基于远程医疗数据的外周动脉疾病患者家庭结构化步行训练的支持和6分钟步行测试距离的预测:前瞻性队列研究

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Fabian Wiesmüller, Andreas Prenner, Andreas Ziegl, Gihan El-Moazen, Robert Modre-Osprian, Martin Baumgartner, Marianne Brodmann, Gerald Seinost, Günther Silbernagel, Günter Schreier, Dieter Hayn
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引用次数: 0

摘要

背景:远程医疗在治疗中风和心力衰竭等心血管疾病方面非常有效,在治疗外周动脉疾病方面也显示出良好的效果。然而,要充分了解基于远程医疗的预测模型对外周动脉疾病患者身体健康的影响,还需要做更多的工作。目的:在这项工作中,我们深入分析了Keep Pace研究的数据,以了解患者病情的时间发展,并建立模型来预测研究结束时患者的总步行距离。这有助于确定可能从远程医疗方案中受益的患者,并作为激励因素不断向患者提供估计。方法:本工作分析了患者报告的连续远程医疗数据,并结合19名患有外周动脉疾病的Fontaine II期患者的临床数据,这些患者接受了为期12周的基于远程医疗的步行计划。这一分析揭示了6分钟步行测试(6MWT)总步行距离的增加,作为身体健康的衡量标准,患者疼痛的稳步减少,以及幸福感与6MWT测量的总步行距离之间的正相关关系。结果:本工作分析了连续患者生成数据的趋势和相关性。本研究发现,患者的疼痛感随时间的推移显著降低(P= 0.006),疼痛感与当天采取的步骤之间存在低但高度显著的相关性(r=-0.11;结论:我们得出的结论是,原型趋势估计具有集成远程医疗系统的巨大潜力,可用于未来的工作中,根据这些预测提供量身定制的针对患者的建议。来自远程医疗系统的连续数据可以更深入地了解和更好地了解患者的健康状况和疼痛程度,以及他们当前的身体健康水平和实现既定目标的进展情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support of Home-Based Structured Walking Training and Prediction of the 6-Minute Walk Test Distance in Patients With Peripheral Arterial Disease Based on Telehealth Data: Prospective Cohort Study.

Background: Telehealth has been effective in managing cardiovascular diseases like stroke and heart failure and has shown promising results in managing patients with peripheral arterial disease. However, more work is needed to fully understand the effect of telehealth-based predictive modeling on the physical fitness of patients with peripheral arterial disease.

Objective: For this work, data from the Keep Pace study were analyzed in depth to gain insights on temporal developments of patients' conditions and to develop models to predict the patients' total walking distance at the study end. This could help to determine patients who are likely to benefit from the telehealth program and to continuously provide estimations to the patients as a motivating factor.

Methods: This work analyzes continuous patient-reported telehealth data, in combination with in-clinic data from 19 Fontaine stage II patients with peripheral arterial disease who underwent a 12-week telehealth-based walking program. This analysis granted insights into the increase of the total walking distance of the 6-minute walk tests (6MWT) as a measure for physical fitness, the steady decrease in the patients' pain, and the positive correlation between well-being and the total walking distance measured by the 6MWT.

Results: This work analyzed trends of and correlations between continuous patient-generated data. Findings of this study include a significant decrease of the patients' pain sensation over time (P=.006), a low but highly significant correlation between pain sensation and steps taken on the same day (r=-0.11; P<.001) and the walking distance of the independently performed 6MWTs (r=-0.39; P<.001). Despite the reported pain, adherence to the 6MWT measurement protocol was high (85.53%). Additionally, patients significantly improved their timed-up-and-go test times during the study (P=.002). Predicting the total walking distance at the study end measured by the 6MWT worked well at study baseline (root mean squared error of 30 meters; 7.04% of the mean total walking distance at the study end of 425 meters) and continuously improved by adding further telehealth data. Future work should validate these findings in a larger cohort and in a prospective setting based on a clinical outcome.

Conclusions: We conclude that the prototypical trend estimation has great potential for an integration in the telehealth system to be used in future work to provide tailored patient-specific advice based on these predictions. Continuous data from the telehealth system grant a deeper insight and a better understanding of the patients' status concerning well-being and level of pain as well as their current physical fitness level and the progress toward reaching set goals.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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