Analyzing User Engagement Within a Patient-Reported Outcomes Texting Tool for Diabetes Management: Engagement Phenotype Study.

Q2 Medicine JMIR Diabetes Pub Date : 2022-11-14 DOI:10.2196/41140
Soumik Mandal, Hayley M Belli, Jocelyn Cruz, Devin Mann, Antoinette Schoenthaler
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Abstract

Background: Patient-reported outcomes (PROs) capture patients' views on their health conditions and its management, and are increasingly used in clinical trials, including those targeting type 2 diabetes (T2D). Mobile health (mHealth) tools offer novel solutions for collecting PRO data in real time. Although patients are at the center of any PRO-based intervention, few studies have examined user engagement with PRO mHealth tools.

Objective: This study aimed to evaluate user engagement with a PRO mHealth tool for T2D management, identify patterns of user engagement and similarities and differences between the patients, and identify the characteristics of patients who are likely to drop out or be less engaged with a PRO mHealth tool.

Methods: We extracted user engagement data from an ongoing clinical trial that tested the efficacy of a PRO mHealth tool designed to improve hemoglobin A1c levels in patients with uncontrolled T2D. To date, 61 patients have been randomized to the intervention, where they are sent 6 PRO text messages a day that are relevant to T2D self-management (healthy eating and medication adherence) over the 12-month study. To analyze user engagement, we first compared the response rate (RR) and response time between patients who completed the 12-month intervention and those who dropped out early (noncompleters). Next, we leveraged latent class trajectory modeling to classify patients from the completer group into 3 subgroups based on similarity in the longitudinal engagement data. Finally, we investigated the differences between the subgroups of completers from various cross-sections (time of the day and day of the week) and PRO types. We also explored the patient demographics and their distribution among the subgroups.

Results: Overall, 19 noncompleters had a lower RR to PRO questions and took longer to respond to PRO questions than 42 completers. Among completers, the longitudinal RRs demonstrated differences in engagement patterns over time. The completers with the lowest engagement showed peak engagement during month 5, almost at the midstage of the program. The remaining subgroups showed peak engagement at the beginning of the intervention, followed by either a steady decline or sustained high engagement. Comparisons of the demographic characteristics showed significant differences between the high engaged and low engaged subgroups. The high engaged completers were predominantly older, of Hispanic descent, bilingual, and had a graduate degree. In comparison, the low engaged subgroup was composed mostly of African American patients who reported the lowest annual income, with one of every 3 patients earning less than US $20,000 annually.

Conclusions: There are discernible engagement phenotypes based on individual PRO responses, and their patterns vary in the timing of peak engagement and demographics. Future studies could use these findings to predict engagement categories and tailor interventions to promote longitudinal engagement.

Trial registration: Clinicaltrials.gov NCT03652389; https://clinicaltrials.gov/ct2/show/NCT03652389.

International registered report identifier (irrid): RR2-10.2196/18554.

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在糖尿病管理的患者报告结果短信工具中分析用户参与:参与表型研究。
背景:患者报告的结局(pro)反映了患者对其健康状况及其管理的看法,并且越来越多地用于临床试验,包括针对2型糖尿病(T2D)的临床试验。移动医疗(mHealth)工具为实时收集PRO数据提供了新颖的解决方案。尽管患者是任何基于PRO的干预的中心,但很少有研究调查用户对PRO移动健康工具的参与情况。目的:本研究旨在评估用于T2D管理的PRO移动健康工具的用户参与度,确定用户参与度的模式以及患者之间的异同,并确定可能退出或较少使用PRO移动健康工具的患者的特征。方法:我们从一项正在进行的临床试验中提取用户参与数据,该试验测试了PRO移动健康工具的功效,该工具旨在改善未控制的T2D患者的血红蛋白A1c水平。迄今为止,61名患者被随机分配到干预组,在为期12个月的研究中,他们每天收到6条与T2D自我管理(健康饮食和药物依从性)相关的PRO短信。为了分析用户参与度,我们首先比较了完成12个月干预的患者和早期退出的患者(未完成干预的患者)之间的反应率(RR)和反应时间。接下来,我们利用潜在类别轨迹模型,根据纵向参与数据的相似性,将完成者组的患者分为3个亚组。最后,我们调查了来自不同截面(一天中的时间和一周中的一天)和PRO类型的完成者亚组之间的差异。我们还探讨了患者的人口统计学特征及其在亚组中的分布。结果:总体而言,与42名完成者相比,19名未完成者对PRO问题的RR较低,回答PRO问题的时间更长。在完成者中,纵向rr显示了参与模式随时间的差异。参与度最低的完成者在第5个月达到了最高的参与度,几乎是在项目的中期。其余亚组在干预开始时表现出最高的参与度,随后要么稳步下降,要么持续高参与度。人口统计学特征的比较显示了高投入和低投入亚组之间的显著差异。高敬业度完成者主要是年龄较大,西班牙裔,会说两种语言,拥有研究生学位。相比之下,低参与度亚组主要由年收入最低的非裔美国患者组成,每3名患者中就有1名年收入低于2万美元。结论:基于个人PRO反应,存在可识别的参与表型,其模式因参与高峰时间和人口统计学而异。未来的研究可以利用这些发现来预测参与类别,并定制干预措施来促进纵向参与。试验注册:Clinicaltrials.gov NCT03652389;https://clinicaltrials.gov/ct2/show/NCT03652389.International注册报告标识符(irrid): RR2-10.2196/18554。
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
期刊最新文献
Exploring the Needs and Preferences of Users and Parents to Design a Mobile App to Deliver Mental Health Peer Support to Adolescents With Type 1 Diabetes: Qualitative Study. "Now I can see it works!" Perspectives on Using a Nutrition-Focused Approach When Initiating Continuous Glucose Monitoring in People with Type 2 Diabetes: Qualitative Interview Study. Toward Personalized Digital Experiences to Promote Diabetes Self-Management: Mixed Methods Social Computing Approach. Exploring the Use of Activity Trackers to Support Physical Activity and Reduce Sedentary Behavior in Adults Diagnosed With Type 2 Diabetes: Qualitative Interview Study Using the RE-AIM Framework. Exploring Opportunities and Challenges for the Spread, Scale-Up, and Sustainability of mHealth Apps for Self-Management of Patients With Type 2 Diabetes Mellitus in the Netherlands: Citizen Science Approach.
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