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Data Integrity–Based Methodology and Checklist for Identifying Implementation Risks of Physiological Sensing in Mobile Health Projects: Quantitative and Qualitative Analysis

机译:基于数据完整性的方法和清单,用于识别移动医疗项目中生理传感的实施风险:定量和定性分析

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Background Mobile health (mHealth) technologies have the potential to bring health care closer to people with otherwise limited access to adequate health care. However, physiological monitoring using mobile medical sensors is not yet widely used as adding biomedical sensors to mHealth projects inherently introduces new challenges. Thus far, no methodology exists to systematically evaluate these implementation challenges and identify the related risks. Objective This study aimed to facilitate the implementation of mHealth initiatives with mobile physiological sensing in constrained health systems by developing a methodology to systematically evaluate potential challenges and implementation risks. Methods We performed a quantitative analysis of physiological data obtained from a randomized household intervention trial that implemented sensor-based mHealth tools (pulse oximetry combined with a respiratory rate assessment app) to monitor health outcomes of 317 children (aged 6-36 months) that were visited weekly by 1 of 9 field workers in a rural Peruvian setting. The analysis focused on data integrity such as data completeness and signal quality. In addition, we performed a qualitative analysis of pretrial usability and semistructured posttrial interviews with a subset of app users (7 field workers and 7 health care center staff members) focusing on data integrity and reasons for loss thereof. Common themes were identified using a content analysis approach. Risk factors of each theme were detailed and then generalized and expanded into a checklist by reviewing 8 mHealth projects from the literature. An expert panel evaluated the checklist during 2 iterations until agreement between the 5 experts was achieved. Results Pulse oximetry signals were recorded in 78.36% (12,098/15,439) of subject visits where tablets were used. Signal quality decreased for 1 and increased for 7 field workers over time (1 excluded). Usability issues were addressed and the workflow was improved. Users considered the app easy and logical to use. In the qualitative analysis, we constructed a thematic map with the causes of low data integrity. We sorted them into 5 main challenge categories: environment, technology, user skills, user motivation, and subject engagement. The obtained categories were translated into detailed risk factors and presented in the form of an actionable checklist to evaluate possible implementation risks. By visually inspecting the checklist, open issues and sources for potential risks can be easily identified. Conclusions We developed a data integrity–based methodology to assess the potential challenges and risks of sensor-based mHealth projects. Aiming at improving data integrity, implementers can focus on the evaluation of environment, technology, user skills, user motivation, and subject engagement challenges. We provide a checklist to assist mHealth implementers with a structured evaluation protocol when planning and preparing projects.
机译:背景技术移动医疗(mHealth)技术有可能使医疗保健更接近那些无法获得足够医疗保健的人们。但是,使用移动医疗传感器进行生理监测尚未广泛使用,因为向mHealth项目添加生物医学传感器必然会带来新的挑战。到目前为止,还没有方法可以系统地评估这些实施挑战并确定相关风险。目的本研究旨在通过开发一种系统地评估潜在挑战和实施风险的方法,来促进在受限卫生系统中通过移动生理感应实施mHealth计划。方法我们对一项随机的家庭干预试验获得的生理数据进行了定量分析,该试验采用了基于传感器的mHealth工具(脉搏血氧仪结合呼吸频率评估应用程序)来监测317名儿童(6-36个月)的健康状况由秘鲁农村地区的9名现场工作者中的1名每周拜访。分析的重点是数据完整性,例如数据完整性和信号质量。此外,我们对一部分应用程序用户(7位现场工作人员和7位医疗保健中心工作人员)进行了审前可用性和半结构化审后访谈的定性分析,重点是数据完整性和丢失原因。使用内容分析方法确定了常见主题。通过审查文献中的8个mHealth项目,详细介绍了每个主题的风险因素,然后将其概括并扩展为清单。一个专家小组在2次迭代中评估了清单,直到5位专家之间达成协议为止。结果在使用片剂的受试者中,脉搏血氧饱和度信号记录在78.36%(12,098 / 15,439)中。随着时间的推移,信号质量下降了1,而现场工作的上升了7(不包括1)。解决了可用性问题,并改进了工作流程。用户认为该应用程序易于使用且合乎逻辑。在定性分析中,我们以数据完整性低下的原因构建了一个专题图。我们将其分为5个主要挑战类别:环境,技术,用户技能,用户动机和主题参与度。将获得的类别转换为详细的风险因素,并以可操作的清单的形式呈现,以评估可能的实施风险。通过目视检查清单,可以轻松识别未解决的问题和潜在风险的来源。结论我们开发了一种基于数据完整性的方法来评估基于传感器的mHealth项目的潜在挑战和风险。为了提高数据完整性,实现者可以专注于环境,技术,用户技能,用户动机和主题参与挑战的评估。我们提供一份清单,以帮助mHealth实施者在规划和准备项目时制定结构化的评估协议。

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