Zhang Xin-Yu, Yu Lan-Lan, Wang Wei-Yi, Sun Gui-Quan, Lv Jian-Cheng, Zhou Tao, Liu Quan-Hui
College of Computer Science, Sichuan University, Chengdu, China.
Engineering Research Center of Machine Learning and Industry Intelligence, Ministry of Education, Sichuan University, Chengdu, China.
PLoS Comput Biol. 2024 Dec 23;20(12):e1012694. doi: 10.1371/journal.pcbi.1012694. eCollection 2024 Dec.
Monitoring the spread of infectious disease is essential to design and adjust the interventions timely for the prevention of the epidemic outbreak and safeguarding the public health. The governments have generally adopted the incidence-based statistical method to estimate the time-varying effective reproduction number Rt and evaluate the transmission ability of epidemics. However, this method exhibits biases arising from the reported incidence data and assumes the generation interval distribution which is not available at the early stage of epidemic. Recent studies showed that the viral loads characterized by cycle threshold (Ct) of the infected populations evolving throughout the course of epidemic and providing a possibility to infer the epidemic trajectory. In this work, we propose the Cycle Threshold-based Transformer (Ct-Transformer) to estimate Rt. We find the supervised learning of Ct-Transformer outperforms the traditional incidence-based statistic and Ct-based Rt estimating methods, and more importantly Ct-Transformer is robust to the detection resources. Further, we apply the proposed model to self-supervised pre-training tasks and obtain excellent fine-tuned performance, which attains comparable performance with the supervised Ct-Transformer, verified by both the synthetic and real-world datasets. We demonstrate that the Ct-based deep learning method can improve the real-time estimates of Rt, enabling more easily adapted to the track of the newly emerged epidemic.
监测传染病的传播对于及时设计和调整干预措施以预防疫情爆发和保障公众健康至关重要。政府通常采用基于发病率的统计方法来估计随时间变化的有效繁殖数Rt,并评估疫情的传播能力。然而,这种方法存在因报告发病率数据而产生的偏差,并且假设了在疫情早期无法获得的代间隔分布。最近的研究表明,感染人群的循环阈值(Ct)所表征的病毒载量在疫情过程中不断演变,并为推断疫情轨迹提供了可能性。在这项工作中,我们提出了基于循环阈值的Transformer(Ct-Transformer)来估计Rt。我们发现Ct-Transformer的监督学习优于传统的基于发病率的统计方法和基于Ct的Rt估计方法,更重要的是,Ct-Transformer对检测资源具有鲁棒性。此外,我们将所提出的模型应用于自监督预训练任务,并获得了出色的微调性能,在合成数据集和真实世界数据集的验证下,其性能与监督式Ct-Transformer相当。我们证明基于Ct的深度学习方法可以改进Rt的实时估计,使其更容易适应新出现疫情的追踪。