Studies have only recently begun to underline the importance of including data on the physiological flexibility of a species when modelling its vulnerability to extinction from climate change. We investigated the effects of a 4°C increase in ambient temperature (Ta), similar to that predicted for southern Africa by the year 2080, on certain physiological variables of a 10–12 g passerine bird endemic to southern Africa, the Cape white-eye Zosterops virens. There was no significant difference in resting metabolism, body mass and intraperitoneal body temperature between birds housed indoors at 4°C above outside ambient temperature and those housed indoors at outside ambient temperature. We conclude that the physiological flexibility of Cape white-eyes will aid them in coping with the 4°C increase predicted for their range by 2080.

Birds on every continent have been directly affected by anthropogenic climate change (Møller, 2013; Parmesan, 2006; S¸ekercioğlu et al., 2012; Wormworth and Mallon, 2006). One of the direct impacts of this rapid change in climate is an increased frequency of extreme heat events (Easterling et al., 2000; IPCC, 2012; Meehl and Tebaldi, 2004) to which birds are particularly vulnerable, because of their diurnal habits and small body sizes (Coumou and Rahmstorf, 2012; McKechnie et al., 2012; McKechnie and Wolf, 2010). Extreme weather events may drive local avian population dynamics (Parmesan et al., 2000) and can exert strong natural selection pressures (Bumpus, 1899), favouring the evolution of avian morphometric traits (Boag and Grant, 1984). Extreme heat events pose the most risk to species with narrower thermal ranges, and consequently, lower thermal tolerances (Jiguet et al., 2006; Khaliq et al., 2014).

In addition to surviving extreme heat events, birds will also need to cope with higher mean surface air temperatures (IPCC, 2013a), which, in turn, will increase the frequency of extreme heat events (NASA, 2012). An A2 emissions scenario, where emissions related to land use are expected to continue increasing rapidly (IPCC, 2000) for southern Africa (from the equator to 45°S and from 5° to 55°E), predicted a 3.7 to 4°C increase by the 2080s (Mlingwa, 2000), similar to the mean increase in surface temperature of 3.7°C predicted by a Representative Concentration Pathway 8.5 scenario by 2081–2100, relative to 1986–2005 (IPCC, 2013b). Mean seasonal temperatures and dry periods are predicted to increase throughout sub-Saharan Africa, with El Niño southern oscillation effects, fires and severe weather anomalies likely to become more common in southern Africa (IPCC, 2013a; Müller et al., 2014). Indeed, Africa is projected to have ‘above-average’ climate change in the 21st century (IPCC, 2007) and therefore is the continent where global warming will have the greatest effects on biodiversity (Simmons et al., 2004). Distributions of southern African bird species are predicted to contract towards the Cape (IUCN, 2014), yet little else is known of how African birds may move or adapt in response to climate change (Parmesan, 2006; Simmons et al., 2004).

Species may cope with environmental changes through micro-evolutionary adaptation (Karell et al., 2011) and/or phenotypic plasticity; the latter in particular is potentially crucial for projections of extinction risk due to climate change (Chase, 2013; Hoffmann and Sgrò, 2011). Small birds generally cope with elevated temperatures through behavioural adaptation, and physiologically, by reversibly altering their metabolic rate (McKechnie, 2008; McKechnie et al., 2007), body temperature (Tb) (Tieleman and Williams, 1999) and evaporative water loss (EWL) (Williams and Tieleman, 2000). Attention to how the attributes of a species change with temperature will help to improve the forecasting on the impacts of climate change (McClelland, 2004) because physiological capabilities may buffer the predicted effects of global warming (Khaliq et al., 2014). Yet, the role of phenotypic plasticity and flexibility in species' physiological responses has been relatively underappreciated in climate change modelling (Chown et al., 2010; Vedder et al., 2013). Thus, we investigated how a small passerine bird would cope with the sustained temperature increase predicted for its range by the year 2080.

We chose the 10–12 g southern African endemic Cape white-eye Zosterops virens (Sundevall, 1850; Thompson and Taylor, 2014) as our model species. This species has a large range across southern Africa (Hockey et al., 2005) and so should exhibit a fair degree of phenotypic flexibility in terms of its metabolic rate. We aimed to investigate how Cape white-eyes would perform metabolically with the sustained 4°C increase predicted for their range by the year 2080. We hypothesized that Cape white-eyes would alter their resting metabolic rate (RMR), Tb and EWL when faced with a 4°C increase over a protracted period of time. We predicted that RMR would be lower, and Tb and EWL higher, in birds acclimated to higher temperatures, than in control birds also housed indoors, but at outdoor ambient temperatures.

List of abbreviations and symbols

     
  • BMR

    basal metabolic rate

  •  
  • Control

    birds housed indoors, at the outdoor ambient temperature (Ta)

  •  
  • Control+4°C

    birds housed indoors, at 4°C above the outdoor ambient temperature (Ta+4°C)

  •  
  • EWL

    evaporative water loss (mg H2O h−1)

  •  
  • Group

    birds were either housed in the ‘control’ group or in the ‘control+4°C’ group

  •  
  • Mb

    body mass (g)

  •  
  • RMR

    resting metabolic rate (ml O2 h−1)

  •  
  • Ta

    ambient temperature (°C)

  •  
  • Tb

    intraperitoneal body temperature (°C)

  •  
  • TNZ

    thermoneutral zone

  •  
  • CO2

    volumetric rate of carbon dioxide produced by the bird (ml CO2 h−1)

  •  
  • O2

    volumetric rate of oxygen consumed by the bird (ml O2 h−1)

Mean, minimum and maximum monthly temperatures peaked in January and February, and dipped to their lowest points in June and July (Fig. 1). Mean monthly Mb of Cape white-eyes varied throughout the year, with lows in July and November–January, and a peak in March–April (Fig. 2). Male Cape white-eyes were significantly heavier than female birds (χ2=205.4, P<0.001); however, there was no significant difference in Mb between control birds and those housed at control+4°C (χ2=2.7, P=0.101, Tables 1 and 2).

Fig. 1.

Mean monthly maximum, minimum, mean and range of outdoor ambient temperatures.Ta (°C) was recorded at the study site in Pietermaritzburg, South Africa, during the study period, May 2013 to April 2014.

Fig. 1.

Mean monthly maximum, minimum, mean and range of outdoor ambient temperatures.Ta (°C) was recorded at the study site in Pietermaritzburg, South Africa, during the study period, May 2013 to April 2014.

Fig. 2.

Mean monthly body mass of Cape white-eyes from May 2013 to April 2014. Birds (N=20) were housed in the control group or in the control+4°C group and Mb was measured overnight.

Fig. 2.

Mean monthly body mass of Cape white-eyes from May 2013 to April 2014. Birds (N=20) were housed in the control group or in the control+4°C group and Mb was measured overnight.

Table 1.

Ranking of models predicting metabolic parameters of Cape white-eyes

Ranking of models predicting metabolic parameters of Cape white-eyes
Ranking of models predicting metabolic parameters of Cape white-eyes
Table 2.

Estimate sizes of fixed effects contained in the best approximating model(s) fitted by restricted maximum-likelihood estimation (REML) for each respective response variable

Estimate sizes of fixed effects contained in the best approximating model(s) fitted by restricted maximum-likelihood estimation (REML) for each respective response variable
Estimate sizes of fixed effects contained in the best approximating model(s) fitted by restricted maximum-likelihood estimation (REML) for each respective response variable

During overnight metabolic measurements, intraperitoneal Tb, RMR and EWL of Cape white-eyes generally dropped quickly in the first 3 h of darkness (from 18:00 h–21:00 h, Figs 3 and 4). Intraperitoneal Tb and RMR rose again in the three hours before photophase, whereas EWL dropped continuously throughout the night. There was a weakly positive but highly significant correlation between Tb and whole animal RMR (Pearson's product-moment correlation, t237=2.905, r=0.185, P=0.004).

Fig. 3.

Mean hourly intraperitoneal body temperature of Cape white-eyes housed at Ta and at Ta+4°C.Tb of birds housed at Ta (N=5) and at Ta+4°C (N=5), measured at Ta=20°C, 25°C and 30°C, in February 2014 and September 2013. Scotophase lasted from 18:00 h to 06:00 h.

Fig. 3.

Mean hourly intraperitoneal body temperature of Cape white-eyes housed at Ta and at Ta+4°C.Tb of birds housed at Ta (N=5) and at Ta+4°C (N=5), measured at Ta=20°C, 25°C and 30°C, in February 2014 and September 2013. Scotophase lasted from 18:00 h to 06:00 h.

Fig. 4.

Mean hourly resting metabolic rate of Cape white-eyes housed at Ta and at Ta+4°C. RMR of birds housed at Ta (N=10) and at Ta+4°C (N=10), measured at Ta=20°C, 25°C and 30°C, in February 2014 and September 2013. Scotophase lasted from 18:00 h to 06:00 h.

Fig. 4.

Mean hourly resting metabolic rate of Cape white-eyes housed at Ta and at Ta+4°C. RMR of birds housed at Ta (N=10) and at Ta+4°C (N=10), measured at Ta=20°C, 25°C and 30°C, in February 2014 and September 2013. Scotophase lasted from 18:00 h to 06:00 h.

During scotophase, mean hourly Tb measurements of individual Cape white-eyes ranged from 36.6°C (at 23:00 h, in April 2014, in a control bird, measured at 20°C) to 43.4°C (at 18:00 h, in March 2014, in a control bird measured at 25°C). Tb was 0.9±0.4°C lower in male birds than in females (χ2=132.7, P<0.001), but there was no significant difference in Tb between birds housed at Ta+4°C and those housed at Ta2=1.1, P=0.303, Table 2, Fig. 5). Mean monthly Tb peaked in September–October and dropped to a minimum in November–December.

Fig. 5.

Mean monthly intraperitoneal body temperature, resting metabolic rate and standard evaporative water loss for Cape white-eyes.Tb (A,B), RMR (C,D) and EWL (E,F) were measured for birds housed in the control group and in the control+4°C group. Birds were measured at Ta=20°C (A,C,E) and Ta=25°C (B,D,F) each month.

Fig. 5.

Mean monthly intraperitoneal body temperature, resting metabolic rate and standard evaporative water loss for Cape white-eyes.Tb (A,B), RMR (C,D) and EWL (E,F) were measured for birds housed in the control group and in the control+4°C group. Birds were measured at Ta=20°C (A,C,E) and Ta=25°C (B,D,F) each month.

Mean whole-animal RMR of Cape white-eyes was lower in the austral winter and spring (August–December) than in summer and autumn (February–May, Figs 4 and 5). Whole-animal and mass-specific RMR showed very similar circannual rhythms, and predictive models for each of these variables included the same fixed effects (Table 1). Whole-animal RMR of male white-eyes was significantly lower than that of females (χ2=495.8, P<0.001) and the temperature at which birds were measured had a significant effect on whole-animal RMR (χ2=177.2, P<0.001), however the effect of ‘group’ on whole-animal RMR was not significant (χ2=1.3, P>0.05).

Mean monthly whole-animal EWL of Cape white-eyes showed distinct seasonal trends, being higher in September/October and March/April, than in May–July and November–February (Fig. 5). Whole-animal standard EWL was 2.313 mg H2O h−1 lower in males than in females (Table 2) and this difference was significant (χ2=774.8, P<0.001); however, there was no significant difference in whole-animal standard EWL between birds housed at control+4°C and control birds (χ2=0.2, P=0.654). Trends were similar for mass-specific standard EWL of Cape white-eyes (Table 2). Similarly, there was no significant difference in basal EWL of control birds and those housed at control+4°C (χ2=2,8, P=0.096); however, basal EWL was 0.015 mg H2O h−1 lower in males than in females (Table 2; χ2=643.0, P<0.001). Trends were similar for mass-specific basal EWL (Table 2).

This year-long study showed that a 4°C increase in housing temperature had no significant effect on intraperitoneal Tb, EWL or whole-animal RMR of Cape white-eyes, suggesting that the phenotypic flexibility of the Cape white-eye will be more than sufficient for coping physiologically with the mean temperature increase predicted across its range by 2080.

Mean Mb of Cape white-eyes showed no clear trend over the duration of the study, which was very similar to what was found in a group of 12 Cape white-eyes caught at the same study site and housed in outdoor aviaries for one year (Thompson et al., 2015b). Although white-eyes in this study increased their Mb prior to winter, there was nevertheless very little variation in Mb throughout the year, in stark contrast to circannual trends in Mb shown by migratory bird species (Zimmerman, 1965). The small fluctuations in Mb of Cape white-eyes between months may be due to variation in their diet in captivity, in that while certain fruits were available year round, others were not. Birds housed at Ta were 0.5 g heavier than those housed at Ta+4°C, which may be due to increased food intake and increased fat deposits, although this was not investigated here. Although Z. virens is widely accepted as a sexually monomorphic species (Hockey et al., 2005; Oatley, 2011; Skead, 1967), male Cape white-eyes were slightly heavier and had significantly lower whole-animal RMR than females.

Thermal PIT tags have been used in physiological studies on reptiles (Bittner et al., 2002; Roark and Dorcas, 2000) and small mammals (Cory Toussaint and McKechnie, 2012) but to our knowledge this is the first study in which these PIT tags have been successfully used for a long-term study in small birds. Mean hourly intraperitoneal Tb of Cape white-eyes showed a marked circadian rhythm typical of small diurnal avian insectivores and nectarivores (Clarke and Rothery, 2008; McKechnie and Lovegrove, 2002).

Circannual rhythm in Tb did not seem to follow circannual rhythm in Ta, and there was little similarity between circannual trends in Tb and RMR in this study, even though Tb influences (and is influenced by) metabolic rate (Clarke and Rothery, 2008). The higher Tb levels shown in this study may be from nights when RMR fell earlier in the evening, since Tb usually took at least 3 h after dark to fall to minimal levels. We cannot explain the abrupt October–November crash in mean Tb of Cape white-eyes.

Sex may have a significant effect on Tb in passerines, presumably because of widespread sexual size dimorphism (Clarke and Rothery, 2008). Indeed, male Cape white-eyes had significantly lower Tb than females, possibly as a result of their marginally larger body size, although since the difference in Mb between the sexes was so little, we would not have expected a difference in Tb. Nevertheless the estimated effect of sex on Tb was double that of increasing the housing temperature by 4°C, suggesting that the 4°C increase in Ta, predicted for southern Africa by the year 2080, will have a negligible effect on core Tb in this population of Cape white-eyes. Similarly, the Tb of Cape white-eyes measured at 25°C was only 0.2°C different from that of birds measured at 20°C. This result is in line with the findings of Bucher (1981), who reported that a medium-sized parrot Amazona viridigenalis showed no significant difference in Tb between Ta values of 10 and 27°C. Since our birds were measured at ambient temperatures close to or below the lower critical limit of their TNZ (our unpublished data), water conservation should not have been of concern and thus there was no need for them to become hyperthermic (Tieleman et al., 1999).

Cape white-eyes in this study had lower whole-animal RMR in spring than in autumn. However, the RMR trend does not precisely fit that of outdoor Ta at the study site. Cape white-eyes housed at Ta+4°C had a whole-animal and mass-specific RMR that was marginally lower than for birds housed at Ta. However, this difference was not a significant effect. Thus, it would seem that coping with the mean air temperature increase of 4°C predicted for southern Africa by 2080 (Mlingwa, 2000) should be well within the physiological capabilities for this species. However, although a 4°C increase induced very little change in RMR of Cape white-eyes, the long-term fitness consequences of this change are unknown (Burton et al., 2011).

Mb, Tb and EWL all dipped around December, coinciding with an unseasonal drop in environmental temperature at the study site, when the range of temperatures was also the lowest. Since housing birds at 4°C above Ta had a smaller effect on whole-animal and mass-specific standard EWL than either sex or of measuring at 25°C vs 20°C, we can conclude that the 4°C increase in temperature predicted for 2080 will have little direct effect on EWL in this population of Cape white-eyes.

In September, when temperatures were cooler, Cape white-eyes lost water at a faster rate overnight than they did in February, when temperatures were slightly higher. EWL showed a general increase over the study period. This result goes against the notion of EWL having a circannual pattern, since start and end values were so different. We cannot explain what may have caused the overall increase in EWL over the study period, nor do we have any evidence to link the increase in EWL to any potential physiological effects of long-term captivity.

Mean BMR of captive Cape white-eyes housed indoors in the room set to Ta (41.235±3.380 ml O2 h−1, mean±s.d., N=12) was very similar to that of conspecifics housed in outdoor aviaries (42.405±3.139 ml O2 h−1, N=13), when both groups were measured at 30°C (which is within the TNZ for this population of Cape white-eyes) in the same month. However, long-term captivity in outdoor aviaries is linked to a significant increase in whole-animal BMR of Cape white-eyes (Thompson et al., 2015a) and so we can assume that RMR values for wild Cape white-eyes would be lower than those presented in this study. Indeed, the ecological relevance of laboratory studies has been questioned (Chown et al., 2010), so ideally, this experiment should be repeated with birds housed in large outdoor temperature-controlled aviaries. In addition, field metabolic rate measured during the day may be of more use than BMR or RMR in determining the effects of increased temperature associated with climate change on avian physiology. Although extreme heat events will undoubtedly pose a greater risk to survival that the smaller temperature increase experienced globally over time, it is also important to quantify the effects of the increased temperature associated with climate change on physiological variables of animals most at risk on temperature increases (that is, small animals), in regions most at risk from climate change.

Moreover, although we acclimated the birds to indoor conditions and to their different temperature regimes, in reality, birds are unlikely to experience such an immediate and continual 4°C increase in Ta, thus we accept that the responses of wild birds to climate change may be somewhat different from the trends we observed here. While smaller bird species are more at risk from climate change because of their higher metabolic rates and reduced ability for fat storage (Simmons et al., 2004), we nevertheless feel that since all of our study birds coped with an abrupt increase of 4°C, they should be more than capable of coping with a far more gradual temperature increase associated with climate change in the coming decades. Indeed, when the constant-environment rooms overheated one night, maintaining a Ta of 43°C and 39°C for ∼16 h in the control+4°C and control groups, respectively, only 2 of the 22 birds expired. That most of the birds could survive something akin to an ‘extreme heat event’ is testament to their great physiological flexibility, and this, along with their generalist feeding habits (Fry et al., 2000) and their use of a wide range of habitats (Hulley et al., 2004; Smith and Bowie, 2005), should be in their favour in the face of ongoing anthropocentric climate change (Jiguet et al., 2007; Julliard et al., 2003; Knowlton and Graham, 2010; Schwartz et al., 2006; Thomas et al., 2004).

During the study period, mean monthly temperatures were lowest in July and highest in February, corresponding with austral winter and summer, respectively. Had we elected to measure our birds only in these 2 months, for a study on a seasonal variation in metabolic parameters, we would have concluded that our birds reduced their RMR and Tb in winter, which would suggest that birds were conserving energy in winter (Smit and McKechnie, 2010). Yet, the observed peaks and troughs in RMR and Tb did not correspond to the peaks and troughs in housing temperature. Instead, Tb was lowest around November–December and highest in September–October, while RMR was lowest in December and highest in April. This suggests that studies that investigate RMR only in summer and winter may not be recording the full range of values exhibited by the study animals, in agreement with the conclusions of Thompson et al. (2015b).

Conclusions

Species may adjust to global warming through phenotypic plasticity in their thermal responses or though alterations in the genetic composition of populations (Pulido and Berthold, 2004). Currently, there is no documented case of a genetic shift towards increased thermal tolerance in any bird population (Bradshaw and Holzapfel, 2006,, 2010; Gienapp et al., 2008). The adaptive capacity (sensuDawson et al., 2011) of Cape white-eyes seems to be high. In conclusion, our results support the ideas of McClelland (2004) and the results of Khaliq et al. (2014) and of Vedder et al. (2013). As the temperature increase forecast for our study area by 2080 is within the range of temperature tolerance of our population of Cape white-eyes, the direct effect of increased air temperature alone may not pose a severe threat to this southern African endemic species.

Capture and maintenance

All research was conducted at the University of KwaZulu-Natal (UKZN), Pietermaritzburg, South Africa (29°37′S 30°24′E). Cape white-eyes Zosterops virens Sundevall 1850 were caught in the UKZN botanical garden using mist nets (Ecotone, Gdynia, Poland) and baited walk-in traps from November 2012 to January 2013 and moved to the UKZN Zoology building. Birds were then randomly assigned to one of two groups: (1) a control group (N=10, including five males and five females), housed in a room with Ta set to match the outdoor temperature of the previous day, and (2) an experimental group (N=10, including two females, six males, and two of unknown sex), housed in a room with Ta set to 4°C higher than the outdoor temperature from the previous day (‘control+4°C’). Only 10 birds from each room were used in experiments; but two additional birds were caught with the original group, and one housed in each of the two rooms as a ‘spare’, so that there were 22 birds indoors in total, but only 20 were used in the experiments. Both rooms were artificially lit with a 12 h:12 h light:dark cycle, which remained constant throughout the year, since we were primarily interested in the effect of a 4°C difference in housing temperature. Although change in day length is closely tied to change in season (Bradshaw and Holzapfel, 2010), temperature, rather than photoperiod, seems to be the main driver of flexibility in avian metabolic rate (Swanson et al., 2014). Primary moult in the birds used in this study occurred from February to June, which corresponded with the timing of moult in birds from the same population housed at the study site in outdoor aviaries, and with moult in other populations of Cape white-eyes in the same province (Earlé, 1981; Symes et al., 2001). Thus the timing of primary moult did not change when birds were brought into captivity, even though the photoperiod of the rooms they were housed in was slightly different from the natural photoperiod when the birds were caught.

No one entered the rooms except the same individual who fed the birds each morning, cleaned cages once a week and handled the birds for metabolic measurements. Temperatures in the two rooms were controlled by manually programming an Alerton® global controller (Redmond, WA). Each morning, a maximum and minimum temperature reading from the previous day was read from a max/min thermometer placed inside a Stevenson screen in UKZN grounds, Pietermaritzburg. Four times a day, every day, for a year, Ta in the control room was manually changed, to match the (1) minimum, (2) mean (of the minimum and maximum), (3) maximum and (4) mean (of the minimum and maximum, again) temperatures of the previous day (Fig. 1). Where possible, maximum Ta was set just after midday, minimum in the early hours of the morning, and the two means approximately half-way in between. At the same time, Ta in the experimental room was set at 4°C higher than Ta in the control room. In this way we hoped that the birds would experience the same range of Ta as they would in the wild, whilst maintaining one group of birds 4°C higher than the control group. Cape white-eyes were acclimated for 8 weeks, which is more than enough time for birds from this population to acclimate to captivity, in terms of their body mass, resting metabolic rate, evaporative water loss and respiratory quotient (our unpublished data). During this acclimation period, the resting metabolic rates of all birds were measured weekly (our unpublished data), thus avoiding stress-related elevations in RMR in this study (Jacobs and McKechnie, 2014). We then kept the birds for a year, to avoid biasing our results to one particular season, since recent, rapid climate change is having a greater effect on winter temperatures than on summer temperatures (Bradshaw and Holzapfel, 2008,, 2010).

Within the two rooms, birds were housed in cages (90×40×100 cm) in groups of 3 or 4. Since Cape white-eyes show no sexual dimorphism (Hockey et al., 2005; Oatley, 2011; Skead, 1967), we could not determine sex by looking at the birds, and so in some instances males and females were housed together. A variety of fruit and softbill pellet supplements (Avi-products, Durban, South Africa) were supplied daily, and water was given ad libitum. Breeding was discouraged with a lack of nesting materials. After all metabolic trails were completed, blood (<100 μl) was drawn from the jugular vein of each Cape white-eye using a disposable Healthease® syringe and 29G×½″ (0.33×13 mm) needle (Neomedic Pty Ltd., Riverhorse Valley East, South Africa), and sent to Molecular Diagnostics Services Pty Ltd. (Westville, South Africa) for molecular DNA sexing. Birds were moved into outdoor aviaries for 3 weeks, and then soft-released at their capture sites. Birds were captured, transported, ringed, monitored and released under permit (number OP 5122/2012) from Ezemvelo KwaZulu-Natal Wildlife, and ethical approval for this study was granted by UKZN's Animal Ethics Sub-committee (reference: 071/13/Animal).

Body temperature measurements and moult score

Intraperitoneal Tb of Cape white-eyes were measured to the nearest 0.1°C using 12 mm×2.1 mm, 0.06 g, temperature-sensitive passive integrated transponder devices (PIT tags, Biomark, Boise, Idaho, USA), injected into the intraperitoneal cavity of each bird using a 12-gauge needle. Signals from the tags were detected using two racket antennae (Model FS2001F-ISO, Biomark) positioned next to metabolic chambers. These antennae, in turn, were connected to PIT tag readers (Destron Fearing, St. Paul, MN, USA), programmed to record data every 15 min. These data were then used to obtain mean hourly Tb measurements. Only five birds from each of the two rooms were injected with PIT tags. Thus, of the four birds placed into the temperature-controlled cabinet each night, only two contained PIT tags; more than this caused the tags' signals to interfere with each other.

A sample of ten PIT tags was calibrated in a circulating water bath following Cory Toussaint and McKechnie (2012), from 5 to 45°C, using a mercury-in-glass thermometer with a measurement precision of 0.1°C, and accuracy traceable to the US National Bureau of Standards. A linear regression was applied to the data, giving the following equation: y=1.015 x−0.983 (R2=0.9993), where y is actual temperature in °C, and x is measured temperature in °C. The variation between the tags was low, with standard deviation ranging from 0.148 at 44.9°C to 0.196 at 39.9°C.

Moult is energetically expensive and thus likely to increase metabolic rate (Cyr et al., 2008; Lindström et al., 1993; Portugal et al., 2007), and so each Cape white-eye was scored for primary feather moult immediately prior to metabolic trials, using methods described by De Beer et al. (2001). The score for each feather ranged from 0 (for an old feather) to 5 (for a new feather). The sum of the scores for all nine primaries was then divided by 4.5 to give an index ranging from 0 to 10.

Gas exchange measurements

Birds were fasted for 3 h before measurements started, to ensure that they were post-absorptive (Wellmann and Downs, 2009) and to reduce the possible effects of handling stress. From 15:00 h until 07:00 h the next morning, flow rate (ml min−1), O2 and CO2 concentrations (%), and water vapour density (μg ml−1) were recorded every 5 s. An interrupted sampling regime was used (Thompson et al., 2015a), beginning with a baseline measurement for 6 min, and then four birds for 6 min each. This sequence was repeated so that each bird was measured twice (for 12 min in total) per hour. All birds were measured once a month, at both 20 and 25°C, for 1 year, with at least one night between measurements. These temperatures were chosen on the assumption that they would fall below and within the thermoneutral zone [TNZ, the range of ambient temperatures over which temperature regulation is achieved without changes in metabolic heat production or evaporative heat loss (IUPS Thermal Commission, 2001)] respectively, for this population. However, the lower critical limit of the TNZ of this population of Cape white-eyes was subsequently found to be 23°C in winter (our unpublished data), and so the measurements we made at 20°C and 25°C are likely to be below or close to the lower critical limit of the TNZ; hence, we refer to them as RMR. We therefore included metabolic measurements in summer and winter at 30°C, which is within the TNZ of this population of Cape white-eyes (our unpublished data), for a seasonal comparison of basal metabolic rate (BMR); that is, the minimum maintenance energy requirements of non-reproductive, post-absorptive, resting, adult normothermic endotherms (McKechnie et al., 2006; McNab, 1997) and to provide BMR values that may then be compared with other studies.

Metabolic rate was indirectly measured every month, from May 2013 to April 2014 inclusive, using open-flow, push-mode respirometry. At 15:00 h, after being weighed to the nearest 0.01 g using digital scales (model: AFB-3100L, Adam Equipment S.A. Pty Ltd, Johannesburg), Cape white-eyes were placed onto wooden perches inside 2.8 l Perspex respirometers, within a temperature-controlled environmental chamber (CMP2244, Conviron, Winnipeg, Canada), set to 12 h:12 h light:dark. Inside each respirometer, a plastic mesh platform was positioned 10 cm above a 1 cm layer of liquid paraffin/mineral oil (AlphaPharm, Pietermaritzburg), to eliminate evaporation from excreta.

Water vapour and CO2 were removed from environmental air with silica gel, soda lime and more silica gel. This air was then pumped (model PP2, Sable Systems, Las Vegas, NV, USA) into five inlets of a flow measurement system (model FB8, Sable Systems). Flow rates were set to ∼800 ml min−1, to maintain O2 depletion in each respective chamber between 0.1 and 0.5% (Lighton, 2008). In each respirometer, the air inlet was located near the bottom, and the outlet near the top, to aid mixing of air inside the chamber. Effluent air flowed through a flow multiplexer (model MUX, Sable Systems) and then excess air escaped through a manifold, while the remainder was pumped through a subsampler (model SS4, Sable Systems) at 200 ml min−1. This air then flowed through a water vapour analyser (model RH300, Sable Systems), which was regularly spanned using a nearly saturated airstream and zeroed using N2. Air was then dried with minimal quantities of Drierite (Hammond Drierite Co. Ltd, Xenia, Ohio), that had previously been recharged to reduce its affinity for CO2 and therefore to reduce CO2 washout time (White et al., 2006). Air then flowed through a CO2 analyser (model CA-10, Sable Systems) and an O2 analyser (model FC-10, Sable Systems). The CO2 analyser was regularly zeroed with N2, and spanned with a certified gas of 964 ppm CO2 in N2 (AFROX, Pietermaritzburg, South Africa). The flow meter and gas analysers were connected to a Universal Interface (model UI2, Sable Systems), which transferred data to a computer using ExpeData data acquisition software (Sable Systems). Temperatures within each respirometry chamber were recorded every 15 min with i-Buttons® at a resolution of 0.0625°C (model DS1922L-F5, Thermochron®, Maxim, CA, USA). All i-Buttons® were calibrated before use in a circulating water bath, from 7–36°C, with a mercury-in-glass thermometer (measurement precision=0.1°C), with accuracy traceable to the US National Bureau of Standards.

Lag and drift correction were performed in ExpeData using a macro, and a 95% equilibration time of 11 min was calculated using the equation of Lasiewski et al. (1966). Therefore, rates of O2 consumption (O2), CO2 production (CO2) and EWL were Z-transformed (Lighton, 2008; Lighton and Halsey, 2011; Tøien et al., 2011) before hourly means were calculated. We also checked the washout characteristics of our system for water vapour without a bird in the respirometer, since water may adhere to Perspex. For each night, the lowest hourly O2 reading was taken as the RMR. CO2 and H2O (hereafter termed standard EWL) were taken at the same time as RMR was recorded. The basal EWL measurement of each night was also recorded, since the time of minimum EWL and minimum O2 usually did not coincide. O2, CO2 and EWL were calculated in accordance with the configuration of the system, following Withers (2001). Body mass (Mb, g) and standard EWL were taken at the same time as RMR each night.

Data analyses

Statistical analyses were conducted using the base program in R version 3.1.0 (R Core Team, 2014), and figures were produced using the R package ‘ggplot2’ (Wickham, 2009). We defined a set of candidate models a priori, following Burnham and Anderson (2002) and linear mixed-effects models were performed with the ‘lme4’ package in R (Bates et al., 2014) to determine the effects of various predictor variables on RMR, standard EWL, Tb and Mb. Fixed effects included ‘Ta’ (temperature at which birds were measured overnight, either 20°C or 25°C), ‘group’ (whether birds were housed at Ta or at Ta+4°C), ‘Mb’, ‘moult’ (ranging from 0 to 10), and ‘sex’ (male, female or unknown). ‘Date’ (on which metabolic measurement was done) and ‘BirdID’ (individual) were included as random effects, the latter to control for repeated measures. Predictors with possible biological importance were included in the global model regardless of whether they were statistically significant or not (Cheng et al., 2010). Visual inspection of residual plots showed no deviations from homoscedasticity or normality. Akaike's information criterion weights (AICWt), and delta AIC values, (ΔAIC, the differences between each respective candidate model and the best approximating model) produced using the R package ‘AICcmodavg’ (Mazerolle, 2013), were used to select the best approximating models, following Burnham and Anderson (2002) and Wagenmakers and Farrell (2004). Models with ΔAICc<2 were averaged for multimodel inference using the R package ‘MuMIn’ (Bartoń, 2013). The significance of fixed effects was determined using analyses of variance in R (Knoblauch and Maloney, 2012).

We are indebted to M. Hampton, A. Opperman, S. Breidenbach, S. Hallam, C. Clark, E. Ally and B. Lovegrove for technical advice, B. Joos, D. Levesque, C. Canale, J. Lighton, A. McKechnie, B. Smit, J. Williams and B. Wolf, who gave advice on the respirometry methods, K. Duffy, for help with statistics, and the Downs/Wood family, who fed the study birds post-release. D. Levesque, D. Ehlers-Smith and five anonymous reviewers provided comments that improved the quality of this manuscript. Temperature data for the study site were provided by the South African Weather Service.

Author contributions

L.J.T., M.B. and C.T.D. designed the study. L.J.T. collected and analysed data, and wrote the manuscript. M.B. and C.T.D. provided comments on the manuscript.

Funding

L.J.T. is grateful for an Innovation Doctoral Scholarship [grant number 83805] from the National Research Foundation, and a full Doctoral Research Grant from the University of KwaZulu-Natal (UKZN). Respirometry equipment was funded by a UKZN capital equipment grant. Opinions expressed and conclusions arrived at are those of the authors and are not necessarily attributable to funding bodies.

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Competing interests

The authors declare no competing or financial interests.