从安全网急诊科招募的参与者参与移动医疗提示的自我测量血压监测:Reach Out试验的二次分析。

IF 5.4 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES
Lesli E Skolarus, Chun Chieh Lin, Sonali Mishra, William Meurer, Mackenzie Dinh, Candace Whitfield, Ran Bi, Devin Brown, Rockefeller Oteng, Lorraine R Buis, Kelley Kidwell
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引用次数: 0

摘要

背景:高血压是心血管疾病的主要可改变风险因素,在黑人和低收入人群中更为普遍。为解决这一健康差异问题,利用安全网急诊科进行可扩展的移动医疗(mHealth)干预,特别是使用短信进行自我血压(SMBP)监测,是一项很有前景的策略。本研究调查了服务不足人群的参与模式、相关因素以及参与对降低血压(BP)的影响:我们旨在确定参与有反馈提示的 SMBP 监测的模式、与参与相关的因素以及参与与血压降低的关系:这是对从密歇根州弗林特市安全网急诊科招募的 488 名高血压患者进行的移动医疗因子试验 Reach Out 数据的二次分析。Reach Out 的参与者被随机分配到每周或每天的短信提示中,测量他们的血压并发送短信回复。参与度定义为对提示的血压回复。采用 k-means 聚类算法和可视化方法,根据 SMBP 提示频率(每周或每天)确定 SMBP 参与模式。在 12 个月时对血压进行远程测量。对于每个提示频率组,我们使用逻辑回归模型来评估人口统计学、获得护理的机会和合并症与高参与度的单变量关联。然后,我们使用线性混合效应模型探讨参与度与 12 个月时收缩压之间的关系,并使用平均边际效应进行估算:对于两个 SMBP 提示组,最佳参与度群组数为 2,我们将其定义为高参与度和低参与度。在 241 名每周参与者中,189 人(78.4%)为低参与度者(响应率:平均为 20%,标准差为 23.4),52 人(21.6%)为高参与度者(响应率:平均为 86%,标准差为 14.7)。在 247 名每日参与者中,221 人(89.5%)为低参与度(回复率:平均 9%,中位数 12.2),26 人(10.5%)为高参与度(回复率:平均 67%,中位数 8.7)。在每周的参与者中,年龄较大(大于 65 岁)、上过一些大学(与未上过大学相比)、已婚或与他人同住、有医疗保险(与医疗补助相比)、接受初级保健医生的治疗以及在过去 6 个月中服用过抗高血压药物的人参与度高的几率更高。没有交通工具赴约的参与者参与度较低。在两个提示频率组中,参与度高的参与者与参与度低的参与者相比,血压下降幅度更大:结论:与接受每日提示的参与者相比,随机接受每周 SMBP 监测提示的参与者总体上更频繁地做出反应,更有可能被归类为高参与度者。参与度高与血压下降幅度大有关。需要为获得医疗服务机会较少的参与者制定新的鼓励参与策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Engagement in mHealth-Prompted Self-Measured Blood Pressure Monitoring Among Participants Recruited From a Safety-Net Emergency Department: Secondary Analysis of the Reach Out Trial.

Background: Hypertension, a key modifiable risk factor for cardiovascular disease, is more prevalent among Black and low-income individuals. To address this health disparity, leveraging safety-net emergency departments for scalable mobile health (mHealth) interventions, specifically using text messaging for self-measured blood pressure (SMBP) monitoring, presents a promising strategy. This study investigates patterns of engagement, associated factors, and the impact of engagement on lowering blood pressure (BP) in an underserved population.

Objective: We aimed to identify patterns of engagement with prompted SMBP monitoring with feedback, factors associated with engagement, and the association of engagement with lowered BP.

Methods: This is a secondary analysis of data from Reach Out, an mHealth, factorial trial among 488 hypertensive patients recruited from a safety-net emergency department in Flint, Michigan. Reach Out participants were randomized to weekly or daily text message prompts to measure their BP and text in their responses. Engagement was defined as a BP response to the prompt. The k-means clustering algorithm and visualization were used to determine the pattern of SMBP engagement by SMBP prompt frequency-weekly or daily. BP was remotely measured at 12 months. For each prompt frequency group, logistic regression models were used to assess the univariate association of demographics, access to care, and comorbidities with high engagement. We then used linear mixed-effects models to explore the association between engagement and systolic BP at 12 months, estimated using average marginal effects.

Results: For both SMBP prompt groups, the optimal number of engagement clusters was 2, which we defined as high and low engagement. Of the 241 weekly participants, 189 (78.4%) were low (response rate: mean 20%, SD 23.4) engagers, and 52 (21.6%) were high (response rate: mean 86%, SD 14.7) engagers. Of the 247 daily participants, 221 (89.5%) were low engagers (response rate: mean 9%, SD 12.2), and 26 (10.5%) were high (response rate: mean 67%, SD 8.7) engagers. Among weekly participants, those who were older (>65 years of age), attended some college (vs no college), married or lived with someone, had Medicare (vs Medicaid), were under the care of a primary care doctor, and took antihypertensive medication in the last 6 months had higher odds of high engagement. Participants who lacked transportation to appointments had lower odds of high engagement. In both prompt frequency groups, participants who were high engagers had a greater decline in BP compared to low engagers.

Conclusions: Participants randomized to weekly SMBP monitoring prompts responded more frequently overall and were more likely to be classed as high engagers compared to participants who received daily prompts. High engagement was associated with a larger decrease in BP. New strategies to encourage engagement are needed for participants with lower access to care.

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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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