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Quantitative Biology: populations [email protected] Lecture 1. Basic Concepts & Simplest Models • Definitions • Basic population dynamics – immigration-death • discrete & continuous – birth-death • discrete – logistic equation • discrete & continuous • Multiple species: competition and predation Definitions • Population – a “closed” group of individuals of same spp. – immigration and emigration rates zero • Metapopulation – a collection of populations for which the migration rates between them is defined • Community – a closed group of co-existing species Fundamental Equation • Populations change due to – immigration, emigration • additive rates; usually assumed independent of population size – birth, death • multiplicative rates; usually dependent on population size Nt 1 Nt bNt I t dNt Et Immigration-Death (Discrete) • Time “jumps” or steps – N is not defined between steps • Immigration & death rates constant • Death rate is a proportion – the proportion surviving is (1-̂) – limits: 0 ̂ 1 ˆ ˆN ˆ N 1 ˆ Nt 1 Nt t t Immigration-Death (Continuous) • Re-expressed in continuous time – N defined for all times • Death rate is a per capita rate – the proportion surviving a period of time, T, is exp(-T) – limits: 0 dN N dt Immigration-Death Solution 25 20 N 15 10 5 0 0 1 2 3 4 Time Total Original Immigrants 5 6 I-D Equilibrium • When dN/dt = 0 – population rate of change is zero – immigration rate = (population) death rate 50 Rates 40 30 20 10 0 0 10 20 30 40 Population Immigration Death Equilibrium 50 Characteristic Timescales • Life expectancy, L, determines the timescale over which a population changes (especially recovery from perturbations) • L is reciprocal of death rate (in continuous models) • In immigration-death model increasing death rate (decreasing life expectancy) speeds progress (decreases time) to equilibrium Immigration-death model with different L 45 40 35 N 30 25 20 15 10 5 0 0 1 2 3 4 5 Time L = 2.00 L = 1.00 L = 0.50 6 Simplest Discrete Birth-Death Model • R is the reproductive rate – the (average) number of offspring left in the next generation by each individual • Gives a difference equation – check with fundamental equation • Population grows indefinitely if R>1 Nt 1 R Nt Birth-Death Continuous • r is the difference between birth and death rates – R = er ; r = ln(R) • If r > 0, exponential growth, if r < 1 exponential decay rt N r N N t N 0e Density Dependence: necessity • To survive, in ideal conditions, birth rates must be bigger than death rates – ALL populations grow exponentially in ideal circumstances • Not all biological populations are growing exponentially – ALL populations are constrained (birth death) – Density dependence vs. external fluctuations • Stable equilibria suggest that density dependence is a fundamental property of populations Factors & Processes • Density Independence Factors – act on population processes independently of population density • Limiting Factors – act to determine population size; maybe density dependent or independent • Regulatory Factors – act to bring populations towards an equilibrium. The factor acts on a wide range of starting densities and brings them to a much narrower range of final densities. • Density Dependence Factors – act on population processes according to the density of the population – only density dependent factors can be regulatory • Factors act through processes to produce effects (eg: drought-starvationmortality) Density Dependent Factors • Mechanisms – competition for resources (intra- and interspecific) – predators & parasites (disease) • Optimum evolutionary choices for individuals (e.g. group living, territoriality) may regulate population Logistic - Observations • Populations are roughly constant – K - “carrying capacity” – determined by species / environment combination – density dependent factors • Populations grow exponentially when unconstrained – r - intrinsic rate of population change – i.e. before density dependent factors begin to operate • r and K are independent Logistic Equation - Empirical • Empirical observations combined • Fits many, many data r 2 KN N N rN rN 1 rN N K N K K N (t ) K N0 r t e 1 N0 Logistic Equation - Mechanistic • Linear decrease in per capita birth rate • Linear increase in per capita death rate 0 1 N 0 1 N N b d 0 1 N N 0 1 N N 0 0 N 1 1 N 0 0 r 0 0 ; K 1 1 2 Stability of Logistic • Linear birth and death rates (as functions of N) give a single equilibrium point N=K • Equilibrium is globally, stable Logistic Equation - Dynamics 25 N 20 15 10 5 0 0 1 2 3 4 5 6 60 Tim e N 50 40 30 20 10 0 0 1 2 3 Tim e 25 N 20 15 10 5 0 0 1 2 3 Tim e 4 5 6 4 5 6 Rate of Change of N Rate of Change of N Logistic Equation Properties 8 7 6 5 4 3 2 1 0 0 1 2 3 4 5 6 8 7 6 5 4 3 2 1 0 0 5 10 15 1 0.5 0 2 3 Time 4 5 6 per capita Rate of Change of N per capita Rate of Change of N 1.5 1 25 N Ti m e 0 20 1.5 1 0.5 0 0 5 10 15 N 20 25 Logistic Equation (Discrete) • Explicit equilibrium, K • Derivation is by considering the relative growth rate from its maximum (1/R) to its minimum (1) • The growth rate (R) decreases as population size increases RN t RN t N t 1 ( R 1) N t 1 aN t 1 K 25 20 N 15 10 5 0 0 10 20 30 Tim e 40 50 60 Summary • Timescales • the “system” (population) timescale is determined by the life expectancy of the individuals within the population • Density dependence – Birth and death are universal for biological populations – The direct implication is that populations are regulated Multi-population Dynamics • Two Species – Competition (-/-) • intraspecific • interspecific – Predation (+/-) • patchiness • prey population limitation • multiple equilibria • Multi-species Intraspecific Competition • • • • • Availability of a resource is limited Has a reciprocal effect (i.e. all individuals affected) Reduces recruitment / fitness Consequently produces density dependence Important in generation of skewed distribution of individual quality – Different individuals react differently to competition = creates heterogeneity • Inverse dd (co-operation) – Allee Effect Interspecific Competition • Competition for shared resource – results in exclusion or coexistence • which depends on degree of overlap for resource and degree of intraspecific competition • Aggregation & spatial effects – disturbance • kills better competitor leaving gaps for better colonisers (r- & K- species) – aggregation enhances coexistence • “empty” patches allow the worse competitor some space Interspp Competition Dynamics • Lotka-Volterra model – Structure – Statics • What are the equilibria – Dynamics • What happens over time – Phase planes • isoclines Lotka-Volterra Equations • Based on logistic equations – One for each species – 21 represents the effect of an individual of species 2 on species 1 – i.e. if 21 = 0.5 then sp. 2 are ½ as competitive, i.e. at individual level interspecific competition is greater than intraspecific competition K1 N1 21N 2 dN1 r1 N1 dt K1 Analysis • Equilibrium points are given when the differential equation is zero – A single point (trivial equilibrium) and isocline – The line along which N1 doesn’t change K1 N1 21N 2 0 r1 N1 K1 N1 0 K1 N1 21N 2 0 N1 K1 21N 2 Phase Planes • Variables plot against each other • Isoclines • Direction of change (zero on isocline) – For spp. 1 these are horizontal toward isocline – For spp. 2 these are vertical toward isocline • Combine two isoclines and directions on single figure… Outcomes K2 > K1/12 Spp 2 is more competitive at high densities K1 > K2/21 Spp 1 is more competitive at high densities K2 < K1/12 Spp 2 is less competitive at high densities Exclusion (initial condition dependent) Spp 1 wins Spp 2 wins Co-existence K1 < K2/21 Spp 1 is less competitive at high densities Dynamics • Exclusion or co-existence is not dependent on r – but dynamic approach to equilibrium is 120 100 N 80 60 40 20 0 0 20 40 60 80 100 Time r=0.1 r=0.28 r=0.46 r=0.64 r=0.82 SB:r=0.1 120 Predation • Consumers – inc. parasites, herbivores, “true predators” • predator numbers influenced by prey density which is influenced by predator numbers – circular causality: limit cycles in simple models • time delay – in respect of predator population’s ability to grow, r • over-compensation – predators effect on prey is drastic Predation Dynamics • Limit cycles rarely seen • heterogeneity in predation – patchiness of prey densities • reduced density in prey population – effect ameliorated by reduction in competition (i.e. compensation) • increased density in prey population – effect ameliorated by increase in competition (i.e. compensation) Refuges • Prey aggregated into patches • Predators aggregate in prey-dense patches • Effect on prey population – prey in less dense patches are most commonly in a partial refuge – they are less likely to be predated • Effect is to stabilise dynamics Summary • Individuals interact with each other – and compete • Each individual is affected by the population(s) and each population(s) is affect by the individual – Population dynamics are reciprocal – and reciprocal across level • Co-existence is sometimes hard to reproduce in models – How rare is it? • Heterogeneity (e.g. patches) tends to enhance coexistence Lecture 2: Structuring Populations • Age – Leslie matrices • Metapopulations – Probability distributions • Metapopulations – Levin’s model Types of Structuring • Individuals in a population are not identical – heterogeneity in different traits • trait constant (throughout life) – DNA (with exceptions? e.g. somatic evolution) – gender (with exceptions) • trait variable – stage of development, age, infection status, pregnancy, weight, position in dominance hierarchy, etc Rate of Change of Structure • If trait constant for an individual throughout life, then it varies in the population on time scale of L – e.g. evolutionary time scale; sex ratios • If trait variable for an individual, then varies on its own time scale – infection status varies on a time-scale of duration of infectiousness – fat content varies according to energy balance Modelling Stages (Discrete) • Discrete time model for non-reversible development – at each time step a proportion in each stage • die (a proportion s survives) • move to next stage (a proportion m) – a number are born, B – complication: s-m N x ,t 1 sx N x,t mx N x,t B N x,t sx mx B N y ,t 1 s y N y ,t mx N a ,t • easiest to chose a time step (which might be e.g. temperature dependent) or stage structure (if not forced by biology) for which all individuals move up N x ,t 1 B N y ,t 1 s x N x ,t N z ,t 1 s y N y ,t Leslie Matrix • This difference equation can be written in matrix notation N t 1 MNt bx N x ,t N t N y ,t ; M s x 0 N z ,t by 0 sy bz 0 s z Properties of Matrix Model • No density dependence or limitation – as discrete birth-death process, the population grows or declines exponentially • The equivalent value to R is the “dominant eigenvalue” of M – associated “eigenvector” is the stable age distribution • If the population grows, there is a stable age distribution – after transients have died away • Density dependence can be introduced – but messy Leslie Matrix Example 0 M 1 3 0 9 12 0 0 1 0 2 • This matrix has a dominant eigenvalue of 2 and a stable age structure [ 24 4 1 ] • i.e. when the population is at this stable age structure it doubles every time step Spatial Structure • Many resources are required for life – e.g. plants are thought to have 20-30 resources • light, heat, inorganic molecules (inc. H2O) etc. • Habitats are defined in multi-dimensional space – “niche” is area of suitability in multidimensional space – Areas of differing suitability • Disturbance – No habitat will exist forever – Frequency, duration and lethality – Dispersal is a universal phenomena Metapopulations • A collection of connected single populations – whether a single population with heterogeneous resources or metapopulation depends on dispersal • if dispersal is low, then metapopulation • degree of genetic mixing • human populations from metapopulation to single population? • Depends on tempo-spatial habitat distribution & dispersal Levins Model • Ignore “local” (within patch) dynamics – single populations are either at N=0 or N=K population size – equilibrium points of logistic equation, ignore dynamics between these points (i.e. r) N N rN 1 K N 0 N 0 or NK • Let p be the proportion of patches occupied (i.e. where N=K) – (1-p) is proportion of empty patches – a is rate of extinction (per patch) – m is per patch rate of establishment in empty patch and depends on proportion of patches filled (dispersal) dp colonizati on rate extinction rate dt dp mp(1 p ) ap dt Model Results • Equilibrium only for m > a – i.e. metapopulation can only exist if local establishment is greater than local extinction • Dynamics similar to logistic equation mp(1 p) ap p 1 a m Extinction Rates • Stochastic probability of extinction – disturbance (not related to population size) – demographic (related to population size - the smaller the population the greater the risk of extinction) • Appears to decrease with increasing p • Dispersal occurs all the time, tending to increase small populations Model with Decreasing Extinction • Include dependence of local extinction on total patch occupancy • Exponential assumption gives implicit equilibrium result with two possibilities p mp(1 p) pa0 e a1 p m(1 p ) a0 e a1 p m ln ln 1 p a1 p 0 a0 0.06 0.04 0.02 0 0 0.2 0.4 0.6 0.8 1 p a0 p e{-a1 p} mp(1-p) per patch rates total rates 0.08 0.4 0.3 0.2 0.1 0 0 0.2 0.4 0.6 0.8 p a0 e{-a1 p} m(1-p) 1 0.06 0.04 0.02 0 0 0.2 0.4 0.6 0.8 1 p a0 p e{-a1 p} mp(1-p) per patch rates total rates 0.08 0.5 0.4 0.3 0.2 0.1 0 0 0.2 0.4 0.6 0.8 p a0 e{-a1 p} m(1-p) 1 dp dt p* p Decreasing probability of extinction with increasing proportion of patches occupied is an example of positive density-dependence. The effect here is to create a threshold proportion of patches that need to be occupied to avoid metapopulation extinction. If the metapopulation level effect is due to negative per patch rate of change of patch occupancy at low p, then this is called a metapopulation ‘Allee effect’ (Amarasekare 1998. Allee effects in metapopulation dynamics. American Naturalist. 152). Just as the Levin’s model can be thought of as analogous to the logistic model of population growth rate, if the per capita population growth rate becomes negative at small population size, this creates a threshold population size, below which extinction results – a phenomenon known as the Allee effect (Stephens et al. 1999. What is the Allee effect? Oikos. 87, 185-190). Patches as “Networks” • Simplest models have all patches equally connected • But patches may be connected as networks, for example: Networks in Matrix Format • This can be written as a matrix of (direct) connections: 0 0 C 0 0 1 0 0 0 0 1 0 0 0 0 1 0 Structure of Connections • Multiplying this matrix together once gives the patches connected by two steps etc: 0 0 C2 0 0 0 0 0 0 1 0 0 0 0 0 0 1 0 0 3 ; C 0 0 0 0 0 0 0 0 0 0 1 0 0 0 Summary • Heterogeneity between individuals is what biology is about – Extends to heterogeneity between populations • Nothing is the same and doesn’t stay the same – We haven’t touched on evolution • Dispersal is universal and leads to metapopulations Lecture 3. Small Populations • Stochastic effects – demographic & environmental – demographic stochasticity in small populations – stochastic modelling • e.g. death process; immigration-death process • Monte Carlo simulation • Probabilities of extinction Stochasticity • Deterministic models – give expected (average) outcome (in most cases) • Demographic – individuals come in single units – e.g. if deterministic model predicts 5.6 individuals, at the limit of accuracy the number can only 5 or 6 • Environmental – environments (resource availability) fluctuates “randomly” – chance events (c.f. disturbance) Demographic Stochasticity • More predominant in small populations – relative error is greater (c.f. plotting on log scale) • Gender problems – if a population of 10 individuals produces 15 offspring, there is a 15% chance of 5 or less females 0.25 1.2 1 0.2 0.8 0.15 0.6 0.1 0.4 0.05 0.2 0 0 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 Pure Death Process • Deterministic model – negative exponential decay: N(t)=N(0)exp(-t) • Stochastic model – exp(-t) is the probability of an individual surviving to t – if individual survival is independent, then the numbers surviving to t have a binomial distribution with mean N(0)exp(-t) Immigration-Death Process • Solution is sum of two populations • Immigration process is a Poisson process – Poisson distribution for numbers immigrating in a given time • Death process – binomial distribution for numbers surviving to given time Stochastic Population Processes Process Popn. Distribution Death Binomial Immigration-Death Poisson Birth-Death Negative Binomial Imm.-Birth-Death Negative Binomial “Logistic” “normal” Monte Carlo Simulation • More complex models require computer simulation to find solutions • Collection of Poisson processes (i.e. assume independence between different processes) • Process rates change with time Monte Carlo Example • Immigration-death process • Process rates – immigration: – death: N – total: T = + N • Time to next event – from negative exponential distribution with rate parameter T pe Ts ln( p) ; s T Monte Carlo Iteration • Calculate time to next event • Calculate which event has occurred – /T is probability of immigration – N/T is probability of death • Change population • Calculate T Birth-Death Simulation • Deterministic result is the mean of many stochastic results – not true for every model • Individual simulations do not “look like” the mean – interpreting data Random Walks • Alternative view of stochastic models • Population size is performing a “random walk” through time • Zero is an “adsorbing barrier” (extinction) – Or 1 if dioecious • All populations (which have a death process) have a non-zero probability of reaching zero Time to Extinction • Death Process – mean time to extinction is :TE 1 ln N 0 d • Birth-Death Process – for b < d and N0 = 1 : 1 b TE ln 1 b d – depends on the absolute value of b & d (not just difference, r, as deterministic mean) – faster reproducing spp. (big b) have longer times to extinction Probability of Extinction • Assured in pure death process • Birth-Death Process – prob. of extinction by time t : d d exp rt pE (t ) b d exp rt – N0 lines of descent have to become extinct N0 d p E ( ) b – ultimate extinction is increasingly unlikely as N0 – prob. of ever extinction (b>d): increases N0 1 0.01 1E-04 1E-06 1E-08 1E-10 1E-12 1E-14 5.1 N0 9 7 5 Birth Rate 3 1 Prob. Ext. 2.1 Effect of Increasing Rates • Increasing birth rates increases variability • Increasing death rates decreases variability • In extinction probabilities, increasing variation increases extinction probabilities – Thus, for the same expected growth rate (r and R), increasing birth rates (and increasing death rates) increases chance of eventually reaching absorbing barrier Logistic Results • Extinction is certain • Time to extinction – with N0 = 1 : K e TE ; ln TE K rK – ln(TE) is a measure of stability of a population 1E+45 1E+40 1E+35 1E+30 1E+25 Te 1E+20 1E+15 1E+10 10000 1 90 0.35 0.45 r 0.25 0.15 0.05 50 10 K Summary • Dynamics and heterogeneity have a reciprocal effect on each other – Dynamics creates variability – Variability influences dynamics • The mean is not always informative – The average human being… • Studying variability (and the dynamics of variability) is usually more informative than studying the mean (and the dynamics of the mean) Extinction Summary • Probability of extinction is less likely – the greater the population size • each line of descent has to become extinct – the carrying capacity is large • the random walk is further from the absorbing boundary – the greater birth rates are compared to death rates • i.e. the larger the value of r – the smaller the variation in population size • the smaller the birth rates, but see above • Explains why the majority of populations of conservation concern tend to be large mammals in small habitats Lecture 4. Modelling Why prediction fails • Models are necessarily under-specified – They have to be to be useful • The correspondence of the causal relationships they embody to actual phenomena is never known to be perfect • The observable initial conditions are never perfectly observed • There are always unobservable initial conditions. – What if a big asteroid hits? That might be predictable in the sense that the asteroid is already on its collision course with the Earth, but from a practical viewpoint it may be unobservable • Parameters are estimates • Some processes are chaotic, such that arbitrarily small errors will cumulate to arbitrarily large deviations from prediction Principles • Exponential growth • Density Dependence – positive • cooperation; aggregation; Allee effect – negative • necessary but not sufficient for stability • Circular Causality – pathways created by interaction with environment (inc. other species) – low frequency cycles / oscillations – time delays • Limiting Factors – populations exist in complex webs of interaction, but only a few are important at particular times / places