Article ID: | iaor201112417 |
Volume: | 31 |
Issue: | 3 |
Start Page Number: | 351 |
End Page Number: | 369 |
Publication Date: | Mar 2011 |
Journal: | Risk Analysis |
Authors: | Sze-To Gin Nam, Chao Christopher Y H |
Keywords: | risk, simulation: applications |
Obvious spatial infection patterns are often observed in cases associated with airborne transmissible diseases. Existing quantitative infection risk assessment models analyze the observed cases by assuming a homogeneous infectious particle concentration and ignore the spatial infection pattern, which may cause errors. This study aims at developing an approach to analyze spatial infection patterns associated with infectious respiratory diseases or other airborne transmissible diseases using infection risk assessment and likelihood estimation. Mathematical likelihood, based on binomial probability, was used to formulate the retrospective component with some additional mathematical treatments. Together with an infection risk assessment model that can address spatial heterogeneity, the method can be used to analyze the spatial infection pattern and retrospectively estimate the influencing parameters causing the cases, such as the infectious source strength of the pathogen. A