Epidemiology models play a key role in understanding and responding to the COVID-19 pandemic. In order to build those models, scientists need to understand contributing factors and their relative importance. A large strand of literature has identified the importance of airflow to mitigate droplets and far-field aerosol transmission risks. However, the specific factors contributing to higher or lower contamination in various settings have not been clearly defined and quantified. As part of the MOAI project (https://moaiapp.com), we are developing a privacy-preserving test and trace app to enable infection cluster investigators to get in touch with patients without having to know their identity. This approach allows involving users in the fight against the pandemic by contributing additional information in the form of anonymous research questionnaires. We first describe how the questionnaire was designed, and the synthetic data was generated based on a review we carried out on the latest available literature. We then present a model to evaluate the risk exposition of a user for a given setting. We finally propose a temporal addition to the model to evaluate the risk exposure over time for a given user.
翻译:流行病学模型在了解和应对COVID-19流行病方面发挥着关键作用。为了建立这些模型,科学家需要了解各种因素及其相对重要性。大量文献已经确定了空气流对于减轻滴子和远地气溶胶传播风险的重要性。然而,造成各种环境污染程度高或低的具体因素尚未明确界定和量化。作为MOAI项目(https://moaiapp.com)的一部分,我们正在开发一个隐私保存测试和追踪应用软件,使感染群调查员能够与病人接触,而不必知道他们的身份。这种方法通过匿名研究问卷的形式提供补充信息,使用户能够参与防治这一流行病的斗争。我们首先介绍了问卷是如何设计的,合成数据是在我们根据现有最新文献进行的审查的基础上产生的。然后我们提出了一个模型,用以评估用户在特定环境下的风险暴露情况。我们最后提议在模型中添加一个时间,以评估特定用户在一段时间内面临的风险。