| Literature DB >> 30999712 |
Adeshina I Adekunle1, Oyelola A Adegboye2, Kazi Mizanur Rahman3,4.
Abstract
In February 2019, a major flooding event occurred in Townsville, North Queensland, Australia. Here we present a prediction of the occurrence of mosquito-borne diseases (MBDs) after the flooding. We used a mathematical modelling approach based on mosquito population abundance, survival, and size as well as current infectiousness to predict the changes in the occurrences of MBDs due to flooding in the study area. Based on 2019 year-to-date number of notifiable MBDs, we predicted an increase in number of cases, with a peak at 104 by one-half month after the flood receded. The findings in this study indicate that Townsville may see an upsurge in the cases of MBDs in the coming days. However, the burden of diseases will go down again if the mosquito control program being implemented by the City Council continues. As our predictions focus on the near future, longer term effects of flooding on the occurrence of mosquito-borne diseases need to be studied further.Entities:
Keywords: North Queensland; Ross River virus; dengue; flooding; mosquito-borne diseases; wet–dry tropics
Mesh:
Year: 2019 PMID: 30999712 PMCID: PMC6517894 DOI: 10.3390/ijerph16081393
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Figure 1Total monthly rainfall in Townsville area. The dotted line indicates flooding events.
Figure 2Map of Townsville township area indicating the Townsville Hospital, the Ross River Dam, the Ross River, and its pathway through the suburbs of the city to the sea.
Parameter descriptions and values for model Equations (6) and (7).
| Parameter | Description | Value (Range) | Unit | References |
|---|---|---|---|---|
|
| Transmission probability | 0.25–0.75 | Dimensionless | [ |
|
| Biting rate | 0.172–0.375 | Person per mosquito per day | [ |
|
| Mosquito birth rate | 0.09 | Per day | [ |
|
| Proportional carrying capacity | 100,000 | Mosquitoes | Estimated |
|
| Maximum proportional carrying capacity due to flooding | 200,000 | Mosquitoes | Assumed |
|
| Total population | 226,031 | People | [ |
|
| Time until carrying capacity normalizes | 90 | Day | Assumed |
|
| Recovery rate | 0.143–0.22 | Per day | [ |
|
| Mortality rate | 0.000034 | Per day | [ |
|
| Mosquito death rate | 0.026–0.036 | Per day | [ |
Figure 3(A) Schematic representations of the form of the carrying capacity as a result of the flooding. The blue line denotes the carrying capacity form in Equation (6) and the pink line for Equation (7). (B) Predicted number of infected people under different scenarios. (C) Relationship between biting rate, carrying capacity and the basic reproduction number. The red arrows show the direction of increase and decrease of the. If people are more protected from bites then no endemic situation will be observed.
Figure 4(A) The effects of the initial number of infected people on the peak of the epidemic curve. In (A), we assume is uniformly distributed with integer random numbers between 10 and 200 inclusively. (B) The variability in the peak of infection due to varying biting rate ( and transmission probability (. In this case, the initial number of infected people is 30 based on the year-to-date (YTD) number of notifiable mosquito-borne diseases (MBDs) in Townsville as of 7 February 2019 [15].