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JAE478.fm Page 80 Saturday, February 3, 2001 11:32 AM Journal of Animal Ecology 2001 70, 80 – 90 Effects of intra- and interspecific interactions on species responses to environmental change Blackwell Science, Ltd JEREMY W. FOX* and PETER J. MORIN Department of Ecology, Evolution, and Natural Resources, Cook College, Rutgers University, 14 College Farm Rd, New Brunswick, NJ 08901–8551, USA Summary 1. The extent of directional environmental change expected in the next century underscores the need to understand density-dependent population regulation. 2. Direct density dependence generated by intraspecific competition and /or predator– prey interactions should buffer environmentally produced changes in density-independent growth rates (r). Density dependence generated by interspecific competition should magnify sensitivity to changes in r. 3. We tested these predictions by assembling protist communities in laboratory microcosms and subjecting the communities to directional environmental change. Two experiments used pairs of competing protists (Colpidium striatum Stein and Tetrahymena thermophila Nanney & McCoy, and Paramecium tetraurelia Sonneborn and Blepharisma americanum Suzuki) along with single-species controls. Two experiments used predator–prey pairs (Didinium nasutum Müller or Euplotes patella Ehrenberg preying on Colpidium) and controls containing only prey. We grew replicates of each species combination in two temperature regimes (constant or slowly increasing temperature). Independent of these experiments, we quantified the temperature dependence of r (intrinsic rate of increase) for each species. 4. Comparison of effects of temperature on r to effects on mean density revealed that intraspecific competition buffered species densities against temperature changes that increased r by over 200%. Interspecific interactions did not affect species responses to environmental change. Temperature change had weak effects on species densities, whether or not other species were present. 5. The results suggest that natural populations, regulated by direct density dependence, may be buffered against directional environmental change. Environmental change will have large effects when populations experience little density dependence, and when environmental change has different effects on the vital rates of different species. Key-words: density dependence, protists, microcosms, temperature change Journal of Animal Ecology (2001) 70, 80–90 Introduction The importance of density dependence is a central question in ecology (e.g. Nicholson 1933; Andrewartha & Birch 1954; Dennis & Taper 1994; Murdoch 1994; Turchin 1995). Understanding density dependence takes on added importance from expected directional changes in global climate in the next century (IPCC © 2001 British Ecological Society Correspondence: Jeremy Fox. *Present address and correspondence: Jeremy Fox, NERC Centre for Population Biology, Imperial College at Silwood Park, Ascot, Berkshire, SL5 7PY, United Kingdom, Tel.:. + 44 (0)20 75942475, Fax: + 44 (0)1344 873173. 1996). Responses of individuals, species, and communities to climate change will depend on how per-capita growth rates vary with population densities, but we lack a general understanding of how density dependence will affect species responses to climate change (Ives 1995; Sæther et al. 2000). Predicted effects of climate change derive largely from individual- or species-level responses (Bazzaz 1990; Oechel et al. 1994; Vitousek 1994; Barry et al. 1995). These predictions assume that individuals or species do not interact, so that individual- or specieslevel responses can be aggregated to predict responses of multispecies communities and ecosystems (Bolker et al. 1995; Pacala & Deutschman 1996; Weiner 1996; JAE478.fm Page 81 Saturday, February 3, 2001 11:32 AM 81 Species interactions and environmental change Davis et al. 1998a,b). This assumption fails if populations are regulated by density dependence generated by intra- and interspecific interactions (Davis et al. 1998a,b). Recent theoretical and empirical work indicates that intra- and interspecific interactions significantly affect responses of species and communities to environmental change (Ives & Gilchrist 1993; González & Frost 1994; Bolker et al. 1995; Lawton 1995; Körner & Bazzaz 1996; Pacala & Deutschman 1996; Weiner 1996; Brown, Valone & Curtin 1997; Davis et al. 1998a,b; Díaz et al. 1998; Navas 1998; Whittaker & Tribe 1998). However, there are few general theoretical treatments of such effects (but see e.g. Hassell, Godfray & Comins 1993). Many models generate predictions from taxon-specific physiological considerations, e.g. indirect effects of CO2 increase on herbivorous insects mediated by changes in leaf chemistry (Lindroth 1996; Kinney et al. 1997). General, qualitative predictions may be possible by focusing on net effects of the environment on population growth rates, and of species on one another. Consider a linear autoregression model of singlespecies population growth, n(t + 1) = b0 + ae(t) + n(t) + b1n(t) + ε(t, n) eqn 1 where n(t) is abundance at time t. The parameter b0 is the environment-independent component of densityindependent growth rate (intrinsic rate of increase). Density-independent growth rate is also a linear function (with slope a) of an environmental factor, represented by the random variable e(t). The environmental factor may be a single key factor like temperature or pH, or a composite measure summarizing the magnitudes of several different environmental variables. Directional environmental change is represented by a change in the long-term mean of e. Abundance at time t + 1 is also a linear function ( parameterized by b1) of abundance at time t. The ‘error’ term ε includes both environmental variability not captured by e(t) and residual nonlinear effects of n(t) (for more details see Ives & Gilchrist 1993; Ives 1995). Long-term mean abundance (denoted by N ) equals −(aE + b0 ) -------------------------b1 eqn 2 where E denotes long-term mean environmental conditions. Equation 2 is the negative of the ratio of density-independent growth rate to the strength of density dependence. The change in N with a change in E is given by -------------∆N = −a∆E b1 © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 eqn 3 when residual nonlinear effects of n(t) are small (Ives 1995). The numerator in eqn 2 is the change in densityindependent growth rate produced by change in E. Equation 2, and its multispecies extension, allow three general, qualitative predictions of the effect of community structure on species responses to environmental change. First, strong intraspecific competition (b1 < < 0) generates direct density dependence (sensu Turchin 1995) that will buffer N against changes in E (Ives & Gilchrist 1993; Ives 1995). Second, predator–prey interactions also generate direct density dependence and should also buffer N against changes in E (Royama 1981; Turchin & Taylor 1992; Ives & Gilchrist 1993). Third, inverse density dependence (Turchin 1995) generated by interspecific competition will increase the effect of changes in E on N (Ives & Gilchrist 1993; Frost et al. 1995). These predictions assume that the strength of density dependence is independent of e. Otherwise, predicting effects of environmental change on abundance will require detailed knowledge of how the strength of density dependence varies with e. Testing these predictions in most natural communities would be difficult (but see Ives, Carpenter & Dennis 1999; Sæther et al. 2000). Most species potentially interact directly or indirectly with many others, and intrinsic rates of increase (r values) of different species will depend on e in different ways. We tested these three predictions by examining the effects of directional change in a key environmental factor (temperature) on simple communities of protists in laboratory microcosms. Much of the world is expected to warm during the next century (IPCC 1996). Protists are useful for temperature-change experiments because temperature strongly affects protist growth rates ( Norland & Gojdics 1967). Protist microcosms permit collection of longterm (dozens to hundreds of generations) population dynamic data in a reasonable amount of time, using communities with known composition and species interactions (Lawler & Morin 1993). Microcosms allow the experimental control and replication necessary to separate effects of temperature from effects of species interactions. Environmental manipulations can be maintained over many generations, and can involve gradually changing conditions as well as the static, contrasting conditions typical of field experiments on environmental change. Like field experiments, microcosm experiments advance understanding by revealing the effects of environmental change that would occur under a particular set of circumstances. We first measured density-independent growth rates (intrinsic rates of increase, r) at various temperatures. We compared mean densities in constant environments to densities in gradually warming environments to test whether direct density dependence generated by intraspecific competition affected responses to temperature change. We expected that mean densities in increasing temperature environments would change in the same direction as r (e.g. if r increased at higher temperatures, mean density would increase), but that changes in mean density would be small if intraspecific competition was strong. We grew two pairs of competing protists, and two predator–prey pairs, in both constant- and increasing-temperature environments to test whether direct density dependence generated by JAE478.fm Page 82 Saturday, February 3, 2001 11:32 AM 82 J.W. Fox & P.J. Morin predation, or inverse density dependence generated by interspecific competition, affected responses to temperature change. Predator–prey interactions, like intraspecific competition, should prevent effects of environmental change (e.g. if increasing temperatures decreased mean prey density, prey density would decrease less with predators present than without predators). Competitive interactions should enhance effects of environmental change (e.g. if increasing temperatures increased the density of a competing species, its density would increase more with a competitor present than without). Methods Microcosms were loosely capped 240 mL glass bottles containing 100 mL of growth medium (0·28 or 0·56 g of Carolina Biological Supply Protozoan Pellets /L of well water, depending on the experiment [Table 1]) and two wheat seeds to provide additional, slow-release carbon and nutrients. We autoclaved these materials before use. We inoculated bacteria (Serratia marcescens Bizio, Bacillus cereus Frankland & Frankland, and Bacillus subtilis [Ehrenberg] Cohn) 24 h before addition of protists to standardize food for the bacterivores. Bacterivorous protists (Colpidium striatum, Tetrahymena thermophila [mating type VII], Blepharisma americanum, and Paramecium tetraurelia [mating type VII]) served as competitors, and Colpidium served as the prey for the predators (Didinium nasutum or Euplotes patella, depending on the experiment). We added predators 3 –5 days after Colpidium. Colpidium, Blepharisma, Didinium, and Euplotes were obtained from Carolina Biological Supply (Burlington, NC). Tetrahymena and Paramecium were obtained from the American Type Culture Collection (Rockville, MD, ATCC No. 30307 and No. 30568, respectively). We added protists as ~2 mL volumes drawn from agitated stock cultures. Weekly addition of one sterile wheat seed to each culture and replacement of 10% of the (agitated) culture medium with fresh, sterile medium ensured that bacteria did not exhaust the carbon or nutrient supplies. Sampling occurred every 2–3 days using standard procedures (Lawler & Morin 1993). We agitated microcosms and withdrew 10 drops of medium (~0·3 mL) with a sterile Pasteur pipette. Sample volume was determined by weight. We counted protists using a Nikon SMZ-U stereoscopic microscope. If protists were numerous, we diluted the sample by weight (~10fold to ~40-fold dilution, as necessary), subsampled from the dilution, and back-calculated to obtain density in an undiluted sample. We converted counts to log10[(n per mL) + 1] and calculated geometric mean density over time for each species in each replicate. Use of geometric means reduced heteroscedasticity. For populations that became extinct, we excluded post-extinction zero counts from the calculations. We included intermittent zero counts resulting from sampling low (but non-zero) densities. Measurement of r at various temperatures (2 – 4 replicates per species per temperature) quantified the direct effect of temperature on density-independent growth rate. We measured r at the lowest and highest temperatures each species experienced during subsequent density-dependence experiments (see next subsection); measurements of r were separate from and independent of these experiments. We measured r for Tetrahymena and Colpidium at several other temperatures as well. An incubator (accurate to ±1 °C) controlled temperature. We added low numbers of protists (< 20, the number in one Pasteur pipette drop [~0·03 mL] ) from Table 1. Designs of the density dependence experiments. Each experiment is a factorial design repeating each protist treatment in two temperature treatments. Protists are listed by genus. Temperature treatments are constant (at the indicated temperature), or increasing stepwise by 1 °C once every 3 –5 days. Interspecific interactions were either competitive, or predator–prey; NA = not applicable. Each experiment used Protozoan Pellet (PP) medium at a concentration of 0·56 g PP L –1, except for the Colpidium– Tetrahymena experiment (0·28 g PP L–1). A lower concentration was used in the Colpidium–Tetrahymena experiment because Colpidium rapidly excludes Tetrahymena in more concentrated medium (J. W. Fox, unpublished data). Due to logistical constraints, the increasing temperature treatment in the Colpidium–Tetrahymena experiment began 1 °C higher than the constant temperature treatment. In the Colpidium–Didinium experiment, we did not increase the temperature beyond 27 °C © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 Protist treatments Temp. treatments Intersp. interaction Blepharisma alone Paramecium alone Both spp. together Colpidium alone Tetrahymena alone Both spp. together Colpidium (prey) alone Colpidium + Didinium Colpidium (prey) alone Colpidium + Euplotes 15 °C, 15 °C + 1 °C/5 days 15 °C, 15 °C + 1 °C/5 days 15 °C, 15 °C + 1 °C/5 days 22 °C, 23 °C + 1 °C/3 – 4 days 22 °C, 23 °C + 1 °C/3 – 4 days 22 °C, 23 °C + 1 °C/3 – 4 days 22 °C, 22 °C + 1 °C/5 days 22 °C, 22 °C + 1 °C/5 days 15 °C, 15 °C + 1 °C/5 days 15 °C, 15 °C + 1 °C/5 days NA NA Competition NA NA Competition NA Predator–prey NA Predator–prey JAE478.fm Page 83 Saturday, February 3, 2001 11:32 AM 83 Species interactions and environmental change stock cultures acclimated for several days at each temperature, and sampled 2–3 times per day throughout the initial period of log-linear (exponential) growth (i.e. before protists became dense enough to experience any intraspecific competition). This period lasted 36 – 96 h depending on the species and temperature. The slope of a linear regression of ln[(n per mL) + 1] vs. time (h) estimated r in each replicate. All r-values were measured in 0·56 g PP/L cultures. © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 We conducted two competition experiments, and two predator–prey experiments, to assess how densitydependent intra- and interspecific interactions affected the response of mean protist densities to temperature change (Table 1). Treatments were randomly assigned to bottles. For each competing species, experiments were complete factorial designs, crossing the presence or absence of a competing species with constant or slowly increasing temperature. For prey, experiments used complete factorial designs, crossing the presence or absence of a predator with constant or slowly increasing temperature. For predators, experiments used single-factor designs with temperature as the factor, since predators cannot grow without prey. Competition experiments used four replicates per treatment combination; predator–prey experiments used five. Protist stock cultures acclimated to initial temperature regimes for several days. We used s and post-hoc tests to examine predicted effects of intra and interspecific interactions on responses to temperature change. We analysed geometric mean density of each prey or competitor species in each experiment using a 2-way for the effects of the other species, temperature regime, and their interaction. We also compared means with a Tukey’s post-hoc test. We tested for effects of intraspecific competition on each species by comparing mean density in the ‘constant temperature/no competitors or predators’ treatment to mean density in the ‘increasing temperature / no competitors or predators’ treatment. Lack of a significant difference between these two treatments (according to the Tukey’s test) indicates direct density dependence generated by intraspecific competition buffered species against temperature change. A significant difference between these two treatments indicates weak intraspecific competition allowed mean density to respond to temperature change. If intraspecific competition is weak, mean densities in the increasing temperature treatment should be significantly higher or lower than constanttemperature densities, depending on how temperature change affected r (e.g. if r increased at higher temperatures, mean density should be higher in the increasing temperature treatment). We tested for effects of interspecific interactions on the responses of prey and competitors to temperature change using the interaction terms in the 2-way s. Significant interaction terms indicate that responses to temperature change varied depending on whether or not another species was present. Significant interaction terms suggest an important influence of community structure (density dependence generated by interspecific interactions) on species responses to environmental change. We expected the form of the interaction to vary depending on whether the other species was a predator or competitor. If the other species was a predator, the interaction term should reveal a smaller effect of temperature change with the predator than without it. For example, if increasing temperatures decreased mean prey density, prey density would decrease less with predators present than without predators, generating a significant predator × temperature interaction term in the . If the other species was a competitor, the interaction term should reveal a larger effect of temperature change with the competitor than without it. The s are conservative tests for the effects of interspecific interactions. might not reveal important effects of interspecific interactions, depending on the way that per-capita growth rates vary with densities. For instance, if a predator strongly suppresses its prey, and prey compete intraspecifically only at high density (i.e. without the predator), temperature change will have little effect on mean prey density. will not reveal an interactive effect of community structure and temperature change in this case, even though community structure (a predator–prey interaction) regulates prey with the predator present. We tested the effect of temperature change on mean predator densities using a 1-way . We expected predators to be well-buffered against temperature change since both intraspecific competition and predator–prey interactions generate direct density dependence. We could not separate effects of intraspecific competition and interspecific (predator–prey) interactions on predator densities because predators cannot grow without prey. Results r Temperature strongly affected r for most species (Fig. 1, Table 2). Colpidium and Tetrahymena exhibited Q10 values of about 2–3 (i.e. a 10 °C increase in temperature doubled or tripled r) from 10 °C up to approximately 22 – 27 °C (Fig. 1a). At higher temperatures, r began to level off (Fig. 1a, Table 2). Effects of temperature on r for Colpidium and Tetrahymena resemble those observed for other protists (Fig. 1a, Fenchel 1987). In the Blepharisma–Paramecium competition experiment, Paramecium attained a relatively constant density in all treatments after ~15 days (Fig. 2b,c,e,f). JAE478.fm Page 84 Saturday, February 3, 2001 11:32 AM 84 J.W. Fox & P.J. Morin Table 2. Temperature dependence of r. (a) Results of 1-way s for effect of temperature on r. No statistical test is possible for Didinium because Didinium failed to grow in one of two replicates at 27 °C. (b) For Colpidium and Tetrahymena, temperatures sharing a letter produce r-values which do not differ significantly in a Fisher’s protected LSD test (P > 0·05) Species d.f. F P (a) Colpidium Tetrahymena Blepharisma Euplotes Paramecium 9, 10 8, 9 1, 1 1, 1 1, 1 34·472 54·351 18·857 18·529 48·352 < 0·0001 < 0·0001 0·0122 0·0077 0·0022 Species Temperature (°C) (b) Fisher’s protected LSD tests Colpidium 10 12 16 18 20 22 25 27 29 31 a b c cd e ef de de e f Tetrahymena 10 12 16 20 22 25 27 29 31 a a b b c d d c c Fig. 1. Temperature dependence of r for the protists used in this study. Symbols give means (± SE). Some error bars are smaller than the symbols. (a) All species. (b) A portion of (a), rescaled to better display species with low r-values. Symbols in (b) are slightly offset horizontally to enable clear display of error bars. Blepharisma growing alone increased slowly, reaching a constant density only after ~40 days (Fig. 2a,d). No extinctions occurred. Interspecific competition significantly reduced the geometric mean density of Blepharisma (2-way , main effect of interspecific interaction, F1,12 = 269·282, P < 0·0001; Table 3a). Competition reduced Blepharisma density less in © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 increasing temperatures ( interaction term, F1,12 = 9·959, P = 0·0083), although a Tukey’s post-hoc test lacks the power to detect this difference (Table 3a; Tukey’s test detects only the main effect of interspecific competition). In the Colpidium–Tetrahymena competition experiment, Colpidium and Tetrahymena each grew quickly to high density in both constant and warming environments, and then declined during the second half of the experiment (Fig. 3a,b,d,e). Tetrahymena went extinct in one constant-temperature replicate containing Colpidium. Increasing temperature significantly decreased mean Colpidium density (2-way , main effect of temperature, F1,12 = 9·789, P = 0·0087; Table 3b). Fig. 2. Population dynamics from the Blepharisma–Paramecium competition experiment. Each panel shows dynamics from a representative replicate. JAE478.fm Page 85 Saturday, February 3, 2001 11:32 AM 85 Species interactions and environmental change Table 3. Results of the density dependence experiments. Treatments are the presence or absence of an interspecific interaction, and constant or increasing temperature. For each prey or competitor species in each experiment, mean densities sharing a letter do not differ significantly in a Tukey’s test at the P = 0·05 level. Densities are not compared across species or experiments Intersp. int. Temp. Geometric mean density ± 1 SE (a) Blepharisma–Paramecium experiment Absent con. Blepharisma: 1·937 ± 0·053 Absent incr. Blepharisma: 2·079 ± 0·022 Present con. Blepharisma: 1·194 ± 0·048 Present incr. Blepharisma: 1·582 ± 0·007 a a b b Paramecium: 2·126 ± 0·095 Paramecium: 2·134 ± 0·044 Paramecium: 2·156 ± 0·028 Paramecium: 2·089 ± 0·020 a a a a (b) Colpidium–Tetrahymena experiment Absent con. Colpidium: 2·857 ± 0·056 Absent incr. Colpidium: 2·666 ± 0·054 Present con. Colpidium: 2·826 ± 0·029 Present incr. Colpidium: 2·664 ± 0·076 a b a b Tetrahymena: 2·393 ± 0·021 Tetrahymena: 2·294 ± 0·038 Tetrahymena: 1·035 ± 0·204 Tetrahymena: 0·969 ± 0·122 a a b b (c) Colpidium–Didinium experiment Absent con. Absent incr. Present con. Present incr. Colpidium: 3·245 ± 0·031 Colpidium: 3·145 ± 0·073 Colpidium: 1·780 ± 0·123 Colpidium: 1·873 ± 0·075 a a b b Didinium: 0·772 ± 0·018 Didinium: 0·878 ± 0·028 (d) Colpidium–Euplotes experiment Absent con. Absent incr. Present con. Present incr. Colpidium: 2·970 ± 0·033 Colpidium: 3·007 ± 0·022 Colpidium: 1·866 ± 0·193 Colpidium: 2·304 ± 0·111 a a b b Euplotes: 0·918 ± 0·046 Euplotes: 0·788 ± 0·058 Fig. 3. Population dynamics from Colpidium–Tetrahymena competition experiment. Each panel corresponds to dynamics from a representative replicate. © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 Competition from Colpidium significantly decreased mean Tetrahymena density (2-way , main effect of interspecific interaction, F1,12 = 123·268, P < 0·0001; Table 3b). In the Didinium–Colpidium predator–prey experiment, Colpidium without Didinium grew quickly to high density in both constant and changing environments (Fig. 4a,c). Didinium generated fluctuating predator–prey dynamics in both environments (Fig. 4b,d). Didinium became extinct in one replicate of the increasing temperature treatment soon after being added. We excluded this replicate from all analyses. Didinium became extinct in all remaining increasing temperature replicates by Day 33, but persisted in all constant temperature replicates until the experiment ended (Fig. 4b,d). Didinium significantly decreased JAE478.fm Page 86 Saturday, February 3, 2001 11:32 AM 86 J.W. Fox & P.J. Morin Fig. 4. Population dynamics from the Didinium–Colpidium predator–prey experiment. Each panel shows dynamics from a representative replicate. Fig. 5. Population dynamics from the Euplotes–Colpidium predator–prey experiment. Each panel shows dynamics from a representative replicate. © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 mean Colpidium density (2-way , main effect of interspecific interaction, F1,15 = 266·791, P < 0·0001; Table 3c). Increasing temperature significantly increased mean Didinium density (1-way , F1,7 = 10·531, P = 0·0142; Table 3c). In the Euplotes-Colpidium predator–prey experiment, Colpidium without Euplotes grew quickly to high density in both constant and changing environments (Fig. 5a,c). Euplotes reduced Colpidium density and, in some replicates, apparently generated cyclic predator– prey dynamics with a period approximately equal to the length of the experiment (Fig. 5b,d). In one constant temperature replicate, Euplotes drove Colpidium extinct by Day 25 and became extinct itself by Day 40. We included this replicate in all analyses; deleting it from the analyses did not affect the results. Euplotes significantly reduced mean Colpidium density (2-way , main effect of interspecific interaction, F1,16 = 64·299, P < 0·0001; Table 3d). Increasing temperatures reduced mean Colpidium density, although the effect was not quite significant (2-way , main effect of temperature, F1,16 = 4·433, P = 0·0514; Table 3d). Temperature change did not affect mean Euplotes density (1-way , F1,8 = 3·107, P = 0·1160; Table 3d). JAE478.fm Page 87 Saturday, February 3, 2001 11:32 AM 87 Species interactions and environmental change © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 Discussion The main conclusion of these experiments is that strong intraspecific density dependence appeared to buffer densities against temperature changes that substantially altered intrinsic growth rates (Fig. 1, Table 3). Increasing temperatures raised r by as much as 200% but failed to increase mean densities, even in the absence of the complications of predators and competitors. Natural populations may respond similarly to directional environmental change (see Whittaker & Tribe 1998 for a possible example). Vital rates of natural populations are frequently density-dependent (e.g. Alvarez-Buylla 1994; Wills et al. 1997; Fryxell et al. 1998; Jenkins et al. 1999; Silva Matos, Freckleton & Watkinson 1999; Webb & Peart 1999), and natural population dynamics often are well-described by single-species models containing intraspecific density dependence (Woiwod & Hanski 1992; Turchin & Taylor 1992; Dennis & Taper 1994; Turchin 1995; Zeng et al. 1998). Species interactions may simplify rather than complicate the task of predicting species responses to directional environmental change if species interactions typically generate direct density dependence in population growth rates. An alternative interpretation of these results is that the protists may have stopped dividing early in the experiments, due to stress from increasing temperatures or ageing medium. Non-dividing populations would not change with time or vary in density between temperature treatments. This explanation seems unlikely. The highest temperatures experienced were not stressful, since temperature increase generally increased r (Fig. 1). Prey grew rapidly following overexploitation by predators, and Blepharisma increased throughout the experiment, indicating that reproduction continued in old cultures (Figs 2, 4). A non-reproducing population should decline by 10% per week as a consequence of medium replacement, but many populations did not decline (Figs 2, 3a,c). More likely, protist densities stabilized when densitydependent division rate balanced mortality (see below). These patterns are not an artefact of ignoring bacterial dynamics. We ignored bacterial dynamics in order to focus sampling effort on the protists. Bacteria can be ignored because bacterial dynamics are fast relative to protist dynamics (Schaffer 1981). Interspecific interactions failed to modify responses to environmental change, except for Blepharisma (Table 3). Strong intraspecific competition may have prevented any effect of interspecific interactions on species responses to environmental change. A population dense enough to experience strong intraspecific competition might not be affected by temperature change, regardless of predation or interspecific competition. Blepharisma growing alone exhibited extended population growth (Fig. 2a,d), suggesting that Blepharisma experienced relatively weak intraspecific competition during the experiment. However, the s are probably conservative tests for effects of community structure on species responses to temperature change. More powerful tests would require quantifying the strengths of intra- and interspecific interactions with time-series analysis (Ives 1995; Sæther et al. 2000). Non-stationary population dynamics, the limited length of each time series, and long, irregular intervals between samples (relative to the generation times of the organisms), make time-series analysis difficult (Figs 2–5; Ives 1995; Turchin 1995; Lewellen & Vessey 1998; Ives et al. 1999). The results are broadly consistent with the model of Ives (1995; see also Ives & Gilchrist 1993), which predicts small changes in abundance when direct density dependence is strong (eqn 3). But eqn 3 predicts that temperature changes that increased r by as much as 200% (Fig. 1) should have produced similar increases in mean density. Lack of evidence for such large increases in density suggests the results are more consistent with a logistic-type model where intrinsic rate of increase (r), but not carrying capacity (K), depends on environment. Mean densities of bacterivores that spent most of an experiment at or near a temperatureindependent carrying capacity (i.e. all bacterivores growing alone, except Blepharisma) would not change with temperature. Growth of bacterivorous protists in laboratory microcosms is well-described by the logistic equation (Gause 1934; Vandermeer 1969). Consideration of the mechanisms determining carrying capacity provides insight into when phenomenological models like eqn 1 or the logistic equation will correctly predict species responses to environmental change. Consideration of mechanisms suggests the assumption that the strength of density dependence is independent of environment (eqn 1) was violated in our experiments, and only appeared to hold because temperature change affected all species in the same way. Simple consumer–resource models predict, and experiments confirm, that bacterivore carrying capacity is an outcome of the interaction between bacterivores and their bacterial resource (Tilman 1982; Kaunzinger & Morin 1998). Equilibrial consumer and resource densities represent a balance between resource growth, consumption, and consumer mortality. Lack of an effect of temperature on equilibrium consumer abundance (carrying capacity) suggests that increasing temperature affected protist consumers and their bacterial resources in a similar manner, so that increased percapita bacterial productivity at higher temperatures matched increased protist per-capita feeding rate, which matched increased per-capita metabolic demands. Limited data indicate that bacterial production and specific growth rates are about as temperature-sensitive as protist growth rates (Fenchel 1987; White et al. 1991). A similar argument may apply to protist predators and JAE478.fm Page 88 Saturday, February 3, 2001 11:32 AM 88 J.W. Fox & P.J. Morin their prey. Predators often did not maintain stable densities (Figs 4, 5), but might be viewed as oscillating around a temperature-independent mean (Table 3d). Different results might obtain in an experiment with herbivorous protists and algal prey, because photosynthesis is less temperature-sensitive than respiration (Eppley 1972; Goldman & Carpenter 1974; Lefèvre et al. 1994). Comparison with other studies also suggests that the results we observed are unlikely to generalize to more physiologically diverse communities. In contrast to this study, other recent studies indicate that environmental change can alter mean densities even when intra- and interspecific interactions are strong (González & Frost 1994; Brown et al. 1997; Davis et al. 1998a,b; Jones et al. 1998; Navas 1998; for a classical example see Park 1954). Navas (1998) reviewed 20 studies comparing effects of elevated CO2 on single-plant or monoculture biomass to effects on species biomasses in mixtures and found that 39% of species in monoculture and 60% of isolated plants responded to CO2 in a qualitatively different fashion when grown in mixtures. González & Frost (1994) found that laboratory bioassays for the effect of food and pH on reproduction and survival of two rotifer species failed to predict rotifer responses to lake acidification. The authors ascribed this failure in part to reduced predation at low pH. Brown et al. (1997) attributed long-term changes in rodent and ant assemblages in south-eastern Arizona to increased shrub cover caused by increased winter rainfall. In terrestrial microcosms, Jones et al. (1998) found indirect effects of increased CO2 on soil fungi and their collembolan predators, probably mediated through effects on plant photosynthesis and carbon allocation. Davis et al. (1998a,b) found complicated interactive effects of temperature, competitors, parasitoids and dispersal on Drosophila spp. abundances along a temperature gradient in laboratory microcosms. Sæther et al. (2000) predicted a significant increase in the carrying capacity of a songbird population with increasing mean winter temperature. Environmental change probably had varied effects on species’ vital rates in these other studies, changing the strength of intra- and interspecific interactions and explaining the contrasting outcomes between these other studies and the present work. These other studies also involved more speciose communities, and so provided more opportunity for interactive effects of environmental change and community structure. Our experiments traded off realistic levels of species richness for the ability to clearly separate effects of environment from effects of intra and interspecific interactions. © 2001 British Ecological Society, Journal of Animal Ecology, 70, 80–90 In another protist microcosm study, Petchey et al. (1999) found dramatic effects of gradually increasing temperature on community structure and ecosystem function. Gradually increasing temperature led to increased extinction rates in multispecies communities. The contrast between the present study and that of Petchey et al. (1999) probably traces to the higher temperatures used by Petchey et al. (up to 34 °C). Temperatures > 30 °C approach or exceed the physiological tolerances of many mid-latitude protists (Norland & Gojdics 1967). Petchey et al. (1999) used physiologically challenging high temperatures because they wanted to cause extinctions and examine the consequences of extinction for ecosystem function. We used lower temperatures to focus on the interactive effects of community structure and environmental change on density, which extinctions might have obscured. This study addresses only the effect of changes in mean environmental conditions on mean density. Natural environmental change is also likely to involve changes in environmental variability (IPCC 1996). Theoretical and experimental results indicate that changes in the frequency and magnitude of environmental variability can affect mean density and other population properties (e.g. May 1973; Kaitala et al. 1997). Directional environmental change may affect population properties besides mean density. Didinium went extinct in the increasing temperature treatment by Day 33, but persisted until the end of the experiment (42 days) in the constant temperature treatment. Increasing temperatures may have produced higheramplitude predator–prey oscillations, increasing extinction risk (Fig. 4b,d). Temperature also may have affected Blepharisma feeding behaviour. Some Blepharisma became omnivorous in cultures containing Paramecium. Omnivorous Blepharisma first appeared in samples on Day 21 in the increasing temperature treatment, and on Day 29 in the constant temperature treatment. Low bacterial levels induce omnivory in Blepharisma (Giese 1973). Bacterial scarcity induces a size increase in some individuals, allowing these individuals to consume ciliates at the cost of greatly reduced efficiency in bacterivory (Giese 1973; Fenchel 1980; Morin 1999). Visual inspection of food vacuoles confirmed that some Blepharisma consumed both Paramecium and smaller, bacterivorous Blepharisma. The appearance of omnivorous Blepharisma possibly prevented populations in the constant temperature treatment from going extinct (Fig. 2c; note initial decline in Blepharisma, followed by gradual increase beginning on Day 27), although the net effect of Paramecium on Blepharisma mean density was a negative, competitive effect (Table 3a). Conclusion This study suggests that populations experiencing direct density dependence will be among those least affected by directional environmental change. Populations lacking direct density dependence include rare and invading species not subject to strong predation or JAE478.fm Page 89 Saturday, February 3, 2001 11:32 AM 89 Species interactions and environmental change dense enough to experience strong intraspecific competition. Environmental change is also more likely to alter species densities when it has varied effects on the vital rates of different species. When environmental change alters the density-dependent vital rates that regulate population size, predicting the effects of change often will require detailed knowledge of how population growth rates vary with both density and environmental conditions (e.g. Sæther et al. 2000). The task of incorporating density dependence into predicted species responses to environmental change remains a challenge for ecologists. Acknowledgements We thank Jill McGrady-Steed, Christina Kaunzinger, Yoko Kato, Tim Casey, Owen Petchey, Marlene Cole, Timon McPhearson, Lin Jiang, Jennifer Johnson, Pat Harris and Henry Stevens for helpful comments on earlier versions of the manuscript. The suggestions of two anonymous referees significantly improved the work. Owen Petchey and Tony Ives provided advice on time-series analysis. This work was supported by NSF grants DEB-9424494 and DEB-9806427 to Peter J. Morin and Tim Casey, and by a Rutgers University Hoffman-LaRoche Fellowship to Jeremy W. Fox. 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