| Literature DB >> 32674025 |
Amani Alahmadi1, Sarah Belet2, Andrew Black3, Deborah Cromer4, Jennifer A Flegg5, Thomas House6, Pavithra Jayasundara7, Jonathan M Keith2, James M McCaw8, Robert Moss9, Joshua V Ross10, Freya M Shearer9, Sai Thein Than Tun11, James Walker12, Lisa White11, Jason M Whyte13, Ada W C Yan14, Alexander E Zarebski15.
Abstract
Modern data and computational resources, coupled with algorithmic and theoretical advances to exploit these, allow disease dynamic models to be parameterised with increasing detail and accuracy. While this enhances models' usefulness in prediction and policy, major challenges remain. In particular, lack of identifiability of a model's parameters may limit the usefulness of the model. While lack of parameter identifiability may be resolved through incorporation into an inference procedure of prior knowledge, formulating such knowledge is often difficult. Furthermore, there are practical challenges associated with acquiring data of sufficient quantity and quality. Here, we discuss recent progress on these issues.Entities:
Keywords: Bayesian analysis; Computational methodology; Data challenges; Parameter identifiability; Policy and communication; Prior knowledge
Mesh:
Year: 2020 PMID: 32674025 DOI: 10.1016/j.epidem.2020.100393
Source DB: PubMed Journal: Epidemics ISSN: 1878-0067 Impact factor: 4.396