Interactions between temperature and nutrients across levels of ecological organization Authors: Wyatt Cross, James Hood, Jonathan Benstead, Alexander Huryn, & Daniel Nelson This is the peer reviewed version of the following article: Citation is below, which has been published in final form at https://dx.doi.org/10.1111/gcb.12809. This article may be used for non- commercial purposes in accordance With Wiley Terms and Conditions for self-archiving. Cross, Wyatt F., James M. Hood, Jonathan P. Benstead, Alexander D. Huryn, and Daniel Nelson. "Interactions between temperature and nutrients across levels of ecological organization." Global Change Biology 21, no. 3 (March 2015): 1025-1040. DOI: https://dx.doi.org/10.1111/gcb.12809. Made available through Montana State University’s ScholarWorks scholarworks.montana.edu Interactions between temperature and nutrients across levels of ecological organization Abstract Temperature and nutrient availability play key roles in controlling the pathways and rates at which energy and mate- rials move through ecosystems. These factors have also changed dramatically on Earth over the past century as human activities have intensified. Although significant effort has been devoted to understanding the role of tempera- ture and nutrients in isolation, less is known about how these two factors interact to influence ecological processes. Recent advances in ecological stoichiometry and metabolic ecology provide a useful framework for making progress in this area, but conceptual synthesis and review are needed to help catalyze additional research. Here, we examine known and potential interactions between temperature and nutrients from a variety of physiological, community, and ecosystem perspectives. We first review patterns at the level of the individual, focusing on four traits – growth, respiration, body size, and elemental content – that should theoretically govern how temperature and nutrients inter- act to influence higher levels of biological organization. We next explore the interactive effects of temperature and nutrients on populations, communities, and food webs by synthesizing information related to community size spec- tra, biomass distributions, and elemental composition. We use metabolic theory to make predictions about how popu- lation-level secondary production should respond to interactions between temperature and resource supply, setting up qualitative predictions about the flows of energy and materials through metazoan food webs. Last, we examine how temperature–nutrient interactions influence processes at the whole-ecosystem level, focusing on apparent vs. intrinsic activation energies of ecosystem processes, how to represent temperature–nutrient interactions in ecosystem models, and patterns with respect to nutrient uptake and organic matter decomposition. We conclude that a better understanding of interactions between temperature and nutrients will be critical for developing realistic predictions about ecological responses to multiple, simultaneous drivers of global change, including climate warming and elevated nutrient supply. Keywords: activation energy, climate change, ecological stoichiometry, metabolic theory of ecology, nitrogen, nutrients, phosphorus, temperature, threshold elemental ratio Introduction Nutrient availability and temperature play key roles in controlling the pathways and rates at which energy and materials move through ecosystems. The important role of nutrient availability is mediated by imbalances between the demand from organisms for growth, main-tenance, and reproduction and the relative availability of required resources in the environment (Sterner & El-ser, 2002). Temperature, on the other hand, is a master variable that controls biological activity through its fun-damental effect on metabolic rate (Arrhenius, 1889; Gillooly et al., 2001). Together, these two factors affect the acquisition, storage, and cycling of energy and materials at organizational levels ranging from individ-uals to whole ecosystems (Kleiber, 1961; Reiners, 1986; Kaspari, 2012). Recent advances in ecological stoichiometry (ES; Elser et al., 1996; Sterner & Elser, 2002) and metabolic ecology (ME; Brown et al., 2004; Sibly et al., 2012) have initiated a synthetic framework that enables quantitative predictions about how temperature and nutrients interact to control ecological dynamics (e.g. Kerkhoff et al., 2005; Allen & Gillooly, 2009; Billings & Ballantyne, 2013). Although an increasing number of studies have begun to examine temperature–nutrient interactions (e.g. Woods et al., 2003; Jeppesen et al., 2010; Makino et al., 2011), a conceptual synthesis is needed to help crystallize important concepts, identify emerging patterns, and highlight productive areas for future research. Wyatt F. Cross1, James M. Hood1, Jonathan P. Benstead2, Alexander D. Huryn2, and Daniel Nelson2 1Department of Ecology, Montana State University, Bozeman, MT, USA 2Department of Biological Sciences, University of Alabama, Tuscaloosa, AL, USA The frameworks of ES and ME provide a foundation for examining interactions between temperature and nutrients because they are based on first principles of mass balance and thermodynamics. Such an approach is not new. Lotka’s classic ‘Elements of Physical Biol- ogy’ (1925) was one of the earliest attempts to use prin- ciples of physics and chemistry to examine how temperature (as solar energy flux) influences exchanges of chemical elements between organisms and the envi- ronment. Physiologists and limnologists have exam- ined temperature–nutrient interactions, either through controlled laboratory and chemostat experiments (e.g. Goldman & Carpenter, 1974; Rhee & Gotham, 1981), mechanistic models (e.g. Shuter, 1979), or through cor- relative comparisons of populations across environ- mental gradients (e.g. Hutchinson, 1967 and references therein). Others have used bioenergetics/nutrient mass balance models (e.g. Kitchell et al., 1977; Hanson et al., 1997) to examine the fate of nutrients in organisms, populations, and ecosystems, implicitly incorporating thermal effects (e.g. Kraft, 1992; Schindler et al., 1993). More recent developments, such as threshold elemental ratio (TER) models (Hessen, 1992; Sterner, 1997; Frost et al., 2006), explicitly blend both metabolic and stoichi- ometric frameworks and have helped to further bridge the commonly disparate perspectives of energy and materials in ecology (Reiners, 1986; Allen & Gillooly, 2009). Together, these efforts show great promise for advancing our understanding of how temperature and nutrients interact to affect the structure and function of ecosystems. An assessment of temperature–nutrient interactions is also critical for reducing uncertainty about the conse- quences of multiple global change drivers. Over the past century, mean air temperatures have risen ~0.8 °C, and most models predict an increase of ~2–4 °C during the next century (IPCC, 2013). Temperature regimes of freshwater and marine ecosystems have changed in parallel with air temperatures (e.g. Cane et al., 1997; Pil- grim et al., 1998; Kaushal et al., 2010), suggesting con- tinued warming of most ecosystems in the future, particularly at high latitudes. Humans have also modi- fied global elemental cycles, leading to large shifts in availability of carbon (C), nitrogen (N), and phosphorus (P) in the biosphere (Falkowski et al., 2000). Although changes in temperature and nutrient availability are occurring in parallel and are critical aspects of global change, we know relatively little about how these fac- tors interact across levels of organization ranging from individuals to whole ecosystems (Jeppesen et al., 2010; Sardans et al., 2012). A research approach that leverages first principles and concepts rooted in ME may allow us to apply modern ecological theory toward solving important environmental issues. In addition, progress in this area has great potential to improve our understanding of how environmental effects on indi- viduals scale up to influence whole-ecosystem dynam- ics (Levin, 1992; Sibly et al., 2012). In this study, we examine known and potential inter- actions between temperature and nutrients from a vari- ety of physiological, community, and ecosystem perspectives. We start at the level of individuals, exploring how temperature and nutrients interact to influence key organismal traits. We then use this frame- work to inform a discussion of potential temperature– nutrient interactions at higher levels of organization (i.e. populations, food webs, and ecosystems). Our treatment of these subjects is not restricted to any par- ticular type of ecosystem or taxonomic group. How- ever, most of our examples come from freshwater habitats and poikilothermic organisms because of our expertise and the large amount of relevant work in these areas. Although we recognize that other factors such as thermal windows and oxygen supply can play significant roles in shaping how organisms respond to warming (e.g. P€ortner & Farrell, 2008; Verberk et al., 2011), we restrict our focus to basic temperature–nutri- ent interactions to make our synthesis more tractable. Our goal is to catalyze additional research on the important interactions and synergies between tempera- ture and nutrient availability in ecological systems. Interactive effects of temperature and nutrients at the individual level We begin by considering how temperature and nutri- ents combine to influence rates and traits at the physiological or individual level. For simplicity, we focus on four fundamental traits that set the stage for scaling from the individual to the ecosystem: growth rate, respiration, body size, and body elemen- tal content. Although additional traits, such as con- sumption and attack rates, are worthy of consideration (e.g. Petchey et al., 2010; Englund et al., 2011; Vucic-Pestic et al., 2011; Lemoine & Burkepile, 2012; Rall et al., 2012), too little work has been con- ducted on these traits in the specific context of tem- perature–nutrient interactions. We end this section by discussing the TER (Urabe & Watanabe, 1992; Ster- ner, 1997), a promising approach for integrating the multiple interactive effects of temperature and nutri- ents on individuals. Growth rates One-way effects of temperature or nutrients on indi- vidual growth rates have received considerable atten- tion, but we know far less about their interactions. Three hypotheses, clearly articulated by Rhee & Gotham (1981), describe multiple ways that tempera- ture and nutrients may influence growth rates. For heuristic purposes, and to help clarify these hypothe- ses, we present models that use established tempera- ture and resource dependences. Each of these models uses a generic resource term that could rep- resent N, P, or another potentially limiting element (e.g. iron or potassium). However, a widely applica- ble predictive model should account for at least N and P, the two most frequently limiting elements (Sterner, 2004; Elser et al., 2007). The first hypothesis states that only temperature or nutrients can limit growth at any given time (Blackman, 1905). This hypothesis essentially extends Liebig’s law of the minimum to temperature and acts as a null hypothesis: l ¼ min½T;R; ð1Þ where growth (l) is some function of one limiting fac- tor, either temperature (T) or resources (R). The temper- ature dependence of growth is commonly modeled using the Van’t Hoff–Arrhenius equation: l ¼ b0eE=kT; ð2Þ where b0 is a normalization constant, k is the Boltzmann constant (eV °K1), T is temperature (°K), and E is the activation energy (eV). With respect to resources, the Monod equation (Monod, 1949) is often used to describe the relationship between growth and the avail- ability of a single resource: l ¼ lmax R ðKR þ RÞ ; ð3Þ where lmax is the maximum growth rate, R is the resource concentration (e.g. lg NH4-N L 1 or %N of food), and KR is the half-saturation constant, the R at which one-half the maximum growth rate is achieved. Although other formulations of temperature- and resource-dependent growth are possible (e.g. Droop, 1974; Clarke, 2006; Knies & Kinsolver, 2010), these equations are widely understood and thus represent a productive starting point for exploring how tempera- ture and resources influence the growth and success of organisms. The second hypothesis of Rhee & Gotham (1981) argues that temperature sets the maximum growth rate of an organism, while resource levels mediate the real- ized growth rate. This hypothesis can be expressed mathematically with a multiplicative model combining the Arrhenius and Monod equations: l ¼ b0eE=kT RðKR þ RÞ : ð4Þ While this model adds an explicit resource term to the metabolic framework (Brown et al., 2004; Marquet et al., 2004; Anderson-Teixeira et al., 2008), it does not allow the form of the relationship between growth and resource concentration to vary with temperature (i.e. it does not allow a true temperature–resource interac- tion). The third hypothesis states that temperature influ- ences the maximum growth rate as well as the nature of the growth–resource relationship (Rhee & Gotham, 1981; Hall et al., 2008; Davidson et al., 2012). Here, the influence of resources on growth rate is dependent upon temperature, and hence, temperature and resources explicitly interact: l ¼ b0eE=kT RðKR;T þ RÞ ; ð5Þ where KR,T is the half-saturation constant for growth, which varies as a function of temperature (this is one of many possible ways to represent a true temperature– resource interaction). Thus, this hypothesis allows tem- perature to influence how efficiently organisms capture and utilize resources. Currently, hypothesis three has the most empirical support. The relative influence of nutrient availability on growth rate decreases with reduced temperature until extreme suboptimal temperatures eliminate nutri- ent limitation (Rhee & Gotham, 1981). Recent studies (e.g. Persson et al., 2011; Wojewodzic et al., 2011) gener- ally show that the influence of phosphorus availability on growth rates of algae and zooplankton increases with temperature, such that growth is most sensitive to changes in nutrient supply in warm vs. cold environ- ments (but see McFeeters & Frost, 2011). Alternatively, if hypothesis two had the most support, growth would show the same relative resource dependency at all tem- peratures. Taken together, these studies suggest that the influence of nutrient supply on growth rates should increase with temperature to some optimum, but addi- tional research is needed to assess the generality of this pattern. Respiration rates Temperature and nutrient supply also interact to influ- ence rates of respiration; however, the multiple roles that respiration plays in an organism’s carbon economy make painting this picture somewhat complicated. When carbon and nutrient supply rates are near optimal, the relationship between temperature and respiration is generally positive and well described by the Arrhenius equation (Eqn 2; Yurista, 1999; Gillooly et al., 2001; Davidson et al., 2012). As nutrients become limiting, respiration rates of plants and algae tend to decline along with growth rates (Theodorou et al., 1991) and show a muted response to increased temperature (e.g. Staehr & Sand-Jensen, 2006). In contrast, respira- tion rates of heterotrophic invertebrates often increase when consuming a nutrient-poor or stoichiometrically imbalanced diet (Russell & Cook, 1995; Plath & Bo- ersma, 2001; Jeyasingh, 2007). Invertebrates, unlike plants and algae, ingest carbon and nutrients in pack- ages and must balance both elemental deficiencies and surpluses to maintain homeostasis. As such, respiration is often used as a pathway for eliminating excess car- bon (‘energy spilling’, Russell & Cook, 1995; Hessen & Anderson, 2008; also see Darchambeau et al., 2003; Jen- sen & Hessen, 2007). For example, Daphnia consuming high C : P diets in warm environments may ‘burn off’ excess carbon via respiration; at low temperatures, where high C : P diets are less likely to limit growth, diet C : P may have little effect on respiration (McFeet- ers & Frost, 2011). Recent work also suggests that tem- perature and resource availability may interact to influence bacterial respiration (e.g. Kritzberg et al., 2010). Thus, the influence of temperature and resources on respiration will depend on the organism’s mode of consumption, nutrient demands, and relative require- ments for homeostasis. Body size Temperature and resource supply both have large inde- pendent effects on organism size, but less is known about how these factors interact. The weight of evi- dence suggests that warming leads to reduced body size in a broad range of taxa with diverse phylogenetic histories (Daufresne et al., 2009; Finkel et al., 2010; Sher- idan & Bickford, 2011; also see Gardner et al., 2011 and Adams et al., 2013). We might expect such an effect to be even more pronounced under conditions of low nutrient availability, particularly among unicellular organisms (e.g. algae and bacteria) that obtain nutrients via transport across cell membranes. This is because taxa (and perhaps even individuals) with small cell vol- umes tend to have both lower nutrient requirements (i.e. minimum cell quotas) and a greater affinity for the acquisition of rare nutrients than large-celled taxa (Hein et al., 1995; Litchman et al., 2007; Reuman et al., 2013). Thus, the negative effects of temperature on body size may be exacerbated under conditions of low nutrient supply. Among metazoans, resource limitation can lead to smaller body sizes via suboptimal growth and development rates (e.g. Sterner, 1993; Liess et al., 2013), and such responses may also be influenced by ambient temperature (e.g. Sweeney & Vannote, 1984; Atkinson, 1994). Although few studies have examined the interactive effects of temperature and nutrients on body size, this represents an important area of future research considering the critical role of body size in eco- logical interactions (Peters, 1983; Hildrew et al., 2007). Body stoichiometry A number of studies have shown that the N and P con- tent (mg nutrient mg dry mass1) of whole organisms generally declines with increasing temperature (Rhee & Gotham, 1981; Woods et al., 2003; Reich & Oleksyn, 2004; Cotner et al., 2006; Brey et al., 2010; Martiny et al., 2013; Yvon-Durocher et al., in press). A meta-analysis by Woods et al. (2003) showed that organismal P or RNA content (a primary determinant of body P for small invertebrates) was 49% higher in cold vs. warm environments when all taxonomic groups were consid- ered together (including algae, plants, animals, bacteria, and yeast). Similarly, the N or protein content of all groups was 32% higher in cold environments. Although many factors could lead to these results (including body size, Woods et al., 2003), one of the most likely explanations is that the efficiency of RNA and proteins in biochemical reactions increases with temperature (Sievers et al., 2004; Toseland et al., 2013); thus, as temperatures increase, the quantity of RNA needed to produce a given growth rate declines in con- junction with body P content (Rhee & Gotham, 1981; Woods et al., 2003; but see Chrzanowski & Grover, 2008). Results from recent modeling efforts challenge this hypothesis (i.e. temperature invariance of P con- tent; Gillooly et al., 2005), suggesting that additional research is needed to fully assess these patterns. It is of note that the rule of thumb described above, that is, that organismal nutrient content declines with temperature, is superficially inconsistent with the growth rate hypothesis (Elser et al., 1996), one of the pillars of ES theory. This hypothesis predicts positive linkages among ribosomal RNA, P content, and growth rate based on the importance of rRNA in protein syn- thesis and the high P content (~9%) of RNA (Elser et al., 2003). If rapid growth is associated with high P content, and animals grow more rapidly at high temperatures, why do most studies show a decline in P content with warming? Two simple calculations are informative. Over a temperature gradient ranging from 10 to 20 °C, the Arrhenius–Boltzmann equation (EA = 0.67 eV) pre- dicts that an organism’s growth rate should increase approximately 250%. When temperature is held con- stant, a 250% increase in growth rate is associated with only a 15–17% increase in the P content of zooplankton and bacteria (Elser et al., 2003). This modest increase in P content is in sharp contrast to the observed 49% decrease in P content reported in Woods et al. (2003). Thus, these calculations suggest that any increase in P content associated with rapid growth in warm environ- ments may be masked by a larger decrease in P content due to other factors (but see Simonds et al., 2010). More research is needed in this area to examine the relative importance of these factors across diverse taxonomic groups. Threshold elemental ratios: bridging metabolism and stoichiometry Based on our discussion so far, it is clear that tem- perature and nutrients have strong interactive effects at multiple levels, that is, biochemical (e.g. RNA and protein activity), cellular (e.g. cell size and RNA con- tent), and whole organism (e.g. body size, organismal stoichiometry, and metabolism). Yet, to understand how these interactions play out at higher levels of organization, we need quantitative tools that integrate the multiple responses of organism biochemistry and physiology to both temperature and nutrient supply. The TER (Urabe & Watanabe, 1992; Sterner, 1997), the diet stoichiometry (e.g. C : P) that separates C or energy-limited growth from nutrient-limited growth for a given taxon or life stage, offers a promising approach for integrating energetics and stoichiometry at the level of the individual. This approach has been used to predict interspecific patterns of nutrient demand (Frost et al., 2006), population dynamics in the context of consumer–resource interactions (Ander- sen et al., 2004), and fluxes of energy and materials (Allen & Gillooly, 2009). Nonetheless, there have been few attempts to explicitly incorporate tempera- ture into the TER framework (Doi et al., 2010), and doing so may enable a mechanistic understanding of how temperature influences the C and nutrient link- ages mediated by consumers (Schmitz, 2013). Frost et al. (2006) developed one common formula- tion of the C : nutrient (C : X) TER (TERC : X): TERC :X ¼ Ax GGEC   QC QX   ; ð6Þ where AX is the assimilation efficiency of nutrient X, QC, and QX are the organismal C and nutrient contents (per unit dry mass), and GGEC is the proportion of ingested C incorporated into growth. Here, GGEC is a function of the mass-specific ingestion rate (IC), the car- bon assimilation efficiency (AC), and the mass-specific respiration rate (RC): GGEC ¼ ICAC  RC IC ; ð7Þ Each of the terms in the TER equation may be influ- enced by temperature, and this framework can thus provide a quantitative structure for making predictions. We now present two approaches for understanding how TERC : X may vary with temperature. Interest- ingly, predictions that emerge from these approaches do not agree. To our knowledge, no one has taken the direct approach of simply measuring how TERs, that is, all of the interacting components, change with temperature. This may be a fruitful tactic for dominant taxa known to play important ecosystem roles, but prohibitive in the context of dealing with whole communities. A via- ble alternative is to empirically determine the combina- tion of temperature and diet C : X ratios that maximizes growth (Fig. 1; e.g. Persson et al., 2011). Unfortunately, such response surfaces are difficult to characterize under realistic conditions; instead, it is common to examine the proportional difference in growth between low and high C : X diets and to use this difference as a metric of sensitivity to nutrient limi- tation (Sterner & Elser, 2002; Hood & Sterner, 2014). As described above, many taxa (e.g. algae, bacteria, inver- tebrates) show greatest sensitivity to nutrient limitation when growing at high temperatures (Rhee & Gotham, 1981; Hall et al., 2009; Persson et al., 2011; Wojewodzic et al., 2011). Because sensitivity to nutrient limitation is likely most prevalent for taxa with low TERC : X values, these patterns suggest that TERC : X should decline with temperature. An alternative approach is to examine, in a general sense, the temperature dependence of key parameters in the basic TER equation (Eqn 6; Frost et al., 2006). Multiple lines of evidence suggest that GGEC generally declines with increasing temperature (Doi et al., 2010; Vucic-Pestic et al., 2011; Lemoine & Burkepile, 2012; Iles 2014), and holding all other terms constant, this should lead to higher TER values by elevating the Ax GGEC   term. In addition, as discussed above, there is evidence that warming will lead to elevated QCQX   values and hence higher TER values (Woods et al., 2003). Unless the influence of warming on nutrient assimilation effi- ciencies (i.e. ‘AX’) overrides such effects, these patterns suggest that TERC : X should increase with temperature (Fig. 1c) – a result that is inconsistent with the previous prediction. Clearly, additional research is needed to predict how temperature will affect TERs, as well as how such changes will play out across multiple tempo- ral scales (i.e. physiological adjustments vs. long-term adaptation; Woodward et al., 2010a). Interactive effects of temperature and nutrients on populations, communities, and food webs How do patterns described above with respect to metabolism, body size, and stoichiometry manifest at higher levels of biological organization (i.e. popula- tions, communities, and food webs)? This question is critical if we hope to use the principles developed above to make and test predictions about responses to global change (e.g. Elser et al., 2010). However, dynam- ics at mid-range levels of biological hierarchy are per- haps the most difficult to understand, owing to the rich set of direct and indirect interactions that often elude simple predictive frameworks (Tilman et al., 2004; Isaac et al., 2012). In our effort to explore this area, we first consider empirical relationships between temperature and the structure of populations and communities, leveraging stoichiometric predictions from the previous section. We then turn to metabolic theory to examine how temperature alone is predicted to affect growth and production of heterotrophic consumers, scaling from the individual to the population. Next, we exam- ine how temperature and nutrients may interact to influence food webs by considering predictions about the quantity and quality of basal resources that fuel consumer populations. Together, these components provide a preliminary roadmap for understanding how changes at the consumer–resource interface might alter structure, productivity, and elemental flux through food webs. Size spectra and biomass distributions An increasing number of studies have examined how temperature alters community size spectra and biomass distributions (e.g. Petchey et al., 1999; O’Connor et al., 2009; Jennings & Brander, 2010; Moran et al., 2010, O’Gorman et al., 2012), yet few have investigated the stoichiometric consequences or potential interactions with nutrient supply. Yvon-Durocher et al. (2010b) was (a) (b) (c) (d) Fig. 1 Predicted effects of temperature and food quality (i.e. C : nutrient ratios) on consumer instantaneous growth rates. Resource C : nutrient ratio is depicted as having a linear effect on growth (i.e. straight lines in figure), while the effects of temperature are expo- nential (i.e. increased spacing between lines as temperatures increase). Note that relationships between temperature or resource quality and growth rate could be unimodal, but such effects are not described here. Panels (a) and (b) show predicted response surfaces for consumers with relatively low (a) and high (b) threshold elemental ratio (TER) values (dashed lines). In these panels, TER is assumed be constant across temperatures (Doi et al., 2010). Panel (c) depicts an alternative response surface in which the TER increases with tem- perature. Panel (d) shows predicted changes in growth for a consumer exposed to a change in temperature with no change in food quality (white circle to black circle), a change in food quality with no change in temperature (white circle to red circle), and simulta- neous changes in both temperature and food quality (white circle to gray circles). In these scenarios, the initial condition (white circle) is at the consumer’s TER at 10 °C, that is, the food quality that produces optimal growth at that temperature. among the first studies to experimentally quantify effects of warming on biomass size spectra, demon- strating a shift toward dominance of small taxa in warmed pond mesocosms (i.e. a steepening of the indi- vidual mass–abundance slope). In this case, size spectra were influenced by shifts in community structure (as seen in Winder et al., 2009), rather than intraspecific reductions in body size (i.e. the ‘temperature–size rule; Atkinson, 1994; Atkinson et al., 2003). This repeated pattern of declining average body size, in combination with a predicted net reduction in body nutrient content with warming (Woods et al., 2003), suggests that increased temperatures should reduce total storage of nutrients in communities, with the potential for increased nutrient flux through smaller individuals. However, this prediction is likely to be contingent upon nutrient supply, as previous work has shown altered slopes of size spectra (i.e. typically increased average body size) in nutrient-rich ecosystems (e.g. Sprules & Munawar, 1986; Irwin et al., 2006; Mulder & Elser, 2009; Ott et al., 2014). In addition to warming-induced shifts in size spectra, some investigators have reported changes in trophic structure, with important implications for nutrient stor- age and cycling. For instance, Petchey et al. (1999) showed that warming of experimental microcosms led to ‘bottom-heavy’ food webs favoring primary produc- ers and bacterivores over top predators and herbivores. Because predators are often more nutrient-rich than their prey (Fagan et al., 2002; Sterner & Elser, 2002), such a response could lead to either reorganization or reduction in storage of N and P in the food web. In con- trast, more recent work by O’Connor et al. (2009) showed a shift toward dominance of herbivores (i.e. increased zooplankton to phytoplankton ratio) in response to warming, but this effect was only evident in nutrient-replete treatments and did not consider pre- dators (also see Yvon-Durocher et al., 2010b). In a series of geothermally heated streams in Iceland, Woodward et al. (2010b) showed that brown trout, the top preda- tor, was apparently more abundant in warm vs. cold streams, with the potential to alter foodweb structure and nutrient dynamics in these streams (O’Gorman et al., 2012). Clearly, these structural responses to warming and nutrient supply will affect the distribu- tion and cycling of elements in food webs, but addi- tional research is needed to assess whether general responses may be predicted. Metabolic scaling predictions A complementary approach to understanding how higher levels of organization may respond to tempera- ture and nutrients is to use metabolic scaling theory. Savage et al. (2004) were among the first to develop theory linking individual traits (e.g. body size, metab- olism, temperature) to population size and growth rate using a ME framework. This theory predicts increased maximum population growth rates (rmax) and reduced carrying capacity (K) as temperatures warm. Thus, assuming no temperature-driven changes to resource availability, equilibrium population abun- dance should decline with temperature (also see Allen et al., 2002; Vasseur & McCann, 2005). We can now leverage this theory to examine how temperature is predicted to affect secondary production of consumer populations. We focus on secondary production because it is a net ecosystem flux that incorporates a broad range of life-history characteristics (i.e. density, biomass, body size, individual growth rate, reproduc- tion, survivorship, and lifespan; Benke, 1993, 2010; Benke & Huryn, 2010). Box 1 presents basic metabolic scaling equations that, somewhat surprisingly, predict equivalence of second- ary production across a broad range of temperatures (Brown et al., 2004; Huryn & Benke, 2007). In brief, this theory predicts that increased temperatures should lead to reduced population abundance, biomass, and aver- age body size, as well as higher individual mass- specific growth rates. Because secondary production can be derived as the product of mass-specific growth rate and population biomass (Benke, 1984), production should be equivalent across a wide range of tempera- tures (Box 1). In essence, reduced population biomass is compensated for by increased individual growth rates, leading to temperature invariance of secondary production. It is important to point out, however, that these predictions do not account for temperature- driven changes in the quantity or quality of resources at the base of the food web. How might this initial scenario differ when such changes to the resource base are incorporated? First, we consider a scenario in which a single cur- rency, such as energy or carbon, limits individual growth (Fig. 2, left column). This is analogous to including a linear resource term (R) in the basic meta- bolic theory equations (Brown et al., 2004; Sterner, 2004; Kaspari, 2012). In this case, decreasing energy supply away from a theoretical optimum (i.e. moving from black lines to dashed lines in the left column of Fig. 2) leads to a change in the intercept, but not slope, of rela- tionships between temperature and mass-corrected instantaneous growth rate (Fig. 2a) and population bio- mass (Fig. 2b). Thus, ecosystems with a greater supply of energy or carbon are predicted to support higher lev- els of population secondary production, but this pro- duction is still expected to be temperature-invariant (Fig. 2c). In contrast, now consider an energy- or carbon- replete scenario in which the relative abundance of other resources (e.g. phosphorus) limits organism growth rates (Fig. 2, right column). This is analogous to habitats or ecosystems with resource C : nutrient ratios that exceed the TERs of most consumer taxa (i.e. to the right of dashed lines in Fig. 1). Here, we expect to find interactive effects of temperature and nutrient supply (as measured, e.g. in P content [or C : P ratios] of food resources) on mass-specific growth rates, population biomass, and secondary production. Specifically, a linear change in nutrient supply is predicted to have larger effects on individ- ual growth rates and other population-level charac- teristics at warm vs. cold temperatures (Fig. 2e, f), consistent with recent empirical studies (e.g. Persson et al., 2011; Kendrick & Benstead, 2013). As a conse- quence, secondary production is predicted to decline with temperature in an energy-sufficient, but nutri- ent-poor, world (Fig. 2g). While the above scenarios incorporate characteris- tics of resource supply, they do not yet deal with the possibility that resources may change as a direct function of temperature, as outlined in hypothesis three of the ‘individual-level’ section above. Thus, we need to consider how our predictions might be modified if we allow temperature to alter the quan- tity and quality of basal resources (Fig. 1d). If we incorporate evidence that net primary (or ecosystem) production increases with temperature (Yvon-Dur- ocher et al., 2010a; Demars et al., 2011; but see Kerk- hoff et al., 2005), and assume that consumers are energy-limited, we predict a positive effect of tem- perature on secondary production (open circles in Fig. 2d). In contrast, if we assume that temperature leads to reduced nutrient content of basal resources Box 1 Metabolic scaling equations (Brown et al., 2004) that predict effects of temperature on population abundance (N), population biomass (B), mass-specific growth rates (g), and population-level secondary production (P). (Woods et al., 2003; De Senerpont Domis et al., 2014), and consumers are nutrient-limited, we would pre- dict a negative effect of temperature on secondary production (open circles in Fig. 2h). There are, of course, many alternative scenarios for how tempera- ture may alter resource quantity and quality, but this heuristic exercise provides a starting point for predicting how population-level secondary produc- (a) (b) (c) (d) (e) (f) (g) (h) Fig. 2 Predicted interactive effects of temperature and food quantity (i.e. energy; left column) or food quality (i.e. N or P; right column) on consumermass-specific growth rates (a, e), population biomass (b, f), and secondary production (c, g). Bottom panels depict predicted changes in secondary production (open circles) if resource quantity increases with temperature (d) and resource quality decreases with temperature (h). tion may respond to changes in both temperature and resource supply. This exercise also highlights a general need to assess the relative importance of energy vs. nutrient limitation among diverse consumers in nature (e.g. Frost et al., 2006; Hessen et al., 2013), a topic about which there is still consid- erable uncertainty. Material flux through food webs The conceptual predictions in the preceding section help lay the groundwork for understanding how temperature and nutrient supply might interact to affect material flux through food webs. Our focus on secondary production is germane to this effort because it is a flux (i.e. amount per area per time) and can be used to estimate the quan- tity and quality of resources needed to fuel this flux (Benke & Wallace, 1997; Cross et al., 2007). Three factors are particularly important for estimating changes in material flux through food webs, including (i) secondary production, (ii) diet composition and elemental content, and (iii) gross and net growth efficiencies of ingested resources (Benke & Wallace, 1980; Sterner & Elser, 2002; Cross et al., 2007). Based on our predictions above, warming should lead to increased production of energy- limited taxa and reduced production of nutrient-limited taxa, essentially favoring taxa with high TERs and low nutrient requirements (e.g. Fig. 1b). Because these taxa tend to have low body nutrient content and low carbon gross growth efficiencies (Frost et al., 2006), elevated pro- duction of these taxa should lead to higher fluxes and turnover of carbon and energy relative to nutrients (i.e. N and P). In essence, we might expect the C : nutrient ratio of element flux through food webs to increase with warming, with the absolute amounts of material flux determined by the magnitude of warming and conse- quent effects on the resource base. These predictions pro- vide a starting point for future investigations and would require some modification when dealing with differ- ences in external nutrient supply (i.e. eutrophic vs. oligo- trophic systems). Ecosystem-level interactions between temperature and nutrients Ecosystem-level processes are the sum of myriad bio- chemical reactions occurring in the trillions of cells embedded within biotic communities. From such a per- spective, ecosystems can be perceived as ‘meta-meta- bolomes’ (Allen & Gillooly, 2009; Okie, 2012), the activity of which will be controlled, at least in part, by interactions between temperature and nutrient avail- ability. In this section, we build on the theory laid out above for lower levels of ecological organization to infer the consequences of potential interactions between temperature and resource stoichiometry at the level of entire ecosystems. We begin by considering how the activation energies of cellular processes scale up to higher levels, including how and why observed activa- tion energies at the ecosystem level often diverge from their canonical values (Davidson & Janssens, 2006; Anderson-Teixeira & Vitousek, 2012). Ecosystem-level activation energies Just as the activation energy of organismal respiration reflects the average activation energies of the various reactions in the respiratory complex, so the activation energy of an ecosystem-level process should integrate the summed activity of all the contributing organisms (e.g. Allen et al., 2005). Recent work has shown that intrinsic activation energies of cellular processes (e.g. photosynthesis and respiration) can predict the tempera- ture dependences of ecosystem-level responses and hence their responses to warming (e.g. Yvon-Durocher et al., 2010a, 2012). In addition, relative availability of resources (e.g. nutrients) can drive variation in the value of the intercept of the temperature dependence relation- ship, through effects on community biomass (Perkins Ec os ys te m p ro ce ss ra te Temperature positive feedbacks among processes Inherent (or intrinsic) E Apparent (or effective) E cation of Ea via Apparent (or effective) Ea a a Fig. 3 Schematic plot showing how the activation energy (Ea) of an ecosystem-level process can deviate from its inherent or intrinsic value at the level of a cell or individual (dashed line). For example, the apparent or effective ‘activation energy’ (e) of ecosystem respiration can be lower than 0.65 eV because of sub- strate or nutrient limitation, acclimation, changes in microbial abundance, or seasonal phenology (lower solid line). e can also be higher than Ea, if the abundance of resources or biological units covaries positively with temperature (upper solid line). Finally, the activation energy of a complex multiplicative pro- cess, such as ecological succession, can be greatly amplified via positive feedbacks among the various contributing processes (dotted line) (also see Anderson-Teixeira & Vitousek, 2012). et al., 2012). However, true interactions between temper- ature and nutrients should result in changes in the slope of the temperature dependence relationship. While the sensitivity of respiration to seasonal changes in tempera- ture displays the canonical activation energy of 0.65 eV across sites in all ecosystem types (Yvon-Durocher et al., 2012), deviations from this value occur at individual sites. Such deviations may be observed if the supply of a limiting resource covaries with temperature, driving divergence between intrinsic activation energies and those that are actually observed (i.e. ‘apparent’ or ‘effec- tive’ activation energies, e; Davidson & Janssens, 2006; Anderson-Teixeira & Vitousek, 2012; Fig. 3). Site-specific deviations in the temperature dependence of ecosystem- level processes from values expected from subcellular and individual rates occur for a number of reasons. Two recent examples from stream ecosystems include supply rates of detritus covarying inversely with temperature (Valett et al., 2008) and extreme seasonality in light avail- ability combining with relatively stable temperatures in an arctic spring-stream (Huryn et al., 2014). In both cases, covariation in the supply of a limiting resource with tem- perature complicated predictions based on canonical temperature dependence. Further consideration of resource supply and quality in driving patterns of eco- system-level activation energies should help explain such divergence from expected temperature dependenc- es and so strengthen prediction of responses to variation in temperature. Modeling temperature–nutrient interactions in ecosystem processes Varying availability of limiting nutrients could also result in temperature dependences of ecosystem pro- cesses (e.g. gross primary production, respiration, deni- trification) that deviate from canonical values (see Fig. 3). The current challenge is how to represent such interactions between temperature and relative resource supply in ecological theory, as it guides and is informed by empirical research. There are at least two recent models that deal with this problem, but in slightly different ways. Both start by allowing temperature to set the maximum rate of an ecosystem process (Vmax) using the Arrhenius–Boltz- mann factor: Vmax ¼ b0eEa=kT; ð8Þ an expression analogous to Eqn (2) that describes the temperature dependence of individual growth. These two recent models differ slightly in how they deal with the influence of resource availability (i.e. f(R)) on eco- system processes (V). Anderson-Teixeira et al. (2008) presented a model describing the influence of tempera- ture and limiting ‘reactants’ on the rate of terrestrial primary succession: V ¼ Vmax½R1m1 ½R2m2 ; ð9Þ where [R1] and [R2] are the concentration of potentially limiting reactants, while m1 and m2 define the relation- ship between V and [R1] and [R2], respectively. The strength of this approach is that it is a basic rate law expression borrowed from chemical kinetics theory that can be applied to a wide range of ‘reactants’ at the eco- system level, including nitrogen and phosphorus, as well as structures that contribute to resource availabil- ity, such as leaf and soil biomass and concentrations of key enzymes. As the identity of these reactants varies widely, the relationships between [R] and V can be modeled using a variety of forms: linear (m = 1), nonlinear increase (m > 1), and saturating (m < 1). Others have developed similar models aimed at rep- resenting mechanisms that clearly relate substrate availability and enzyme kinetics to rates of ecosystem processes. For instance, Davidson et al. (2012) modeled the influence of temperature and multiple resources on soil respiration using a new Dual Arrhenius and Micha- elis–Menten (DAMM) kinetics model. This model com- bines the Arrhenius expression (Eqn 8) with coupled Michaelis–Menten equations to link the effects of tem- perature with relative resource supply: V ¼ Vmax  ½S1 kMS1 þ ½S1  ½S2 kMS2 þ ½S2 ; ð10Þ where S1 and S2 are concentrations of two potentially limiting resources (e.g. N and P), and kMS1 and kMS2 are their corresponding Michaelis–Menten half-satura- tion constants. Although these models seem fairly different, they are actually quite similar in form. Both use an Arrhenius– Boltzmann factor and a multiplicative relationship between multiple resources and temperature. Impor- tantly, the parameters in both models (e.g. m1 and kMS1 ) cannot be predicted from the stoichiometry of the respective reaction and must be assumed (Anderson- Teixeira et al., 2008), measured experimentally, or mod- eled (Davidson et al., 2012). Note that the basic version of these models also assumes no true interaction effects, yet both can easily incorporate such interactions by relating the key parameters (i.e. m or kMs) to tempera- ture (see Davidson et al., 2012; German et al., 2012). Such work could advance theory by explicitly incorpo- rating nutrient supply–temperature interactions into predictions based on metabolic theory. The potential for such interactions becomes particularly important when the supply rate of a limiting element may vary systematically with temperature, implying a true syn- ergy between temperature and the balance of elements involved in ecosystem-level processes (Anderson- Teixeira et al., 2008, Welter et al., in press). Temperature–stoichiometry interactions and ecosystem- level nutrient uptake As described above, autotrophs can show considerable variation in C : nutrient ratios as a function of temper- ature, implying strong variation in their nutrient-use efficiency (NUE; Rhee & Gotham, 1981; Vitousek, 1982; Cross et al., 2005). How might temperature-driven shifts in biomass composition and NUE affect ecosys- tem-level nutrient uptake? Both laboratory and field studies suggest that nutrient content of autotrophs may decline with increased temperature at fixed con- centrations of limiting nutrients (Rhee & Gotham, 1981; Sardans et al., 2012; De Senerpont Domis et al., 2014). Thus, net primary production (NPP) rates can increase with temperature (within some range) inde- pendent of nutrient availability. Such responses should have important consequences for ecosystem-level nutrient uptake by autotrophs. In essence, autotrophs should use nutrients more efficiently as temperatures increase, and the magnitude of this change should depend on physiological effects of temperature on spe- cies-level nutrient demand, as well as the degree to which communities shift toward taxa with high NUE. Regardless of the mechanism, we might expect both total nutrient uptake and NUE to increase with tem- perature, so that the amount of limiting nutrient taken up per unit C biomass declines (i.e. nutrient uptake rates will not increase as steeply as NPP with increas- ing temperature). Such a pattern would be manifested as a lower activation energy for nutrient uptake than that observed for NPP, with the discrepancy between the two explained largely by changes in the C : nutri- ent stoichiometry (and demand) of autotroph biomass. Although suitable data likely exist, we are not aware of any explicit tests of this prediction. Nutrient cycling by heterotrophic microbes often dominates at the ecosystem level (Wetzel, 2001; Cha- pin et al., 2012). How might their responses to tem- perature differ from those of autotrophs outlined above? First, we might expect nutrient uptake by heterotrophic microbes to increase more rapidly with temperature (assuming no resource limitation), dri- ven by the higher activation energy of heterotrophic metabolism relative to that of GPP (Allen et al., 2005). The scaling of this increase in heterotrophic nutrient uptake depends on two factors: how micro- bial growth efficiency changes with temperature, and whether heterotrophic microbes are flexible with respect to nutrient content. If microbial growth efficiency declines with temperature, as shown in some, but not all, studies (see Manzoni et al., 2012), the temperature dependence of bacterial production should be less pronounced than that of respiration (i.e. <0.65 eV). Although relatively inflexible elemen- tal content is common among metazoans (Sterner & Elser, 2002), the situation for microbes is still in question. Some studies suggest rigid cell quotas of N and P (Makino et al., 2003; Cleveland & Liptzin, 2007), while others have found more variation (Cot- ner et al., 2010; Scott et al., 2012). Even fewer data are available for the responses of microbial cell quo- tas to temperature, although Woods et al. (2003) pro- vide evidence that P (but not N) declines with temperature in several bacterial taxa. If heterotrophic microbes exhibit variable nutrient cell quotas, we can expect their nutrient uptake to show patterns of tem- perature dependence that deviate from production in a manner similar to that of autotrophs. Conversely, relatively fixed elemental content would drive the activation energy of heterotrophic uptake toward that of microbial production. Temperature, stoichiometry, and mineralization We now ‘close the loop’ by considering pathways along which temperature and nutrient availability may inter- act as organic matter is broken down and mineralized (e.g. Ferreira & Chauvet, 2011). In one such interaction, organic matter quality is known to affect the tempera- ture sensitivity of microbial decomposition, with more refractory organic matter showing higher sensitivity to temperature (Bosatta & Agren, 1999; Conant et al., 2008; Wetterstedt et al., 2010; Jankowski et al. 2014). Decom- position is mediated by enzyme kinetics and organic matter quality can therefore be defined as the number of enzymatic steps necessary to release carbon as CO2 from organic substrates (Fierer et al., 2005). This defini- tion of organic matter quality is explicitly related to first principles of thermodynamics and explains the increase in decomposition rate with increasing quality (i.e. lower lignin concentrations, lower C : nutrient ratios, and a lower number of steps). Those compounds that require more steps to release carbon are typically of lower qual- ity (i.e. higher lignin concentrations, higher C : nutrient ratios). Hence, the ‘carbon quality–temperature hypoth- esis’ (Fierer et al., 2005; Craine et al., 2010) states that the decomposition of recalcitrant organic matter is more sensitive to changes in temperature than that of labile organic matter due to differences in the activation energies of the enzymatic reactions required for its decomposition. The enzymatic reactions required to degrade more complex, recalcitrant substrates should have a higher activation energy than those reactions that break down simpler, more labile substrates due to the increased number of steps required. The increased sensitivity of relatively stable organic matter stocks to temperature may have profound effects on the global carbon cycle, with possible feedbacks to climate change (Davidson & Janssens, 2006; Luo, 2007; Conant et al., 2011). The enzymatic foundation of decomposition has also formed the basis for explicit attempts to inte- grate the effects of temperature and nutrient sup- ply : demand ratios. Ecoenzymes (i.e. extracellular enzymes) and their relative activity link metabolic theory and ES because their production is both derived from cellular metabolism and regulated by environmental nutrient supply relative to cellular demand. Robert Sinsabaugh et al. have developed an approach that uses ratios of different nutrient-yield- ing ecoenzymes and the temperature dependence of metabolic activity to link microbial demand for ele- ments with environmental supply and so scale the use of different microbial resources across tempera- tures (e.g. Sinsabaugh & Follstad Shah, 2010, 2012). Ecoenzyme ratios also offer an empirical approach to calculating TERs for microbial consortia, as activ- ity of enzymes that catalyze major environmental sources of C, N, and P can be measured relatively easily. The application of ecoenzyme kinetics is obvi- ously limited to studying the activity of heterotro- phic microbes and other osmotrophs. Nevertheless, this approach is capable of integrating microbial use of multiple resources across temperature gradients and therefore represents a bold attempt to unite the fields of metabolic theory and ES. Consideration of acclimation and adaptation Our synthesis has implicitly focused on organism and ecosystem responses that play out over relatively short time scales. However, it is well known that species may acclimate or adapt to shifting conditions of temperature and nutrient supply (e.g. Angilletta, 2009), and such changes may be critical for determining how individu- als respond to various environmental constraints. For instance, Frisch et al. (2014) recently showed that the NUE of some freshwater Daphnia has evolved in response to cultural eutrophication (Frisch et al., 2014). There has also been exciting recent discussion about whether thermal adaptation of bacteria may influence soil carbon cycling, with far-reaching consequences for carbon-cycle climate feedbacks (e.g. Bradford, 2013). Although these adaptive responses are outside the scope of our synthesis, consideration of such dynamics will be necessary if we hope to develop a comprehen- sive and predictive framework. Concluding remarks Climate warming and changes in nutrient supply are two of the most prominent anthropogenic drivers of global change. These factors also play fundamental roles in determining how, and at what rate, organ- isms acquire, store, and cycle key elements. It is thus imperative that we develop a strong basis for under- standing how these factors combine to influence the structure and function of ecosystems globally. We have argued that ME (Sibly et al., 2012) and ES (Ster- ner & Elser, 2002) can provide a core foundation for making progress on this front, but there is clearly much work to be done. Our primary goal was to provide a conceptual basis for examining true inter- actions between temperature and nutrients at multi- ple levels of organization, recognizing that most of what we know is based on one-way analyses of either temperature or nutrients alone. 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