Notice: Wiley Online Library will be unavailable on Saturday 27th February from 09:00-14:00 GMT / 04:00-09:00 EST / 17:00-22:00 SGT for essential maintenance. Apologies for the inconvenience.
Temperature (T) and water potential (y) are two primary environmental regulators of seed germination. Seeds exhibit a base or minimum T for germination (Tb), an optimum T at which germination is most rapid (To), and a maximum or ceiling T at which germination is prevented (Tc). Germination at suboptimal T can be characterized on the basis of thermal time, or the T in excess of Tb multiplied by the time to a given germination percentage (tg). Similarly, germination at reduced y can be characterized on a hydrotime basis, or tg multiplied by the y in excess of a base or threshold y that just prevents germination (yb). Within a seed population, the variation in thermal times to germination among different seed fractions (g) is based on a normal distribution of yb values among seeds (yb(g)). Germination responses across a range of suboptimal T and y can be described by a general hydrothermal time model that combines the T and y components, but this model does not account for the decrease in germination rates and percentages when T exceeds To. We report here that supra-optimal temperatures shift the ψb(g) distribution of a potato (Solanum tuberosum L.) seed population to more positive values, explaining why both germination rates and percentages are reduced as T increases above To. A modified hydrothermal time model incorporating changes in ψb(g) at T > To describes germination timing and percentage across all T and ψ at which germination can occur and provides physiologically relevant indices of seed behaviour.
If you can't find a tool you're looking for, please click the link at the top of the page to "Go to old article view". Alternatively, view our Knowledge Base articles for additional help. Your feedback is important to us, so please let us know if you have comments or ideas for improvement.
Seed germination is a complex physiological process that is responsive to many environmental signals, including temperature (T), water potential (ψ), light, nitrate, smoke, and other factors (Bewley & Black 1994; Baskin & Baskin 1998). Temperature has a primary influence on seed dormancy and germination, affecting both the capacity for germination by regulating dormancy and the rate or speed of germination in non-dormant seeds. It has been recognized since at least 1860 that three cardinal temperatures (minimum, optimum and maximum) describe the range of T over which seeds of a particular species can germinate (Bewley & Black 1994). The minimum or base temperature (Tb) is the lowest T at which germination can occur, the optimum temperature (To) is the T at which germination is most rapid, and the maximum or ceiling temperature (Tc) is the highest T at which seeds can germinate. The temperature range between Tb and Tc is sensitive to the dormancy status of the seeds, often being narrow in dormant seeds and widening as dormancy is lost (Vegis 1964). In particular, low Tc values are often associated with seed dormancy, as in relative dormancy or thermo-inhibition exhibited by seeds whose germination is prevented at warm temperatures (Bradford & Somasco 1994). The cardinal temperatures for germination are generally related to the environmental range of adaptation of a given species and serve to match germination timing to favourable conditions for subsequent seedling growth and development.
where θ2 is a thermal time constant at supra-optimal T and Tc(g) indicates that Tc values vary among fractions (g) in the seed population. In this model, differences in GRg for the different seed fractions were a consequence of variation among seeds in their ceiling temperatures (Tc(g)), and the total thermal time remained constant in the supra-optimal range of T.
Although this model or subsequent modifications of it have been relatively successful in describing germination timing at supra-optimal T, they do not offer a physiological explanation for this response (i.e. for the decrease in GRg and variation in Tc). We propose that seed germination behaviour at supra-optimal T is a consequence of the sensitivity of germination to ψ. The hydrotime model describes the relationship between ψ and seed germination rates in analogy to the thermal time model. Gummerson (1986) defined the hydrotime constant (θH) as:
where ψb(g) is the base or threshold ψ that will just prevent germination of fraction g of the seed population. In this model, ψb(g) represents the variation in threshold (ψb) values among seeds in the population, which often can be described by a normal distribution. Thus, since θH is a constant, variation in ψb values is reflected in a proportional variation in tg values among seeds. A normal distribution of ψb(g) values results in a right-skewed sigmoid cumulative time course of germination events, as is generally observed for seed populations (Bradford 1997). This model can accurately describe germination timing at reduced ψ, simultaneously accounting for reductions in both germination rates and percentages as ψ decreases (Gummerson 1986; Bradford 1990, 1995; Dahal & Bradford 1994).
The hydrotime and thermal time models have been combined into a hydrothermal time model that can describe seed germination patterns across suboptimal T and reduced ψ:
where θHT is the hydrothermal time constant (Gummerson 1986; Bradford 1995). Using this model, seed germination times across the range of suboptimal T and ψ can be described with good accuracy (e.g. Dahal & Bradford 1994). However, the hydrothermal time model (Eqn 6) does not predict a decrease in germination rates as T increases above To. Interactions have been observed between T and ψ in the supra-optimal range of T, such as for lettuce (Lactuca sativa L.) seeds (Bradford & Somasco 1994), where ψb(g) values increased (became more positive) with increasing T. Similarly, Kebreab & Murdoch (1999, 2000) found that low ψ restricts the T range for germination in Orobanche seeds. These data suggest that changes in ψb(g) could be responsible for the delay and inhibition of seed germination in the supra-optimal range of T, as hypothesized previously (Bradford 1996).
Here we report experimental tests of this hypothesis demonstrating that the decrease in germination rates and percentages at supra-optimal T is due to an increase in the ψb(g) thresholds for germination in a seed population. When modified to account for this effect of supra-optimal T on ψb(g), the hydrothermal time model can describe seed germination timing and percentages at temperatures from Tb to Tc and at all ψ at which germination can occur. This model provides both a mathematical description and a physiological rationale for the cardinal temperatures for seed germination.
Materials and methods
True (or botanical) potato seeds (Solanum tuberosum L.), which germinate over a range of T after dormancy is overcome and exhibit clear sub- and supra-optimal ranges of T (Pallais 1995), were used in these studies. Hybrid true potato seeds were produced in Chacas, Perú in 1996 by hand pollination of parental lines Yungay and 104.12LB. After harvest, the seeds were transported to the International Potato Center in Lima, Perú, stored at 15 °C until the seed moisture content was reduced to ∼ 4·5% (fresh weight basis) and subsequently stored at 0 °C in sealed containers. After transfer to the University of California, Davis, the seeds were stored at −20 °C in sealed containers. To control ψ of the germination medium, solutions of polyethylene glycol 8000 were prepared according to Michel (1983). The ψ-values of the solutions were measured using a vapour pressure osmometer (Model 5100C; Wescor Inc., Logan, UT, USA) and corrected for the effect of temperature (Michel 1983). Five replicates of 25 seeds each were placed in 5-cm-diameter Petri dishes on two germination blotters saturated with water (ψ = 0 MPa) or solutions of polyethylene glycol 8000 that maintained specific water potentials (ψ = −0·2 and −0·4 MPa) at 14, 16, 18, 20, 22, 24, 27 and 28 °C. The replicates were randomized within isothermal lanes on a temperature gradient table. Germination was recorded at radicle protrusion to 2 mm, and germinated seeds were removed.
Germination time course data were analysed and the parameters were determined for the thermal time, hydrotime and hydrothermal time models using repeated probit regression analysis as described previously (Bradford 1990; Dahal & Bradford 1990, 1994). Germination rates were calculated as the inverses of the times to radicle emergence, and germination times for specific percentiles of the seed population were calculated by interpolation using curves fit to the time course data. Results for the 16th, 50th and 84th percentiles are reported to represent the median of the population and one standard deviation (σ) above and below it.
Germination responses to temperature and water potential
Germination of true potato seeds in water (0 MPa) progressed more rapidly as T increased in the suboptimal range (Fig. 1a–c). In contrast, germination in water was progressively delayed and final percentages were reduced as T increased above 20 °C (Fig. 2a–e). Plotting the germination rates (1/tg) for the 16th, 50th and 84th percentiles versus T revealed the characteristic linear increases and decreases in GRg below and above To (Fig. 3a). The lines drawn through these points in Fig. 3a for different germination fractions (based on the model to be described subsequently) converged to a common Tb at suboptimal temperatures, but extrapolated to different Tc values in the supra-optimal range of T.
When seeds were placed to germinate at reduced ψ in any constant T, a delay in germination was observed relative to the time course in water (Figs 1a–c & 2a–e). At each T, the hydrotime model closely matched actual true potato seed germination time courses at different ψ, as can be seen from comparison of the predicted germination times (curves) and the actual data (symbols). The predicted curves were based upon the ψb(g) threshold distributions (Figs 1d–f & 2f–j) and the parameter values in Table 1. In the suboptimal range of T, ψb(50) and σψb values were relatively constant, with differences in germination rates being primarily reflected in decreasing θH values (Table 1A). That is, the time required for germination decreased as T increased, in accordance with the thermal time model, and the seeds’ sensitivity to ψ remained relatively unchanged. However, in the supra-optimal range of T, ψb(50) values increased (became more positive) with T, rising from −1·39 MPa at 20 °C to only −0·49 MPa at 28 °C (Fig. 2f–j; Table 1C). This was evident in the greater effect of reduced ψ on germination as T increased (Fig. 2a–e). The variation in ψb among seeds (σψb) was relatively constant with T (Table 1C), indicating that the threshold values of all seeds in the population increased by approximately equal amounts as T increased. When the ψb(g) values estimated by the hydrotime model were plotted versus T for the 16th, 50th and 84th percentiles (Fig. 3b), points in the supra-optimal range showed linear increases that intercepted ψ = 0 MPa at the Tc values extrapolated from the GRg data (Fig. 3a). This would be expected if the increase in ψb(g) is responsible for the decrease in GRg; when the ψb value of a given seed increases to 0 MPa, the seed would be unable to germinate in water at that T, which is also the definition of Tc.
Table 1. Parameters of the hydrothermal time model characterizing germination of true potato seeds imbibed at three water potentials at sub- and supra-optimal temperatures
θH (MPa h)
θH (MPa h)
θH (MPa h)
kT (MPa °C−1)
(A) At suboptimal T (14–18 °C), the hydrotime model was fitted to data from three ψ's (0, −0·2, −0·4 MPa) at each T. (B) The hydrothermal time model was fitted across all three T's and ψ’s. (C) In the supra-optimal range of T (20–28 °C), a single value of θH was used to fit germination data across ψ's at each T, and ψb(50) and σψb were calculated. (D) The supra-optimal hydrotime model was fit to all data across 20–28 °C and 0, −0·2, −0·4 MPa. Coefficients of determination (r2) are shown in each case.
A hydrothermal time model of germination across all temperatures
Bradford (1990) derived a factor allowing the normalization of germination time courses across a range of ψ. This factor, [1 − (ψ/ψb(g))] tg, normalizes the germination time of a seed fraction at any ψ to the corresponding germination time that would occur in water, given the ψb value for that seed fraction. In essence, this factor removes the effect of reduced ψ on the germination time course. If application of this factor normalizes time courses at different ψ to a common predicted time course in water, it indicates that the model parameters have accurately described the sensitivity to ψ of the seed population. Using the hydrothermal time model (Eqn 6) and this normalization factor, all of the germination time courses at suboptimal T (Fig. 1a–c) were plotted on a common normalized thermal time scale (Fig. 4a). That is, the time courses at different ψ at each T were normalized to the equivalent time course in water at that T, and then these were plotted on a thermal time scale. These data at suboptimal T and reduced ψ are described well (r2 = 0·87) by a common set of hydrothermal time parameters (Table 1B).
This approach clearly would not work at supra-optimal T, as the ψb(g) distributions shifted positively as T increased (Fig. 2f–j), precluding a common set of model parameters. However, the value of ψb(g) can be easily modified as follows to account for its linear increase as a function of T above To:
where ψb(g)T>To is the ψb(g) threshold distribution at T above To, ψb(g)To is the ψb(g) distribution at To, and kT is the slope of the relationship between ψb(g) and T in the supra-optimal range of T (Fig. 3b). The value of ψb(g) is simply increased linearly as T increases above To. This modified value of ψb(g)T>To can then be used in the hydrotime model (Eqn 5) to predict germination timing. It should therefore be possible to combine together all of the data shown in Fig. 2(a–e) and determine the parameter values that describe germination in this range of T.
To facilitate fitting this model by the repeated probit regression method (Bradford 1990), we used the fact that the model responds only to the difference between ψ and ψb(g), so a positive shift in ψb(g) has the same effect as an equivalent negative shift in ψ. Thus for calculation purposes, ψ can be shifted negatively instead of shifting ψb(g) positively in order to fit the model and determine the parameter values. The model for fitting was therefore:
where θH is the hydrotime value at To. We fit this model by changing systematically To, kT and θH until the ψb(50) for this model was similar to the ψb(50) of the hydrothermal time model at suboptimal T (–1·54 MPa). The values that best fit the model are shown in Table 1D. Normalization of all the data of Fig. 2(a–e) using these parameters illustrated that the model worked well to predict germination timing and extent under these assumptions (Fig. 4b). Assuming further that thermal time accumulation is maximal at To and no additional thermal time accrues at T > To, the normalized data at supra-optimal T were multiplied by To − Tb to put them on a thermal time basis (Fig. 4c). These normalized thermal time courses then coincided with the normalized data from the hydrothermal time model at suboptimal T (Fig. 4c). By accounting separately for germination behavior at sub- and supra-optimal ranges of T, the model could normalize all data from Tb to Tc and across ψ-values to a single common thermal time course.
The hydrotime parameters at each supra-optimal T mentioned previously in Fig. 2(f–j) and Table 1C were actually derived by fitting the data at each T using the common hydrotime constant (θH) predicted by the supra-optimal model across 20–28 °C (130 MPa h; Table 1D). The ψb(g) distributions calculated at each T using this common θH value are shown in Fig. 2(f–j) and were used to generate the predicted germination time courses at each T and ψ combination shown in Fig. 2(a–e). Similarly, the lines drawn in Fig. 3 are derived from the sub- and supra-optimal model parameters for the 16th, 50th and 84th germination percentiles (Tables 1B & D).
A modified hydrothermal time model can describe and predict both germination timing and percentage across all constant T and ψ at which germination can occur according to:
where [kT(T − To)] applies only when T > To, and in this range of T the value of ψb(g) is equal to ψb(g)To and T − Tb is equal to To − Tb.
It has long been recognized that seed germination is characterized by minimum (Tb), optimum (To) and maximum (Tc) temperatures (Bewley & Black 1994). It has also been known for many years that the timing of germination at suboptimal T conforms to a heat units or thermal time model (Labouriau 1970; Bierhuizen & Wagenvoort 1974). The thermal time approach is well understood and has wide applicability for modelling developmental rates of plants, insects and other poikilothermic organisms (Ritchie & NeSmith 1991). However, this model (Eqn 1) does not predict the decrease in germination rates and percentages that occurs at T > To. Empirical models have been proposed that can match the observed changes in germination in this temperature range (e.g. Garcia-Huidobro et al. 1982; Ellis et al. 1986; Orozco-Segovia et al. 1996; Kebreab & Murdoch 2000). For purposes of ecological modelling of seed germination and seedling emergence, an empirical approach may be satisfactory (Forcella et al. 2000). However, if the model is to be used to guide further biochemical investigation into mechanisms controlling germination responses to environmental factors, a physiologically based model is preferable to a purely empirical one (Vleeshouwers & Kropff 2000; Benech-Arnold et al. 2000).
We have demonstrated here that when T exceeds To, the ψb(g) distribution of a true potato seed population shifts to higher values (Figs 2 & 3). This has the consequence of delaying germination for all seeds in the population, and of preventing germination in those seeds whose ψb thresholds now exceed the ψ of the environment. As T increases further above To, different fractions of the seed population will have different Tc values, or temperatures at which ψb(g) for the particular fraction is equal to 0 MPa. This explains the common observations that GRg values decrease as T exceeds To and that Tc values vary among seeds in a population, often in a normal distribution (e.g. Ellis et al. 1986; Ellis & Butcher 1988) that reflects the normal distribution of ψb(g) values. Treatments such as seed priming or ethylene, which can expand the high T range for germination, do so by increasing the T at which ψb(g) begins to be affected (Bradford & Somasco 1994; Dutta & Bradford 1994). Thus, T acts on seed germination in the supra-optimal range primarily by causing a positive shift in the ψb(g) values of the seed population (Figs 2 & 3).
Kebreab & Murdoch (1999) proposed an alternative interpretation and model for interactions between T and ψ where reduced ψ modifies the upper and lower temperature limits and germination rate relationships within an essentially thermal time model. However, a limitation to this model is that it predicts that the seed population will eventually achieve 100% germination under all conditions within the temperature limits, which is not the case. A subsequent version of the model was developed to predict the final germination percentages at different T and ψ combinations, but these two models have to be combined sequentially in order to describe both germination rate and percentage (Kebreab & Murdoch 2000). The hydrotime model, however, predicts both germination rates and percentages and closely matches the actual time courses, which asymptote at different final percentages depending upon the values of ψ and ψb(g) (Fig. 2; Bradford 1995). Shifting ψb(g) distributions in response to T automatically adjusts both germination rates and percentages. The parameters of the hydrothermal time model also have clear physiological meaning, which is not always the case with other empirical models. Thus, we believe that the approach proposed here wherein ψb(g) distributions shift in response to changes in T is a more accurate and parsimonious description of actual seed behavior than the alternative of modifying thermal coefficients in response to changes in ψ.
Application of the population-based hydrothermal time model also allows normalization of germination time courses across all T and ψ at which germination can occur. In the suboptimal range of T, a common Tb among seeds and essentially constant values of ψb(50) and σψb made the application of this model straightforward. The factor developed by Bradford (1990) was used with the hydrothermal time model to normalize the effects of ψ on germination across suboptimal T (Fig. 4a; Dahal and Bradford, 1994). When the effect of supra-optimal T on ψb(g) was taken into account, germination time courses at these T could be normalized onto a common scale (Fig. 4b). As shown here by our application of Eqn 8 to fit the model, and in the final formulation of the model (Eqn 9), the effect on germination of increasing T above To was equivalent to the effect of a reduction in ψ. The kT value of 0·12 MPa °C−1 indicates that for every degree that T increased above To, the effect on germination was as if the seed ψ was reduced by 0·12 MPa. As ψb(g) increased further at higher T, germination became more and more sensitive to ψ and eventually was prevented even in water when T = Tc(g), or the T at which ψb(g) was equal to 0 MPa (Figs 2a–e & 3b). Furthermore, when the normalized tg values in Fig. 4b were multiplied by To − Tb, they coincided with the normalized time courses at suboptimal temperatures (Fig. 4c). This demonstrates that thermal time accumulation per unit actual time increases as T exceeds Tb, but further accumulation stops when T > To. In the supra-optimal range of T, the purely thermal effect of T on germination rates is maximal, and germination behaviour is governed by the values of the ψb(g) threshold distribution relative to the ψ of the environment.
Although we used a single distribution of ψb(g) to describe germination at suboptimal T, there was a small increase in ψb(50) values in this range also as T increased (Table 1A; Fig. 3b). This could potentially be accounted for with another slope constant to adjust ψb(g) values relative to T in this suboptimal range. Since a common estimate of the hydrothermal time model parameters did an adequate job of accounting for the data in this example (e.g. Fig, 4a), we did not pursue this further. However, there are cases where variation in apparent Tb among seeds in a population or in germination sensitivity to ψ at low T were observed (Orozco-Segovia et al. 1996; Kebreab & Murdoch 1999, 2000; Grundy et al. 2000), and changes in both the upper and lower temperature limits for germination are often associated with the imposition and release of dormancy (e.g. Kruk & Benech-Arnold 2000). Thus, further modification of the hydrothermal time model to allow variation in ψb(g) at both sub- and supra-optimal temperatures may be necessary to describe germination behaviour of other species (Bradford 2002).
The conclusion that shifts in ψb(g) distributions determine the germination behaviour of seeds in the supra-optimal temperature range has a number of significant consequences. It further confirms that rather than being fixed values, ψb(g) thresholds of seed populations are under physiological control in response to environmental and hormonal conditions (Ni & Bradford 1992, 1993; Bradford & Somasco 1994; Dahal & Bradford 1994; Christensen et al. 1996; Meyer et al. 2000). As noted above, the common observation that the temperature limits for germination widen as dormancy is released and narrow as dormancy is imposed (Vegis 1964) is likely to be due to corresponding shifts in the ψb(g) distributions of the seed populations in response to dormancy-regulating factors. We can predict that additional factors that regulate germination under natural conditions, such as after-ripening, light or nitrate (Hilhorst & Toorop 1997; Benech-Arnold et al. 2000), will act via this mechanism. Although variable ψb(g) values complicate some applications of the hydrothermal time model for predicting seedling emergence in the field, this may also explain why models assuming fixed values of ψb(g) could not adequately describe all aspects of seed behaviour across variable environmental conditions (e.g. Kebreab & Murdoch 1999; Finch-Savage et al. 2000; Grundy et al. 2000; Bradford 2002). Although the model does not identify the biochemical mechanism(s) by which ψb(g) is itself regulated, it clearly points further biochemical and molecular investigations in this direction. A number of candidate genes and processes have been identified that could be involved in the initiation of germination (Bradford et al. 2000), at least some of which are regulated and expressed in a manner consistent with a role in establishing ψb thresholds (Chen & Bradford 2000; Nonogaki, Gee & Bradford 2000; Chen, Dahal & Bradford 2001, Chen, Nonogaki & Bradford 2002). Finally, we anticipate that this population-based threshold model can be applied to describe the responses of other biochemical or physiological processes in cell populations to changing T, ψ, hormonal, or developmental conditions (Bradford & Trewavas 1994).
In conclusion, we have extended the hydrothermal time model to describe germination timing and percentage across all T and ψ at which germination can occur. This comprehensive, physiologically based model accounts for all three of the cardinal temperatures for seed germination. The parameters of the model can be used to quantitatively characterize and compare the physiological status of seed populations under different environmental conditions or having different genetic backgrounds. In addition, the model targets the processes by which seed water potential thresholds are determined for further biochemical and molecular investigation.
This project was supported in part by Western Regional Research Project W-168. We thank Dr Noel Pallais of the International Potato Center, Lima, Perú, for providing the true potato seeds and encouraging this investigation.