|
|
|
|||
| Home Help Feedback Subscriptions Archive Search Table of Contents | ||||
First published online February 27, 2009
Journal of Experimental Biology 212, 753-760 (2009)
Published by The Company of Biologists 2009
doi: 10.1242/jeb.023861
Commentary |
From cells to coastlines: how can we use physiology to forecast the impacts of climate change?
University of South Carolina, Department of Biological Sciences and School of the Environment, Columbia, SC 29208, USA
e-mail: helmuth{at}biol.sc.edu
Accepted 8 January 2009
| Summary |
|---|
|
|
|---|
Key words: biogeography, climate change, conservation physiology, ecological forecasting, biophysical modeling
| Introduction |
|---|
|
|
|---|
Physiologists and ecologists have long been interested in the effects of
physical parameters (e.g. temperature, salinity, rainfall) on organisms and
their interactions. New techniques in the areas of genomics, gene expression
and transcriptomics (Gracey and Cossins,
2003
; Hofmann and Gaines,
2008
; Hofmann and Place,
2007
; Place et al.,
2008
) and biochemical indicators of stress
(Dahlhoff, 2004
;
Sagarin and Somero, 2006
) have
opened new doors for measuring the responses of organisms to their physical
environment in both the laboratory and field
(Costa and Sinervo, 2004
). With
the application of remote sensing coupled with extensive ground-based
measurements of weather and climate
(Hofmann and Gaines, 2008
;
Richardson and Poloczanska,
2008
), physiology is now being explored on a landscape scale by
integrating information on physiological function with knowledge of temporal
and spatial patterns in the physical environment
(Chown et al., 2004
;
Porter et al., 2002
;
Somero, 2005
). These tools and
theories thus set the stage for explorations of `macrophysiology'
(Chown et al., 2004
;
Somero, 2005
) and play a
significant role in preparing for ongoing and future ecological responses to
climate change (Helmuth et al.,
2005
; Kearney et al.,
2008
).
Here I explore some of the remaining challenges facing the application of
physiological approaches to ecology and biogeography, focusing on studies
related to climate change. Specifically, I explore the question of why such
approaches may be much more complex than have been previously appreciated and
how integrative methods can be used to reveal `hidden' patterns that may
otherwise go unnoticed (Gilman et al.,
2006
; Helmuth et al.,
2006a
; Place et al.,
2008
) but which may be crucial for predicting ecological
responses. In doing so, I advocate for the generation of data and predictions
at scales that are useful to `boots on the ground' resource managers and
policy makers (Baskett et al.,
2007
; CCSP, 2008
;
Hoffman, 2003
;
Magnuson, 1991
;
US Environmental Protection Agency (EPA),
2008
; Wikelski and Cooke,
2006
); while basic science remains vital, observed and projected
rates of climate change mandate that we, as scientists, find ways to address
issues related to societal needs as quickly as possible
(Hofmann and Gaines, 2008
;
Richardson and Poloczanska,
2008
; Wikelski and Cooke,
2006
).
| Challenges and hidden signals |
|---|
|
|
|---|
Indeed, correlations between environmental variables and range boundaries
are often made using multiple regression techniques, typically lumped under
the rubric of `climate envelope modeling' (e.g.
Pearson and Dawson, 2003
).
Similarly, correlations are often made between fluctuations in large-scale
indices of climate, such as the North Atlantic Oscillation (NAO), the El
Niño Southern Oscillation (ENSO) and the Pacific Decadal Oscillation
(PDO), and patterns of abundance, distribution and physiological condition
(Stenseth et al., 2003
). Such
correlative studies generally recognize that the underlying driver of these
relationships is some aspect of local weather acting on organismal
physiological response and that essentially treating climatic indices as
`black boxes' provides little mechanistic insight
(Forchhammer and Post, 2004
).
Moreover, they acknowledge that the scale of prediction is important: while
correlative climate envelope models appear to have good predictive power over
broad spatial scales, they are not always effective at small temporal and
spatial scales (Pearson and Dawson,
2003
).
Because they do not include some aspect of physiological mechanism, purely
correlative approaches also run the danger of being ineffective for predicting
future biogeographic patterns because they are based on observations of
realized rather than fundamental niche spaces and because projected
environmental conditions can exceed those used to develop the model
(Helmuth et al., 2005
;
Kearney, 2006
;
Phillips et al., 2008
).
Paradoxically, however, climatic indices have frequently been shown to serve
as better indicators of ecological responses than patterns of local weather
(Hallett et al., 2004
). To a
large extent, this disconnection may be a failure to account for physiological
mechanism. Specifically, in cases where mechanistic details have been
examined, studies have shown that the comparatively poor association between
local weather and organismal response is due to an incorrect focus on which
aspect of weather matters (Hallett et al.,
2004
; Helmuth et al.,
2005
) and, potentially, on the scale at which it is measured
(Broitman et al., 2009
;
Kearney, 2006
). For example,
Hallett et al. report that multiple environmental factors (high rainfall, high
winds and low temperatures) cause mortality in Soay sheep (Ovis ares)
(Hallett et al., 2004
).
However, long-term trends in any one of these parameters, when measured
locally, are a less effective predictor of mortality than the NAO (a large
scale index that alternates between `phases' of different strength). Hallett
et al. developed a physiologically based model that recognizes that extremes
in any one of these parameters can cause mortality and that these
environmental factors often alternate in their impacts
(Hallett et al., 2004
). In
other words, while extremes in rainfall may kill animals during one period of
time, low temperatures may be responsible at another time. Thus, long-term
trends in mortality are not well correlated with either one of these
parameters. In contrast to simple relationships based on sequential
correlations between weather parameters and mortality, however, model results
that include knowledge of physiological limits showed that local climate and
weather actually had strong predictive power, but only when both direct
effects (on sheep) and indirect effects (on their food supply) were accounted
for (Hallett et al.,
2004
).
This example raises the specter of why we cannot always simply take
large-scale measurements of environmental data at face value, combine them
with measurements of physiological response made under controlled conditions
and extrapolate to ongoing and future impacts of climate change in nature.
First, while it is axiomatic that natural habitats are heterogeneous in space
and variable in time, we often have a very poor understanding of the scales
over which this variability, as perceived by organisms, occurs in nature (e.g.
Weins and Milne, 1989). Second, even when we have good descriptors of
physiologically relevant environmental conditions, we do not always have a
detailed understanding of which aspects of environmental signals most affect
performance and survival: what is `signal' and what is `noise'? Importantly,
we cannot hope to address the first question (how do environmental signals
relevant to organisms vary in space and time) until we have some understanding
of the second (to what frequencies of environmental signals do organisms
respond?). In other words, when do the temporal and spatial structure of
environmental and physiological heterogeneity matter
(Baskett et al., 2007
;
Denny et al., 2006
;
Gracey et al., 2008
;
Nathan et al., 2005
; Weins and
Milne, 1989)? As we will see, radically different patterns can emerge when we
examine the world through the lens of the organism as compared to signals
measured at scales with which we humans are most familiar.
Organisms as filters: viewing the world as a nonhuman organism
We are in an unprecedented era in terms of measuring and recording
environmental information, although even more capacity is needed if we are to
face the challenges of climate change
(Richardson and Poloczanska,
2008
). Satellites, weather stations and buoys are able to record
multiple environmental parameters over many portions of the globe, and a
wealth of historical information can be tapped for use in studies (e.g.
Denny et al., 2006
;
Gilman et al., 2006
;
Wethey and Woodin, 2008
).
Importantly, however, the information recorded by these instruments is often
very different from that actually experienced by organisms. To any plant or
animal, the world at any given time does not extend beyond its immediate
environment (Helmuth, 2002
;
Kearney, 2006
;
Wiens and Milne, 1989
), even
though we may measure the environment at a large spatial or temporal scale.
For example, Pfister et al. have shown that offshore water temperatures (as
recorded by a buoy) can be very different from onshore water temperatures
(Pfister et al., 2007
). Thus,
even though events such as ENSO and NAO may drive large-scale changes in
offshore sea surface temperature (SST), these fluctuations in SST will only
affect onshore (intertidal and shallow subtidal) organisms if that `signal' is
translated to those habitats. Similarly, Leichter et al. reported significant
differences among water temperatures at different depths (0–40 m) on
coral reefs and showed that geographic patterns predicted from SST were very
different from those predicted from in situ measurements of water
temperature at varying depths (Leichter et
al., 2006
).
One of the most extreme examples of spatial and temporal heterogeneity in
temperature occurs in rocky intertidal systems, where the body temperatures of
invertebrates and algae are driven primarily by solar radiation
(Denny and Harley, 2006
;
Helmuth, 1998
). In this
habitat, animals living on horizontally oriented surfaces regularly experience
body temperatures 6–13°C higher than nearby organisms living on
adjacent north-facing surfaces (Helmuth
and Hofmann, 2001
). These differences (observed over the scale of
centimeters) can be as great or greater than those observed over the scale of
thousands of km and, depending on local tidal dynamics, can exceed differences
between animals living in the high and low intertidal zones
(Helmuth et al., 2006a
).
Comparable results have been shown for patterns of hydrodynamic force, where
variation in small-scale topography can have a much more important role in
determining drag and dislodgement than does variability in wave height
(Denny et al., 2004
).
Importantly, the morphology (Koehl and
Wolcott, 2004
) and behavior
(Schneider et al., 2005
;
Williams and Morritt, 1995
) of
organisms also significantly modify their interactions with their surrounding
environment, often in counterintuitive ways. For example, the shape of a
sessile suspension feeder strongly modifies its ability to capture suspended
food, and two organisms exposed to identical flow conditions can have markedly
different rates of prey interception
(Sebens et al., 1998
).
Similarly, dissolved oxygen and nutrient concentrations can be a poor
indicator of gas and nutrient uptake because of interactions of morphology
with flow (Patterson, 1992
).
The morphology, behavior and surface properties of organisms can also have
major effects on their body temperature. Recent evidence suggests that both
the shape (Jimenez et al.,
2008
) and color (Fabricius,
2006
) of corals can lead to differences of several degrees between
coral body temperature and the temperature of the surrounding water due to the
competing influences of heat gain from solar radiation and heat loss through
convection. Differences between ambient (air and surface) temperature and the
body temperature of ectotherms are even more extreme in terrestrial
environments (and intertidal environments at low tide) where daily
fluctuations of 20°C or more are common
(Helmuth, 2002
).
These studies all point to a very important concept: parameters such as
body temperature and gas exchange are metrics of niche parameters and are
therefore signals that drive physiological response
(Kearney, 2006
;
Kearney et al., 2008
).
However, because of the influence of an organism's physical properties such as
morphology, niche-level measurements are not always well-correlated with
habitat-level measurements (Gilman et al.,
2006
; Helmuth,
1998
) [but see Denny et al.
(Denny et al., 2006
) and
Wethey (Wethey, 2002
)], and
two organisms exposed to identical microenvironments can experience very
different levels of mass (gas and nutrient) flux, body temperature and
mechanical force (Fig. 1).
|
|
Broitman et al. showed not only that temporal patterns in the body
temperatures of predators and their prey cannot be predicted based on
habitat-level parameters but also that relative patterns of body temperature
vary from one site to the next (Broitman et
al., 2009
). Specifically, Broitman et al. found that at some
sites, seastar (Pisaster ochraceus) body temperatures were tightly
coupled with the body temperatures of their prey (the mussel Mytilus
californianus) (Broitman et al.,
2009
). At other sites, however, predator and prey temperatures
were decoupled at higher frequencies (shorter than 6 h). Moreover, at some
sites, predators and prey experienced similar body temperatures; at others,
prey were markedly hotter than their predators. Because both aerial and
aquatic body temperature can have significant effects on P. ochraceus
foraging (Pincebourde et al.,
2008
; Sanford,
2002
), these patterns are likely to have a cascading effect on the
intertidal ecosystem, where P. ochraceus is a keystone predator
(Paine, 1974
). These studies
thus strongly suggest that our predictions of the effects of climate, and
climate change, must be based on niche-level, rather than habitat-level,
measurements and predictions of environmental parameters
(Kearney, 2006
) and that
relative levels of environmental stress between predator and prey need to
incorporate aspects of the animal's physiological niche space
(Menge et al., 2002
;
Petes et al., 2008
).
Deciphering signal from noise
Just as we need to consider the spatial and temporal scales of
heterogeneity in nature, we also need to estimate the potential roles of
acclimation and adaptation in driving physiological responses to those
environmental signals. For example, Stillman
(Stillman, 2003
) and Stillman
and Somero (Stillman and Somero,
2000
) explored the interspecific variability in thermal tolerance
of porcelain crabs (genus Petrolisthes). They found that species with
the greatest tolerance to high temperatures displayed the smallest acclimation
capacity and were therefore the most susceptible to the small increases in
body temperature (Stillman,
2003
). In other words, the ability to acclimate to increased
temperatures was least in the most heat-tolerant species. Hilbish examined
tolerance of intertidal gastropods (Melampus bidentatus) to cold
temperatures and discovered the existence of physiological races along the
east coast of the USA that differed in their cold tolerance
(Hilbish, 1981
).
Temporal variability and time history likewise play a central role in
driving the physiological responses of organisms but are often not considered
when making projections of range shifts. Bleaching in corals is most commonly
associated with anomalies in temperature rather than absolute thresholds in
SST and usually involves a measurement of degree heating weeks
(Gleeson and Strong, 1995
).
Other studies, however, have suggested that higher frequency fluctuations may
be important to coral and zooxanthellae physiology (e.g.
Winter et al., 1998
).
Pincebourde et al. studied the effects of both short-term (acute, 1–2
days) and long-term (chronic, 8 days) exposure to elevated body temperatures
(
23°C) during aerial exposure on rates of feeding by the intertidal
seastar Pisaster ochraceus on mussels Mytilus californianus
(Pincebourde et al., 2008
).
They found that while acute exposures to elevated aerial body temperature led
to a significant increase in feeding rate (
60%), chronic
exposures caused a
30–44% decrease in feeding rate.
Tomanek and Somero studied the time course of heat-shock expression by
congeners of an intertidal gastropod (genus Tegula) and report that
the magnitude and time lag before expression varied between species adapted to
different tidal heights (Tomanek and
Somero, 2000
), again suggesting that thermal history over both
ecological and evolutionary time scales may be important in setting patterns
of physiological stress.
Gracey et al. studied gene expression changes in mussels (M.
californianus) living in high and low intertidal environments and
identified at least four distinct physiological states, corresponding to a
metabolism and respiration phase, a cell division phase and two
stress-response signatures (Gracey et al.,
2008
). Importantly, they showed that the magnitude and timing of
each of these states varied by microhabitat and between the upper and lower
intertidal zones (Gracey et al.,
2008
). In other words, environmental signals, as translated
via the organism to the cell, were manifested as different responses
by each of the four physiological states identified.
| The role of physiology in climate change research |
|---|
|
|
|---|
Forecasting the direct and indirect effects of climate change (i.e. ecological forecasting) mandates that we understand the roles of (a) habitat heterogeneity in driving local microhabitat conditions, (b) the effect of organism characteristics (morphology, color, etc) on the translation of environmental signals at the level of the microhabitat to signals relevant to physiological performance; (c) the impacts of those signals on physiological response (and ultimately fitness); (d) the capacity for organisms to acclimate to (or the ability of populations to evolve in response to) those signals at varying temporal scales; (e) the indirect effects of physiological responses on interspecific and intraspecific interactions and (f) the role of dispersal in maintaining connectivity between organisms living at nested spatial scales.
Obviously this is a very tall order. It is exceedingly difficult to measure
or model on a spatially explicit basis variability and heterogeneity at small
scales over large geographic gradients. Moreover, not only is each component
listed above difficult to measure, but errors or unaccounted-for variability
and linkages at any level of inquiry can potentially be propagated to the next
level (Deutschman et al.,
1999
). Nevertheless, several related avenues appear potentially
fruitful.
Sensitivity analyses
First, mechanistic approaches can be used to conduct a sensitivity analysis
of the roles of environmental signals, their translation, and physiological
and genetic responses (Deutschman et al.,
1999
). For example, simple measurements of SST, when combined with
physiological information on reproduction, have been successfully used to
predict geographic range shifts in barnacles and polychaetes
(Wethey and Woodin, 2008
). By
contrast, Hummel et al. suggested that even though the southern geographic
range of bivalves was correlated with temperature, the species' range was more
strongly driven by the interactive effects of other factors such as food
availability and possibly pollutants
(Hummel et al., 2000
). Other
studies have shown that the interactions of aerobic scope (anoxia) with
temperature can set geographic limits
(Pörtner, 2002
).
Similarly, Harley and Helmuth found that temperature and exposure duration
(likely related to food or oxygen demand) alternated in setting the upper
distribution of barnacles (Harley and
Helmuth, 2003
). By exploring sensitivity of organisms to
climate-related factors, we can better understand which of these parameters
(or combinations thereof) are most likely to affect species in the future,
guiding more detailed studies of mechanism at specific locations.
From deterministic to probabilistic predictions
Second, we use deterministic approaches to better understand the role of
heterogeneity (both in habitat and physiological response) in driving
population dynamics and species distributions
(Denny et al., 2004
;
Guichard et al., 2001
).
However, in order to be practicable, these deterministic approaches will
likely need to be placed within a probabilistic framework. Much of ecology has
been based on the concept of gradients in stress, the most common being a
latitudinal gradient in temperature (reviewed by
Harley, 2003
). In fact, much
of biogeography is built on the idea that latitudinal gradients in air and
water temperature drive species range boundaries
(Hutchins, 1947
). A recent
example of this is presented by Harley, who examined the upper and lower
zonation limits of an intertidal alga along a well-established gradient in
stress along the north coast of the Olympic Peninsula in Washington State
(USA) (Harley, 2003
). Harley
experimentally showed that the upper zonation limit of the algae was set by
stressors related to some aspect of aerial exposure, so that as one moved from
west to east (along a gradient of increasing stress) the upper zonation limit
of this species shifted closer to the subtidal zone. By contrast, the lower
limit, set by herbivory, did not shift along this gradient. As a result, the
algae were `squeezed' at its upper end by weather, and at the point where the
upper limit met the lower limit, the species met a local geographic range edge
(Harley, 2003
).
While gradients such as that described by Harley along the Olympic
Peninsula certainly exist, they also mask considerable variability within
sites, which can drive ecological processes over a range of scales
(Denny et al., 2004
;
Erlandsson et al., 2005
;
Guichard et al., 2001
). For
sessile organisms, much of this heterogeneity in environmental stress is due
to the angle and aspect of the substrate, which drives solar radiation and
patterns of water and air flow (Denny et
al., 2004
; Guichard et al.,
2001
; Helmuth and Hofmann,
2001
). For example, at the sites Harley examined, algae were
restricted to shaded surfaces and were effectively excluded on south-facing
slopes, where the upper limit again converged on the lower limit.
Whether or not this type of intrasite variability matters to organisms has
still yet to be determined for most ecosystems. Schmidt et al. have shown that
the variable selective regimes created by habitat heterogeneity
(shaded/unshaded surfaces) maintain genetic variation in populations of
barnacles (Schmidt et al.,
2000
). Wethey has shown that both local and geographic range
limits of barnacles in New England appear to be set by both high summer and
low winter temperatures, which in turn were influenced by substratum angle and
orientation (Wethey, 1983
).
Harley found that mortality in mussels and limpets corresponded significantly
to substrate orientation and the timing of low tide in summer
(Harley, 2008
). Using
biophysical approaches and ecological forecasting models, we can predict the
relative importance of heterogeneity over a nested range of spatial scales
(e.g. microhabitat vs latitudinal). Even though a spatially explicit
approach across a large scale may be unrealistic, we can nevertheless examine
frequency distributions of different habitats (such as north- vs
south-facing slopes), or detailed measurements over smaller sections of sites,
as means of predicting frequencies of different selective regimes
(Benedetti-Cecchi et al., 2005
;
Denny et al., 2006
;
Guichard et al., 2001
). When
combined with information on physiological responses to environmental
heterogeneity, probabilities of mortality, growth and reproductive failure can
then be estimated over larger spatial scales. Previous studies have shown
that, while detailed measurements of small-scale heterogeneity may not always
be necessary for predicting higher order ecological responses, the roles of
multiple scales of variability must be quantified before they can be dismissed
(Deutschman et al., 1999
).
The role of dispersal
Much of the importance of heterogeneity at varying scales will depend on
the ability of organisms to disperse and exchange genetic material. As
described previously, many geographic patterns do not occur over smooth
latitudinal gradients, as previously assumed
(Fig. 2). The importance of
these thermal `mosaics', which occur over the scale of tens to hundreds of
kilometers, needs to be assessed within the context of larval dispersal and
recruitment (Baskett et al.,
2007
; Kinlan et al.,
2005
). Evidence based on body temperature
(Helmuth et al., 2006a
), gene
expression (Place et al.,
2008
) and heat-shock protein production
(Sagarin and Somero, 2006
)
suggests that further climate change could potentially lead to disjunct
populations with multiple range edges rather than smooth transitions from
north to south. Importantly, levels of connectivity will likely vary not only
as a function of dispersal capability but also as a function of
species-specific responses to environmental conditions
(Fig. 1).
Forecasting hot spots for management
While it may be difficult to assess all of the relevant parameters in
detail across broad biogeographic scales, the approach described here can be
used at specific sites of interest. For example, physiological information
combined with predictions of climate can be used to identify potential
protected areas (Hoffman,
2003
; Mitchell et al.,
2008
). Likewise, if we predict the ideal location for crops,
livestock and managed systems such as seafood, we can inform resource managers
as to how best to plan for a changing world
(US Environmental Protection Agency (EPA),
2008
; CCSP,
2008
).
| Conclusion |
|---|
|
|
|---|
| Glossary |
|---|
|
|
|---|
Climate index
A large-scale descriptor of climate that encompasses many parameters such
as rainfall, wind and air temperature. Examples include the North Atlantic
Oscillation, the Southern Oscillation, and the Pacific Decadal Oscillation
(see Stenseth et al.,
2003
).
Climate envelope model
A method that correlates observed species distributions with climate
variables. While some approaches include some aspect of species' physiological
responses to climate change, many assume that environmental conditions at the
observed range boundary (i.e. the realized niche) are equivalent to the
species' fundamental niche space (physiological tolerance) (see
Pearson and Dawson, 2003
).
Ecological forecasting
A deterministic approach for quantitatively predicting future patterns of
abundance and distribution of organisms, and the ecological and economic
consequences of these changes. The method can be validated using hindcasts of
past changes in these parameters and often uses a deterministic understanding
of physiological tolerances coupled with forecasted changes in climate. The
approach generates the likelihood, with appropriate levels of uncertainty, of
responses to climate change on a temporally and spatially explicit basis (see
Clark et al., 2001
).
El Niño Southern Oscillation (ENSO)
Ocean–atmosphere interactions that lead to an increase in SST along
the west coast of South America. Exchanges of air between the eastern and
western hemispheres (the Southern Oscillation, or SO) are closely linked to El
Niño events, although changes in SST may occur without changes in the
SO (see Stenseth et al.,
2003
).
Environmental signal analysis
A method for searching for quantitative associations between fluctuations
in large-scale environmental parameters (signals), signals at the level of the
niche, and responses at the physiological scale. For example, a time-series
analysis (cross-correlation or cross-covariance) of environmental signals
vs physiological responses might indicate that an organism `filters
out' some frequency components of the signal but responds to changes over
longer time scales. Conversely, response to high-frequency changes indicates
that organisms respond rapidly to environmental change. These relationships
can then be used to generate hypotheses regarding the transfer of signals
across scales.
Macrophysiology
Measured variation in physiological traits over large temporal and spatial
scales (see Chown et al.,
2004
).
North Atlantic Oscillation (NAO)
A north–south (meridional) oscillation in atmospheric mass
alternating between a high-pressure center over the Azores and a sub-polar
low-pressure center over Iceland. During positive NAO conditions, westerly
winds track further to the north, causing milder conditions in northern Europe
and colder conditions in Southern Europe (see
Stenseth et al., 2003
).
Pacific Decadal Oscillation (PDO)
Pattern of ocean–atmosphere climate variability that occurs in the
mid-latitude Pacific Ocean, generally over time scales of 20–30 years.
During a warm (positive) phase, the western Pacific becomes cooler and parts
of the Eastern Pacific become warmer. The opposite pattern occurs during a
cool (negative) phase (see Mantua et al.,
1997
).
Sea surface temperature (SST)
Measurements of water temperature at the upper skin of the ocean's surface;
when measured by remote sensing instruments, SST measurements reflect the
temperature of the upper few millimeters of the ocean; when measured by buoy,
surface temperature is an indication of the water temperature of the depth of
the sensor, usually at 1–2 m.
Weather
Short-term (real-time) fluctuations in parameters such as wind, rainfall,
air temperature and water temperature.
| Footnotes |
|---|
| References |
|---|
|
|
|---|
Aronson, R. B., Thatje, S., Clarke, A., Peck, L. S., Blake, D. B., Wilga, C. D. and Seibel, B. A. (2007). Climate change and invasibility of the Antarctic benthos. Annu. Rev. Ecol. Evol. Syst. 38,129 -154.[CrossRef]
Baskett, M. L., Weitz, J. S. and Levin, S. A. (2007). The evolution of dispersal in resevre networks. Am. Nat. 170,59 -78.[CrossRef][Medline]
Benedetti-Cecchi, L., Bertocci, I., Vaselli, S. and Maggi, E. (2005). Determinants of spatial pattern at different scales in two populations of the marine alga Rissoella verruculosa.Mar. Ecol. Prog. Ser. 293,37 -47.[CrossRef]
Broitman, B. R., Szathmary, P. L., Mislan, K. A. S., Blanchette, C. A. and Helmuth, B. (2009). Predator-prey interactions under climate change: the importance of habitat vs body temperature. Oikos 118,219 -224.[CrossRef]
CCSP (2008). The effects of climate change on agriculture, land resources, water resources, and biodiversity. A Report by the U.S. Climate Change Science Program and the Subcommittee on Global Change Research. Washington, DC: U.S. Environmental Protection Agency.
Chown, S. L., Gaston, K. J. and Robinson, D. (2004). Macrophysiology: large-scale patterns in physiological traits and their ecological implications. Funct. Ecol. 18,159 -167.[CrossRef]
Clark, J. S., Carpenter, S. R., Barber, M., Collins, S., Dobson,
A., Foley, J. A., Lodge, D. M., Pascual, M., Pielke, R., Pizer, W. et al.
(2001). Ecological forecasts: an emerging imperative.
Science 293,657
-660.
Costa, D. P. and Sinervo, B. (2004). Field physiology: physiological insights from animals in nature. Annu. Rev. Physiol. 66,209 -238.[CrossRef][Medline]
Dahlhoff, E. P. (2004). Biochemical indicators of stress and metabolism: applications for marine ecological studies. Annu. Rev. Physiol. 66,183 -207.[CrossRef][Medline]
Denny, M. W. and Harley, C. D. G. (2006). Hot
limpets: predicting body temperature in a conductance-mediated thermal system.
J. Exp. Biol. 209,2409
-2419.
Denny, M. W., Helmuth, B., Leonard, G. H., Harley, C. D. G., Hunt, L. J. H. and Nelson, E. K. (2004). Quantifying scale in ecology: lessons from a wave-swept shore. Ecol. Monogr. 74,513 -532.[CrossRef]
Denny, M. W., Miller, L. P. and Harley, C. D. G.
(2006). Thermal stress on intertidal limpets: long-term hindcasts
and lethal limits. J. Exp. Biol.
209,2420
-2431.
Deutschman, D. H., Levin, S. A. and Pacala, S. W. (1999). Propagation in a forest succession model: the role of fine-scale heterogeneity in light. Ecology 80,1927 -1943.[CrossRef]
Erlandsson, J. and McQuaid, C. D. (2004). Spatial structure of recruitment in the mussel Perna perna at local scales: effects of adults, algae and recruit size. Mar. Ecol. Prog. Ser. 267,173 -185.[CrossRef]
Erlandsson, J., McQuaid, C. D. and Kostylev, V. E. (2005). Contrasting spatial heterogeneity of sessile organisms within mussel (Perna perna L.) beds in relation to topographic variability. J. Exp. Mar. Biol. Ecol. 314, 79-97.[CrossRef]
Fabricius, K. E. (2006). Effects of irradiance, flow, and colony pigmentation on the temperature microenvironment around corals: implications for coral bleaching? Limnol. Oceanogr. 51,30 -37.
Forchhammer, M. C. and Post, E. (2004). Using large-scale climate indices in climate change ecology studies. Popul. Ecol. 46,1 -12.
Gilman, S. E., Wethey, D. S. and Helmuth, B.
(2006). Variation in the sensitivity of organismal body
temperature to climate change over local and geographic scales.
Proc. Natl. Acad. Sci. USA
103,9560
-9565.
Gleeson, M. W. and Strong, A. E. (1995). Applying MCSST to coral reef bleaching. Adv. Space Res. 16,151 -154.
Gracey, A. Y. and Cossins, A. R. (2003). Application of microarray technology in environmental and comparative physiology. Annu. Rev. Physiol. 65,231 -259.[CrossRef][Medline]
Gracey, A. Y., Chaney, M. L., Boomhower, J. P., Tyburczy, W. R., Connor, K. and Somero, G. N. (2008). Rhythms in gene expression in a fluctuating intertidal environment. Curr. Biol. 18,1 -7.[CrossRef][Medline]
Guichard, F., Bourget, E. and Robert, J. L. (2001). Scaling the influence of topographic heterogeneity on intertidal benthic communities: alternate trajectories mediated by hydrodynamics and shading. Mar. Ecol. Prog. Ser. 217, 27-41.[CrossRef]
Hallett, T. B., Coulson, T., Pilkington, J. G., Clutton-Brock, T. H., Pemberton, J. M. and Grenfell, B. T. (2004). Why large-scale climate indices seem to predict ecological processes better than local weather. Nature 430, 71-75.[CrossRef][Medline]
Harley, C. D. G. (2003). Abiotic stress and herbivory interact to set range limits across a two-dimensional stress gradient. Ecology 84,1477 -1488.[CrossRef]
Harley, C. D. G. (2008). Tidal dynamics, topographic orientation, and temperature-mediated mass mortalities on rocky shores. Mar. Ecol. Prog. Ser. 371, 37-46.[CrossRef]
Harley, C. D. G. and Helmuth, B. S. T. (2003). Local and regional scale effects of wave exposure, thermal stress, and absolute vs. effective shore level on patterns of intertidal zonation. Limnol. Oceanogr. 48,1498 -1508.
Helmuth, B. S. T. (1998). Intertidal mussel microclimates: predicting the body temperature of a sessile invertebrate. Ecol. Monogr. 68,51 -74.[CrossRef]
Helmuth, B. (2002). How do we measure the
environment? Linking intertidal thermal physiology and ecology through
biophysics. Integr. Comp. Biol.
42,837
-845.
Helmuth, B. S. T. and Hofmann, G. E. (2001).
Microhabitats, thermal heterogeneity, and patterns of physiological stress in
the rocky intertidal zone. Biol. Bull.
201,374
-384.
Helmuth, B. S., Harley, C. D. G., Halpin, P., O'Donnell, M.,
Hofmann, G. E. and Blanchette, C. (2002). Climate change and
latitudinal patterns of intertidal thermal stress.
Science 298,1015
-1017.
Helmuth, B., Carrington, E. and Kingsolver, J. G. (2005). Biophysics, physiological ecology, and climate change: does mechanism matter? Annu. Rev. Physiol. 67,177 -201.[CrossRef][Medline]
Helmuth, B., Broitman, B. R., Blanchette, C. A., Gilman, S., Halpin, P., Harley, C. D. G., O'Donnell, M. J., Hofmann, G. E., Menge, B. and Strickland, D. (2006a). Mosaic patterns of thermal stress in the rocky intertidal zone: implications for climate change. Ecol. Monogr. 76,461 -479.[CrossRef]
Helmuth, B., Mieszkowska, N., Moore, P. and Hawkins, S. J. (2006b). Living on the edge of two changing worlds: forecasting the response of rocky intertidal ecosystems to climate change. Annu. Rev. Ecol. Evol. Syst. 37,373 -404.[CrossRef]
Hilbish, T. J. (1981). Latitudinal variation in freezing tolerance of Melampus bidentatus (Say) (Gastropoda: Pulmonata). J. Exp. Mar. Biol. Ecol. 52,283 -297.[CrossRef]
Hoffman, J. (2003). Temperate marine. In Buying Time: A User's Manual For Building Resistance and Resilience to Climate Change in Natural Systems (ed. L. J. Hansen, J. L. Biringer and J. R. Hoffman), pp. 123-155. Switzerland: WWF.
Hofmann, G. E. and Gaines, S. D. (2008). New tools to met new challenges: emerging technologies for managing marine ecosystems for resilience. Bioscience 58, 43-52.[CrossRef]
Hofmann, G. E. and Place, S. P. (2007). Genomics-enables research in marine ecology: challenges, risks and pay-offs. Mar. Ecol. Prog. Ser. 332,249 -255.[CrossRef]
Hummel, H., Bogaards, R. H., Bachelet, G., Caron, F., Sola, J. C. and Amiard-Triquet, C. (2000). The respiratory performance and survival of the bivalve Macoma balthica (L.) at the southern limit of its distribution area: a translocation experiment. J. Exp. Mar. Biol. Ecol. 251,85 -102.[CrossRef][Medline]
Hutchins, L. W. (1947). The bases for temperature zonation in geographical distribution. Ecol. Monogr. 17,325 -335.[Medline]
IPCC (2007). Climate change 2007: the physical science basis. Contribution of Working Group 1 to the Fourth Assessment Report of the Intergovernmental Panel on Climate Change. Cambridge, UK and New York, NY, USA: Cambridge University Press.
Jimenez, I. M., Kühl, M., Larkum, A. W. D. and Ralph, P. J. (2008). Heat budget and thermal microenvironment of shallow-water corals: Do massive corals get warmer than branching corals? Limnol. Oceanogr. 53,1548 -1561.
Kearney, M. (2006). Habitat, environment and niche: what are we modelling? Oikos 115,186 -191.[CrossRef]
Kearney, M., Phillips, B. L., Tracy, C. R., Christian, K. A., Betts, G. and Porter, W. P. (2008). Modelling species distributions without using species distributions: the cane toad in Australia under current and future climates. Ecography 31,423 -434.
Kinlan, B. P., Gaines, S. D. and Lester, S. E. (2005). Propagule dispersal and the scales of marine community process. Divers. Distrib. 11,139 -148.[CrossRef]
Koehl, M. A. R. and Wolcott, B. D. (2004). Can function at the organism level explain ecological patterns? Ecology 85,1808 -1810.[CrossRef]
Leichter, J. J., Helmuth, B. and Fischer, A. M. (2006). Variation beneath the surface: quantifying complex thermal environments on coral reefs in the Caribbean, Bahamas and Florida. J. Mar. Res. 64,563 -588.[CrossRef]
Leslie, H. M., Breck, E. N., Chan, F., Lubchenco, J. and Menge,
B. A. (2005). Reproductive hotspots linked to nearshore ocean
condtions. Proc. Natl. Acad. Sci. USA
102,10534
-10539.
Magnuson, J. J. (1991). Fish and fisheries ecology. Ecol. Appl. 1,13 -26.[CrossRef]
Mantua, N. J., Hare, S. R., Zhang, Y., Wallace, J. M. and Francis, R. C. (1997). A Pacific interdecadal climate oscillation with impacts on salmon production. Bull. Am. Meteor. Soc. 78,1069 -1079.[CrossRef]
Menge, B. A., Olson, A. M. and Dahlhoff, E. P.
(2002). Environmental stress, bottom-up effects, and community
dynamics: Integrating molecular-physiological with ecological approaches.
Integr. Comp. Biol. 42,892
-908.
Mitchell, N. J., Kearney, M. R., Nelson, N. J. and Porter, W.
P. (2008). Predicting the fate of a living fossil: how will
global warming affect sex determination and hatching phenology in tuatara?
Proc. Biol. Sci. 275,2185
-2193.
Nathan, R., Sapir, N., Trakhtenbrot, A., Katul, G. G., Bohrer, G., Otte, M., Avissar, R., Soons, M. B., Horn, H., Wikelski, M. et al. (2005). Long-distance biological transport processes through the air: can nature's complexity be unfolded in silico? Divers. Distrib. 11,131 -137.[CrossRef]
Paine, R. T. (1974). Intertidal community structure: experimental studies on the relationship between a dominant competitor and its principal predator. Oecologia 15, 93-120.[CrossRef]
Parmesan, C., Gaines, S., Gonzalez, L., Kaufman, D. M., Kingsolver, J., Peterson, A. T. and Sagarin, R. (2005). Empirical perspectives on species borders: from traditional biogeography to global change. Oikos 108, 58-75.[CrossRef]
Patterson, M. R. (1992). A chemical engineering view of cnidarian symbioses. Am. Zool. 32,566 -582.
Pearson, R. G. and Dawson, T. P. (2003). Predicting the impacts of climate change on the distribution of species: are bioclimate envelope models useful? Glob. Ecol. Biogeogr. 12,361 -371.[CrossRef]
Petes, L. E., Menge, B. A. and Murphy, G. D. (2007). Environmental stress decreases survival, growth, and reproduction in New Zealand mussels. J. Exp. Mar. Biol. Ecol. 351,83 -91.[CrossRef]
Petes, L. E., Mouchka, M. E., Milston-Clements, R. H., Momoda, T. S. and Menge, B. A. (2008). Effects of environmental stress on intertidal mussels and their sea star predators. Oecologia 156,671 -680.[CrossRef][Medline]
Pfister, C. A., Wootton, J. T. and Neufield, C. J. (2007). Relative roles of coastal and oceanic processes in determining physical and chemical characteristics of an intensively sampled nearshore system. Limnol. Oceanogr. 52,1767 -1775.
Phillips, B., Chipperfield, J. D. and Kearney, M. R. (2008). The toad ahead: challenges of modelling the range and spread of an invasive species. Wildl. Res. 35,222 -234.[CrossRef]
Pincebourde, S., Sanford, E. and Helmuth, B. (2008). Body temperature during low tide alters the feeding performance of a top intertidal predator. Limnol. Oceanogr. 53,1562 -1573.
Place, S. P., O'Donnell, M. J. and Hofmann, G. E. (2008). Gene expression in the intertidal mussel Mytilus californianus: physiological response to environmental factors on a biogeographic scale. Mar. Ecol. Prog. Ser. 356, 1-14.[CrossRef]
Porter, W. P., Sabo, J. L., Tracy, C. R., Reichman, O. J. and
Ramankutty, N. (2002). Physiology on a landscape scale:
plant-animal interactions. Integr. Comp. Biol.
42,431
-453.
Pörtner, H. O. (2002). Climate variations and the physiological basis of temperature dependent biogeography: systemic to molecular hierarchy of thermal tolerance in animals. Comp. Biochem. Physiol. 132A,739 -761.[CrossRef][Medline]
Pörtner, H. O. and Farrell, A. P. (2008). Physiology and climate change. Nature 322,690 -692.[CrossRef]
Richardson, A. J. and Poloczanska, E. S.
(2008). Under-resourced, under threat.
Science 320,1294
-1295.
Sagarin, R. D. and Somero, G. N. (2006). Complex patterns of expression of heat-shock protein 70 across the southern biogeographical ranges of the intertidal mussel Mytilus californianus and snail Nucella ostrina. J. Biogeogr. 33,622 -630.[CrossRef]
Sanford, E. (2002). Water temperature,
predation, and the neglected role of physiological rate effects in rocky
intertidal communities. Integr. Comp. Biol.
42,881
-891.
Schmidt, P. S., Bertness, M. D. and Rand, D. M.
(2000). Environmental heterogeneity and balancing selection in
the acorn barnacle Semibalanus balanoides. Proc. Biol.
Sci. 267,379
-384.
Schneider, K. R., Wethey, D. S., Helmuth, B. S. T. and Hilbish, T. J. (2005). Implications of movement behavior on mussel dislodgement: exogenous selection in a Mytilus spp. hybrid zone. Mar. Biol. 146,333 -343.[CrossRef]
Sebens, K. P., Grace, S. P., Helmuth, B., Maney, E. J., Jr and Miles, J. S. (1998). Water flow and prey capture by three scleractinian corals, Madracis mirabilis, Montastrea cavernosa and Porites porites, in a field enclosure. Mar. Biol. 131,347 -360.[CrossRef]
Somero, G. N. (2005). Linking biogeography to physiology: evolutionary and acclimatory adjustments of thermal limits. Front. Zool. 2,1 .[CrossRef][Medline]
Southward, A. J. (1958). Note on the temperature tolerances of some intertidal animals in relation to environmental temperatures and geographical distribution. J. Mar. Biol. Assoc. UK 37,49 -66.[CrossRef]
Stenseth, N. C., Ottersen, G., Hurrell, J. W., Mysterud, A.,
Lima, M., Chan, K.-S., Yoccoz, N. G. and Adlandsvik, B.
(2003). Studying climate effects on ecology through the use of
climate indices: the North Atlantic Oscillation, El Niño Southern
Oscillation and beyond. Proc. Biol. Sci.
270,2087
-2096.
Stillman, J. (2003). Acclimation capacity
underlies susceptibility to climate change. Science
301, 65.
Stillman, J. and Somero, G. N. (2000). A comparative analysis of the upper thermal tolerance limits of eastern Pacific porcelain crabs, genus Petrolisthes: influences of latitude, vertical zonation, acclimation, and phylogeny. Physiol. Biochem. Zool. 73,200 -208.[CrossRef][Medline]
Tomanek, L. and Somero, G. N. (2000). Time course and magnitude of synthesis of heat-shock proteins in congeneric marine snails (Genus Tegula) from different tidal heights. Physiol. Biochem. Zool. 73,249 -256.[CrossRef][Medline]
US Environmental Protection Agency (EPA) (2008). Effects of climate change for aquatic invasive species and implications for management and research,337 pp. Washington, DC: National Center for Environmental Assessment.
Wethey, D. S. (1983). Geographic limits and
local zonation: the barnacles Semibalanus (Balanus) and
Chthamalus in New England. Biol. Bull.
165,330
-341.
Wethey, D. S. (2002). Biogeography,
competition, and microclimate: the barnacle Chthamalus fragilis in
New England. Integr. Comp. Biol.
42,872
-880.
Wethey, D. S. and Woodin, S. A. (2008). Ecological hindcasting of biogeographic responses to climate change in the European intertidal zone. Hydrobiologia 606,139 -151.[CrossRef]
Wiens, J. A., Milne, B. T. (1989). Scaling of `landscapes' in landscape ecology, or, landscape ecology from a beetle's perspective. Landsc. Ecol. 3, 87-96.[CrossRef]
Wikelski, M. and Cooke, S. J. (2006). Conservation physiology. Trends Ecol. Evol. 21, 38-46.[CrossRef][Medline]
Williams, G. A. and Morritt, D. (1995). Habitat partitioning and thermal tolerance in a tropical limpet, Cellana grata.Mar. Ecol. Prog. Ser. 124,89 -103.[CrossRef]
Winter, A., Appeldoorn, R. S., Bruckner, A., Williams, E. H. J. and Goenaga, C. (1998). Sea surface temperatures and coral reef bleaching off La Parguera, Puerto Rico (northeastern Caribbean Sea). Coral Reefs 17,377 -382.[CrossRef]
![]()
CiteULike
Complore
Connotea
Del.icio.us
Digg
Reddit
Technorati
Twitter What's this?
This article has been cited by other articles:
![]() |
A. P. Farrell Environment, antecedents and climate change: lessons from the study of temperature physiology and river migration of salmonids J. Exp. Biol., December 1, 2009; 212(23): 3771 - 3780. [Abstract] [Full Text] [PDF] |
||||
![]() |
M. Denny and B. Helmuth Confronting the physiological bottleneck: A challenge from ecomechanics Integr. Comp. Biol., September 1, 2009; 49(3): 197 - 201. [Full Text] [PDF] |
||||
| ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||