Guideline-Based Cardiovascular Risk Assessment Delivered by an mHealth App: Development Study

Q2 Medicine JMIR Cardio Pub Date : 2023-12-08 DOI:10.2196/50813
Fabian Starnecker, Lara Marie Reimer, Leon Nissen, Marko Jovanović, Maximilian Kapsecker, S. Rospleszcz, M. von Scheidt, J. Krefting, Nils Krüger, Benedikt Perl, Jens Wiehler, Ruoyu Sun, Stephan Jonas, H. Schunkert
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Abstract

Identifying high-risk individuals is crucial for preventing cardiovascular diseases (CVDs). Currently, risk assessment is mostly performed by physicians. Mobile health apps could help decouple the determination of risk from medical resources by allowing unrestricted self-assessment. The respective test results need to be interpretable for laypersons. Together with a patient organization, we aimed to design a digital risk calculator that allows people to individually assess and optimize their CVD risk. The risk calculator was integrated into the mobile health app HerzFit, which provides the respective background information. To cover a broad spectrum of individuals for both primary and secondary prevention, we integrated the respective scores (Framingham 10-year CVD, Systematic Coronary Risk Evaluation 2, Systematic Coronary Risk Evaluation 2 in Older Persons, and Secondary Manifestations Of Arterial Disease) into a single risk calculator that was recalibrated for the German population. In primary prevention, an individual’s heart age is estimated, which gives the user an easy-to-understand metric for assessing cardiac health. For secondary prevention, the risk of recurrence was assessed. In addition, a comparison of expected to mean and optimal risk levels was determined. The risk calculator is available free of charge. Data safety is ensured by processing the data locally on the users’ smartphones. Offering a risk calculator to the general population requires the use of multiple instruments, as each provides only a limited spectrum in terms of age and risk distribution. The integration of 4 internationally recommended scores allows risk calculation in individuals aged 30 to 90 years with and without CVD. Such integration requires recalibration and harmonization to provide consistent and plausible estimates. In the first 14 months after the launch, the HerzFit calculator was downloaded more than 96,000 times, indicating great demand. Public information campaigns proved effective in publicizing the risk calculator and contributed significantly to download numbers. The HerzFit calculator provides CVD risk assessment for the general population. The public demonstrated great demand for such a risk calculator as it was downloaded up to 10,000 times per month, depending on campaigns creating awareness for the instrument.
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通过移动医疗应用程序提供基于指南的心血管风险评估:开发研究
识别高危人群对于预防心血管疾病(cvd)至关重要。目前,风险评估主要由医生进行。通过允许不受限制的自我评估,移动健康应用程序可以帮助将风险的确定与医疗资源脱钩。各自的测试结果需要为外行人解释。与患者组织一起,我们的目标是设计一个数字风险计算器,允许人们单独评估和优化他们的心血管疾病风险。风险计算器被集成到移动健康应用程序HerzFit中,该应用程序提供了相应的背景信息。为了涵盖初级和二级预防的广泛个体,我们将各自的评分(Framingham 10年心血管疾病、系统性冠状动脉风险评估2、老年人系统性冠状动脉风险评估2和动脉疾病的继发表现)整合到一个单一的风险计算器中,并为德国人群重新校准。在初级预防中,估计个人的心脏年龄,这为用户提供了一个易于理解的评估心脏健康的指标。对于二级预防,评估复发风险。此外,还确定了期望平均风险水平和最佳风险水平的比较。风险计算器是免费的。通过在用户的智能手机上本地处理数据,确保数据安全。向一般人群提供风险计算器需要使用多种工具,因为每种工具在年龄和风险分布方面只能提供有限的范围。综合4个国际推荐评分,可以对30 - 90岁有或没有心血管疾病的个体进行风险计算。这种整合需要重新校准和协调,以提供一致和合理的估计。在推出后的前14个月里,HerzFit计算器的下载量超过了9.6万次,显示出巨大的需求。公共宣传运动在宣传风险计算器方面证明是有效的,并对下载数字作出了重大贡献。HerzFit计算器为一般人群提供心血管疾病风险评估。公众对这种风险计算器表现出了巨大的需求,因为它每月下载多达10,000次,这取决于提高对该工具认识的活动。
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 Cardio
JMIR Cardio Computer Science-Computer Science Applications
CiteScore
3.50
自引率
0.00%
发文量
25
审稿时长
12 weeks
期刊最新文献
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