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RioloRical Journal qf the Linnean Society (1991), 42: 105-121. With 1 figure Colonization in metapopulations: a review of theory and observations TORBJORN EBENHARD Section of Animal Ecology, Department of <oolosy, Universily of Uppsala, Box 561, S-751 22 Uppsala, Sweden In metapopulation dynamics turnover of populations in isolated patches may be frequent. Regional survival of a species in such a system with frequent extinctions hinges on its colonization ability. Colonization is more than just dispersal; when a propagule reaches a new patch i t Faces higher extinction probabilities than does an established population. Extinction models as wrll as empirical data suggest that a large propagule with a potential for rapid increase in a varying environment, 01 with a low mortality rate in an environment perceived as constant, has a higher probability of successful colonization. Large variation in population size when it is still small increases the risk of failure. Factors introducing such variation are dcmographic stochasticity and environmental variation. It is hard to single out demographic traits that ensure good colonizing ability, since colonization can be achieved in many direrent ways, but generalists and species with selffertilization seem to be superior. KEY WORDS:-Metapopulation - colonization - extinction models - propagule stochasticity - habitat fragmentation - patchy habitats. CONTENTS Introduction . . . . . . . . . . . Colonization theory . . . . . . . . . Assumptions . . . . . . . . . . Predictions . . . . . . . . . . The empirical study of colonization . . . . . Experimental introductions . . . . . . Natural colonization in metapopulations . . . Natural colonization of defaunated islands . . . Distribution patterns . . . . . . . . Discussion. . . . . . . . . . . . Acknowledgements . . . . . . . . . Referenres . . . . . . . . . . . . . . . . - . demographic . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 105 106 107 108 III 1I 1 I 14 I 14 I15 I I7 I18 I18 INTKODUC'I'ION Early metapopulation models, such as Levins's (1969) model (reviewed by Hanski, 1991) make the simplifying assumption that habitat patches are in one of two alternative states, occupied or not occupied. All populations in occupied patches are assumed to be at their carrying capacity, K . Such simple models further assume that the regional dynamics may be modelled by just two parameters, determining the colonization rate ( m ) and extinction rate (e) of local populations. An important qualitative prediction from these models is that the colonization rate must exceed a threshold value for the species to survive regionally (e.g. Hanski, 1982, 1983, 1985). 0024-4066/9 1 /010105 + 17 SOS.OO/O I05 8 1991 'l'he Linnean Society 0 1 London I06 T. EBENHARD Colonization can be dissected into several processes, starting with the emigration of individuals from an occupied patch and the subsequent dispersal through a more or less inhospitable habitat matrix (reviewed by Hansson, 1991). Immigrating individuals then face the problems of surviving and reproducing in a new habitat patch, in what is here called the colonization process proper. Colonization is defined as starting with the arrival of a propagule (the immigrating individuals) and ending when the extinction probability of the population is no longer dependent on the initial state (i.e. the propagule properties). This definition highlights the stochastic nature of the colonization process (Simberloff, 1988) and the often considerably higher extinction probability of a colonizing population in comparison with a fully established one (Williamson & Brown, 1986; Ehrlich & Murphy, 1987). If the parameter m in a metapopulation model is defined as a pure dispersal parameter (e.g. Stenseth, 1977; Shaffer, 1985), then extinctions during the colonization proper must be included in the extinction parameter e, which implies that the extinction probability for the propagule of size x is taken to be identical to that of a population at some ‘equilibrium’ size K , unless e is treated as a function of population size (Stenseth, 1977, 1981; Hanski, 1991). A better solution would be to include the complete colonization process in m, although this might affect the choice of a time step. This would be more useful in empirical studies, in which often the result of colonization rather than the process itself is observed (e.g. Pokki, 1981; Bengtsson, 1988, 1991). This definition of colonization does not preclude the possibility that propagules in the process of establishing themselves may emit propagules to other patches. In a wider context, the expression ‘colonization’ has several meanings, not all of them pertinent to metapopulation dynamics. In a classical metapopulation model all habitat patches are by definition inhabitable, and the surrounding environment is inhospitable. Furthermore, turnover is a dynamic process within the boundaries of the patch system. Thus, colonization in the meaning of passive sampling of individuals from a population that is widely distributed in the surrounding matrix (e.g. Southwood & Kennedy, 1983; Webb, 1989) or from outside the boundaries of the metapopulation (Haila, 1983), may be inappropriate notions of colonization in this context. Colonizations are, by definition, taking place only in previously empty habitat patches. Immigrating individuals may, however, reach occupied patches as well. Immigration to existing populations is of importance to metapopulation dynamics, especially to the extinction rates of small populations, by offering gene flow that may eliminate inbreeding (Gilpin, 1987) and by augmenting ailing populations (rescue effect, Brown & Kodric-Brown, 1977; Hanski, 1991). COLONIZATION THEORY Propagules that fail to colonize become extinct, and most of the theory regarding colonization stems from extinction models. A diverse collection of population extinction models has been constructed, ranging from simple equations to elaborate simulation models with numerous parameters. The assumptions and predictions of the extinction models are equally diverse, making comparisons between models and with empirical data difficult. The models described below were not constructed within a metapopulation context, but they may still offer insights. The following review of models only COLONIZATION IN METAPOPULATIONS 107 TABLE 1. A summary of assumptions and predictions of colonization models and other relevant extinction models. D, homogeneous demographic stochasticity; H, heterogeneous demographic stochasticity; E, environmental stochasticity; P,(K,x), probability to reach carrying capacity X from propagule size x; I,,time to extinction starting at propagule arrival; 'I;;,time to extinction starting at K; n,, critical population size; 1, natality rate; p, mortality rate; r, rate of increase Model MacArthur & Wilson (1967) Assumed stochasticity Predictions Parameter Dependent on D 9dbx) 41(>x eh 4r9 x Richter-Dyn & Goel (1972) D Same as for MacArthur/Wilson Existence of n, < X Leigh (1981) Variance in r, InK Variance in r, x , lnK Ehenhard (unpublished) H P,Y(KJ) 4P3 x Strebel (1985) E T A Frequency of variations in K D+E T A InK Goodman (1987a-c ) considers aspects applicable to metapopulation dynamics, and is not intended as an evaluation of the models as such. Population survival can be expressed in several ways. A common variable is the mean expected time to extinction T (e.g. MacArthur & Wilson, 1967). I t is often useful to define a starting point for the calculation of T, e.g. at the time of or after the point at which a population has first immigration of a propagule The probability of a propagule of size x to reached an equilibrium size ( TK). reach an equilibrium population size K, P,(X,x), is another useful parameter (Richter-Dyn & Goel, 1972). Another measure of population survival is the minimum viable population size (MVP), which is the smallest population with a certain preset probability to survive a certain period of time (Samson, 1983; Shaffer, 1983). Only models using or P,(X,x) can be used as models of population colonization. Examples of such models are those by MacArthur & Wilson (1967), Richter-Dyn & Goel (1972), Leigh (1981) and Ebenhard (unpublished). Colonization models may be similar to other extinction models, but they always assume a priori that the starting population size is different from the equilibrium size. Furthermore, extinction probabilities during the colonization may be dependent on parameters which are less important when the population has reached its equilibrium size, and vice versa. Two additional pure extinction models, those by Strebel (1985) and Goodman (1987a-c), offer additional predictions by inference. Table 1 summarizes the six models. (x) Assumplions An important fact of small populations is uncertainty (Tuljapurkar, 1989), hence all six extinction models employ stochasticity in one form or another. I08 T. EBENHARD Shaffer (1985) recognizes four different sources of stochastic variation in a natural system, demographic, environmental, and genetic stochasticity, as well as catastrophic events. Only demographic (all models except the Strebel model) and environmental stochasticity (the Leigh, Strebel and Goodman models) have been employed in the models in Table 1. The stochastic variation in population size and demographic rates due to the independent history of individuals is termed demographic stochasticity (see Hanski & Gilpin, 1991). The amount of such variation in population size is a function of population size. Assuming the simplest kind of demography, in which all individuals are identical and all events occur randomly distributed over individuals and time, the coefficient of variation in population size is I/JX, where X is the equilibrium population size (May, 1973; Leigh, 1975; SoulC, 1983). As opposed to such a ‘homogeneous’ demography, a ‘heterogeneous’ demography results whenever individuals are different (sex, age), or events are occurring with a non-Poisson distribution (e.g. time lags due to sexual maturation time or gravidity time) (Ebenhard, unpublished). In such cases variation in population size can be much greater (Goodman, 1987a). Among these six models, only the Ebenhard model has heterogeneous demography, but it has been employed in minimum viable population models as well (e.g. Shaffer, 1983). Environmental stochasticity is intended to describe non-deterministic variation in the environment, such as chance variation in resources and other factors, such as weather, prey abundance and diseases. Under environmental stochasticity, all individuals in a population are affected simultaneously (but not necessarily equally), which makes variation in population size independent of X (Gilpin & Soult., 1986). Leigh’s model introduces environmental stochasticity as a randomly varying intrinsic rate of increase, r, as does Goodman’s model, while X varies in Strebel’s model. The choice of the type of stochasticity constitutes an important assumption concerning fundamental properties of a natural metapopulation system. Further assumptions, common to all six models, include the homogeneous mixing (Mollison, 1986) of individuals; that is, potentially all individuals in the propagule as well as in the established population may interact with each other. In a metapopulation, this assumption is probably unnatural, since simultaneous arrival of individuals in a propagule is unlikely. Propagule size may hence be thought of as a correlate of immigration rate, with a correction for the expected lifetime of individuals. Another assumption made in all models is the absence of trends in deterministic factors. With the possible exception of the homogeneous mixing assumption, all assumptions made in the six extinction models may be appropriate in a metapopulation context, but not necessarily in all situations. Predictions The MacArthur/Wilson model is a Markovian birth-and-death process model, which relates, 7,, T,. and l‘,(K,x) to X, x , 1 and p. The colonization probability, in this case the probability to reach the carrying capacity from the propagule size, is given approximately by PS(X,X) x 1 - ( P / V (1) COLONIZATION IN METAPOPULATIONS 109 given that x << K. When x = 1 this reduces to Ps(K,l) x ( A - p ) / A = r/A. Expression 2 has often but erroneously been interpreted to mean that a good colonizer always has a high r. In this model, a high ratio of natality to mortality and a large propagule size are the most important determinants of colonization success. The time to extinction of a population varying around K, on the other hand, was found to be a function of 8.This means that there exists a threshold population size, above which extinction is highly improbable. 7, is a conglomerate of times to extinction before and after K has been reached, and is hence dependent on both the demographic rates and X. In the MacArthur/Wilson model A/p can also be expressed as R,, the net reproductive rate (Armstrong, 1978), but this approximation does not hold for the following models. The Richter-Dyn/Goel model is quite similar to the MacArthur/Wilson model, but has a logistic density dependence. The predictions from this model are also similar, including the existence of a critical population size, above which extinction is highly improbable. This critical population size is the size at which the population is defined to be established, i.e. when the future extinction probability is independent of propagule size. The Ebenhard model is a more complicated simulation model with heterogeneous demography. Regarding Ps(X,x) this model gave qualitatively the same predictions as the two preceding models (colonization success depends on Alp and propagule size), but for similar values of Alp and x, the Ebenhard model predicted much lower colonization probabilities. As heterogeneous demography changes the distribution in time and among individuals of positive events (births) in relation to negative events (deaths), with positive events more clumped to certain individuals or time periods, the best strategy to maximize A/p is to decrease p, the rate of negative events. Further predictions were that demographic traits connected with a more homogeneous demography, such as short rather than long time lags (e.g. gravidity time), small and frequent litters instead of larger and more infrequent ones, as well as asexual reproduction, increase the probability of successful colonization (Fig. 1). In both the MacArthur/Wilson and the Richter-Dyn/Goel models T, increases exponentially with X . The heterogeneous demography of the Ebenhard model does not change the shape of that dependence, but the exponential increase will be slower. The Leigh model is also a Markovian birth-and-death process model, relating and T , to r, K, and the amount of environmental variation in r. All three parameters were found to influence time to extinction, but variance in r was the most important one, through its effect on the amplitude of population fluctuations. The most important predictions of the Goodman model is that under environmental stochasticity, the time to extinction from X is a function of InK, and that there is no critical population size which would ensure long persistence. The Strebel model assumes logistic population growth coupled with randomly varying carrying capacity K. In this model 7, is related to X and its frequency of variation, r and the generation time. T[ was found to be mainly a function of the frequency of environmental fluctuations in X. This offers two < 110 T. EBENHARD I 2 5 10 /P Figure 1. The probability of reaching carrying capacity ( K ) from a propagule of size x as a function of the natality to mortality ratio ( U p ) in Ebenhard’s model. A comparison of the effects of homogeneous (filled dots) and heterogeneous demography (squares = gravidity time (G) 5 units instead of 1, circles = litter size (L) 2 instead of 1, triangle =sexual reproduction instead of asexual). The result with only homogeneous demographic stochasticity corresponds to that of both MacArthur & Wilson (1967) and of Richter-Dyn & Goel (1972). different strategies of population survival, in relation to the generation time. Periods of worse conditions should either be averaged out through long generations (low p), or tracked with a high r. The latter two models do not formulate q,.but assuming environmental variations to be pronounced during the colonization, their predictions should apply to that process as well. To summarize, if the environment is predictable (only demographic stochasticity) a good colonizer should have a high ratio of natality to mortality, best achieved through low mortality. Otherwise, a high and invariable r is advantageous, unless the bad times can be averaged out with a low rate of mortality. The ratio Alp has no dimension, whereas r is expressed per unit time. When time is important, as in a recovery of a population from low density before the next unfavourable period starts, r is probably a better predictor of colonization success than is the ratio A/p. A good colonizer should also be a good disperser, ensuring the arrival of large propagules. Traditionally, good colonizers have been believed to be r-selected (Lewontin, 1965; Pianka, 1970; Safriel & Ritte, 1980, 1983)) which is not necessarily true, COLONIZATION IN METAPOPULATIONS 111 since r is not always the critical demographic parameter. A host of characters correlated with natality and mortality rates, such as large litter size, short generation time, small body size (high r), or large body size (high Alp, better ability to withstand stress) have been put forward as important attributes of a good colonizer. Often generalists have been considered to make better colonizers (Grant, 1970; Graves & Gotelli, 1983; Ehrlich, 1986; Baur & Bengtsson, 1987) than specialists. The age composition of the propagule may also be important (Williamson & Charlesworth, 1976), as it will influence the reproductive value of the propagule (MacArthur & Wilson, 1967). Finally, asexually reproducing species may have a generally higher colonization success than sexually reproducing ones (Jain, 1976; Brown & Marshall, 1981; Baur & Bengtsson, 1987). THE EMPIRICAL STUDY OF COLONIZAllON Colonization studies in natural systems have encountered at least three major difficulties. Except under controlled laboratory conditions (e.g. Forney & Gilpin, 1989), it has been difficult to estimate the relative importance, or even the existence of different types of stochasticity. Another difficulty concerns the variables describing demography in the models, r, 1and p. These variables are often extremely hard to estimate in natural populations, not to mention their temporal and spatial variation. This means that it has been very difficult to test Strebel's (1985) predictions about the effect of r in relation to the frequency and duration of environmental disturbances. Thirdly, patterns due to the colonization process may often be altered by other processes, e.g. extinctions or adaptations long after the establishment of new populations. This problem pertains especially to studies of species distributions in archipelagoes or other fragmented areas with slow or no turnover. The empirical studies described below are of four kinds, namely experimental introductions, natural colonizations within metapopulations with turnover, natural colonizations of defaunated islands and the study of distribution patterns and characteristics of species with wide distributions on islands. All such studies contribute to the understanding of the colonization process and offer possibilities to test the theoretical models. Experimental introductions Sheppe (1965) made an early experiment with the white-footed mouse (Peromyscus leucopus (Rafinesque)). He planted propagules ranging in size from two to ten individuals on small islands in a lake, and related colonization success to the initial density (not absolute numbers) of mice. No effect of density was found, but Sheppe reported a higher colonization success on larger islands, which may have been a propagule size effect, since he released more mice on larger islands. Crowell ( 1973) introduced red-backed voles (Clethrionomys gapperi (Vigors)) ( N = 1 1 propagules) and deer mice (Peromyscus maniculatus (Wagner)) ( N = 12) to small islands off Maine, in an experimental test of the MacArthur/Wilson model. As expected, both demography and propagule size had effects on colonization success. The vole had a ratio of natality to mortality (Alp) of 1.08, I12 T. EBENHARD while the respective ratio for the mouse was 1.43. The deer mice propagules were found to be more successful as expected. The meadow vole (Microtus Pennsylvanicus (Ord)), with A/p = 1.84, was the only native rodent found to be widespread in the archipelago. This experiment could not distinguish between the effects of the ratio Alp and the intrinsic rate of increase r, since the r values of the three species covaried with the ratios (Clethrionomys: r = 0.23, Peromyscus: r = 0.55, and Microtus: r = 2.48). Propagule sizes varied between two and 16 individuals, and in both species larger propagules had higher success of colonization. Mehlhop & Lynch (1978) introduced white-footed mice to two small islands in Chesapeake Bay, using large propagules (28 and 30 mice). Both introductions were successful, but population increase was much slower on one of the islands, due to heavier mortality caused by a lack of refuges from predators on that island. This result exemplifies spatial variation between habitat patches in the values of p. Working on small Caribbean islands, Schoener & Schoener (1983) released 25 propagules of small lizards (Anolis sagrei DumCril & Bibron), using five or 10 lizards on each island. Most colonizations were successful; populations with both sexes present were found on 18 islands in the following year. No effect of propagule size on colonization probability was found, but as the ratio A/p was very high (2.52) this is expected from expression 1, with Ps(K,x) x 0.99 for five lizards and 1.00 for 10 lizards. Schoener & Schoener also found an area effect, with longer times to extinction on larger islands. No colonization model predicts area to be important in colonization, but as some of the islands were sufficiently small to make the propagule an instant carrying-capacity population ( x x x ) , the pattern found is consistent with the dependence of 7,on K . This experiment thus involved both colonization and extinction in ‘established’ but very small populations. There may have been a behavioural area effect during the early stages of colonization, as the propagules probably left the smallest islands by swimming. In a test of the MacArthur/Wilson, Richter-DynlGoel and Ebenhard models, Ebenhard (1987a, 1989) used bank voles (Clethrionomys glareolus (Schreber)) of two different provenances, and with different demography. Laboratory studies showed that voles from northern Sweden (N-population) had a much higher reproductive rate than voles from southern Sweden (S-population), mainly due to a larger litter size in N-voles. The northern voles were thus predicted to be better colonizers, but when voles of the two provenances were released on 20 islands each in the Baltic Sea, the opposite result was obtained (Table 2). The explanation was that the N-voles suffered much higher adult mortality rates (0.031 per vole and day) than did the S-voles (0.015), resulting in a very low ratio of natality to mortality (0.80 us. 1.12 in S-voles). This increased mortality may have been caused by the higher activity of the N-voles (Ebenhard, 1987). Four different propagule sizes were used, two, four, ten and 20 voles, and among the S-voles larger propagules were more successful (Table 2). Harrison (1989) made 38 introductions of the Bay checkerspot butterfly (Euphydryas editha bayensis Boisduval) to empty habitat patches, and she found very low colonization frequencies: only six patches (16%) had a population 1 year later, despite large propagules (100 larvae in each). The low success of colonization was probably due to slow initial population growth, as recorded in COLONIZATION IN METAPOPULATIONS I13 TABLE 2. A comparison of predicted and observed extinctions of vole propagules during experimental introductions (Ebenhard, 1989). The sample size is five islands in each case. Predicted extinctions are given both from the Ebenhard model with heterogeneous demography, and from the MacArthur/Wilson model with homogeneous demography. The Ebenhard model predicts number of extinctions at the end of the test run, specifically, whereas the MacArthur/Wilson model predicts the eventual result, without specifying a time scope. In order to fit these assumptions, observed extinctions are given as complete extinctions and complete plus imminent extinctions (only one sex present). Predicted and observed extinctions were tested pairwise with a binomial test. P expresses probability of receiving observed number of extinctions or any more extreme value Predicted Volc provenance Propagule size Predicted extinction: Ebenhard Observed extinction: complete 3.9 2.8 I .3 0.3 4 2.4 1.o 0.1 Observed extinction: MacArthurl complete+ Wilson imminent extinction: Test P Test P ~~ Northern 2 4 10 20 Southern 2 4 10 20 0.0 5.0 5.0 5.0 5.0 5 4 2 I .oo I .oo I .oo 0.03 4 4 0.20 0.01 4.0 3.1 4 4 2 3 1 0 0 I .oo I .oo 1.6 0.5 1 4 1 ~ I .oo 0.00 0.00 0.00 I .oo 0.66 I .oo 1 .oo the patches where the butterfly did succeed, and a high variability in environmental conditions. In a literature study of bird introductions, Ebenhard (unpublished) examined the effects of propagule size and several demographic parameters on colonization success. A clear propagule size effect was found among 116 introductions of 56 different bird species. The median size of a successful propagule was 37, while failing propagules had a median of ten individuals (P< 0.0001). Age of sexual maturation or type of mating system had no effect, but clutch size showed a positive trend (Spearman’s rank correlation, r = 0.23, N = 56, P < 0.1) and a significant positive correlation was found between body length and colonization success (Spearman’s rank correlation, r = 0.35, N = 51, P < 0.05). There was, however, a correlation between body size and propagule size, so that larger birds were introduced in larger groups. A large number of attempts to introduce dung beetles (Scarabaeidae) have been carried out worldwide, with varying success. Australia has received propagules of at least 41 species, but only ten species have become established and another 12 possibly so (Doube et al., 1991; Hanski & Cambefort, 1991). The four most successful species form a heterogeneous group of dung beetles ecologically, but share a number of attributes; they are medium sized multivoltine beetles with rapid development and high fecundity (50-1 30 eggs per female). These traits will render them a large A and probably r as well. Furthermore, they seem to be generalistic with respect to preferred soil types. Among the colonization failures, many species are larger with a very low fecundity (close to one egg per female). However, one species with such a low reproductive rate is at least locally abundant following a long period of slow population growth. This may be an example of the importance of the ratio Alp rather than r, assuming a low mortality. 114 T. EBENHARD To summarize, these experimental tests of colonization models show that both demography (e.g. Crowell, 1973; Schoener & Schoener, 1983; Ebenhard, 1987a) and propagule size (e.g. Sheppe, 1965; Crowell, 1973; Ebenhard, 1989) are important determinants of colonization success. The ratio of natality to mortality has been shown to be important, but as the intrinsic rate of increase r was correlated with R/p in these experiments (e.g. Crowell, 1973; Ebenhard, 1989), we cannot distinguish between the effects of the two demographic parameters. At this stage it is not possible to conclude much about the predictive powers of the different models. Afurther complicating factor is that R and p are not species-specific constants, but can vary considerably depending on the conditions of the island to be colonized (Mehlhop & Lynch, 1978) and with time (Harrison, 1989), demonstrating the effect of environmental stochasticity. .Natural colonization in metapopulations In studies of natural colonization in metapopulations, propagule sizes are either unknown or are expressed as rates of immigration of individuals. However, given that propagule size is important to colonization success and that immigration rates are distance dependent (see Hansson, 1991), then the pattern of occupied patches in a metapopulation system is predicted to depend on isolation. Such a situation has been found in several systems, including metapopulations of the Bay checkerspot butterfly (Harrison et al., 1988), orb spiders (Toft & Schoener, 1983), amphibians (Laan & Verboom, 1990.; Sjogren, unpublished), the spruce grouse (Canachites canadensis (L.)) (Fritz, 1979), shrews (Sorex) (Hanski, 199l ) , the pika (Ochotona princeps (Richardson)) (Smith, 1980), and the field vole (Microlus agrestis (L.)) (Pokki, 1981). Such patterns may, however, also arise without any effect of the propagule size. The effect of demography on colonization success is also often difficult to assess, since usually only one species is studied in each system. Bengtsson’s study of rockpool Daphnia (1991) involved three species, but he found no differences in their colonization abilities. Schoener & Spiller (1987) found extinctions to be most frequent in small and newly established spider populations. An explanation may be that these extinctions occurred during the colonization process rather than in established populations close to K . If so, this supports the existence of a critical population size below which a colonizing population has a higher extinction risk. Some of these studies (Fritz, 1979; Smith, 1980) show that the time scales of within- and between-patch dynamics may be quite similar. This means that the turnover rate of populations approaches that of individuals, and many populations will last only for a few generations (e.g. Addicott, 1978). In Smith’s (1980) study of the pika each habitat patch was occupied by a family rather than a population. With such small populations, the propagule size must inevitably be very close to the carrying capacity, and the colonization process will depend much more on the behaviour of individuals rather than on population demography (MacArthur & Wilson, 1967). Afatural colonization of defaunated islands Data on the recolonization of defaunated islands are potentially relevant to the testing of colonization models, but there are problems in interpreting the COLONIZATION IN METAPOPULATIONS 115 data. The best way to test the models would be to analyse the colonization order of different species in relation to their demographic attributes and dispersal abilities. On islands which have been defaunated by natural catastrophes, such as Krakatau (e.g. New et al., 1988) or Motmot Island (Ball & Glucksman, 1975), the order of colonization is greatly influenced by the succession of vegetation on the island. In experimental studies where only the animals have been removed, leaving the vegetation intact, such as in the studies by Rey (Rey & Strong, 1983; Rey, 1984) and Simberloff (e.g. Simberloff, 1981) , differences in colonization ability between species have been observed, but no independent measures of the dispersal ability or demography of the species concerned were provided. Distribution palterns Analyses of distribution patterns among islands, and comparisons between species that had colonized and those which had not, may also give valuable empirical information. A major problem with such analyses is that it may be hard to distinguish between the effects of characters which facilitate colonization and those which ensure long-time persistence on islands. The presence of a species on an island may depend on processes other than just colonization. Generalists have been predicted to be better colonizers than specialists, because they are more easily able to find sufficient resources on an island to achieve a high ratio of natality to mortality. Empirical evidence supporting this prediction has been found for terrestrial snails (Baur & Bengtsson, 1987) and carabid beetles (Niemela, Haila & Halme, 1988; As, unpublished) which have colonized islands in the Baltic Sea, marine species colonizing the Mediterranean Sea through the Suez Canal (Safriel & Ritte, 1983), lizards found on islands of the Gulf of California (Case, 1975) and passerine birds introduced to Hawaii (Moulton & Pimm, 1986). Baur & Bengtsson found a tendency for species with self-fertilization to be better colonizers, as did Price & Jain (1981) for colonizers in the British flora. Rydin & Borgegird (1988, and unpublished) analysed the order of colonization of plant species on islands created in Lake Hjalmaren, Sweden, following the lowering of the water level. They found pioneering species to be self-fertilizing annuals which often lacked vegetative reproduction. Several authors have tried to relate colonization success to the intrinsic rate of increase, r, or some correlate of r, using Pianka’s (1970) concept of r- and K-selection, with mixed results. Baur & Bengtsson (1987) found no correlation between colonization order of snail species and any life-history trait related to r-selection (e.g. age and size at maturity, life span, clutch size, net reproductive rate). This does not necessarily mean that r is unimportant, only that individual demographic traits may be poor correlates of r. Safriel & Ritte (1983) found the gastropod Cerithium scabridum Phil. to be a better colonizer than C. caeruleum Sow., which they attributed to the higher r of the former species. Case (1975) used a reproduction parameter, composed of annual egg production and age at sexual maturation, and adult survivorship in his analysis of lizard distributions on islands, but could not find any correlation between these two parameters and the number of islands occupied. However, if these two parameters are combined into one, which resembles A/p, a general concordance with the number of occupied islands emerges, albeit in a very small sample (my analysis). 116 T. EBENHARD In an analysis of bird invasions in Great Britain, O’Connor (1986) found larger and more frequent clutches in species which have recently invaded the British Isles, in comparison with sporadically occurring species which have not done so. An increased egg-production probably increases A, and as O’Connor argued that the number of clutches does not increase adult mortality, this would suggest a higher r and Alp in species with large and more frequent clutches. Lawton & Brown (1986) made a broad analysis of all animal taxa which have recently invaded Great Britain. They assumed both r and the level of abundance variation to be negatively correlated with body length, and then used body length as a demographic parameter. The general pattern found was that large animals were better colonizers than small ones, despite their lower r, because of lower levels of fluctuations. Amongst the insects, however, they found the opposite results. Both Lawton & Brown, as well as Williamson & Brown (1986), doubted whether r in itself is a good determinant of colonization success, and stressed the difficulties in finding common traits in good colonizers. A different approach was taken by Lomolino (1984), who argued that frequent colonization events in a metapopulation would give rise to selection for traits that increase colonization success. He found a trend in body size of meadow voles (Microtus pennsyluanicus), with heavier voles on more distant islands. Lomolino (1 984) argued that this result was due to immigrant selection during dispersal from the mainland to the islands, as large voles are better swimmers than small ones. Analogously, Ranta & As (1982) found a higher proportion of longwinged carabid beetle species on Dutch polder islands than on the adjacent mainland, implying dispersal capabilities to be of importance for colonization success. Hanski, Peltonen & Kaski (unpublished) found longer hind legs in shrews (Sorex araneus L.) dispersing to small islands in a Finnish lake. Such attributes that increase the individual’s probability of successful dispersal, also increase the immigration rate and hence the propagule size. Ebenhard (1990) compared in a laboratory study the rate of reproduction of field voles (Microtus agrestis) from the Stockholm archipelago in the Baltic Sea and the mainland. The island voles were considerably heavier, grew faster, had larger and heavier litters, and made a larger reproductive effort in relation to their body size than the mainland voles. The duration of gravidity and the age of sexual maturity were similar in the two laboratory colonies. This pattern of life history traits found in the island population does not fit the description of an r-selected species, but probably both r and Alp are larger in the island voles. The large body size may additionally be an adaptation to swimming in cold water. In neither this study nor in Lomolino’s study can adaptation to the island habitat itself be ruled out as an alternative to colonization selection. Despite the difficulties in distinguishing between different determinants of colonization success in the analysis of distribution patterns, some conclusions may be drawn. A good colonizer is often a generalist with good dispersal abilities and a high reproductive rate (A). As suggested by Hanski & Ranta (1983), there may be a trade-off between being a good colonizer and being able to persist for a long time in a habitat patch, e.g. due to good competitive ability. Hutchinson’s (1951) concept of fugitive species, Diamond’s (1974) idea of supertramps, as well as the classical r-K dichotomy (Pianka, 1970) rest on such notions. Peltonen & Hanski COLONIZATION IN METAPOPULATIONS 117 (unpublished) found that the common shrew (Sorex uruneus) was a better disperser than the smaller pygmy shrew (S. minulus L.), which, however, was offset by the assumed lower mortality in the smaller species, due to its lower per capita food requirements, resulting in similar colonizing abilities. O n the other hand, Simberloff (1981) did not find any trade-off between colonization ability and persistence time in his study of mangrove island insects, nor did Rydin & BorgegHrd (unpublished) in their study of plants on small islands in Lake Hjalmaren, Sweden. DISCUSSION Unless the regional persistence of a species is ensured by large, more or less permanent source patches (Boorman & Levitt, 1973; Schoener & Spiller, 1987; Harrison, Murphy & Ehrlich, 1988), the colonization ability of a species will be crucial to its survival in a patchy habitat. All four colonization models reviewed here predict demographic parameters and propagule size to be important determinants of colonization success. This prediction is supported by empirical data, especially by the results of experimental colonizations. However, the field data are not detailed enough to weigh the contributions of different demographic parameters, such as r and A/p, nor can we say which theoretical model most closely predicts colonization success. The models also suggest that a large propagule size, which is a function of, for example, dispersal ability, is more crucial when the rate of population increase ( d / p or r ) is low, and conversely that a high rate of increase is more crucial when propagules are small. This implies that ecologically dissimilar species may be equally successful survivors in a fragmented habitat, relying on different strategies. Some generalizations about the attributes of good colonizers, such as being a generalist and a selfer, are supported by data, but others are not, e.g. being ‘r-selected’. In three of the four colonization models, including the most commonly used MacArthur/Wilson ( 1967) model, only demographic stochasticity is assumed. When a population is small, as it almost always is in the beginning of a colonization, demographic stochasticity is thought to be more important than environmental stochasticity in causing fluctuations in population size. Early models (e.g. Richter-Dyn & Goel, 1972) indicated that only populations smaller than 20 would be affected by demographic stochasticity, but more recent literature has increased that figure towards at least 100 (Shaffer, 1987; Lande, 1988; Forney & Gilpin, 1989), partly due to the variation in population size induced by heterogeneous demography (Ebenhard, unpublished). Furthermore, the colonization may be a fast process in relation to environmental fluctuations, so that a colonization event takes place within a time period of relative constancy, given values of d and p set by the environment and its variation. Each colonization attempt would then take place under different conditions, but the process would be adequately described by a model with only demographic stochasticity. Environmental stochasticity may thus determine when colonization success would be more probable, but during the colonization process itself, especially initially when the population is small, demographic stochasticity would be more critical. T. EBENHARD 118 The conclusion to be drawn from this review, is that the extinction probabilities may be considerably higher for a colonizing population than for an established one, and may be determined by a different set of parameters (e.g. Alp, instead of r ) . When designing metapopulation models and analysing real metapopulations this fact should be considered. The exact way to introduce a colonization probability in a metapopulation model depends on the basic assumptions made, but in general within-patch dynamics must be recognized, not just between-patch dynamics as in the original Levins model. This review also has implications for the management of species living in a patchy habitat. General attributes of a good colonizer have been recognized by both theoretical and empirical studies, but actual values of demographic parameters, as well as dispersal abilities, may be very different even between closely related species. This means that the vulnerability of a threatened species in fragmented areas cannot be assessed without careful autecological studies (Gilpin & SoulC, 1986; Gilpin, 1987). In general, colonization models and empirical results suggest that short distances between habitat patches, habitat corridors (Noss, 1987; Simberloff & Cox, 1987), and a high quality matrix increase colonization probabilities by increasing immigration of individuals. ACKNOWLEDGEMENTS I am indebted to Michael Gilpin and Ilkka Hanski, who invited me to the Lammi symposium on metapopulations, and helped me organize my thoughts into a paper. 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