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首页> 外文期刊>Affective science. >Feasibility of Passive ECG Bio-sensing and EMA Emotion Reporting Technologies and Acceptability of Just-in-Time Content in a Well-being Intervention, Considerations for Scalability and Improved Uptake
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Feasibility of Passive ECG Bio-sensing and EMA Emotion Reporting Technologies and Acceptability of Just-in-Time Content in a Well-being Intervention, Considerations for Scalability and Improved Uptake

机译:被动心电图生物传感和 EMA 情绪报告技术的可行性以及及时内容在健康干预中的可接受性、可扩展性和改进吸收的考虑因素

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Researchers increasingly use passive sensing data and frequent self-report to implement personalized mobile health (mHealth) interventions. Yet, we know that certain populations may find these technical protocols burdensome and intervention uptake as well as treatment efficacy may be affected as a result. In the present study, we predicted feasibility (participant adherence to protocol) and acceptability (participant engagement with intervention content) as a function of baseline sociodemographic, mental health, and well-being characteristics of 99 women randomized in the personalized preventive intervention Wellness-for-Two (W-4-2), a randomized trial evaluating stress-related alterations during pregnancy and their effect on infant neurodevelopmental trajectories. The W-4-2 study used ecological momentary assessment (EMA) and wearable electrocardiograph (ECG) sensors to detect physiological stress and personalize the intervention. Participant adherence to protocols was 67% for EMAs and 52% for ECG bio-sensors. Higher baseline negative affect significantly predicted lower adherence to both protocols. Women assigned to the intervention group engaged on average with 42% of content they received. Women with higher annual household income were more likely to engage with more of the intervention content. Researchers should carefully consider tailoring of the intensity of technical intervention protocols to reduce fatigue, especially among participants with higher baseline negative affect, which may improve intervention uptake and efficacy findings at scale.
机译:研究人员越来越多地使用被动遥感数据和频繁的自我实现个性化的移动健康(mHealth)干预措施。数量可能会发现这些技术协议繁琐和干预以及吸收治疗效果可能会影响结果。在目前的研究中,我们预测的可行性(参与者遵守协议)可接受性(参与者参与干预内容)作为基线的函数社会人口、心理健康和福祉99名妇女随机的特征个性化的预防干预Wellness-for-Two (W-4-2),一个随机试验评估期间与压力相关的改变怀孕和它们对婴儿的影响神经发育轨迹。生态的评估(EMA)和使用可穿戴的心电图仪(ECG)传感器检测生理压力和个性化干预。是67%,复合为52%,心电图可以检测。高基线显著负面影响预测低遵守协议。分配给干预组妇女参与他们收到平均有42%的内容。年度家庭收入越高的女性更有可能参与更多的干预内容。仔细考虑强度的裁剪技术协议减少干预疲劳,尤其是参与者更高的基线的负面影响,这可能改善干预吸收和功效的发现在规模。

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