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First published online February 12, 2007
Journal of Experimental Biology 210, 750-764 (2007)
Published by The Company of Biologists 2007
doi: 10.1242/jeb.02695
Phosphoglucose isomerase genotype affects running speed and heat shock protein expression after exposure to extreme temperatures in a montane willow beetle

1 Department of Biology, Sonoma State University, Rohnert Park, CA 94928,
USA
2 University of California, White Mountain Research Station, Bishop, CA
93514, USA
3 Santa Clara University, Santa Clara, CA 95053, USA
* Author for correspondence (e-mail: rank{at}sonoma.edu)
Accepted 13 December 2006
| Summary |
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Key words: adaptation, allozyme, cold, heat, Hsp70, insect, Chrysomelidae, PGI
| Introduction |
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Many studies suggest that metabolic enzyme loci are associated with an
organism's ability to cope with thermal extremes or fluctuations in
temperature (Podrabsky and Somero,
2004
; Riehle et al.,
2001
; Riehle et al.,
2005
). Metabolic enzyme variants differing in functional
properties, such as Michaelis-Menten binding constant (Km)
or catalytic efficiency (indexed by kcat or
Vmax/Km), are often found along
environmental temperature gradients, and there are many cases where variation
in allozymes (between populations) or orthologous homologs (between closely
related species) appear to result from temperature adaptation
(Dahlhoff and Somero, 1993
;
Graves and Somero, 1982
;
Johns and Somero, 2004
;
Mitton, 1997
;
Somero, 2004
). For example, in
his studies of the phosphoglucose isomerase (PGI) polymorphism in
Colias butterflies, Watt found that PGI genotypes that differ in
Km and Vmax/Km
also vary in flight performance, and these differences correspond to
genotype-based differences in fecundity and mating success
(Watt, 1983
;
Watt, 1992
;
Watt et al., 1985
;
Watt et al., 1983
). Because
these functional properties of metabolic enzymes are strongly temperature
dependent, one might expect that the relationship between enzyme genotype and
physiological and fitness characters depends on thermal history of the
individual organism. However, few studies have addressed this issue
(Neargarder et al., 2003
;
Rank and Dahlhoff, 2002
).
The Sierra willow leaf beetle Chrysomela aeneicollis (Schaeffer)
presents an excellent model organism to gain a better understanding of the
relationship between thermal exposure and naturally occurring genetic
variation in traits related to temperature adaptation. Sierra Nevada
populations of this beetle are found at high elevations (24003600 m)
and live on the southern edge of the species' range in North America
(Brown, 1956
). There, they
endure greater extremes in temperature than conspecifics in other regions
(Dingle et al., 1990
). Sierra
populations experience wide fluctuations in daily temperatures during summer,
from 10°C on cold nights to over 35°C during warm days. Annual
and seasonal variation in climatic conditions cause shifts in beetle
distribution and abundance (Dahlhoff and
Rank, 2000
; Fearnley,
2003
; McMillan et al.,
2005
; Rank and Dahlhoff,
2002
). Natural selection to temperature appears to act on the PGI
locus in Sierra populations of C. aeneicollis. PGI allele 1 is
present in higher frequency at northern, colder sites, whereas PGI allele 4 is
most frequent in sub-populations living in southern, warmer sites. PGI allele
1 frequency increased between 1988 and 1996, coinciding with several years of
increasing precipitation and decreasing temperature
(Rank and Dahlhoff, 2002
). In
addition, changes in air temperature during summer 2001 were linked to shifts
in PGI allele frequency in populations where alleles 1 and 4 are both common
(Fearnley, 2003
). By contrast,
other polymorphic enzyme loci in these populations do not vary with elevation,
latitude, climate change or experimental manipulation in a systematic way
(Bruce, 2005
;
Rank, 1992
;
Rank and Dahlhoff, 2002
).
Biochemical and physiological evidence also support the hypothesis that PGI is
under temperature selection. PGI allozymes differ in Km
and thermostability (Dahlhoff and Rank,
2000
), and heat shock protein (Hsp70) expression and thermal
tolerance vary among PGI genotypes
(Dahlhoff and Rank, 2000
;
McMillan et al., 2005
;
Neargarder et al., 2003
;
Rank and Dahlhoff, 2002
).
Here we evaluate the effect of repeated thermal stress, which mimics temperature fluctuations found in nature, on differences in running speed among PGI genotypes.
Running speed is an important component of fitness for leaf beetle adults
and larvae (Gibert et al.,
2001
; Gilchrist,
1996
; Wisco et al.,
1997
). Male mating success is influenced by the ability to find
females more quickly than other males
(Rank et al., 2006
), whereas
females run along willow branches to locate suitable oviposition sites. For
larvae, running speed may be related to ability to escape crawling predators
(Rank and Smiley, 1994
;
Rank et al., 1996
). Running
speed is also useful as a performance character that relates to overall
physiological status of an organism
(Brana, 2003
;
Lighton and Duncan, 2002
). It
is closely related to metabolic rate
(Hochachka and Somero, 2002
;
Lovegrove, 2004
;
Willmer et al., 2004
), and
locomotor performance declines after exposure to environmental stress in many
species (Folk and Gilchrist,
2005
; Klose et al.,
2005
; Robertson,
2004
; Sorensen and Loeschcke,
2004
).
We also explore the role that Hsp expression may play in reducing
differences in performance after exposure to stressful environmental
temperatures. Organisms upregulate Hsps in response to conditions that damage
proteins or other cellular structures, and this response enhances survival and
thermotolerance in nature (Dahlhoff,
2004
; Feder and Hofmann,
1999
; Gehring and Wehner,
1995
; Sorensen et al.,
2003
). In addition, Hsp-assisted folding of mutant polypeptides
may buffer against the development of phenotypes with reduced fitness as a
consequence of exposure to environmental stress
(Roberts and Feder, 1999
;
Rutherford, 2003
;
Rutherford and Lindquist,
1998
). However, stress-inducible Hsp expression competes with
housekeeping metabolism and may impose a fitness cost on routinely stressed
individuals (Krebs and Feder,
1998
; Krebs and Holbrook,
2001
; Loeschcke et al.,
1997
; Robertson,
2004
). Previous studies of Sierra willow beetles have shown that
genetic variation at PGI results in differential expression and induction of
Hsp70 (Dahlhoff and Rank,
2000
; McMillan et al.,
2005
; Rank and Dahlhoff,
2002
). Individuals possessing the thermolabile allele 1 upregulate
Hsp70 at lower temperatures than individuals homozygous for the thermostable
allele 4, and Hsp70 expression levels vary among PGI genotypes over the range
of temperatures typically experienced in nature. Thus, the relationship
between performance and genotypic variation at a locus under temperature
selection (PGI) may be mediated in part by differences in Hsp70 expression.
Increased Hsp70 expression in beetles possessing allele 1 could enhance
protection of metabolic enzymes important for locomotor performance, including
PGI, and result in higher running speeds after exposure to thermal stress.
However, continued exposure to thermal extremes may result in reduced running
speed in PGI 1-1 or 1-4 individuals, because of increased cost of maintaining
the heat-shock response, relative to individuals homozygous for PGI allele 4.
To date, the importance of differential Hsp expression among natural genetic
variants of enzymes important for locomotion, such as PGI, has not been
demonstrated.
In the present study, we assessed factors that influence running speed and Hsp70 expression of adults and larvae of C. aeneicollis. First, we quantified the relationship between beetle body temperature and running speed in nature for both sexes. Second, we measured running speed of males in nature after manipulation of mating frequency. Third, we exposed adults and larvae to stressful temperatures and measured running speeds before and after each exposure. After a final exposure and running speed measurement, we froze beetles for analysis of Hsp70 expression. For all experiments, we obtained genotypes at PGI and two other polymorphic loci, isocitrate dehydrogenase (IDH) and phosphoglucomutase (PGM), to test whether either trait relates to other metabolic enzyme genotypes.
| Materials and methods |
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Factors affecting running speed in nature
Experimental design
We measured voluntary running speeds in nature of adult males and females
that had been either mating or not mating at the time of collection. We then
determined effects of field mating status and mating treatment on male running
speed. To perform mating treatment, after an initial measure of running speed
in the field, males were randomly assigned to a plastic cup with either two or
no females. Pairs were brought to WMRS and kept in these cups throughout the
day (20°C, 14 h) and overnight (females removed; 4°C, 10 h), and then
returned to the field site for a second measure of running speed, after which
males were frozen at 80°C until genotypes at metabolic enzyme loci
were determined. These experiments were performed on 2327 June
2004.
Running speed
Voluntary maximum running speed was measured at ambient temperature
(1124°C) at Bluff Lake. Beetles were placed facing upwards onto the
lower portion of a 6 mm diameter vertical wooden dowel. Because they are
positively phototactic, beetles voluntarily ran up the dowel. A stopwatch was
used to measure the time required to run 10 cm (first experiment,
mean=12.1±0.40 s, N=170 females and males) or 5 cm (second
experiment, mean=7.2±0.26 s, N=174 males). Experiments were
run between 10:00 h and 16:00 h on sunny or partly cloudy days. Immediately
after each run, body temperature of each beetle (Tb) and
ambient air temperature (Ta) were measured with a digital
thermometer (Omega HH-82, Type T thermocouple). Tb was
measured by restraining the beetle in a piece of mesh netting and pressing the
thermocouple underneath the elytron long enough to obtain a stable temperature
reading. This allowed for accurate determination of Tb
without damage to the beetle.
Effects of repeated exposure to extreme temperature on running speed
Experimental design
In the laboratory, beetle running speed was measured three times: (1) day
1, within 6 h of field collection (initial run); (2) day 2, 1 h after initial
4 h temperature treatment (4, 20 or 36°C for adults; 4, 20
or 35°C for larvae; Laboratory run 1), and (3) day 3, 1 h after final 4 h
temperature treatment (4 or 36°C for adults; 4 or 35°C
for larvae; Laboratory run 2). Beetles from each initial temperature treatment
were exposed to the cold or hot final temperature treatment
(Fig. 1). We were unable to
include a 20°C `control' group for the second laboratory running speed
measure (or subsequent Hsp70 expression level measurements) because the
required sample size (N>900) was too large. However, previous
experiments on beetles held under `control' (20°C) conditions from these
populations showed that Hsp70 expression levels are less than 5 ng
g1 total protein. Treatment temperatures were based on
temperatures that resulted in differential Hsp expression and thermal
tolerance among PGI genotypes in previous studies
(McMillan et al., 2005
;
Neargarder et al., 2003
;
Rank and Dahlhoff, 2002
), and
on measures of thermal tolerance for experimental populations (see below).
Experiments were performed with 10 sets of adults run from 25 June7
July 2002 and five sets of third instar larvae run from 2731 July 2002.
Ambient air temperature was recorded every 30 min near the Bluff Lake
collection site using `Tidbit' temperature loggers (Onset Computer Co.,
Pocaset, MA, USA) suspended in a white plastic thermal shields, following the
methods of McMillan et al. (McMillan et
al., 2005
). Mean daily air temperature (measured from 08:00
h20:00 h each day) for this period was 20.7±0.2°C,
determined using Jmp In software (Version 5.0 for PC; SAS Institute Inc.,
Cary, NC, USA). This temperature (±2°C) was used as `control'
temperature for running speed experiments.
|
Determination of sub-lethal stressful (extreme) temperatures
Stressful temperatures for adults and larvae were confirmed by assessing
temperature at which 50% of animals died from exposure to a thermal extreme
(LT50). For LT50 assessment, 1030 individuals
were exposed to one of 23 temperatures for 4 h, held at 20°C for 1
h and then examined for recovery using an index described in Neargarder et al.
(Neargarder et al., 2003
).
LT50 was interpolated between temperatures at which beetle recovery
was higher or lower than 50%. Treatment temperatures were 1°C warmer than
LT50 cold and 1°C cooler than LT50 heat. Few
individuals died during running speed experiments (six adults and one larva),
indicating that treatment temperatures were generally below the maximum value
and above the minimum value for C. aeneicollis thermal tolerance.
Running speed
Voluntary maximum running speed was measured in the laboratory at
20±2°C. Beetles were placed onto the lower portion of a 6 mm
diameter vertical wooden dowel, facing a 100-watt incandescent bulb 60 cm
above the dowel. Runs were filmed with a Sony digital video camera and videos
were analyzed in iMovie for Macintosh (Version 3.0.3). The fastest portion of
each run (10 cm for adults, 2 cm for larvae) was measured. Running speed was
determined by subtracting the start from the end time on the video clip.
Occasionally, smaller segments (5 cm for adults, 1 cm for larvae) were used if
an individual stopped moving in a straight line during the run. For each run,
Ta was measured with a digital thermometer. During a
practice trial of this experiment, it was observed that Tb
was within 1°C of Ta under the artificial lighting
conditions in the laboratory.
Biochemical analysis
Determination of allozyme genotype
Adults and larvae from laboratory running speed measurements were weighed
and frozen at 80°C exactly 1 h after the final temperature
treatment and running speed measurement. Enzyme genotypes for three allozyme
loci, IDH, PGI and PGM, were determined using established starch gel
electrophoresis protocols (Murphy et al.,
1996
; Rank, 1992
).
Adult males used in the field running speed experiment were genotyped at IDH
and PGI. Genotypes at PGM were unavailable for these beetles because samples
were degraded by an accidental freezer thaw.
Determination of Hsp70 expression
Hsp70 expression was quantified for thorax tissue in 166 adults sampled
randomly from each combination of experimental treatment, sex and PGI genotype
from the original sample of 480 individuals for which running speed was
measured. It was quantified for body wall in 110 larvae sampled from each
combination in a similar, random way. Hsp70 expression was measured by western
blot analysis using precast polyacrylamide gels (Tris-HCl 10-4% PAGE Ready
Gels; Bio-Rad Laboratories, Hercules, CA, USA) loaded with 40 µg total
protein. Samples were electrophoresed and transferred using standard protocols
(e.g. Rank and Dahlhoff,
2002
). To detect Hsp70, blots were treated with a mouse monoclonal
anti-Hsp70 antibody (SPA-822; StressGen Biotechnologies, Victoria, BC,
Canada). Prior studies of beetle Hsp70 suggest that this antibody is specific
for stress-inducible Hsp70, as bands rarely appear on western blots run for
beetles held at 20°C by day, 4°C at night, but expression reaches high
levels after exposure to elevated temperatures
(McMillan et al., 2005
;
Rank and Dahlhoff, 2002
).
Location of bound primary antibody was determined using an anti-mouse
immunoglobulin G (IgG) conjugated with peroxidase, which was reacted using
ECL-Plus (GE Healthcare Bio-Sciences Corp., Piscataway, NJ, USA) and the
presence of a 72-kDa band was detected using a Storm 860 Molecular Imager (GE
Healthcare).
Gels were run in blocks of eight (adults, 48 gels; larvae, 28 gels). On each gel, proteins of known genotype from four randomly determined individuals were electrophoresed, in duplicate, along with a positive control (human recombinant Hsp72; SPP-855, StressGen Biotechnologies). On each gel, 23 different concentrations of positive control were run, so that an eight-gel array would produce a serial dilution (0.54 ng) of pure Hsp70. The resulting blot array was treated and scanned on the phosphoimager as a single dataset. Intensity and size of control bands were background corrected using ImageQuant software (GE Healthcare) and used to generate a non-linear (logarithmic) `standard expression curve' for each blot array. To quantify relative Hsp70 expression, intensity/size values of each duplicate sample were averaged and Hsp70 values determined by extrapolation using ImageQuant. Resulting Hsp70 expression levels are reported as ng of Hsp70 per g of total muscle protein.
Statistical analysis
All statistical analyses were performed using Jmp In software (Version 5.0
for PC; SAS Institute). For brevity, statistics supporting each experimental
result are cited parenthetically in the text or figure captions, with the
exception of the Hsp70 analyses (Table
1). Data from the first experiment on running speed in the field
was analyzed by two-way analysis of covariance (ANCOVA), using sex and mating
status as main effects and beetle Tb as a covariate. In
the second field experiment, three-way ANCOVA was performed, with running
speed after the laboratory treatment as a dependent variable. Main effects
included enzyme genotype, initial field mating status (mated or single),
laboratory mating treatment (no female or two females) and interactions.
Beetle Tb was used as a covariate.
|
We have provided tables summarizing statistical analyses of laboratory running speed of all three polymorphic enzyme loci in the supplementary material (supplementary material Tables S1S5). Rare IDH, PGI or PGM genotypes were omitted from these analyses, because including them would create missing cells in analysis of variance (ANOVA) or ANCOVA models (supplementary material Table S1). Analyses of laboratory running speed were performed using these enzyme genotypes, sex (for adults) and exposure temperature as main effects (supplementary material Tables S2S5). Preliminary analyses showed that variation in Ta during laboratory runs did not significantly affect running speed. Running speed of adults and larvae after field collection was analyzed using two-way ANOVA (genotype and sex as main effects; supplementary material Table S2). The effect of PGI genotype on the relationship between body mass and running speed was analyzed using heterogeneity of slopes. Adult running speed after one laboratory treatment was analyzed with ANOVA (supplementary material Table S3), larval running speed with ANCOVA (genotype as a main effect, body mass as a covariate, and the interaction term; supplementary material Tables S2, S3).
|
| Results |
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Male running speed was correlated with Tb before and after the mating treatment (N=174, P<0.0001 for both treatment groups), in which a fresh collection of males were held for 14 h with either two females or without females. Pretreatment running speed was not significantly different between mating and non-mating males in this smaller sample (F1,167=1.3, P=0.26), as it was in the larger experiment described above. It also did not depend on enzyme genotype (PGI: F2,167=1.9, P=0.15; IDH: F4,155=1.9, P=0.11), nor was there a significant interaction between pretreatment running speed and genotype (PGI: F2,167=0.3, P>0.7; IDH: F4,155=2.1, P=0.08). However, male running speed after 14 h exposure to females varied among PGI genotypes (Fig. 3; 1-1>1-4=4-4). PGI 1-1 and PGI 4-4 males that had been kept with two females ran faster than those that had been kept singly, but there was no difference for PGI 1-4 males (Fig. 3; PGI genotype x treatment interaction: F1,163=4.5, P=0.013). There was no significant effect of IDH genotype (F4,145=0.97, P=0.43) or interactions with other factors (P>0.2 for all comparisons) on post-treatment running speed. Pretreatment running speed was related to post-treatment running speed (y=0.28x+1.03, R2=0.09, F1,172=16.4, P<0.0001; both adjusted by Tb), indicating that although there is a large amount of variation in running speed among treatment groups, individual running speed measures are repeatable.
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Factors affecting running speed of field-collected beetles in the laboratory
Laboratory running speed (measured shortly after collection) of adult males
was 12% greater than females (F1,451=28.1,
P<0.0001), as was observed in the field
(Fig. 2), and this difference
varied among PGI genotypes (Fig.
4; F2,451=4.2, P=0.016). PGI 1-1 and
1-4 males ran much faster than females, but PGI 4-4 females and males ran at
similar speeds. Running speed of third instar larvae was positively related to
body mass (F1,179=16.8, P<0.0001), a
relationship that was significant for PGI 4-4 larvae, weak for PGI 1-4 larvae
and not significant for PGI 1-1 larvae
(Fig. 5; heterogeneity of
slopes analysis: F2,179=4.3, P=0.015). Adult PGM
and larval IDH genotypes varied significantly in running speed after field
collection (supplementary material Table S2). Adults possessing PGM allele 1
ran slower than other genotypes, but there was no consistent association
between any IDH allele and running speed. Not surprisingly, adults ran over
six times faster than larvae (adults: 1.39±0.014 cm
s1; larvae: 0.217±0.005 cm s1).
Initial running speeds of adults and larvae were positively correlated to
residual running speeds after the first temperature-exposure treatment,
although a high degree of unexplained variation in individual running speed
was observed (Fig. 6).
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Effects of exposure to heat and cold on running speed
Effects of first temperature treatment
After one day in the laboratory at 20°C, running speed increased for
adults (8%) and larvae (21%). Exposure to heat (3536°C) reduced
adult running speed by 11%, and larval running speed increased less among
individuals exposed to heat (15%) than those exposed to the control (20°C)
treatment. Exposure to 4°C reduced running speed by 23% in adults
and larvae (adults: F2,379=17.6, P<0.0001;
larvae: F2,207=21.2, P<0.0001). Running speed
was also influenced by sex and PGI genotype in adults. Males ran 13% faster
than females (F1,354=11.3, P=0.0009). PGI 1-1 and
1-4 individuals ran faster than 4-4 individuals after exposure to heat or cold
(Fig. 7;
F2,379=3.0, P=0.051; supplementary material Table
S3). The interaction between sex and PGI genotype was not significant
(F2,379=0.7, P>0.50), and genotype effects
were not observed for other polymorphic loci. Among larvae, PGI 4-4
individuals ran slower than other genotypes when held at 20°C, but faster
than PGI 1-4 or 1-1 individuals after exposure to cold or heat
(Fig. 7; PGI by
treatment-temperature interaction; F4,207=3.7,
P=0.006). Differences in larval running speed among PGI genotypes
depended on body mass after the treatment (supplementary material Table
S3).
|
Effects of repeated temperature treatment
Mean running speed of adults and larvae declined after the second exposure,
in which all individuals were exposed to either cold or heat (adults: 5%,
paired comparisons t=2.64, N=341, P=0.009;
larvae: 7%, paired comparisons t=2.45, N=212,
P=0.01). Beetles exposed to cold ran more slowly than those exposed
to heat (adults: 11%, F1,332=6.9, P=0.009;
larvae: 24%, F1,192=23.9, P<0.0001;
supplementary material Tables S4, S5). Body mass was positively related to
larval running speed (F1,192=11.8, P=0.0007), but
this relationship also depended on PGI genotype and second temperature
exposure (PGI genotype x final exposure; F2,192=5.5,
P=0.005; supplementary material Table S5). For PGI 1-1 larvae, the
positive relationship between mass and running speed was more pronounced when
larvae were exposed to cold than heat, whereas for PGI 1-4 and 4-4 larvae, the
positive relationship was most pronounced when larvae were exposed to
heat.
Analysis of the change in running speed between the first and second temperature-exposure treatments revealed that individuals that had been initially exposed to cold ran faster after the second exposure to heat or cold (Fig. 8; adults: F2,309=13.9, P<0.0001; larvae: F2,194=29.1, P<0.0001; supplementary material Tables S4, S5). PGI 4-4 adults ran faster after the second exposure to heat or cold than they had after the first temperature exposure (F2,309=3.1, P=0.045), whereas other genotypes ran more slowly (Fig. 8). For larvae, the relationship between PGI genotype and the change in running speed between the first and second exposure treatment was somewhat different (Fig. 8). After the second exposure, most larvae ran slower. PGI 1-1 larvae ran more quickly than other genotypes after heat exposure, but PGI 1-1 individuals also ran more slowly than other genotypes after exposure to cold (PGI genotype x final exposure; F2,194=4.7, P=0.01; supplementary material Table S5). No effects were observed for other polymorphic loci (supplementary material Tables S4, S5).
|
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| Discussion |
|---|
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|---|
Males run faster than females (Figs
2,
4). Running speed may be
especially important for adult male willow beetles, because a male's mating
success is related to his ability to locate and mate with as many females as
possible (Rank et al., 2006
).
Difference in running speed among males varies among PGI genotypes and depends
on prior mating activity (Figs
3,
4). Alleles at any locus that
are associated with enhanced locomotor performance may increase in frequency
as a consequence of increased mating success of individuals that possess
them.
The relationship between larval body size and running speed also varied
among PGI genotypes (Fig. 5;
supplementary material Tables S2, S3 and S5). In field-collected larvae, PGI
1-1 individuals showed no evidence of a body size/running speed relationship,
whereas PGI 4-4 individuals showed a strong positive one. After exposure to
stressful temperatures in the laboratory, the effect of PGI genotype on the
mass/running speed relationship depended on the type of stress. For PGI 1-1
larvae, the positive relationship between mass and running speed was strongest
when larvae were exposed to cold, whereas for PGI 1-4 and 4-4 larvae, the
positive relationship was most pronounced when larvae were exposed to heat.
These data suggest that selection could act on PGI for small larvae, if some
genotypes fail to evade crawling predators such as syrphid fly larvae
(Rank and Smiley, 1994
;
Smiley and Rank, 1986
).
Previous studies of C. aeneicollis have demonstrated that variation
in larval thermal tolerance among genotypes depended on the type (warm
versus cold) and degree of thermal stress
(McMillan et al., 2005
;
Neargarder et al., 2003
).
Experimental exposure to cold affected running speed more severely than
exposure to heat. This cold sensitivity was evident in running speeds of
adults and larvae after the first exposure, in the reduction of running speed
after the second exposure, and in upregulation of Hsp70 in response to cold.
Cold exposure may cause physical damage to cells and tissues because of ice
crystal formation, and temporarily lower metabolic rate. Most Northern
hemisphere insects are exposed to sub-zero temperatures in winter, and avoid
tissue freezing by rapid cold-hardening and avoidance of ice formation in
tissues (Bradshaw et al.,
2004
; David et al.,
2003
; Duman and Horwath,
1983
; Kelty and Lee,
1999
; Van der Laak,
1982
). Conditions in the Eastern Sierra Nevada may be more similar
to temperate habitats in the Southern hemisphere, where insects are typically
exposed to both freezing cold and warm temperatures in the same season
(Bonan, 2002
;
Sinclair and Chown, 2005
).
Insects from these habitats have evolved the ability to tolerate routine ice
formation in tissues (Sinclair et al.,
2003
; Sinclair and Chown,
2005
; Sinclair et al.,
2004
). The fact that C. aeneicollis can survive exposure
to sub-zero temperatures suggests that they have some tolerance to freezing in
summer (Neargarder et al.,
2003
; Rank and Dahlhoff,
2002
), and mechanisms of cold tolerance may include upregulation
of Hsps (Burton et al., 1988
;
Hoffmann et al., 2003
;
Michaud and Denlinger, 2005
;
Yiangou et al., 1997
;
Yocum, 2001
). Although we
found no evidence of ice formation in cold-treated individuals in the
laboratory, we have detected cold-induced mortality and evidence of ice
formation in tissue for beetles in nature
(McMillan et al., 2005
;
Rank, 1994
;
Smiley and Rank, 1986
). Thus,
cold is probably a significant selective force in these populations. By
contrast, we have not observed mortality as the result of exposure to daytime
high temperatures. It is likely that heat has more subtle effects on survival
and reproductive success than cold over the range of temperatures experienced
by C. aeneicollis.
The relationship between extreme temperature treatment and differences among PGI genotypes in adult and larval running speed suggests considerable phenotypic plasticity in response to temperature stress. For adults, PGI allele 1 was associated with faster running speed after a single exposure to stressful temperature, but PGI allele 4 was associated with increases in running speed after a second exposure. By contrast, for larvae, PGI allele 4 was associated with faster running after a single exposure to stressful temperature, and PGI 1-1 individuals experienced greater declines in running speed than other genotypes after a second cold exposure. Overall, the results in larvae are complementary to those with adults, and show that genotypes that suffer declines after a single stress may recover after repeated exposure.
There was no direct relationship between the running speed of an individual
beetle and Hsp70 expression, but differences among exposure treatments showed
correspondence between the two traits. Adults exposed to two stresses
typically ran more slowly and expressed more Hsp70 than those exposed to a
single treatment of heat or cold, suggesting that upregulation of Hsps may
enhance survival at a cost of reduced activity, as has been observed in other
insects (Feder et al., 1992
;
Krebs and Feder, 1998
;
Krebs and Holbrook, 2001
;
Sorensen et al., 2001
). The up
to fivefold differences in Hsp70 expression level among PGI genotypes reported
here (1-1>1-4>4-4 for a single exposure to heat) are consistent with
findings of our earlier studies. In addition, differences in Hsp expression
level are similar to those observed for other natural populations of insects
(Sarup et al., 2006
;
Sorensen et al., 2005
).
However, as was found for running speed, Hsp70 expression was greater for
adults possessing allele 4 that had been exposed to two stressful temperature
treatments (except those exposed to cold twice). In larvae exposed to heat,
allele 1 was associated with faster running speeds and greater levels of Hsp70
expression after one exposure, but allele 4 was after the second exposure.
These Hsp data suggest that individuals possessing allele 4 are more able to
tolerate repeated or more extreme exposure to cold or heat, whereas
individuals possessing allele 1 perform best under moderate conditions. Thus,
repeated exposure to extreme temperatures influences Hsp70 expression in a
fundamentally different way than do single exposures to heat or cold. This may
be especially important to an insect that is exposed in nature to elevated and
sub-zero temperatures within 12 h of each other
(McMillan et al., 2005
;
Neargarder et al., 2003
). The
finding that individuals that possess the 4 allele upregulate Hsps after
repeated exposure to extreme conditions is also consistent with geographic
variation in PGI allele frequency. Allele 4 occurs more commonly in warmer,
southern drainages of the Eastern Sierra, whereas allele 1 predominates in
cooler drainages. If PGI 4-4 individuals initiate their heat-shock response
only after repeated hot/cold thermal stress, then this might resolve the
apparent paradox, discussed in previous papers
(Neargarder et al., 2003
;
Rank and Dahlhoff, 2002
), that
allele 4 appeared to be associated with a `less vigorous' heat-shock
response.
Taken together with earlier studies of Sierra populations of C.
aeneicollis, data presented here suggest that PGI may be under
temperature selection. PGI is important in the metabolism of glucose, as it is
located near the branch point of several pathways utilizing
glucose-6-phosphate, including glycolysis and gluconeogenesis
(Dykhuizen and Hartl, 1983
).
Evidence for temperature selection at PGI has been demonstrated in a variety
of species (Eanes et al.,
1993
; Katz and Harrison,
1997
; Watt, 1977
;
Zera, 1987
), and previous
studies of PGI kinetics in C. aeneicollis have shown that there are
small differences among PGI allozymes in the MichaelisMenten binding
constant (Km) and enzyme thermal stability
(4-4>1-4>1-1) (Dahlhoff and Rank,
2000
). Recent studies of partially purified enzyme are consistent
with these early data, and suggest that catalytic efficiency, indexed by
Vmax/Km, is higher for 1-1 than 4-4
allozymes at moderate temperature (E.P.D., unpublished data). These data
suggest that PGI allele 4 (a slow-migrating allele) is more thermostable, and
thus less efficient at moderate temperatures, than allele 1 (a fast-migrating
allele).
These results are consistent with other functional studies of PGI allozymes
in ectotherms (Hoffmann,
1981a
; Hoffmann,
1981b
; Watt,
1977
; Watt,
1983
). In Atlantic populations of the sea anenome Metridium
senile, there are two common PGI alleles that vary in frequency across a
biogeographic thermal gradient. Homozygotes of a fast allele have greater
sensitivity of Km to temperature and higher
Vmax/Km ratios than homozygotes of a
slow allele (Hoffmann, 1981a
;
Hoffmann, 1981b
).
Heterozygotes are intermediate, as is the case for C. aeneicollis PGI
allozymes (Dahlhoff and Rank,
2000
). In Colias eurytheme, enzymes from fast-migrating
homozygotes (notably 2/2) have greater sensitivity of Km
to temperature, and higher Vmax/Km
ratios than allozymes from `slow' homozygotes (4/4, 5/5). In C.
eurytheme, some heterozygotes (especially 3/4) have most favorable
kinetics and flight performance under moderate conditions, but unusually hot
weather favors thermostable homozygotes possessing slow alleles
(Watt, 1977
;
Watt, 1983
;
Watt et al., 1983
).
Homologous charge substitutions across multiple taxa could be responsible for
the observation that PGI `fast' alleles tend to make thermolabile allozymes,
`slow' alleles thermostable ones (Riddoch,
1993
; Wheat et al.,
2006
).
Functional differences among PGI allozymes suggest a mechanism for
temperature selection in C. aeneicollis. Beetles possessing the
`thermolabile but efficient' allele 1 run faster and have higher metabolic
rates than other genotypes under moderate thermal conditions. Furthermore,
adults possessing the 1 allele upregulate Hsps rapidly after a single stress,
leaving cellular proteins protected from deleterious effects of typical
thermal variation. Natural selection may favor these individuals most of the
time. Individuals possessing the `thermostable but inefficient' 4 allele run
slower, mate less frequently and have a less robust heat-shock response under
moderate conditions. However, after extreme weather events that occasionally
occur, these individuals may be favored. Patterns of fecundity and larval
survival in nature are consistent with this model
(Bruce, 2005
;
Fearnley, 2003
;
McMillan et al., 2005
).
Another factor that may contribute to differences in running speed among
PGI genotypes is the total concentration of the PGI enzyme, which may differ
among individuals or genotypes as a consequence of thermal compensation, as it
does for metabolic enzymes in other ectotherms
(Lesser and Kruse, 2004
;
Segal and Crawford, 1994
). We
would expect that if individuals possessing allele 1 were cold acclimatized,
they would have higher PGI-specific activities (more active enzyme molecule
per gram tissue) than those possessing allele 4, independent of differences in
enzyme kinetic properties. Differences in enzyme concentration may result in
greater conservation of high running speeds and higher Hsp70 expression levels
in individuals possessing the PGI 1 allele after exposure to a single
stressful temperature, as more enzyme molecules would be present for Hsp70 to
refold, and more functional PGI molecules would be present in muscle cells
after that stress. Future studies in this system will test this
prediction.
Another possible mechanism for the relationship between PGI genotype and
physiological traits is that the PGI locus is linked to a gene that is
responsible for the physiological differences observed here
(Horacek and Acanova, 2003
;
Johannesson et al., 1990
;
Watt, 1994
). PGI could be a
neutral marker whose frequencies change over time through hitchhiking with
other, selected locus or loci (Betancourt
and Presgraves, 2002
). However, there are several reasons for
believing that PGI itself represents the target of selection to temperature.
When allozyme polymorphisms were the preferred markers for studies of genetic
variation, enzymes were screened in a wide variety of taxa
(Avise, 1994
). PGI was one of
the most commonly observed allozymes that showed evidence of selection
(Gillespie, 1991
;
Mitton, 1997
;
Riddoch, 1993
). This is
consistent with predictions about the relationship between locations of
enzymes in metabolic pathways and likelihood of a locus being under selection
(Carter and Watt, 1988
;
Dykhuizen and Hartl, 1983
;
Eanes, 1999
;
Hochachka and Somero, 2002
;
Sezgin et al., 2004
;
Somero, 2004
;
Watt et al., 1983
;
Zamer and Hoffmann, 1989
).
DNA sequence studies of patterns of substitution and conservation also suggest
that selection acts more strongly on PGI than on many other genes
(Broughton and Harrison, 2003
;
Filatov and Charlesworth,
1999
; Katz and Harrison,
1997
; Kawabe et al.,
2000
; Terauchi et al.,
1997
; Wheat et al.,
2006
). Finally, although linkage disequilibrium is clearly a
pervasive phenomenon with implications for the evolution of many traits
(Freeman and Herron, 2004
),
recombination rates between most pairs of loci are great enough to prevent
significant linkage disequilibrium, even when genes are located on the same
chromosome (Dawson et al.,
2002
). Recombination rates are also generally higher for genes
that include a large number of intron sequences
(Comeron and Kreitman, 2000
),
and PGI has a large number of introns
(Claes et al., 1994
;
Terauchi et al., 1997
;
Thomas et al., 1992
). Thus,
with increased recombination, the likelihood of linkage disequilibrium between
PGI and other genes is greatly reduced
(Falconer, 1989
).
Conclusions
These results provide crucial evidence that PGI is under temperature
selection in C. aeneicollis by reporting differences among PGI
genotypes in a performance character, running speed, crucial for survival and
fitness. Some genotypes run fastest and have highest Hsp70 expression levels
after a single temperature stress, others after repeated temperature stresses.
Differences in Hsp70 expression levels among PGI genotypes may buffer fitness
consequences of differences in locomotor performance among genotypes and
facilitate the persistence of the PGI polymorphism in these populations. As
some models of climate change predict an increase in the frequency of extreme
weather events (Beniston, 2004
;
Nogaj et al., 2006
), organisms
with genetic variation that allows them to tolerate extreme climatic
variability may be uniquely suited to adapt to rapid climate change and avoid
local or total extinction.
| Acknowledgments |
|---|
| Footnotes |
|---|
Present address: Department of Biology, 221 Morrill Science Center,
University of Massachusetts, Amherst, MA 01003, USA ![]()
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