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Mathematical modelling of infectious diseases

Mathematical models can project how infectious diseases progress to show the likely outcome of an epidemic (including in plants) and help inform public health and plant health interventions. Models use basic assumptions or collected statistics along with mathematics to find parameters for various infectious diseases and use those parameters to calculate the effects of different interventions, like mass vaccination programs. The modelling can help decide which intervention(s) to avoid and which to trial, or can predict future growth patterns, etc.

History edit

The modelling of infectious diseases is a tool that has been used to study the mechanisms by which diseases spread, to predict the future course of an outbreak and to evaluate strategies to control an epidemic.[1]

The first scientist who systematically tried to quantify causes of death was John Graunt in his book Natural and Political Observations made upon the Bills of Mortality, in 1662. The bills he studied were listings of numbers and causes of deaths published weekly. Graunt's analysis of causes of death is considered the beginning of the "theory of competing risks" which according to Daley and Gani [1] is "a theory that is now well established among modern epidemiologists".

The earliest account of mathematical modelling of spread of disease was carried out in 1760 by Daniel Bernoulli. Trained as a physician, Bernoulli created a mathematical model to defend the practice of inoculating against smallpox.[2] The calculations from this model showed that universal inoculation against smallpox would increase the life expectancy from 26 years 7 months to 29 years 9 months.[3] Daniel Bernoulli's work preceded the modern understanding of germ theory.[4]

In the early 20th century, William Hamer[5] and Ronald Ross[6] applied the law of mass action to explain epidemic behaviour.

The 1920s saw the emergence of compartmental models. The Kermack–McKendrick epidemic model (1927) and the Reed–Frost epidemic model (1928) both describe the relationship between susceptible, infected and immune individuals in a population. The Kermack–McKendrick epidemic model was successful in predicting the behavior of outbreaks very similar to that observed in many recorded epidemics.[7]

Recently, agent-based models (ABMs) have been used in exchange for simpler compartmental models.[8] For example, epidemiological ABMs have been used to inform public health (nonpharmaceutical) interventions against the spread of SARS-CoV-2.[9] Epidemiological ABMs, in spite of their complexity and requiring high computational power, have been criticized for simplifying and unrealistic assumptions.[10][11] Still, they can be useful in informing decisions regarding mitigation and suppression measures in cases when ABMs are accurately calibrated.[12]

Assumptions edit

Models are only as good as the assumptions on which they are based. If a model makes predictions that are out of line with observed results and the mathematics is correct, the initial assumptions must change to make the model useful.[13]

  • Rectangular and stationary age distribution, i.e., everybody in the population lives to age L and then dies, and for each age (up to L) there is the same number of people in the population. This is often well-justified for developed countries where there is a low infant mortality and much of the population lives to the life expectancy.
  • Homogeneous mixing of the population, i.e., individuals of the population under scrutiny assort and make contact at random and do not mix mostly in a smaller subgroup. This assumption is rarely justified because social structure is widespread. For example, most people in London only make contact with other Londoners. Further, within London then there are smaller subgroups, such as the Turkish community or teenagers (just to give two examples), who mix with each other more than people outside their group. However, homogeneous mixing is a standard assumption to make the mathematics tractable.

Types of epidemic models edit

Stochastic edit

"Stochastic" means being or having a random variable. A stochastic model is a tool for estimating probability distributions of potential outcomes by allowing for random variation in one or more inputs over time. Stochastic models depend on the chance variations in risk of exposure, disease and other illness dynamics. Statistical agent-level disease dissemination in small or large populations can be determined by stochastic methods.[14][15][16]

Deterministic edit

When dealing with large populations, as in the case of tuberculosis, deterministic or compartmental mathematical models are often used. In a deterministic model, individuals in the population are assigned to different subgroups or compartments, each representing a specific stage of the epidemic.[17]

The transition rates from one class to another are mathematically expressed as derivatives, hence the model is formulated using differential equations. While building such models, it must be assumed that the population size in a compartment is differentiable with respect to time and that the epidemic process is deterministic. In other words, the changes in population of a compartment can be calculated using only the history that was used to develop the model.[7]

Sub-exponential growth edit

A common explanation for the growth of epidemics holds that 1 person infects 2, those 2 infect 4 and so on and so on with the number of infected doubling every generation. It is analogous to a game of tag where 1 person tags 2, those 2 tag 4 others who've never been tagged and so on. As this game progresses it becomes increasing frenetic as the tagged run past the previously tagged to hunt down those who have never been tagged. Thus this model of an epidemic leads to a curve that grows exponentially until it crashes to zero as all the population have been infected. i.e. no herd immunity and no peak and gradual decline as seen in reality.[18]

Epidemic Models on Networks edit

Epidemics can be modeled as diseases spreading over networks of contact between people. Such a network can be represented mathematically with a graph and is called the contact network.[19] Every node in a contact network is a representation of an individual and each link (edge) between a pair of nodes represents the contact between them. Links in the contact networks may be used to transmit the disease between the individuals and each disease has its own dynamics on top of its contact network. The combination of disease dynamics under the influence of interventions, if any, on a contact network may be modeled with another network, known as a transmission network. In a transmission network, all the links are responsible for transmitting the disease. If such a network is a locally tree-like network, meaning that any local neighborhood in such a network takes the form of a tree, then the basic reproduction can be written in terms of the average excess degree of the transmission network such that:

 

where   is the mean-degree (average degree) of the network and   is the second moment of the transmission network degree distribution. It is, however, not always straightforward to find the transmission network out of the contact network and the disease dynamics.[20] For example, if a contact network can be approximated with an Erdős–Rényi graph with a Poissonian degree distribution, and the disease spreading parameters are as defined in the example above, such that   is the transmission rate per person and the disease has a mean infectious period of  , then the basic reproduction number is  [21][22] since   for a Poisson distribution.

Reproduction number edit

The basic reproduction number (denoted by R0) is a measure of how transferable a disease is. It is the average number of people that a single infectious person will infect over the course of their infection. This quantity determines whether the infection will increase sub-exponentially, die out, or remain constant: if R0 > 1, then each person on average infects more than one other person so the disease will spread; if R0 < 1, then each person infects fewer than one person on average so the disease will die out; and if R0 = 1, then each person will infect on average exactly one other person, so the disease will become endemic: it will move throughout the population but not increase or decrease.[23]

Endemic steady state edit

An infectious disease is said to be endemic when it can be sustained in a population without the need for external inputs. This means that, on average, each infected person is infecting exactly one other person (any more and the number of people infected will grow sub-exponentially and there will be an epidemic, any less and the disease will die out). In mathematical terms, that is:

 

The basic reproduction number (R0) of the disease, assuming everyone is susceptible, multiplied by the proportion of the population that is actually susceptible (S) must be one (since those who are not susceptible do not feature in our calculations as they cannot contract the disease). Notice that this relation means that for a disease to be in the endemic steady state, the higher the basic reproduction number, the lower the proportion of the population susceptible must be, and vice versa. This expression has limitations concerning the susceptibility proportion, e.g. the R0 equals 0.5 implicates S has to be 2, however this proportion exceeds the population size.[citation needed]

Assume the rectangular stationary age distribution and let also the ages of infection have the same distribution for each birth year. Let the average age of infection be A, for instance when individuals younger than A are susceptible and those older than A are immune (or infectious). Then it can be shown by an easy argument that the proportion of the population that is susceptible is given by:

 

We reiterate that L is the age at which in this model every individual is assumed to die. But the mathematical definition of the endemic steady state can be rearranged to give:

 

Therefore, due to the transitive property:

 

This provides a simple way to estimate the parameter R0 using easily available data.

For a population with an exponential age distribution,

 

This allows for the basic reproduction number of a disease given A and L in either type of population distribution.

Compartmental models in epidemiology edit

Compartmental models are formulated as Markov chains.[24] A classic compartmental model in epidemiology is the SIR model, which may be used as a simple model for modelling epidemics. Multiple other types of compartmental models are also employed.

The SIR model edit

 
Diagram of the SIR model with initial values  , and rates for infection   and for recovery  
 
Animation of the SIR model with initial values  , and rate of recovery  . The animation shows the effect of reducing the rate of infection from   to  . If there is no medicine or vaccination available, it is only possible to reduce the infection rate (often referred to as "flattening the curve") by appropriate measures such as social distancing.

In 1927, W. O. Kermack and A. G. McKendrick created a model in which they considered a fixed population with only three compartments: susceptible,  ; infected,  ; and recovered,  . The compartments used for this model consist of three classes:[25]

  •   is used to represent the individuals not yet infected with the disease at time t, or those susceptible to the disease of the population.
  •   denotes the individuals of the population who have been infected with the disease and are capable of spreading the disease to those in the susceptible category.
  •   is the compartment used for the individuals of the population who have been infected and then removed from the disease, either due to immunization or due to death. Those in this category are not able to be infected again or to transmit the infection to others.

Other compartmental models edit

There are many modifications of the SIR model, including those that include births and deaths, where upon recovery there is no immunity (SIS model), where immunity lasts only for a short period of time (SIRS), where there is a latent period of the disease where the person is not infectious (SEIS and SEIR), and where infants can be born with immunity (MSIR).[citation needed]

Infectious disease dynamics edit

Mathematical models need to integrate the increasing volume of data being generated on host-pathogen interactions. Many theoretical studies of the population dynamics, structure and evolution of infectious diseases of plants and animals, including humans, are concerned with this problem.[26]

Research topics include:

Mathematics of mass vaccination edit

If the proportion of the population that is immune exceeds the herd immunity level for the disease, then the disease can no longer persist in the population and its transmission dies out.[27] Thus, a disease can be eliminated from a population if enough individuals are immune due to either vaccination or recovery from prior exposure to disease. For example, smallpox eradication, with the last wild case in 1977, and certification of the eradication of indigenous transmission of 2 of the 3 types of wild poliovirus (type 2 in 2015, after the last reported case in 1999, and type 3 in 2019, after the last reported case in 2012).[28]

The herd immunity level will be denoted q. Recall that, for a stable state:[citation needed]

 

In turn,

 

which is approximately:[citation needed]

 
 
Graph of herd immunity threshold vs basic reproduction number with selected diseases

S will be (1 − q), since q is the proportion of the population that is immune and q + S must equal one (since in this simplified model, everyone is either susceptible or immune). Then:

 

Remember that this is the threshold level. Die out of transmission will only occur if the proportion of immune individuals exceeds this level due to a mass vaccination programme.

We have just calculated the critical immunization threshold (denoted qc). It is the minimum proportion of the population that must be immunized at birth (or close to birth) in order for the infection to die out in the population.

 

Because the fraction of the final size of the population p that is never infected can be defined as:

 

Hence,

 

Solving for  , we obtain:

 

When mass vaccination cannot exceed the herd immunity edit

If the vaccine used is insufficiently effective or the required coverage cannot be reached, the program may fail to exceed qc. Such a program will protect vaccinated individuals from disease, but may change the dynamics of transmission.[citation needed]

Suppose that a proportion of the population q (where q < qc) is immunised at birth against an infection with R0 > 1. The vaccination programme changes R0 to Rq where

 

This change occurs simply because there are now fewer susceptibles in the population who can be infected. Rq is simply R0 minus those that would normally be infected but that cannot be now since they are immune.

As a consequence of this lower basic reproduction number, the average age of infection A will also change to some new value Aq in those who have been left unvaccinated.

Recall the relation that linked R0, A and L. Assuming that life expectancy has not changed, now:[citation needed]

 
 

But R0 = L/A so:

 

Thus, the vaccination program may raise the average age of infection, and unvaccinated individuals will experience a reduced force of infection due to the presence of the vaccinated group. For a disease that leads to greater clinical severity in older populations, the unvaccinated proportion of the population may experience the disease relatively later in life than would occur in the absence of vaccine.

When mass vaccination exceeds the herd immunity edit

If a vaccination program causes the proportion of immune individuals in a population to exceed the critical threshold for a significant length of time, transmission of the infectious disease in that population will stop. If elimination occurs everywhere at the same time, then this can lead to eradication.[citation needed]

Elimination
Interruption of endemic transmission of an infectious disease, which occurs if each infected individual infects less than one other, is achieved by maintaining vaccination coverage to keep the proportion of immune individuals above the critical immunization threshold.[citation needed]
Eradication
Elimination everywhere at the same time such that the infectious agent dies out (for example, smallpox and rinderpest).[citation needed]

Reliability edit

Models have the advantage of examining multiple outcomes simultaneously, rather than making a single forecast. Models have shown broad degrees of reliability in past pandemics, such as SARS, SARS-CoV-2,[29] Swine flu, MERS and Ebola.[30]

See also edit

References edit

  1. ^ a b Daley DJ, Gani J (2005). Epidemic Modeling: An Introduction. New York: Cambridge University Press.
  2. ^ Hethcote HW (2000). "The mathematics of infectious diseases". SIAM Review. 42 (4): 599–653. Bibcode:2000SIAMR..42..599H. doi:10.1137/S0036144500371907. S2CID 10836889.
  3. ^ Blower S, Bernoulli D (2004). "An attempt at a new analysis of the mortality caused by smallpox and of the advantages of inoculation to prevent it". Reviews in Medical Virology. 14 (5): 275–88. doi:10.1002/rmv.443. PMID 15334536. S2CID 8169180.
  4. ^ "Germ Theory - an overview | ScienceDirect Topics".
  5. ^ Hamer W (1928). Epidemiology Old and New. London: Kegan Paul.
  6. ^ Ross R (1910). The Prevention of Malaria. Dutton.
  7. ^ a b Brauer F, Castillo-Chávez C (2001). Mathematical Models in Population Biology and Epidemiology. New York: Springer.
  8. ^ Eisinger D, Thulke HH (April 2008). "Spatial pattern formation facilitates eradication of infectious diseases". The Journal of Applied Ecology. 45 (2): 415–423. Bibcode:2008JApEc..45..415E. doi:10.1111/j.1365-2664.2007.01439.x. PMC 2326892. PMID 18784795.
  9. ^ Adam D (April 2020). "Special report: The simulations driving the world's response to COVID-19". Nature. 580 (7803): 316–318. Bibcode:2020Natur.580..316A. doi:10.1038/d41586-020-01003-6. PMID 32242115. S2CID 214771531.
  10. ^ Squazzoni F, Polhill JG, Edmonds B, Ahrweiler P, Antosz P, Scholz G, et al. (2020). "Computational Models That Matter During a Global Pandemic Outbreak: A Call to Action". Journal of Artificial Societies and Social Simulation. 23 (2): 10. doi:10.18564/jasss.4298. hdl:10037/19057. ISSN 1460-7425. S2CID 216426533.
  11. ^ Sridhar D, Majumder MS (April 2020). "Modelling the pandemic". BMJ. 369: m1567. doi:10.1136/bmj.m1567. PMID 32317328. S2CID 216074714.
  12. ^ Maziarz M, Zach M (October 2020). "Agent-based modelling for SARS-CoV-2 epidemic prediction and intervention assessment: A methodological appraisal". Journal of Evaluation in Clinical Practice. 26 (5): 1352–1360. doi:10.1111/jep.13459. PMC 7461315. PMID 32820573.
  13. ^ Huppert, A.; Katriel, G. (2013). "Mathematical modelling and prediction in infectious disease epidemiology". Clinical Microbiology and Infection. 19 (11): 999–1005. doi:10.1111/1469-0691.12308. PMID 24266045.
  14. ^ Tembine, H. "COVID-19: Data-Driven Mean-Field-Type Game Perspective. Games". Games Journal. doi:10.3390/g11040051. hdl:10419/257469. {{cite journal}}: Cite journal requires |journal= (help)
  15. ^ Nakamura, Gilberto M.; Monteiro, Ana Carolina P.; Cardoso, George C.; Martinez, Alexandre S. (February 2017). "Efficient method for comprehensive computation of agent-level epidemic dissemination in networks". Scientific Reports. 7 (1): 40885. arXiv:1606.07825. Bibcode:2017NatSR...740885N. doi:10.1038/srep40885. ISSN 2045-2322. PMC 5247741. PMID 28106086.
  16. ^ Nakamura, Gilberto M.; Cardoso, George C.; Martinez, Alexandre S. (February 2020). "Improved susceptible–infectious–susceptible epidemic equations based on uncertainties and autocorrelation functions". Royal Society Open Science. 7 (2): 191504. Bibcode:2020RSOS....791504N. doi:10.1098/rsos.191504. ISSN 2054-5703. PMC 7062106. PMID 32257317.
  17. ^ Dietz, Klaus (1967). "Epidemics and Rumours: A Survey". Journal of the Royal Statistical Society. Series A (General). 130 (4): 505–528. doi:10.2307/2982521. JSTOR 2982521.
  18. ^ Maier, B. F.; Brockmann, D. (2020). "Effective containment explains subexponential growth in recent confirmed COVID-19 cases in China". Science. 368 (6492): 742–746. Bibcode:2020Sci...368..742M. doi:10.1126/science.abb4557. PMC 7164388. PMID 32269067.
  19. ^ Network Science by Albert-László Barabási.
  20. ^ Kenah, Eben; Robins, James M. (September 2007). "Second look at the spread of epidemics on networks". Physical Review E. 76 (3 Pt 2): 036113. arXiv:q-bio/0610057. Bibcode:2007PhRvE..76c6113K. doi:10.1103/PhysRevE.76.036113. ISSN 1539-3755. PMC 2215389. PMID 17930312.
  21. ^ Pastor-Satorras, Romualdo; Castellano, Claudio; Van Mieghem, Piet; Vespignani, Alessandro (2015-08-31). "Epidemic processes in complex networks". Reviews of Modern Physics. 87 (3): 925–979. arXiv:1408.2701. Bibcode:2015RvMP...87..925P. doi:10.1103/RevModPhys.87.925. S2CID 14306926.
  22. ^ K. Rizi, Abbas; Faqeeh, Ali; Badie-Modiri, Arash; Kivelä, Mikko (2022-04-20). "Epidemic spreading and digital contact tracing: Effects of heterogeneous mixing and quarantine failures". Physical Review E. 105 (4): 044313. arXiv:2103.12634. Bibcode:2022PhRvE.105d4313R. doi:10.1103/PhysRevE.105.044313. PMID 35590624. S2CID 232320251.
  23. ^ "Basic Reproduction Number - an overview | ScienceDirect Topics".
  24. ^ Cosma Shalizi (15 November 2018). "Data over Space and Time; Lecture 21: Compartment Models" (PDF). Carnegie Mellon University. Retrieved September 19, 2020.
  25. ^ Kermack WO, McKendrick AG (1991). "Contributions to the mathematical theory of epidemics--I. 1927". Bulletin of Mathematical Biology. 53 (1–2): 33–55. Bibcode:1927RSPSA.115..700K. doi:10.1007/BF02464423. JSTOR 94815. PMID 2059741.
  26. ^ Brauer, Fred (2017). "Mathematical epidemiology: Past, present, and future". Infectious Disease Modelling. 2 (2): 113–127. doi:10.1016/j.idm.2017.02.001. PMC 6001967. PMID 29928732.
  27. ^ Britton, Tom; Ball, Frank; Trapman, Pieter (2020). "A mathematical model reveals the influence of population heterogeneity on herd immunity to SARS-CoV-2". Science. 369 (6505): 846–849. Bibcode:2020Sci...369..846B. doi:10.1126/science.abc6810. PMC 7331793. PMID 32576668.
  28. ^ Pollard, Andrew J.; Bijker, Else M. (2021). "A guide to vaccinology: From basic principles to new developments". Nature Reviews Immunology. 21 (2): 83–100. doi:10.1038/s41577-020-00479-7. PMC 7754704. PMID 33353987.
  29. ^ Renz, Alina; Widerspick, Lina; Dräger, Andreas (2020). "FBA reveals guanylate kinase as a potential target for antiviral therapies against SARS-CoV-2". Bioinformatics. 36 (Supplement_2): i813–i821. doi:10.1093/bioinformatics/btaa813. PMC 7773487. PMID 33381848.
  30. ^ Costris-Vas C, Schwartz EJ, Smith? RJ (November 2020). "Predicting COVID-19 using past pandemics as a guide: how reliable were mathematical models then, and how reliable will they be now?". Mathematical Biosciences and Engineering. 17 (6): 7502–7518. doi:10.3934/mbe. PMID 33378907.

Further reading edit

  • Keeling M, Rohani P. Modeling Infectious Diseases: In Humans and Animals. Princeton: Princeton University Press.
  • von Csefalvay C. Computational Modeling of Infectious Disease. Cambridge, MA: Elsevier/Academic Press. Retrieved 2023-02-27.
  • Vynnycky E, White RG. An Introduction to Infectious Disease Modelling. Retrieved 2016-02-15. An introductory book on infectious disease modelling and its applications.
  • Grassly NC, Fraser C (June 2008). "Mathematical models of infectious disease transmission". Nature Reviews. Microbiology. 6 (6): 477–87. doi:10.1038/nrmicro1845. PMC 7097581. PMID 18533288.
  • Boily MC, Mâsse B (Jul–Aug 1997). "Mathematical models of disease transmission: a precious tool for the study of sexually transmitted diseases". Canadian Journal of Public Health. 88 (4): 255–65. doi:10.1007/BF03404793. PMC 6990198. PMID 9336095.
  • Capasso V. Mathematical Structures of Epidemic Systems. Second Printing. Heidelberg, 2008: Springer.{{cite book}}: CS1 maint: location (link)

External links edit

Software
  • Model-Builder: Interactive (GUI-based) software to build, simulate, and analyze ODE models.
  • GLEaMviz Simulator: Enables simulation of emerging infectious diseases spreading across the world.
  • STEM: Open source framework for Epidemiological Modeling available through the Eclipse Foundation.
  • R package surveillance: Temporal and Spatio-Temporal Modeling and Monitoring of Epidemic Phenomena

mathematical, modelling, infectious, diseases, mathematical, models, project, infectious, diseases, progress, show, likely, outcome, epidemic, including, plants, help, inform, public, health, plant, health, interventions, models, basic, assumptions, collected,. Mathematical models can project how infectious diseases progress to show the likely outcome of an epidemic including in plants and help inform public health and plant health interventions Models use basic assumptions or collected statistics along with mathematics to find parameters for various infectious diseases and use those parameters to calculate the effects of different interventions like mass vaccination programs The modelling can help decide which intervention s to avoid and which to trial or can predict future growth patterns etc Contents 1 History 2 Assumptions 3 Types of epidemic models 3 1 Stochastic 3 2 Deterministic 4 Sub exponential growth 4 1 Epidemic Models on Networks 5 Reproduction number 6 Endemic steady state 7 Compartmental models in epidemiology 7 1 The SIR model 7 2 Other compartmental models 8 Infectious disease dynamics 9 Mathematics of mass vaccination 9 1 When mass vaccination cannot exceed the herd immunity 9 2 When mass vaccination exceeds the herd immunity 10 Reliability 11 See also 12 References 13 Further reading 14 External linksHistory editThe modelling of infectious diseases is a tool that has been used to study the mechanisms by which diseases spread to predict the future course of an outbreak and to evaluate strategies to control an epidemic 1 The first scientist who systematically tried to quantify causes of death was John Graunt in his book Natural and Political Observations made upon the Bills of Mortality in 1662 The bills he studied were listings of numbers and causes of deaths published weekly Graunt s analysis of causes of death is considered the beginning of the theory of competing risks which according to Daley and Gani 1 is a theory that is now well established among modern epidemiologists The earliest account of mathematical modelling of spread of disease was carried out in 1760 by Daniel Bernoulli Trained as a physician Bernoulli created a mathematical model to defend the practice of inoculating against smallpox 2 The calculations from this model showed that universal inoculation against smallpox would increase the life expectancy from 26 years 7 months to 29 years 9 months 3 Daniel Bernoulli s work preceded the modern understanding of germ theory 4 In the early 20th century William Hamer 5 and Ronald Ross 6 applied the law of mass action to explain epidemic behaviour The 1920s saw the emergence of compartmental models The Kermack McKendrick epidemic model 1927 and the Reed Frost epidemic model 1928 both describe the relationship between susceptible infected and immune individuals in a population The Kermack McKendrick epidemic model was successful in predicting the behavior of outbreaks very similar to that observed in many recorded epidemics 7 Recently agent based models ABMs have been used in exchange for simpler compartmental models 8 For example epidemiological ABMs have been used to inform public health nonpharmaceutical interventions against the spread of SARS CoV 2 9 Epidemiological ABMs in spite of their complexity and requiring high computational power have been criticized for simplifying and unrealistic assumptions 10 11 Still they can be useful in informing decisions regarding mitigation and suppression measures in cases when ABMs are accurately calibrated 12 Assumptions editModels are only as good as the assumptions on which they are based If a model makes predictions that are out of line with observed results and the mathematics is correct the initial assumptions must change to make the model useful 13 Rectangular and stationary age distribution i e everybody in the population lives to age L and then dies and for each age up to L there is the same number of people in the population This is often well justified for developed countries where there is a low infant mortality and much of the population lives to the life expectancy Homogeneous mixing of the population i e individuals of the population under scrutiny assort and make contact at random and do not mix mostly in a smaller subgroup This assumption is rarely justified because social structure is widespread For example most people in London only make contact with other Londoners Further within London then there are smaller subgroups such as the Turkish community or teenagers just to give two examples who mix with each other more than people outside their group However homogeneous mixing is a standard assumption to make the mathematics tractable Types of epidemic models editStochastic edit Stochastic means being or having a random variable A stochastic model is a tool for estimating probability distributions of potential outcomes by allowing for random variation in one or more inputs over time Stochastic models depend on the chance variations in risk of exposure disease and other illness dynamics Statistical agent level disease dissemination in small or large populations can be determined by stochastic methods 14 15 16 Deterministic edit When dealing with large populations as in the case of tuberculosis deterministic or compartmental mathematical models are often used In a deterministic model individuals in the population are assigned to different subgroups or compartments each representing a specific stage of the epidemic 17 The transition rates from one class to another are mathematically expressed as derivatives hence the model is formulated using differential equations While building such models it must be assumed that the population size in a compartment is differentiable with respect to time and that the epidemic process is deterministic In other words the changes in population of a compartment can be calculated using only the history that was used to develop the model 7 Sub exponential growth editA common explanation for the growth of epidemics holds that 1 person infects 2 those 2 infect 4 and so on and so on with the number of infected doubling every generation It is analogous to a game of tag where 1 person tags 2 those 2 tag 4 others who ve never been tagged and so on As this game progresses it becomes increasing frenetic as the tagged run past the previously tagged to hunt down those who have never been tagged Thus this model of an epidemic leads to a curve that grows exponentially until it crashes to zero as all the population have been infected i e no herd immunity and no peak and gradual decline as seen in reality 18 Epidemic Models on Networks edit Epidemics can be modeled as diseases spreading over networks of contact between people Such a network can be represented mathematically with a graph and is called the contact network 19 Every node in a contact network is a representation of an individual and each link edge between a pair of nodes represents the contact between them Links in the contact networks may be used to transmit the disease between the individuals and each disease has its own dynamics on top of its contact network The combination of disease dynamics under the influence of interventions if any on a contact network may be modeled with another network known as a transmission network In a transmission network all the links are responsible for transmitting the disease If such a network is a locally tree like network meaning that any local neighborhood in such a network takes the form of a tree then the basic reproduction can be written in terms of the average excess degree of the transmission network such that R0 k2 k 1 displaystyle R 0 frac langle k 2 rangle langle k rangle 1 nbsp where k displaystyle langle k rangle nbsp is the mean degree average degree of the network and k2 displaystyle langle k 2 rangle nbsp is the second moment of the transmission network degree distribution It is however not always straightforward to find the transmission network out of the contact network and the disease dynamics 20 For example if a contact network can be approximated with an Erdos Renyi graph with a Poissonian degree distribution and the disease spreading parameters are as defined in the example above such that b displaystyle beta nbsp is the transmission rate per person and the disease has a mean infectious period of 1g displaystyle dfrac 1 gamma nbsp then the basic reproduction number is R0 bg k displaystyle R 0 dfrac beta gamma langle k rangle nbsp 21 22 since k2 k 2 k displaystyle langle k 2 rangle langle k rangle 2 langle k rangle nbsp for a Poisson distribution Reproduction number editMain article Basic reproduction numberThe basic reproduction number denoted by R0 is a measure of how transferable a disease is It is the average number of people that a single infectious person will infect over the course of their infection This quantity determines whether the infection will increase sub exponentially die out or remain constant if R0 gt 1 then each person on average infects more than one other person so the disease will spread if R0 lt 1 then each person infects fewer than one person on average so the disease will die out and if R0 1 then each person will infect on average exactly one other person so the disease will become endemic it will move throughout the population but not increase or decrease 23 Endemic steady state editAn infectious disease is said to be endemic when it can be sustained in a population without the need for external inputs This means that on average each infected person is infecting exactly one other person any more and the number of people infected will grow sub exponentially and there will be an epidemic any less and the disease will die out In mathematical terms that is R0S 1 displaystyle R 0 S 1 nbsp The basic reproduction number R0 of the disease assuming everyone is susceptible multiplied by the proportion of the population that is actually susceptible S must be one since those who are not susceptible do not feature in our calculations as they cannot contract the disease Notice that this relation means that for a disease to be in the endemic steady state the higher the basic reproduction number the lower the proportion of the population susceptible must be and vice versa This expression has limitations concerning the susceptibility proportion e g the R0 equals 0 5 implicates S has to be 2 however this proportion exceeds the population size citation needed Assume the rectangular stationary age distribution and let also the ages of infection have the same distribution for each birth year Let the average age of infection be A for instance when individuals younger than A are susceptible and those older than A are immune or infectious Then it can be shown by an easy argument that the proportion of the population that is susceptible is given by S AL displaystyle S frac A L nbsp We reiterate that L is the age at which in this model every individual is assumed to die But the mathematical definition of the endemic steady state can be rearranged to give S 1R0 displaystyle S frac 1 R 0 nbsp Therefore due to the transitive property 1R0 AL R0 LA displaystyle frac 1 R 0 frac A L Rightarrow R 0 frac L A nbsp This provides a simple way to estimate the parameter R0 using easily available data For a population with an exponential age distribution R0 1 LA displaystyle R 0 1 frac L A nbsp This allows for the basic reproduction number of a disease given A and L in either type of population distribution Compartmental models in epidemiology editMain article Compartmental models in epidemiologyCompartmental models are formulated as Markov chains 24 A classic compartmental model in epidemiology is the SIR model which may be used as a simple model for modelling epidemics Multiple other types of compartmental models are also employed The SIR model edit nbsp Diagram of the SIR model with initial values S 0 997 I 0 3 R 0 0 textstyle S 0 997 I 0 3 R 0 0 nbsp and rates for infection b 0 4 textstyle beta 0 4 nbsp and for recovery g 0 04 textstyle gamma 0 04 nbsp nbsp Animation of the SIR model with initial values S 0 997 I 0 3 R 0 0 textstyle S 0 997 I 0 3 R 0 0 nbsp and rate of recovery g 0 04 textstyle gamma 0 04 nbsp The animation shows the effect of reducing the rate of infection from b 0 5 textstyle beta 0 5 nbsp to b 0 12 textstyle beta 0 12 nbsp If there is no medicine or vaccination available it is only possible to reduce the infection rate often referred to as flattening the curve by appropriate measures such as social distancing In 1927 W O Kermack and A G McKendrick created a model in which they considered a fixed population with only three compartments susceptible S t displaystyle S t nbsp infected I t displaystyle I t nbsp and recovered R t displaystyle R t nbsp The compartments used for this model consist of three classes 25 S t displaystyle S t nbsp is used to represent the individuals not yet infected with the disease at time t or those susceptible to the disease of the population I t displaystyle I t nbsp denotes the individuals of the population who have been infected with the disease and are capable of spreading the disease to those in the susceptible category R t displaystyle R t nbsp is the compartment used for the individuals of the population who have been infected and then removed from the disease either due to immunization or due to death Those in this category are not able to be infected again or to transmit the infection to others Other compartmental models edit There are many modifications of the SIR model including those that include births and deaths where upon recovery there is no immunity SIS model where immunity lasts only for a short period of time SIRS where there is a latent period of the disease where the person is not infectious SEIS and SEIR and where infants can be born with immunity MSIR citation needed Infectious disease dynamics editMathematical models need to integrate the increasing volume of data being generated on host pathogen interactions Many theoretical studies of the population dynamics structure and evolution of infectious diseases of plants and animals including humans are concerned with this problem 26 Research topics include antigenic shift epidemiological networks evolution and spread of resistance immuno epidemiology intra host dynamics Pandemic pathogen population genetics persistence of pathogens within hosts phylodynamics role and identification of infection reservoirs role of host genetic factors spatial epidemiology statistical and mathematical tools and innovations Strain biology structure and interactions transmission spread and control of infection virulenceMathematics of mass vaccination editIf the proportion of the population that is immune exceeds the herd immunity level for the disease then the disease can no longer persist in the population and its transmission dies out 27 Thus a disease can be eliminated from a population if enough individuals are immune due to either vaccination or recovery from prior exposure to disease For example smallpox eradication with the last wild case in 1977 and certification of the eradication of indigenous transmission of 2 of the 3 types of wild poliovirus type 2 in 2015 after the last reported case in 1999 and type 3 in 2019 after the last reported case in 2012 28 The herd immunity level will be denoted q Recall that for a stable state citation needed R0 S 1 displaystyle R 0 cdot S 1 nbsp In turn R0 NS mNE TL mNE min TL TS E TL E min TL TS displaystyle R 0 frac N S frac mu N operatorname E T L mu N operatorname E min T L T S frac operatorname E T L operatorname E min T L T S nbsp which is approximately citation needed E TL E TS 1 lm bNv displaystyle frac operatorname operatorname E T L operatorname operatorname E T S 1 frac lambda mu frac beta N v nbsp nbsp Graph of herd immunity threshold vs basic reproduction number with selected diseasesS will be 1 q since q is the proportion of the population that is immune and q S must equal one since in this simplified model everyone is either susceptible or immune Then R0 1 q 1 1 q 1R0 q 1 1R0 displaystyle begin aligned amp R 0 cdot 1 q 1 6pt amp 1 q frac 1 R 0 6pt amp q 1 frac 1 R 0 end aligned nbsp Remember that this is the threshold level Die out of transmission will only occur if the proportion of immune individuals exceeds this level due to a mass vaccination programme We have just calculated the critical immunization threshold denoted qc It is the minimum proportion of the population that must be immunized at birth or close to birth in order for the infection to die out in the population qc 1 1R0 displaystyle q c 1 frac 1 R 0 nbsp Because the fraction of the final size of the population p that is never infected can be defined as limt S t e 0 l t dt 1 p displaystyle lim t to infty S t e int 0 infty lambda t dt 1 p nbsp Hence p 1 e 0 bI t dt 1 e R0p displaystyle p 1 e int 0 infty beta I t dt 1 e R 0 p nbsp Solving for R0 displaystyle R 0 nbsp we obtain R0 ln 1 p p displaystyle R 0 frac ln 1 p p nbsp When mass vaccination cannot exceed the herd immunity edit If the vaccine used is insufficiently effective or the required coverage cannot be reached the program may fail to exceed qc Such a program will protect vaccinated individuals from disease but may change the dynamics of transmission citation needed Suppose that a proportion of the population q where q lt qc is immunised at birth against an infection with R0 gt 1 The vaccination programme changes R0 to Rq where Rq R0 1 q displaystyle R q R 0 1 q nbsp This change occurs simply because there are now fewer susceptibles in the population who can be infected Rq is simply R0 minus those that would normally be infected but that cannot be now since they are immune As a consequence of this lower basic reproduction number the average age of infection A will also change to some new value Aq in those who have been left unvaccinated Recall the relation that linked R0 A and L Assuming that life expectancy has not changed now citation needed Rq LAq displaystyle R q frac L A q nbsp Aq LRq LR0 1 q displaystyle A q frac L R q frac L R 0 1 q nbsp But R0 L A so Aq L L A 1 q ALL 1 q A1 q displaystyle A q frac L L A 1 q frac AL L 1 q frac A 1 q nbsp Thus the vaccination program may raise the average age of infection and unvaccinated individuals will experience a reduced force of infection due to the presence of the vaccinated group For a disease that leads to greater clinical severity in older populations the unvaccinated proportion of the population may experience the disease relatively later in life than would occur in the absence of vaccine When mass vaccination exceeds the herd immunity edit If a vaccination program causes the proportion of immune individuals in a population to exceed the critical threshold for a significant length of time transmission of the infectious disease in that population will stop If elimination occurs everywhere at the same time then this can lead to eradication citation needed Elimination Interruption of endemic transmission of an infectious disease which occurs if each infected individual infects less than one other is achieved by maintaining vaccination coverage to keep the proportion of immune individuals above the critical immunization threshold citation needed Eradication Elimination everywhere at the same time such that the infectious agent dies out for example smallpox and rinderpest citation needed Reliability editModels have the advantage of examining multiple outcomes simultaneously rather than making a single forecast Models have shown broad degrees of reliability in past pandemics such as SARS SARS CoV 2 29 Swine flu MERS and Ebola 30 See also editBasic reproduction number Compartmental models in epidemiology Contact tracing Critical community size Disease surveillance Ecosystem model Force of infection Landscape epidemiology Next generation matrix Pandemic Risk factor Sexual network WAIFW matrixReferences edit a b Daley DJ Gani J 2005 Epidemic Modeling An Introduction New York Cambridge University Press Hethcote HW 2000 The mathematics of infectious diseases SIAM Review 42 4 599 653 Bibcode 2000SIAMR 42 599H doi 10 1137 S0036144500371907 S2CID 10836889 Blower S Bernoulli D 2004 An attempt at a new analysis of the mortality caused by smallpox and of the advantages of inoculation to prevent it Reviews in Medical Virology 14 5 275 88 doi 10 1002 rmv 443 PMID 15334536 S2CID 8169180 Germ Theory an overview ScienceDirect Topics Hamer W 1928 Epidemiology Old and New London Kegan Paul Ross R 1910 The Prevention of Malaria Dutton a b Brauer F Castillo Chavez C 2001 Mathematical Models in Population Biology and Epidemiology New York Springer Eisinger D Thulke HH April 2008 Spatial pattern formation facilitates eradication of infectious diseases The Journal of Applied Ecology 45 2 415 423 Bibcode 2008JApEc 45 415E doi 10 1111 j 1365 2664 2007 01439 x PMC 2326892 PMID 18784795 Adam D April 2020 Special report The simulations driving the world s response to COVID 19 Nature 580 7803 316 318 Bibcode 2020Natur 580 316A doi 10 1038 d41586 020 01003 6 PMID 32242115 S2CID 214771531 Squazzoni F Polhill JG Edmonds B Ahrweiler P Antosz P Scholz G et al 2020 Computational Models That Matter During a Global Pandemic Outbreak A Call to Action Journal of Artificial Societies and Social Simulation 23 2 10 doi 10 18564 jasss 4298 hdl 10037 19057 ISSN 1460 7425 S2CID 216426533 Sridhar D Majumder MS April 2020 Modelling the pandemic BMJ 369 m1567 doi 10 1136 bmj m1567 PMID 32317328 S2CID 216074714 Maziarz M Zach M October 2020 Agent based modelling for SARS CoV 2 epidemic prediction and intervention assessment A methodological appraisal Journal of Evaluation in Clinical Practice 26 5 1352 1360 doi 10 1111 jep 13459 PMC 7461315 PMID 32820573 Huppert A Katriel G 2013 Mathematical modelling and prediction in infectious disease epidemiology Clinical Microbiology and Infection 19 11 999 1005 doi 10 1111 1469 0691 12308 PMID 24266045 Tembine H COVID 19 Data Driven Mean Field Type Game Perspective Games Games Journal doi 10 3390 g11040051 hdl 10419 257469 a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Nakamura Gilberto M Monteiro Ana Carolina P Cardoso George C Martinez Alexandre S February 2017 Efficient method for comprehensive computation of agent level epidemic dissemination in networks Scientific Reports 7 1 40885 arXiv 1606 07825 Bibcode 2017NatSR 740885N doi 10 1038 srep40885 ISSN 2045 2322 PMC 5247741 PMID 28106086 Nakamura Gilberto M Cardoso George C Martinez Alexandre S February 2020 Improved susceptible infectious susceptible epidemic equations based on uncertainties and autocorrelation functions Royal Society Open Science 7 2 191504 Bibcode 2020RSOS 791504N doi 10 1098 rsos 191504 ISSN 2054 5703 PMC 7062106 PMID 32257317 Dietz Klaus 1967 Epidemics and Rumours A Survey Journal of the Royal Statistical Society Series A General 130 4 505 528 doi 10 2307 2982521 JSTOR 2982521 Maier B F Brockmann D 2020 Effective containment explains subexponential growth in recent confirmed COVID 19 cases in China Science 368 6492 742 746 Bibcode 2020Sci 368 742M doi 10 1126 science abb4557 PMC 7164388 PMID 32269067 Network Science by Albert Laszlo Barabasi Kenah Eben Robins James M September 2007 Second look at the spread of epidemics on networks Physical Review E 76 3 Pt 2 036113 arXiv q bio 0610057 Bibcode 2007PhRvE 76c6113K doi 10 1103 PhysRevE 76 036113 ISSN 1539 3755 PMC 2215389 PMID 17930312 Pastor Satorras Romualdo Castellano Claudio Van Mieghem Piet Vespignani Alessandro 2015 08 31 Epidemic processes in complex networks Reviews of Modern Physics 87 3 925 979 arXiv 1408 2701 Bibcode 2015RvMP 87 925P doi 10 1103 RevModPhys 87 925 S2CID 14306926 K Rizi Abbas Faqeeh Ali Badie Modiri Arash Kivela Mikko 2022 04 20 Epidemic spreading and digital contact tracing Effects of heterogeneous mixing and quarantine failures Physical Review E 105 4 044313 arXiv 2103 12634 Bibcode 2022PhRvE 105d4313R doi 10 1103 PhysRevE 105 044313 PMID 35590624 S2CID 232320251 Basic Reproduction Number an overview ScienceDirect Topics Cosma Shalizi 15 November 2018 Data over Space and Time Lecture 21 Compartment Models PDF Carnegie Mellon University Retrieved September 19 2020 Kermack WO McKendrick AG 1991 Contributions to the mathematical theory of epidemics I 1927 Bulletin of Mathematical Biology 53 1 2 33 55 Bibcode 1927RSPSA 115 700K doi 10 1007 BF02464423 JSTOR 94815 PMID 2059741 Brauer Fred 2017 Mathematical epidemiology Past present and future Infectious Disease Modelling 2 2 113 127 doi 10 1016 j idm 2017 02 001 PMC 6001967 PMID 29928732 Britton Tom Ball Frank Trapman Pieter 2020 A mathematical model reveals the influence of population heterogeneity on herd immunity to SARS CoV 2 Science 369 6505 846 849 Bibcode 2020Sci 369 846B doi 10 1126 science abc6810 PMC 7331793 PMID 32576668 Pollard Andrew J Bijker Else M 2021 A guide to vaccinology From basic principles to new developments Nature Reviews Immunology 21 2 83 100 doi 10 1038 s41577 020 00479 7 PMC 7754704 PMID 33353987 Renz Alina Widerspick Lina Drager Andreas 2020 FBA reveals guanylate kinase as a potential target for antiviral therapies against SARS CoV 2 Bioinformatics 36 Supplement 2 i813 i821 doi 10 1093 bioinformatics btaa813 PMC 7773487 PMID 33381848 Costris Vas C Schwartz EJ Smith RJ November 2020 Predicting COVID 19 using past pandemics as a guide how reliable were mathematical models then and how reliable will they be now Mathematical Biosciences and Engineering 17 6 7502 7518 doi 10 3934 mbe PMID 33378907 Further reading editKeeling M Rohani P Modeling Infectious Diseases In Humans and Animals Princeton Princeton University Press von Csefalvay C Computational Modeling of Infectious Disease Cambridge MA Elsevier Academic Press Retrieved 2023 02 27 Vynnycky E White RG An Introduction to Infectious Disease Modelling Retrieved 2016 02 15 An introductory book on infectious disease modelling and its applications Grassly NC Fraser C June 2008 Mathematical models of infectious disease transmission Nature Reviews Microbiology 6 6 477 87 doi 10 1038 nrmicro1845 PMC 7097581 PMID 18533288 Boily MC Masse B Jul Aug 1997 Mathematical models of disease transmission a precious tool for the study of sexually transmitted diseases Canadian Journal of Public Health 88 4 255 65 doi 10 1007 BF03404793 PMC 6990198 PMID 9336095 Capasso V Mathematical Structures of Epidemic Systems Second Printing Heidelberg 2008 Springer a href Template Cite book html title Template Cite book cite book a CS1 maint location link External links editSoftwareModel Builder Interactive GUI based software to build simulate and analyze ODE models GLEaMviz Simulator Enables simulation of emerging infectious diseases spreading across the world STEM Open source framework for Epidemiological Modeling available through the Eclipse Foundation R package surveillance Temporal and Spatio Temporal Modeling and Monitoring of Epidemic Phenomena Retrieved from https en wikipedia org w index php title Mathematical modelling of infectious diseases amp oldid 1213330995, wikipedia, wiki, book, books, library,

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