Mathematical models are increasing adopted for setting targets for disease prevention and control. As model-informed policies are implemented, however, the inaccuracies of some forecasts become apparent, for example overprediction of infection burdens and overestimation of intervention impacts. Here, we attribute these discrepancies to methodological limitations in capturing the heterogeneities of real-world systems. The mechanisms underpinning single factors for infection and their interactions determine individual propensities to acquire disease. These are potentially so numerous that to attain a full mechanistic description may be unfeasible. To contribute constructively to the development of health policies, model developers either leav...
The number of economic evaluations related to infectious disease topics has increased over the last ...
textThis work comprises three projects that extend previous models to include features of practical ...
Models of disease spreading are critical for predicting infection growth in a population and evaluat...
<p><b>BACKGROUND: </b>Disease burden is not evenly distributed within a population...
Background: Disease burden is not evenly distributed within a population; this uneven distribution c...
Population heterogeneity, especially in individuals' contact networks, plays an important role in tr...
Many diseases, such as HIV, are heterogeneous for risk. In this paper, we study an infectious-diseas...
Susceptible-Infected-Recovered (SIR) models have been used for decades to understand epidemic outbre...
Emerging and existing infectious diseases pose a constant threat to individuals and communities acro...
In regard to infectious diseases socioeconomic determinants are strongly associated with differentia...
Motivated by the Covid-19 epidemic, we build a SIR model with private decisions on social distancing...
Abstract Background Individual-based models (IBMs) are useful to simulate events subject to stochast...
Patients at the same stage of a chronic disease may have had different rates of disease progression....
International audienceInfectious disease transmission patterns in some outbreaks can be more heterog...
The novel coronavirus pandemic generates extensive attention in political and scholarly domains. Its...
The number of economic evaluations related to infectious disease topics has increased over the last ...
textThis work comprises three projects that extend previous models to include features of practical ...
Models of disease spreading are critical for predicting infection growth in a population and evaluat...
<p><b>BACKGROUND: </b>Disease burden is not evenly distributed within a population...
Background: Disease burden is not evenly distributed within a population; this uneven distribution c...
Population heterogeneity, especially in individuals' contact networks, plays an important role in tr...
Many diseases, such as HIV, are heterogeneous for risk. In this paper, we study an infectious-diseas...
Susceptible-Infected-Recovered (SIR) models have been used for decades to understand epidemic outbre...
Emerging and existing infectious diseases pose a constant threat to individuals and communities acro...
In regard to infectious diseases socioeconomic determinants are strongly associated with differentia...
Motivated by the Covid-19 epidemic, we build a SIR model with private decisions on social distancing...
Abstract Background Individual-based models (IBMs) are useful to simulate events subject to stochast...
Patients at the same stage of a chronic disease may have had different rates of disease progression....
International audienceInfectious disease transmission patterns in some outbreaks can be more heterog...
The novel coronavirus pandemic generates extensive attention in political and scholarly domains. Its...
The number of economic evaluations related to infectious disease topics has increased over the last ...
textThis work comprises three projects that extend previous models to include features of practical ...
Models of disease spreading are critical for predicting infection growth in a population and evaluat...