Inferring the timing and amplitude of perturbations in epidemiological systems from their stochastically spread low-resolution outcomes is as relevant as challenging. It is a requirement for current approaches to overcome the need to know the details of the perturbations to proceed with the analyses. However, the general problem of connecting epidemiological curves with the underlying incidence lacks the highly effective methodology present in other inverse problems, such as super-resolution and dehazing from computer vision. Here, we develop an unsupervised physics-informed convolutional neural network approach in reverse to connect death records with incidence that allows the identification of regime changes at single-day resolution. Applied to COVID-19 data with proper regularization and model-selection criteria, the approach can identify the implementation and removal of lockdowns and other nonpharmaceutical interventions with 0.93-day accuracy over the time span of a year.
翻译:将流行病学系统的扰动时间和振幅从其平坦传播的低分辨率结果中推算出来,既具有挑战性,又具有挑战性,要求目前采取的办法,以克服了解扰动细节的必要性,以着手进行分析;然而,将流行病学曲线与基本发病率联系起来这一普遍问题缺乏其他反向问题中非常有效的方法,例如超分辨率和从计算机视线中去除。在这里,我们开发了一种不受监督的物理知情神经神经网络方法,逆向将死亡记录与事故联系起来,以便能够在单日分辨率上识别制度变化。对COVID-19数据应用适当的正规化和模型选择标准,这种方法可以确定锁定和其他非药物性干预的实施和取消,在一年的时间内精确度为0.93天。