in daily measures.

Methods: Using observational, secondary data from 782 adults, we analyzed self-report daily fatigue symptoms, distinguishing between whether an individual reported fatigue and its severity when reported. Self-reported depressed affect and participant characteristics were used as predictors of daily fatigue symptoms.

Results: A higher likeliness to report fatigue correlated with higher mean fatigue severity and greater stability in severity ratings. Higher mean severity correlated with greater stability in severity ratings. Females and those with high depressed affect were more likely to report fatigue. Females and those with high depressed affect reported greater mean severity.

Discussion: The model applied to daily measures allowed for the simultaneous study of an individual's likeliness to report a symptom, daily mean symptom severity, and variability in severity across days. An individual's daily variation in symptom severity was represented as a model parameter that did not contain measurement error that is present in ad hoc methods.

健康日记数据的两部分混合效应位置比例模型。
背景:长期以来,健康日记数据的分析依赖于以样本均值为重点的推理统计方法,以及计算每个个体健康结果变化的特别方法。目的:在本文中,一个先进的统计模型应用于每日日记自我报告的健康结果,同时研究个体报告结果的可能性、每日平均强度水平和每日测量的变异性。方法:使用来自782名成年人的观察性次要数据,我们分析了自我报告的日常疲劳症状,区分个体是否报告疲劳及其严重程度。自我报告的抑郁情绪和参与者特征被用作每日疲劳症状的预测因子。结果:报告疲劳的可能性越高,平均疲劳严重程度越高,严重程度评分稳定性越高。较高的平均严重程度与严重程度评分的稳定性相关。女性和那些高度抑郁的人更容易感到疲劳。女性和抑郁症患者的平均严重程度更高。讨论:该模型应用于日常测量,允许同时研究个体报告症状的可能性、每日平均症状严重程度和严重程度在天内的变化。个体在症状严重程度上的日常变化被表示为一个模型参数,该参数不包含在临时方法中存在的测量误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nursing Research
Nursing Research 医学-护理
CiteScore
3.60
自引率
4.00%
发文量
102
审稿时长
6-12 weeks
期刊介绍: Nursing Research is a peer-reviewed journal celebrating over 60 years as the most sought-after nursing resource; it offers more depth, more detail, and more of what today''s nurses demand. Nursing Research covers key issues, including health promotion, human responses to illness, acute care nursing research, symptom management, cost-effectiveness, vulnerable populations, health services, and community-based nursing studies. Each issue highlights the latest research techniques, quantitative and qualitative studies, and new state-of-the-art methodological strategies, including information not yet found in textbooks. Expert commentaries and briefs are also included. In addition to 6 issues per year, Nursing Research from time to time publishes supplemental content not found anywhere else.
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