Preferences for Mobile App Features to Support People Living With Chronic Heart Diseases: Discrete Choice Study.

IF 5.4 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Sumudu Avanthi Hewage, Sameera Senanayake, David Brain, Michelle J Allen, Steven M McPhail, William Parsonage, Tomos Walters, Sanjeewa Kularatna
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引用次数: 0

Abstract

Background: Using digital health technologies to aid individuals in managing chronic diseases offers a promising solution to overcome health service barriers such as access and affordability. However, their effectiveness depends on adoption and sustained use, influenced by user preferences.

Objectives: This study quantifies the preferences of individuals with chronic heart disease (CHD) for features of a mobile health app to self-navigate their disease condition.

Methods: We conducted an unlabeled web-based choice survey among adults older than 18 years with CHD living in Australia, recruited via a web-based survey platform. Four app attributes-ease of navigation, monitoring of blood pressure and heart rhythm, health education, and symptom diary maintenance-were systematically chosen through a multistage process. This process involved a literature review, stakeholder interviews, and expert panel discussions. Participants chose a preferred mobile app out of 3 alternatives: app A, app B, or neither. A D-optimal design was developed using Ngene software, informed by Bayesian priors derived from pilot survey data. Latent class model analysis was conducted using Nlogit software (Econometric Software, Inc). We also estimated attribute importance and anticipated adoption rates for 3 app versions.

Results: Our sample included 302 participants with a mean age of 50.5 (SD 18.2) years. Latent class model identified 2 classes. Older respondents with education beyond high school, prior experience with mobile health apps, and a positive perception of app usefulness were more likely to be in class 1 (257/303, 85%) than in class 2 (45/303, 15%). Class 1 membership preferred adopting a mobile app (app A: β coefficient 0.74, 95% uncertainty interval (UI) 0.41-1.06; app B: β coefficient 0.53, 95% UI 0.22-0.85). Participants favored apps providing postmonitoring recommendations (β coefficient 1.45, 95% UI 1.26-1.64), tailored health education (β coefficient 0.50, 95% UI 0.36-0.64), and unrestricted symptom diary entry (β coefficient 0.58, 95% UI 0.41-0.76). Class 2 showed no preference for app adoption (app A: β coefficient -1.18, 95% UI -2.36 to 0.006; app B: β coefficient -0.78, 95% UI -1.99 to 0.42) or any specific attribute levels. Vital sign monitoring was the most influential attribute among the 4. Scenario analysis revealed an 84% probability of app adoption with basic features, rising to 92% when app features aligned with respondents' preferences.

Conclusions: The study's findings suggest that designing preference-informed mobile health apps could significantly enhance adoption rates and engagement among individuals with CHD, potentially leading to improved clinical outcomes. Adoption rates were notably higher when app attributes included easy navigation, vital sign monitoring, feedback provision, personalized health education, and flexible data entry for symptom diary maintenance. Future research to explore factors influencing app adoption among different groups of patients is warranted.

支持慢性心脏病患者的移动应用程序功能偏好:离散选择研究。
背景:利用数字卫生技术帮助个人管理慢性病是克服卫生服务可及性和可负担性等障碍的一种有希望的解决办法。然而,它们的有效性取决于采用和持续使用,受用户偏好的影响。目的:本研究量化了慢性心脏病(CHD)患者对移动健康应用程序功能的偏好,以自我了解他们的疾病状况。方法:我们通过网络调查平台对居住在澳大利亚的18岁以上冠心病患者进行了一项未标记的基于网络的选择调查。四个应用程序属性-易于导航,监测血压和心律,健康教育和症状日记维护-通过多阶段过程系统地选择。这个过程包括文献回顾、利益相关者访谈和专家小组讨论。参与者从3个备选应用程序中选择一个首选的移动应用程序:应用程序a、应用程序B或两者都不选。使用Ngene软件开发了d -最优设计,并根据从试点调查数据中获得的贝叶斯先验信息进行了通知。使用Nlogit软件(Econometric software, Inc .)进行潜在类模型分析。我们还估算了3个应用版本的属性重要性和预期采用率。结果:我们的样本包括302名参与者,平均年龄为50.5岁(SD 18.2)。潜类模型识别出2类。受过高中以上教育、有使用移动健康应用程序的经验、对应用程序有用性有积极看法的年长受访者更有可能属于第一类(257/303,85%),而不是第二类(45/303,15%)。第一类会员倾向于采用手机app (app a: β系数0.74,95%不确定区间(UI) 0.41-1.06;应用程序B: β系数0.53,95% UI 0.22-0.85)。参与者喜欢提供监测后建议(β系数1.45,95% UI 1.26-1.64)、量身定制的健康教育(β系数0.50,95% UI 0.36-0.64)和不受限制的症状日记(β系数0.58,95% UI 0.41-0.76)的应用程序。第2类对应用程序采用没有偏好(应用程序A: β系数-1.18,95% UI -2.36至0.006;应用程序B: β系数-0.78,95% UI -1.99至0.42)或任何特定属性水平。生命体征监测是其中影响最大的属性。情景分析显示,84%的应用采用基本功能,而当应用功能与受访者的偏好一致时,这一比例上升至92%。结论:研究结果表明,设计偏好信息的移动健康应用程序可以显著提高冠心病患者的采用率和参与度,从而可能改善临床结果。当应用程序属性包括易于导航、生命体征监测、反馈提供、个性化健康教育和灵活的症状日记维护数据输入时,采用率明显更高。未来有必要研究影响不同患者群体应用程序使用的因素。
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
JMIR mHealth and uHealth
JMIR mHealth and uHealth Medicine-Health Informatics
CiteScore
12.60
自引率
4.00%
发文量
159
审稿时长
10 weeks
期刊介绍: JMIR mHealth and uHealth (JMU, ISSN 2291-5222) is a spin-off journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR mHealth and uHealth is indexed in PubMed, PubMed Central, and Science Citation Index Expanded (SCIE), and in June 2017 received a stunning inaugural Impact Factor of 4.636. The journal focusses on health and biomedical applications in mobile and tablet computing, pervasive and ubiquitous computing, wearable computing and domotics. JMIR mHealth and uHealth publishes since 2013 and was the first mhealth journal in Pubmed. It publishes even faster and has a broader scope with including papers which are more technical or more formative/developmental than what would be published in the Journal of Medical Internet Research.
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