Browsing by Author "You Li"
Now showing 1 - 3 of 3
Results Per Page
Sort Options
Item Global burden of respiratory infections associated with seasonal influenza in children under 5 years in 2018 a systematic review and modelling studyXin Wang; You Li; Katherine L O'Brien; Shabir Madhi; Marc-Alain Widdowson; Peter Byass; Cheryl Cohen; Michelle Groome; Florette Treurnicht; E et alItem Short-term local predictions of COVID-19 in the United Kingdom using dynamic supervised machine learning algorithms(2022-09-24) Xin Wang; Yijia Dong; William David Thompson; Harish Nair; You LiBackground: Short-term prediction of COVID-19 epidemics is crucial to decision making. We aimed to develop supervised machine-learning algorithms on multiple digital metrics including symptom search trends, population mobility, and vaccination coverage to predict local-level COVID-19 growth rates in the UK. Methods: Using dynamic supervised machine-learning algorithms based on log-linear regression, we explored optimal models for 1-week, 2-week, and 3-week ahead prediction of COVID-19 growth rate at lower tier local authority level over time. Model performance was assessed by calculating mean squared error (MSE) of prospective prediction, and naïve model and fixed-predictors model were used as reference models. We assessed real-time model performance for eight five-weeks-apart checkpoints between 1st March and 14th November 2021. We developed an online application (COVIDPredLTLA) that visualised the real-time predictions for the present week, and the next one and two weeks. Results: Here we show that the median MSEs of the optimal models for 1-week, 2-week, and 3-week ahead prediction are 0.12 (IQR: 0.08-0.22), 0.29 (0.19-0.38), and 0.37 (0.25-0.47), respectively. Compared with naïve models, the optimal models maintain increased accuracy (reducing MSE by a range of 21-35%), including May-June 2021 when the delta variant spread across the UK. Compared with the fixed-predictors model, the advantage of dynamic models is observed after several iterations of update. Conclusions: With flexible data-driven predictors selection process, our dynamic modelling framework shows promises in predicting short-term changes in COVID-19 cases. The online application (COVIDPredLTLA) could assist decision-making for control measures and planning of healthcare capacity in future epidemic growths.Item Understanding the age spectrum of respiratory syncytial virus associated hospitalisation and mortality burden based on statistical modelling methods a systematic analysis(BIOMED CENTRAL LTD) B Cong; I Dighero; T Zhang; A Chung; Harish Nair; You Li