Laboratório de Doenças Infecciosas Transmitidas por Vetores, Instituto Gonçalo Moniz, Fundação Oswaldo Cruz, Salvador, Brazil.
Faculdade de Medicina, Federal University of Bahia, Salvador, Brazil.
JMIR Public Health Surveill. 2023 Jan 24;9:e40036. doi: 10.2196/40036.
Telehealth has been widely used for new case detection and telemonitoring during the COVID-19 pandemic. It safely provides access to health care services and expands assistance to remote, rural areas and underserved communities in situations of shortage of specialized health professionals. Qualified data are systematically collected by health care workers containing information on suspected cases and can be used as a proxy of disease spread for surveillance purposes. However, the use of this approach for syndromic surveillance has yet to be explored. Besides, the mathematical modeling of epidemics is a well-established field that has been successfully used for tracking the spread of SARS-CoV-2 infection, supporting the decision-making process on diverse aspects of public health response to the COVID-19 pandemic. The response of the current models depends on the quality of input data, particularly the transmission rate, initial conditions, and other parameters present in compartmental models. Telehealth systems may feed numerical models developed to model virus spread in a specific region.
Herein, we evaluated whether a high-quality data set obtained from a state-based telehealth service could be used to forecast the geographical spread of new cases of COVID-19 and to feed computational models of disease spread.
We analyzed structured data obtained from a statewide toll-free telehealth service during 4 months following the first notification of COVID-19 in the Bahia state, Brazil. Structured data were collected during teletriage by a health team of medical students supervised by physicians. Data were registered in a responsive web application for planning and surveillance purposes. The data set was designed to quickly identify users, city, residence neighborhood, date, sex, age, and COVID-19-like symptoms. We performed a temporal-spatial comparison of calls reporting COVID-19-like symptoms and notification of COVID-19 cases. The number of calls was used as a proxy of exposed individuals to feed a mathematical model called "susceptible, exposed, infected, recovered, deceased."
For 181 (43%) out of 417 municipalities of Bahia, the first call to the telehealth service reporting COVID-19-like symptoms preceded the first notification of the disease. The calls preceded, on average, 30 days of the notification of COVID-19 in the municipalities of the state of Bahia, Brazil. Additionally, data obtained by the telehealth service were used to effectively reproduce the spread of COVID-19 in Salvador, the capital of the state, using the "susceptible, exposed, infected, recovered, deceased" model to simulate the spatiotemporal spread of the disease.
Data from telehealth services confer high effectiveness in anticipating new waves of COVID-19 and may help understand the epidemic dynamics.
远程医疗在 COVID-19 大流行期间已被广泛用于新病例的检测和远程监测。它安全地提供了医疗服务,并在缺乏专业卫生人员的情况下,将援助扩大到偏远、农村地区和服务不足的社区。卫生工作者系统地收集合格数据,其中包含疑似病例信息,可以作为监测目的疾病传播的替代指标。然而,这种方法在症状监测中的应用尚未得到探索。此外,传染病的数学建模是一个成熟的领域,已成功用于跟踪 SARS-CoV-2 感染的传播,为 COVID-19 大流行的公共卫生应对的各个方面的决策提供支持。当前模型的响应取决于输入数据的质量,特别是传播率、初始条件和 compartmental 模型中的其他参数。远程医疗系统可以为在特定区域模拟病毒传播而开发的数值模型提供数据。
本文评估了从州级远程医疗服务获得的高质量数据集是否可用于预测 COVID-19 新病例的地理传播,并为疾病传播的计算模型提供数据。
我们分析了巴西巴伊亚州在首次报告 COVID-19 后 4 个月内从全州范围内的免费远程医疗服务中获得的结构化数据。结构化数据是由医学生组成的远程医疗团队在医生监督下通过远程分诊收集的。数据被记录在一个用于规划和监测目的的响应式网络应用程序中。该数据集旨在快速识别用户、城市、居住社区、日期、性别、年龄和 COVID-19 样症状。我们对报告 COVID-19 样症状的呼叫和 COVID-19 病例的通知进行了时空比较。呼叫次数被用作暴露个体的代理,以输入一种名为“易感、暴露、感染、恢复、死亡”的数学模型。
在巴伊亚州的 417 个市镇中,有 181 个(43%)市镇的首例向远程医疗服务报告 COVID-19 样症状的呼叫先于该州 COVID-19 病例的首次报告。这些呼叫平均先于巴伊亚州各城市 COVID-19 通知 30 天。此外,通过远程医疗服务获得的数据被用于有效重现巴西萨尔瓦多州首府 COVID-19 的传播,使用“易感、暴露、感染、恢复、死亡”模型来模拟疾病的时空传播。
远程医疗服务的数据在预测 COVID-19 的新波次方面具有高度的有效性,并有助于了解疫情动态。