Modeling Epidemic Spread: A Gaussian Process Regression Approach (2312.09384v3)
Abstract: Modeling epidemic spread is critical for informing policy decisions aimed at mitigation. Accordingly, in this work we present a new data-driven method based on Gaussian process regression (GPR) to model epidemic spread through the difference on the logarithmic scale of the infected cases. We bound the variance of the predictions made by GPR, which quantifies the impact of epidemic data on the proposed model. Next, we derive a high-probability error bound on the prediction error in terms of the distance between the training points and a testing point, the posterior variance, and the level of change in the spreading process, and we assess how the characteristics of the epidemic spread and infection data influence this error bound. We present examples that use GPR to model and predict epidemic spread by using real-world infection data gathered in the UK during the COVID-19 epidemic. These examples illustrate that, under typical conditions, the prediction for the next twenty days has 94.29% of the noisy data located within the 95% confidence interval, validating these predictions. We further compare the modeling and prediction results with other methods, such as polynomial regression, k-nearest neighbors (KNN) regression, and neural networks, to demonstrate the benefits of leveraging GPR in disease spread modeling.
- Estimating the time-varying reproduction number of SARS-CoV-2 using national and subnational case counts. Wellcome Open Research, 5(112):112, 2020.
- COVID-19 prediction and detection using deep learning. International Journal of Computer Information Systems and Industrial Management Applications, 12(June):168–181, 2020.
- Prediction of epidemic peak and infected cases for COVID-19 disease in Malaysia, 2020. International Journal of Environmental Research and Public Health, 17(11):4076, 2020.
- Data-based analysis, modelling and forecasting of the COVID-19 outbreak. PloS one, 15(3):e0230405, 2020.
- Francesco Casella. Can the COVID-19 epidemic be controlled on the basis of daily test reports? IEEE Control Systems Letters, 5(3):1079–1084, 2020.
- A new framework and software to estimate time-varying reproduction numbers during epidemics. American Journal of Epidemiology, 178(9):1505–1512, 2013.
- A review of epidemic forecasting using artificial neural networks. Epidemiology and Health System Journal, 6(3):132–143, 2019.
- Predictors of COVID-19 severity: A literature review. Reviews in Medical Virology, 31(1):1–10, 2021.
- Marc G Genton. Classes of kernels for machine learning: A statistics perspective. Journal of Machine Learning Research, 2(Dec):299–312, 2001.
- S Gershgorin. Uber die abgrenzung der eigenwerte einer matrix. lzv. Akad. Nauk. USSR. Otd. Fiz-Mat. Nauk, 7(6):749–754, 1931.
- Modelling the COVID-19 epidemic and implementation of population-wide interventions in Italy. Nature Medicine, 26(6):855–860, 2020.
- Learning-based model predictive control: Toward safe learning in control. Annual Review of Control, Robotics, and Autonomous Systems, 3:269–296, 2020.
- Enhanced Gaussian process regression-based forecasting model for COVID-19 outbreak and significance of iot for its detection. Applied Intelligence, 51:1492–1512, 2021.
- Forecasting the daily and cumulative number of cases for the COVID-19 pandemic in India. Chaos: An Interdisciplinary Journal of Nonlinear Science, 30(7), 2020.
- Uniform error bounds for Gaussian process regression with application to safe control. Advances in Neural Information Processing Systems, 32, 2019.
- Uniform error and posterior variance bounds for Gaussian process regression with application to safe control. arXiv preprint arXiv:2101.05328, 2021.
- Predictive control. In Robust Flight Control: A Design Challenge, pages 125–134. Springer, 2007.
- Coronavirus pandemic (COVID-19). Our World in Data, 2020. https://ourworldindata.org/coronavirus.
- Seasonality and uncertainty in global COVID-19 growth rates. Proceedings of the National Academy of Sciences, 117(44):27456–27464, 2020.
- A review on COVID-19 forecasting models. Neural Computing and Applications, pages 1–11, 2021.
- Why is it difficult to accurately predict the COVID-19 epidemic? Infectious Disease Modelling, 5:271–281, 2020.
- EpiNow2: Estimate Real-Time Case Counts and Time-Varying Epidemiological Parameters, 2020.
- Predicting spatio-temporal propagation of seasonal influenza using variational Gaussian process regression. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 30, 2016.
- A learning-based model predictive control framework for real-time SIR epidemic mitigation. In Proceedings of the 2022 American Control Conference (ACC), pages 2565–2570. IEEE, 2022a.
- Optimal mitigation of SIR epidemics under model uncertainty. In Proceedings of the 2022 IEEE 61st Conference on Decision and Control (CDC), pages 4333–4338. IEEE, 2022b.
- Information-theoretic regret bounds for Gaussian process optimization in the bandit setting. IEEE Transactions on Information Theory, 58(5):3250–3265, 2012.
- Modeling and forecasting number of confirmed and death caused COVID-19 in Iran: A comparison of time series forecasting methods. Biomedical Signal Processing and Control, 66:102494, 2021.
- Pauline van den Driessche. Reproduction numbers of infectious disease models. Infectious Disease Modeling, 2(3):288–303, 2017.
- Ricardo Manuel Arias Velásquez and Jennifer Vanessa Mejia Lara. Forecast and evaluation of COVID-19 spreading in USA with reduced-space Gaussian process regression. Chaos, Solitons & Fractals, 136:109924, 2020.
- DEFSI: Deep learning based epidemic forecasting with synthetic information. In Proceedings of the AAAI conference on artificial intelligence, volume 33, pages 9607–9612, 2019.
- Predicting an epidemic trajectory is difficult. Proceedings of the National Academy of Sciences, 117(46):28549–28551, 2020.
- Gaussian Processes For Machine Learning, volume 2. MIT press Cambridge, MA, 2006.
- Mark Woolhouse. How to make predictions about future infectious disease risks. Philosophical Transactions of the Royal Society B: Biological Sciences, 366(1573):2045–2054, 2011.
- Effects of temperature and humidity on the daily new cases and new deaths of COVID-19 in 166 countries. Science of the Total Environment, 729:139051, 2020.
- Deep learning for epidemiological predictions. In Proceedings of the 41st International ACM SIGIR Conference on Research & Development in Information Retrieval, pages 1085–1088, 2018.
- Prediction models for diagnosis and prognosis of Covid-19: Systematic review and critical appraisal. The BMJ, 369, 2020.