Suppr超能文献

美国数字接触者追踪移动健康工具的上市后评估模型的调整和利用:观察性横断面研究。

Adaptation and Utilization of a Postmarket Evaluation Model for Digital Contact Tracing Mobile Health Tools in the United States: Observational Cross-sectional Study.

机构信息

College of Health and Human Services, George Mason University, Fairfax, VA, United States.

出版信息

JMIR Public Health Surveill. 2023 Mar 22;9:e38633. doi: 10.2196/38633.

Abstract

BACKGROUND

Case investigation and contact tracing are core public health activities used to interrupt disease transmission. These activities are traditionally conducted manually. During periods of high COVID-19 incidence, US health departments were unable to scale up case management staff to deliver effective and timely contact-tracing services. In response, digital contact tracing (DCT) apps for mobile phones were introduced to automate these activities. DCT apps detect when other DCT users are close enough to transmit COVID-19 and enable alerts to notify users of potential disease exposure. These apps were deployed quickly during the pandemic without an opportunity to conduct experiments to determine effectiveness. However, it is unclear whether these apps can effectively supplement understaffed manual contact tracers.

OBJECTIVE

The aims of this study were to (1) evaluate the effectiveness of COVID-19 DCT apps deployed in the United States during the COVID-19 pandemic and (2) determine if there is sufficient DCT adoption and interest in adoption to meet a minimum population use rate to be effective (56%). To assess uptake, interest and safe use covariates were derived from evaluating DCTs using the American Psychological Association App Evaluation Model (AEM) framework.

METHODS

We analyzed data from a nationally representative survey of US adults about their COVID-19-related behaviors and experiences. Survey respondents were divided into three segments: those who adopted a DCT app, those who are interested but did not adopt, and those not interested. Descriptive statistics were used to characterize factors of the three groups. Multivariable logistic regression models were used to analyze the characteristics of segments adopting and interested in DCT apps against AEM framework covariates.

RESULTS

An insufficient percentage of the population adopted or was interested in DCTs to achieve our minimum national target effectiveness rate (56%). A total of 17.4% (n=490) of the study population reported adopting a DCT app, 24.7% (n=697) reported interest, and 58.0% (n=1637) were not interested. Younger, high-income, and uninsured individuals were more likely to adopt a DCT app. In contrast, people in fair to poor health were interested in DCT apps but did not adopt them. App adoption was positively associated with visiting friends and family outside the home (odds ratio [OR] 1.63, 95% CI 1.28-2.09), not wearing masks (OR 0.52, 95% CI 0.38-0.71), and adopters thinking they have or had COVID-19 (OR 1.60, 95% CI 1.21-2.12).

CONCLUSIONS

Overall, a small percentage of the population adopted DCT apps. These apps may not be effective in protecting adopters' friends and family from their maskless contacts outside the home given low adoption rates. The public health community should account for safe use behavioral factors in future public health contact-tracing app design. The AEM framework was useful in developing a study design to evaluate DCT effectiveness and safety.

摘要

背景

病例调查和接触者追踪是用于阻断疾病传播的核心公共卫生活动。这些活动传统上是手动进行的。在 COVID-19 发病率高的时期,美国卫生部门无法扩大病例管理工作人员的规模,以提供有效的和及时的接触者追踪服务。因此,引入了用于移动电话的数字接触者追踪 (DCT) 应用程序来自动化这些活动。DCT 应用程序会检测到其他 DCT 用户接近到足以传播 COVID-19 的程度,并启用警报以通知用户潜在的疾病暴露。这些应用程序在大流行期间迅速部署,没有机会进行实验以确定其有效性。但是,尚不清楚这些应用程序是否可以有效地补充人手不足的手动接触追踪员。

目的

本研究的目的是:(1)评估在美国 COVID-19 大流行期间部署的 COVID-19 DCT 应用程序的有效性,以及 (2)确定是否有足够的 DCT 采用率和采用意愿达到最低人口使用率以实现有效性(56%)。为了评估采用率、兴趣和安全使用的相关因素,我们使用美国心理学会应用程序评估模型 (AEM) 框架来评估 DCT。

方法

我们分析了一项针对美国成年人 COVID-19 相关行为和经验的全国代表性调查的数据。调查对象分为三个部分:采用 DCT 应用程序的人、感兴趣但未采用的人和不感兴趣的人。使用描述性统计数据来描述三个群体的特征。使用多变量逻辑回归模型分析采用和对 DCT 应用程序感兴趣的人群与 AEM 框架协变量的特征。

结果

采用或对 DCT 感兴趣的人口比例不足以达到我们的最低全国目标有效率(56%)。研究人群中,有 17.4%(n=490)报告采用了 DCT 应用程序,24.7%(n=697)表示有兴趣,但未采用,58.0%(n=1637)表示不感兴趣。年轻人、高收入和没有保险的人更有可能采用 DCT 应用程序。相比之下,身体状况不佳的人对 DCT 应用程序感兴趣,但未采用。应用程序的采用与在家外拜访朋友和家人(优势比 [OR] 1.63,95%CI 1.28-2.09)、不戴口罩(OR 0.52,95%CI 0.38-0.71)和采用者认为自己有或曾患有 COVID-19(OR 1.60,95%CI 1.21-2.12)呈正相关。

结论

总体而言,只有一小部分人口采用了 DCT 应用程序。鉴于采用率较低,这些应用程序可能无法有效保护采用者的朋友和家人免受其在家外不戴口罩的接触。公共卫生界应在未来的公共卫生接触者追踪应用程序设计中考虑安全使用行为因素。AEM 框架对于开发评估 DCT 有效性和安全性的研究设计很有用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4e34/10036112/d366613141a3/publichealth_v9i1e38633_fig1.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验