双相情感障碍患者坚持电子自我监测的预测因素:使用增长混合模型进行的非接触式研究。

IF 2.8 2区 医学 Q2 PSYCHIATRY International Journal of Bipolar Disorders Pub Date : 2023-05-17 DOI:10.1186/s40345-023-00297-5
Abigail Ortiz, Yunkyung Park, Christina Gonzalez-Torres, Martin Alda, Daniel M Blumberger, Rachael Burnett, M Ishrat Husain, Marcos Sanches, Benoit H Mulsant
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引用次数: 0

摘要

背景:有几项研究报道了使用电脑或智能手机对包括双相情感障碍(BD)在内的精神障碍患者进行电子(e)监测的可行性。虽然有关电子监控的研究已经考察了年龄、性别或社会经济地位等人口统计学因素的作用以及健康应用程序的使用情况,但据我们所知,还没有研究考察过可能会影响双相情感障碍患者坚持使用电子监控的临床特征。我们分析了参与一项正在进行的电子监测研究的 BD 患者对电子监测的依从性,并评估了人口统计学和临床因素是否会预测依从性:研究纳入了87名不同阶段的BD患者。分析了15个月内可穿戴设备使用、每日和每周自我评分量表的依从性模式,并使用增长混合模型(GMM)确定了依从性轨迹。多项式逻辑回归模型用于计算预测因素对 GMM 等级的影响:可穿戴设备的总体依从率为 79.5%;每周自我评分的依从率为 78.5%;每日自我评分的依从率为 74.6%。GMM 确定了三个潜在类别亚组:(i) 完全依从的参与者;(ii) 依从性良好的参与者;(iii) 依从性较差的参与者。平均而言,34.4%的参与者表现出 "完美 "的依从性;37.1%的参与者表现出 "良好 "的依从性;28.2%的参与者在所有三项测量中的依从性较差。女性、有自杀企图的参与者和有住院史的参与者更有可能属于完全依从的群体:结论:疾病负担较重(如入院史、自杀未遂史)的参与者对电子监控的依从率较高。他们可能将电子监控视为更好地记录症状变化和更好地控制病情的工具,从而促使他们参与其中。
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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Predictors of adherence to electronic self-monitoring in patients with bipolar disorder: a contactless study using Growth Mixture Models.

Background: Several studies have reported on the feasibility of electronic (e-)monitoring using computers or smartphones in patients with mental disorders, including bipolar disorder (BD). While studies on e-monitoring have examined the role of demographic factors, such as age, gender, or socioeconomic status and use of health apps, to our knowledge, no study has examined clinical characteristics that might impact adherence with e-monitoring in patients with BD. We analyzed adherence to e-monitoring in patients with BD who participated in an ongoing e-monitoring study and evaluated whether demographic and clinical factors would predict adherence.

Methods: Eighty-seven participants with BD in different phases of the illness were included. Patterns of adherence for wearable use, daily and weekly self-rating scales over 15 months were analyzed to identify adherence trajectories using growth mixture models (GMM). Multinomial logistic regression models were fitted to compute the effects of predictors on GMM classes.

Results: Overall adherence rates were 79.5% for the wearable; 78.5% for weekly self-ratings; and 74.6% for daily self-ratings. GMM identified three latent class subgroups: participants with (i) perfect; (ii) good; and (iii) poor adherence. On average, 34.4% of participants showed "perfect" adherence; 37.1% showed "good" adherence; and 28.2% showed poor adherence to all three measures. Women, participants with a history of suicide attempt, and those with a history of inpatient admission were more likely to belong to the group with perfect adherence.

Conclusions: Participants with higher illness burden (e.g., history of admission to hospital, history of suicide attempts) have higher adherence rates to e-monitoring. They might see e-monitoring as a tool for better documenting symptom change and better managing their illness, thus motivating their engagement.

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来源期刊
International Journal of Bipolar Disorders
International Journal of Bipolar Disorders Medicine-Psychiatry and Mental Health
CiteScore
6.70
自引率
5.00%
发文量
26
审稿时长
13 weeks
期刊介绍: The International Journal of Bipolar Disorders is a peer-reviewed, open access online journal published under the SpringerOpen brand. It publishes contributions from the broad range of clinical, psychological and biological research in bipolar disorders. It is the official journal of the ECNP-ENBREC (European Network of Bipolar Research Expert Centres ) Bipolar Disorders Network, the International Group for the study of Lithium Treated Patients (IGSLi) and the Deutsche Gesellschaft für Bipolare Störungen (DGBS) and invites clinicians and researchers from around the globe to submit original research papers, short research communications, reviews, guidelines, case reports and letters to the editor that help to enhance understanding of bipolar disorders.
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