A Delay Differential Model for Pandemic Influenza with Antiviral Treatment

被引:0
|
作者
Murray E. Alexander
Seyed M. Moghadas
Gergely Röst
Jianhong Wu
机构
[1] National Research Council Canada,Institute for Biodiagnostics
[2] The University of Winnipeg,Department of Mathematics and Statistics
[3] The University of Winnipeg,Department of Physics
[4] University of Szeged,Analysis and Stochastics Research Group, Hungarian Academy of Sciences, Bolyai Institute
[5] York University,Centre for Disease Modelling, Department of Mathematics and Statistics
来源
Bulletin of Mathematical Biology | 2008年 / 70卷
关键词
Influenza pandemic; Antiviral treatment; Delay equations; Epidemic model;
D O I
暂无
中图分类号
学科分类号
摘要
The use of antiviral drugs has been recognized as the primary public health strategy for mitigating the severity of a new influenza pandemic strain. However, the success of this strategy requires the prompt onset of therapy within 48 hours of the appearance of clinical symptoms. This requirement may be captured by a compartmental model that monitors the density of infected individuals in terms of the time elapsed since the onset of symptoms. We show that such a model can be expressed by a system of delay differential equations with both discrete and distributed delays. The model is analyzed to derive the criterion for disease control based on two critical factors: (i) the profile of treatment rate; and (ii) the level of treatment as a function of time lag in commencing therapy. Numerical results are also obtained to illustrate the feasible region of disease control. Our findings show that due to uncertainty in the attack rate of a pandemic strain, initiating therapy immediately upon diagnosis can significantly increase the likelihood of disease control and substantially reduce the required community-level of treatment. This suggests that reliable diagnostic methods for influenza cases should be rapidly implemented within an antiviral treatment strategy.
引用
收藏
页码:382 / 397
页数:15
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