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Modified SIR for Vector-Borne Diseases

Modified SIR for Vector-Borne Diseases. Group 9-019 Gay Wei En Colin 4i310 Chua Zhi Ming 4i307 Katherine Kamis AOS Jacob Savos AOS. Aims & Objectives. To create a universal modified SIR model for vector-borne diseases to make predictions of the spread of these diseases. Motivation.

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Modified SIR for Vector-Borne Diseases

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  1. Modified SIR for Vector-Borne Diseases Group 9-019 Gay Wei En Colin 4i310 Chua Zhi Ming 4i307 Katherine Kamis AOS Jacob Savos AOS

  2. Aims & Objectives • To create a universal modified SIR model for vector-borne diseases to make predictions of the spread of these diseases.

  3. Motivation Academy of Science Hwa Chong Institution • In 2005, there was an epidemic of Dengue in Singapore. • Since then the number of cases has been at an increased level. • The number of cases of Lyme disease has been increasing in Loudoun County, Virginia, an area previously devoid of Lyme disease. A model will help to predict if the current trend will continue.

  4. Motivation Academy of Science Hwa Chong Institution

  5. Simple SIR • The SIR model is used to predict outbreaks of diseases. • Considers 3 compartments: • Susceptible • Infected • Recovered • Two directions of change, namely from Susceptible to Infected or from Infected to Recovered

  6. Simple SIR • S’(t) = -k * S(t) * I(t) • I’(t) = -S’(t) – R’(t) • R’(t) = c * I(t) • k – Transmittal constant • c – Recovery rate

  7. Euler’s Method • Tangent line – slope at a certain point • Tangent lines are estimates of the rates of change • Rates of change can be used to estimate actual points • S(t + h) = S(t) + S’(t)*h

  8. Vector-Borne Disease Model Net Migration Net Migration Birth Death Death Hosts (N) Susceptible Infected Vectors (V) Infected Susceptible Death Death Birth

  9. Z. QiuEquations (2008) • S – Susceptible host population • I – Infected host population • T – Susceptible vector population • X – Infected vector population • B – Birth rate of hosts • µ – Death rate of hosts • N – Total Host population • b – Contact rate • β – Disease transmission probability (vectors to host) • γ – Recovery Rate • m – Migration Rate Rate of Change of Susceptible Hosts Rate of Change of Infected Hosts

  10. Z. QiuEquations (2008) • S – Susceptible host population • I – Infected host population • T – Susceptible vector population • X – Infected vector population • N – Total Host population • b – Contact rate • V – Total Vector population • B’ – Birth rate of vectors • ε– Death rate of vectors • M – Maximum number of vectors per host • α – Disease transmission probability Rate of Change of Susceptible Vectors Rate of Change of Infected Vectors

  11. Assumptions • A person recovers from Dengue after 2 weeks • 5% of the mosquito population is infected with dengue fever • Birth, death, and migration rates stay the same after 2004 • Vector birth and death rates stay constant

  12. Data Collection • Dengue Fever Statistics • Singapore Human Population Statistics • Singapore Climate Data • Temperature • Precipitation

  13. Dengue Fever Statistics

  14. Human Population Statistics http://www.indexmundi.com/

  15. Climate Data

  16. Data Analysis - Climate • Spearman’s Rank Correlation Coefficient • Used to determine to what extent temperature and precipitation are correlated to the number of cases of dengue fever.

  17. Spearman’s Rank Correlation Coefficient

  18. Data Analysis - Climate

  19. Data Analysis - Climate • Using the 14 week lag and the statistics for weekly cases, we can determine when to extract our transmittal constant.

  20. Data Analysis - Seasonality • Tick populations are affected by different seasons in the United States • Summer & Winter: • Birth rate is lower • Death rate is higher • Spring & Fall: • Birth rate is higher • Death rate is lower

  21. Dengue Fever Data

  22. Dengue Fever Data Susceptible Hosts Population Susceptible Vectors Population Infected Vectors Population

  23. Dengue Fever Data Susceptible Vectors Population Infected Vectors Population

  24. Z. Qiu Model –Estimates from Initial Data

  25. Z. Qiu Model –Theoretical Population

  26. Lyme Disease

  27. Problems & Limitations • Data was not accessible for use in either country • Collection of data for models was difficult • If this data was available we would be able to create models to help predict infected populations and determine: • Health Care Costs • Wellness of the Population • Control Methods

  28. Future Work • We have created a model that we can use to predict trends in populations • With field work, the necessary data such as mosquito population count and transmission rates along with other parameters that can be measured in the field can used with the model to predict the spread of Dengue and Lyme disease

  29. Bibliography • Neuwirth, E., & Arganbright, D. (2004). The active modeler: mathematical modeling with Microsoft Excel. Belmont, CA: Thomson/Brooks/Cole. • Duane J. Gubler(1998, July). Clinical Microbiology Reviews, p. 480-496, Vol. 11, No. 3, 0893-8512/98/$00.00+0. Dengue and Dengue Hemorrhagic Fever. Retrieved November 3, 2010 from http://cmr.asm.org/cgi/content/full/11/3/480?view=long&pmid=9665979 • Wei, H., Li, X., & Martcheva, M. (2008). An epidemic model of a vector-borne disease with direct transmission and time delay. Journal of Mathematical Analysis and Applications, 342, 895-908. • Hii, Y. L., Rocklov, J., Ng, N., Tang, C. S., Pang, F. Y., & Sauerborn, R. (2009). Climate variability and increase in intensity and magnitude of dengue incidence in Singapore. Glob Health Action, 2. Retrieved April 23, 2011, from http://www.globalhealthaction.net/index.php/gha/article/view/2036/2590 • Climate Data Online. (n.d.).NNDC Climate Data Online. Retrieved April 23, 2011, from http://www7.ncdc.noaa.gov/CDO/cdoselect.cmd?datasetabbv=GSOD&countryabbv=&georegionabbv= • Ministry of Health: FAQs. (n.d.). Dengue. Retrieved November 3, 2010, from http://www.pqms.moh.gov.sg/apps/fcd_faqmain.aspx?qst=2fN7e274RAp%2bbUzLdEL%2fmJu3ZDKARR3p5Nl92FNtJidBD5aoxNkn9rR%2fqal0IQplImz2J6bJxLTsOxaRS3Xl53fcQushF2hTzrn1PirzKnZhujU%2f343A5TwKDLTU0ml2TfH7cKB%2fJRT7PPvlAlopeq%2f%2be2n%2bmrW%2bZ%2fJts8OXGBjRP3hd0qhSL4 • Academy of Science. Academy of Science Mathematics BC Calculus Text. • Breish, N., & Thorne, B. (n.d.). Lyme disease and the deer tick in maryland. Maryland: The University of Maryland. • Ong, A., Sandar, M., Chen, M. l., & Sin, L. Y. (2007). Fatal dengue hemorrhagic fever in adults during a dengue epidemic in Singapore. International Journal of Infectious Diseases, 11, 263-267. • Stafford III, K. (2001). Ticks. New Haven: The Connecticut Agricultural Experiment Station. • Dobson, A. (2004). Population Dynamics of Pathogens with Multiple Host Species. The American Naturalist, 164, 564-578. • American Lyme Disease Foundation. (2010, January 5). Deer Tick Ecology. Retrieved September 20, 2010, from American Lyme Disease Foundation Web site: http://www.aldf.com/deerTickEcology.shtml • Awerbuch, T., & Sandberg, S. (1995). Trends and oscillations in tick population dynamics. Journal of theoretical Biology , 511-516.

  30. Bibliography • Edlow, J. (1999). Lyme Disease and Related Tick-borne Illnesses. Annals of Emergency Medicine, 33(6), 680-693. • Gaff, H., & Gross, L. J. (2006). Modeling Tick-Borne Disease: A Metapopulation Model. Mathematical Biology , 69, 265-288. • Gaff, H., & Schaefer, E. (2010). Metapopulation Models in Tick-Borne Disease Transmission Modelling. Modelling parasite transmission and control (pp. 51-65). New York, N.Y.: Springer Science+Business Media ;. • Illinois Department of Public Health. (n.d.). Prevention and Control: Common Ticks. Retrieved October 7, 2010, from Illinois Department of Public Health Web site: http://www.idph.state.il.us/envhealth/pccommonticks.htm • LoGiudice, K., Ostfeld, R., Schmidt, K., & Keesing, F. (2002). The ecology of infectious disease: Effects of host diversity and community compostiion on Lyme disease risk. PNAS , 567-571. • Ogden, N., Bigras-Poulin, M., O'Callaghan, C., Barker, I., Lindsay, L., Maarouf, A., et al. (2005). A dynamic population model to investigate effects of climate on geographic range and seasonality of the tick Ixodesscapularis. International Journal for Parasitology , 375-389. • Qiu, Z. (2008). Dynamical behavior of a vector-host epidemic model with demographic structure. Computers and Mathematics with Applications, 56, 3118-3129. • Steere, A., Coburn, J., & Glickstein, L. (2004). The emergence of Lyme disease. The Journal of Clinical Investigation, 113, 1093-1101. • Virginia Department of Health (n.d.). Lyme disease tracking & prevention. Retrieved from www.vdh.state.va.us/epidemiology/DEE/.../Presentation%20Notes.pdf • Zeman, P., & Januska, J. (1999). Epizootiologic background of dissimilar distribution of human cases of Lyme borreliosis and tick-borne encephalitis in a joint endemic area. Comparative Immunology, Microbiology & Infectious Diseases, 22, 247-260. • B. M. Wiegmann & D. K. Yeates (1996). Tree of Life: Diptera. North Carolina State University. Retrieved June 3, 2011 from http://www2.ncsu.edu/unity/lockers/ftp/bwiegman/fly_html/diptera.html#about • Myers, P., R. Espinosa, C. S. Parr, T. Jones, G. S. Hammond, and T. A. Dewey. (2008). The Animal Diversity Web (online). Retrieved June 3, 2011 from http://animaldiversity.ummz.umich.edu/site/index.html • Reinert, J. F., Harbach, R. E., Kitching, I.J.. (2004) Phylogeny and classification of Aedini (Diptera: Culicidae), based on morphological characters of all life stages. Retrieved June 3, 2011 from http://onlinelibrary.wiley.com/doi/10.1111/j.1096-3642.2004.00144.x/pdf • Chapman, A. D. (2009). Numbers of Living Species in Australia and the World 2nd edition. Report for the Australian Biological Resources Study. Retrieved June 3, 2011, from http://www.environment.gov.au/biodiversity/abrs/publications/other/species-numbers/2009/pubs/nlsaw-2nd-complete.pdf

  31. Thank You! Any Questions?

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