The COVID-19 pandemic has impacted lives and economies across the globe, leading to many deaths. While vaccination is an important intervention, its roll-out is slow and unequal across the globe. Therefore, extensive testing still remains one of the key methods to monitor and contain the virus. Testing on a large scale is expensive and arduous. Hence, we need alternate methods to estimate the number of cases. Online surveys have been shown to be an effective method for data collection amidst the pandemic. In this work, we develop machine learning models to estimate the prevalence of COVID-19 using self-reported symptoms. Our best model predicts the daily cases with a mean absolute error (MAE) of 226.30 (normalized MAE of 27.09%) per state, which demonstrates the possibility of predicting the actual number of confirmed cases by utilizing self-reported symptoms. The models are developed at two levels of data granularity - local models, which are trained at the state level, and a single global model which is trained on the combined data aggregated across all states. Our results indicate a lower error on the local models as opposed to the global model. In addition, we also show that the most important symptoms (features) vary considerably from state to state. This work demonstrates that the models developed on crowd-sourced data, curated via online platforms, can complement the existing epidemiological surveillance infrastructure in a cost-effective manner. The code is publicly available at https://github.com/parthpatwa/Can-Self-Reported-Symptoms-Predict-Daily-COVID-19-Cases.
翻译:COVID-19大流行影响到全球各地的生命和经济,导致许多死亡。尽管疫苗接种是一项重要的干预措施,但疫苗的推广速度缓慢且不平等。 因此,广泛的测试仍然是监测和遏制病毒的关键方法之一。 大规模测试是昂贵和艰巨的。 因此,我们需要用其他方法来估计病例数量。 在线调查被证明是在这种流行病中收集数据的有效方法。 在这项工作中,我们开发了机器学习模型,用自我报告的症状来估计COVID-19的流行率。 我们的最佳模型预测每天的情况是226.30(正常的MAE为27.09 % ) / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / 1- / / / / / / / / / / / / / / / / / / / / / / / 以 / / / / / / / / / / / / / / / / / / 1- / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / / /