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Predators, prey and prevalence by Andrew Bate Centre for Mathematical Biology, Department of Mathematical Sciences, University of Bath, Bath, UK Timeline • Intro to Eco-epidemiology • Endemic thresholds in PP oscillations • Break • Complex dynamics • Disease in group-defending prey • #Work in progress# Eco-epidemiology • Ecology: dynamics from interactions between different species, e.g. predator—prey • Epidemiology: dynamics of disease in host population • Eco-epidemiology: dynamics from interactions between different species where one or more are a host of an infectious disease Examples of eco-epidemiology • Grey-squirrel—Red-squirrel—Squirrelpox • Myxomatosis’s knock effects on species that interact with rabbits Moose—Wolves— Canine-Parvovirus And many others… Making an eco-epidemiological model • Underlying ecology • Underlying epidemiology • Underlying interaction of ecology and epidemiology For the moment, we will only consider predator—prey ODE models Underlying Ecology (no disease) • What at the prey dynamics in absence of predators? (logistic, Allee effect) • Do predators attack susceptible prey? • Is the predator specialist or generalist? • What are the predators’ underlying dynamics (functional and numerical responses)? “Our” predator—prey model N P Predator—prey: Results Three scenarios: • Prey only: prey grow to carrying capacity: stable if: • Predator—prey steady state: stable coexistent equilibrium exist if: • Predator—prey oscillations: stable coexistent cycles exist if: Underlying Epidemiology (no ecological interactions) • Is infection macro or microparasitic? • What stages of infection are there (latency, recovery, immunity)? • How is the disease transmitted? • What is the force of infection? • What are the consequences of infections (ignoring interaction effects)? “Our” Epidemiology: SI disease • Populations split into two distinct classes: Susceptible and Infected, i.e. S(t)+I(t)=N(t). • Density dependent force of infection Births S Natural deaths Infection I Natural deaths Diseaserelated deaths Simplified SI disease • Assuming population is constant, we can reduce down to one equation and nondimensionalise to get: where Simplified SI: Results Two scenarios: 1. R_0<1. There is only one steady state, i=0, which is stable disease will die out 2. R_0>1. There are two steady states, i=0, which is unstable, and i=1-1/R_0 which stable disease will spread i 1 0 1 R_0 Frequency dependent transmission • Infectious encounters are fixed, independent of population size. • More appropriate for STIs • R_0 is independent of host population size no endemic threshold wrt N Underlying interaction of ecology and epidemiology • Who is infected? If both, is the disease trophically transmitted? • Does infection alter vulnerability to predators? • Does infection limit a predators’ ability to catch prey? • Does infection alter ability to compete with conspecifics? Disease assumptions • SI disease • Density dependent transmission • Disease only causes additionally host mortality Disease in predator Disease in prey R_0 in PP oscillations • All previous work on diseases in oscillatory host use exogenous oscillations, i.e. non-constant parameters. • I will use endogenous oscillations (constant parameters) from Rosenzweig—MacArthur model. • Will consider 2 models: diseased prey and diseased predator Rescaling in term of predator— prey—prevalence Disease in predator Disease in prey Result of rescaling into predator—prey—prevalence Diseased Predator: Diseased Prey: IGPFood Chain IGPExploitative Competition Invasion criteria at equilibrium • For the diseased predator: • For diseased prey: Finding threshold on limit cycle • Integrate N and P equations along predator—prey cycle for the period of cycle • Consider the infected/prevalence equation over the period of the cycle, assuming that no. of infecteds/prevalence is negligible Invasion criteria in oscillations • For the diseased predator: • For diseased prey: For these models and Predator • Disease requires greater transmissibility to become endemic Prey • Disease requires less transmissibility to become endemic Frequency dependent transmission • 𝑅0 = β 𝑚+µ (predator) 𝑅0 = β 𝑟+µ (prey) • Does not depend on density • No difference between oscillations and equilibria Extension: competition • Alter prey model such that infected and susceptible prey do not suffer competition equally (c is relative competitiveness of infecteds) …. with Frequency Dependent transmission • For c=1, same as before with FD • For c>1, R_0 decreases with host density Disease is endemic as long as • For c<1, R_0 increases with host density. Disease is endemic as long as Summary • Endemic criteria depends on time average of host in predator—prey oscillation • In our model, oscillations increase endemic threshold in predator ( < ) and decrease in prey ( > ) • No such pattern for FD • Curious case of FD+competition with upper density threshold for endemic disease. Break Complex dynamics • Using Disease predator model (with DD or FD transmission) • Myriad of bistabilities and even a case of tristability • Chaos and quasiperiodic dynamics found Reminder: Standard dynamics FD DD Note: Figures are of prey, disease is in predator. Bistability via a Cusp bifurcation of limit cycles… • Increasing µ=0.5 to µ=0.53 in DD model… • Similar pattern occurs in FD model 1LC 1SS+1LC 2LC 1SS With increasing µ move from (i) to (vi) Period doubling in FD model » » » µ=12 … possibility of 8-cycle … cascading into chaos Looking at β=µ+0.62, we see a period doubling cascade Tristability in DD model • Saddle-node bif. can occur in DD model possible endemic SS when < <1 • Hopf bif. can move below Saddle-node bif. there exists a fold—Hopf bif. possibility of torus bif. Tristability with • Note: & <1 in this region Tristability with torus Homoclinic bifurcation? • Torus disappears, suspect is collision with saddle limit cycle (a saddle point in Poincaré section) Homoclinic bifurcation? • Torus disappears, suspect is collision with saddle limit cycle (a saddle point in Poincaré section) Regime shifts • Small perturbation results in large change like saddle-node bif. • Usually reversible via a long sequence of small perturbations (hysteresis loops) • Homoclinic bif. of torus is example of irreversible, once gone, can not return without large perturbation… Example Reversible(?) Irreversible Summary • Lots of complex dynamics! Group defending prey Sometimes it is good to be in a crowd… – Large groups can dazzle, confuse or repel predators (be is sight, sound, smell or movement) – Many eyes that improve vigilance – Mob attack enemies Group defence • Similar to diseased prey model, but with explicit competition and growth/death and a Holling IV functional response. • Holing IV is Holling II with h=h_0+h_N N Rewritten for neatness… Where , , (FD) or (DD) Disease free dynamics • We have 4 main scenarios depending on nullclines: • 1: Prey only • 2: Coexistence • 3: Bistability • 4: Prey only with transient coexistence Scenario 4: limit cycle disappears via homoclinic bif. FD disease • Since prevalence equation is independent of prey or predator density, assume it has reached steady state (fix ) and use as bifurcation parameter) • System becomes: What does a disease do? i=0 versus i>0 fixed. Starting in Scenario 4 and increase i*… DD disease • We can not use same argument as prevalence depends on prey density. This means that Predator—prey—prevalence is a competitive exclusive system… coexistence • Instead we use transmissibility as a proxy for prevalence. • A similar sequence of Scenarios occurs Starting in Scenario 4 and increase β… Coexistence? • For DD model, predator—prey—prevalence system is a competitive exclusive system…….. but they do! • In fact, in this model, the disease can benefit predators by limiting group defence. • Why? Prevalence is self-restricting and can persist at SS for some range (not a point) of prey density. If predators (whose SS require a fixed prey density) can survive in this range, coexistence occurs. #Work in progress# Overall Conclusion • Predator—prey oscillations can greatly effect disease dynamics. • Group defence can be weakened by diseases, possibly helping predators survive • #Work in progress# Published parts of talk with Frank Hilker (my supervisor, was in Bath, now in Osnabrück) “Predator—prey oscillations can shift when diseases become endemic” JTB (2013) 316:1-8 “Complex dynamics in an eco-epidemiological model” BMB (2013) 75:2059-2078 “Disease in group-defending prey can benefit predators” Theor. Ecol. (2014) 7:87-100 Thank you for listening!