The Wells-Riley model has been widely used to estimate airborne infection risk, typically from a deterministic point of view (i.e., focusing on the average number of infections) or in terms of a per capita probability of infection. Some of its main limitations relate to considering well-mixed air, steady-state concentration of pathogen in the air, a particular amount of time for the indoor interaction, and that all individuals are homogeneous and behave equally. Here, we revisit the Wells-Riley model, providing a mathematical formalism for its stochastic version, where the number of infected individuals follows a Binomial distribution. Then, we extend the Wells-Riley methodology to consider transient behaviours, randomness, and population heterogeneity. In particular, we provide analytical solutions for the number of infections and the per capita probability of infection when: (i) susceptible individuals remain in the room after the infector leaves, (ii) the duration of the indoor interaction is random/unknown, and (iii) infectors have heterogeneous quanta production rates (or the quanta production rate of the infector is random/unknown). We illustrate the applicability of our new formulations through two case studies: infection risk due to an infectious healthcare worker (HCW) visiting a patient, and exposure during lunch for uncertain meal times in different dining settings. Our results highlight that infection risk to a susceptible who remains in the space after the infector leaves can be nonnegligible, and highlight the importance of incorporating uncertainty in the duration of the indoor interaction and the infectivity of the infector when estimating risk.

Download full-text PDF

Source
http://dx.doi.org/10.1111/risa.14295DOI Listing

Publication Analysis

Top Keywords

wells-riley model
12
infection risk
12
indoor interaction
12
transient behaviours
8
number infections
8
capita probability
8
probability infection
8
infector leaves
8
duration indoor
8
quanta production
8

Similar Publications

Article Synopsis
  • The study investigates the airborne transmission risk of SARS-CoV-2 in various indoor settings, using carbon dioxide levels to gauge infection risk.
  • Results show that certain environments, like homes and hospitals, have much higher transmission risks than others, such as college classrooms and public transportation, especially when masks are not worn.
  • Mask-wearing and improved ventilation significantly reduce these risks, indicating effective strategies for preventing airborne transmission in indoor spaces.
View Article and Find Full Text PDF

The COVID-19 pandemic has caused major disruptions to workplace safety and productivity. A browser-based interactive disease transmission simulation was developed to enable managers and individuals (agents) to optimize safe office work activities during pandemic conditions. The application provides a user interface to evaluate the impact of non-pharmaceutical interventions (NPIs) policies on airborne disease exposure based on agents' meeting patterns and room properties.

View Article and Find Full Text PDF

Introduction: COVID-19 pandemic has highlighted the role of aerosol transmission and the importance of superspreading events. We analyzed a choir rehearsal in November 2020, where all participants, except one who had recently earlier recovered from COVID-19, were infected. We explore the risk factors for severe disease in this event and model the aerosol dispersion in the rehearsal room.

View Article and Find Full Text PDF

Background: Measles is a highly contagious cause of febrile illness typically seen in young children. It is transmitted primarily through respiratory droplets and small-particle aerosols and can remain viable in the air. Despite the availability of an effective vaccine, measles remains a major global issue, particularly in regions with low vaccination rates.

View Article and Find Full Text PDF
Article Synopsis
  • Developed a rapid infection risk assessment model for COVID-19 contacts using an improved Wells-Riley model to estimate infection probabilities and evaluate risk grades.
  • Validated the model's accuracy with documented COVID-19 outbreaks, showing a strong fit and indicating its reliability in assessing risk.
  • Identified that enhancing ventilation and wearing masks can significantly lower infection risk, particularly in high-risk environments like gyms and singing venues where activities involve loud talking or heavy breathing.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!