| Literature DB >> 24520853 |
Abstract
Great progress has been made in mathematical models of cholera transmission dynamics in recent years. However, little impact, if any, has been made by models upon public health decision-making and day-to-day routine of epidemiologists. This paper provides a brief introduction to the basics of ordinary differential equation models of cholera transmission dynamics. We discuss a basic model adapted from Codeço (2001), and how it can be modified to incorporate different hypotheses, including the importance of asymptomatic or inapparent infections, and hyperinfectious V. cholerae and human-to-human transmission. We highlight three important challenges of cholera models: (1) model misspecification and parameter uncertainty, (2) modeling the impact of water, sanitation and hygiene interventions and (3) model structure. We use published models, especially those related to the 2010 Haitian outbreak as examples. We emphasize that the choice of models should be dictated by the research questions in mind. More collaboration is needed between policy-makers, epidemiologists and modelers in public health.Entities:
Year: 2014 PMID: 24520853 PMCID: PMC3926264 DOI: 10.1186/1742-7622-11-1
Source DB: PubMed Journal: Emerg Themes Epidemiol ISSN: 1742-7622
Figure 1Schematic of a basic model of cholera transmission dynamics (model adapted from Codeço [19]).
Parameters assumed or fitted based on selected published mathematical models of cholera (partly adapted from Grad et al., 2012 [18])
| β | Rate of “contact” with reservoir water (days-1) | 10-5 to 1 | Difficult to convert empirical data into this “contact” rate. | Identity and location of drinking water sources; frequency of water usage and volume drawn from these sources |
| 1/γ | Duration of cholera infection (days) | 2.9 to 14 | The most certain among the 5 parameters | Clinical data |
| 1/δ | Cholera life span in water reservoir (days) | 3 to 41 | Usually not measured; depending on local environment (temperature, salinity), nature of the water source (running or static), cholera phage concentration. Historical experimental data available. | Water samples for microbiological experiments |
| ξ | Rate of water contamination by humans, i.e. rate of increase in | 0.01 to 10 | Usually not measured; depending on infection severity, sanitation provision and water reservoir size. | Clinical data: frequency and volume of watery stool and especially concentration of vibrios in watery stool. |
| κ | Concentration of cholera that yields 50% chance of infection (cells/mL) | 105 to 106 | The dose–response curves depend on strain and biological context (e.g. gastric acidity). While empirical data provided data for doses (number of bacteria), the parameter measures in concentration. | Based on the volume of water intake per person per day and the vibrio concentration in the water samples, one can estimate the dose of vibrio intake per person per day |
Figure 2Vaccine and waning immunity (Model 1).
Figure 3Vaccine and waning immunity (Model 2).
Figure 4Water, sanitation and hygiene interventions.
Effect(s) on model parameters by water, sanitation and hygiene (wash) interventions
| Sanitation interventions and health promotion of their utilization | Reduce water contamination rate (ξ) |
| Treatment of water at source (e.g. chlorination of piped water) | Increases the rate of bacteria removal from water (δ) |
| Point-of-use water purification (via boiling, chlorination or filters) | Reduces the concentration of bacteria (B) of drinking water |
| Using alternative source of drinking water | Reduces the “contact” rate between susceptible population with contaminated water (β) |
Reduction in transmission coefficient (“contact rate”) by water, sanitation and hygiene (WASH) interventions in selected published models of the Haiti epidemic
| Andrews and Basu [ | Expansion of clean water provision | Exponential decline in β (1% decrease per week) | Estimated coverage of clean water since the outbreak’s beginning, from two progress reports by Red Cross and Oxfam respectively |
| Bertuzzo et al. [ | Sanitation: “a set of measures”, not explained in their paper | 40% reduction for 1 month | None provided |
| Chao et al. [ | Educational campaign to promote improved hygiene and sanitation, that accompanies the vaccination campaign | 10% or 30% (additional) reduction, in areas covered by vaccination campaign | None provided |
| Tuite et al. [ | Clean water provision, either to “the same number of people who could be vaccinated” or to “the number of people who would need to receive clean water to have the same effect on epidemic spread as that achievable through vaccination” | Reduction of waterborne transmission (but not human-to-human transmission) by a fraction that is the probability of provision of clean water within a Haitian | None provided. Implied assumption: 100% reduction of “contact” rate if covered by clean water provision. |
Figure 5Hyperinfectious bacteria and asymptomatic infection (adapted from Andrews and Basu, 2011 [11]) note: The “Vaccinated” compartment refers to successfully vaccinated individuals who become immune.
Parameters for hyperinfectious bacteria as found in selected published mathematical models (adapted from Grad et al., 2012 [18])
| Multiplier for infectiousness of freshly shed vibrio (hyperinfectious state) | 50 | 700 | 100 | [ |
| Duration of hyperinfective state (hours) | 24 | 5 | 24 | [ |
For further discussion on these parameter values, please refer to the Additional file 1.
Figure 6“Human-to-human” infection incorporated into the basic model.