 |
INTRODUCTION |
IT IS WELL
ESTABLISHED that the 5-hydroxytryptamine (HT)1A
receptor plays a role in the physiological regulation of body
temperature (40, 54). Consequently, the 5-HT1A
agonists, which are used therapeutically as antidepressants and
antianxiety drugs (16), cause hypothermia (4, 20,
27, 50). For the prototype 5-HT1A agonists it has
been demonstrated that this hypothermic response is indeed mediated
specifically through the 5-HT1A receptor because it can be
blocked in a dose-dependent manner by the selective, competitive
5-HT1A receptor antagonist WAY-100,635 (14,
17) and not by antagonists for other G protein-coupled receptors
(34).
In a number of investigations, the time course of the hypothermic
response after administration of 5-HT1A receptor agonists has been studied in detail. In these studies, complex effect vs. time
patterns have been observed, suggesting the involvement of homeostatic
control mechanisms (51, 54). So far, however, no
mathematical models have been developed to characterize these complex
time profiles of the hypothermic response in a strict quantitative
manner. Specifically, there have been no attempts to link existing
temperature regulation models (25, 49) to pharmacokinetic
models describing the time course of the drug concentration in the body.
In recent years important progress has been made in the area of
integrated pharmacokinetic-pharmacodynamic (PK-PD) modeling (11). PK-PD modeling has even allowed estimation of the in
vivo affinity and intrinsic efficacy of drugs
(43-46). Specifically, models have been proposed that
allow for a delay between drug concentration and the pharmacological
response (15, 19, 30). So far, however, very few of these
models incorporate complex regulatory behavior (7, 18,
48). In this report we propose a new physiological PK-PD model,
in which 5-HT1A receptor agonists exert their effect on
body temperature by lowering of the set-point temperature. The model
was applied to characterize hypothermic response vs. time profiles
after administration of different doses of the reference
5-HT1A receptor agonists R- and
S-8-OH-DPAT. It is shown that differences in the observed
hypothermic response profiles can be explained by differences in in
vivo intrinsic efficacy between the two compounds.
Glossary
| a |
Rate of change in the set-point signal
(min 1 · °C 1)
|
| AIC |
Akaike Information Criterion
|
| C |
Drug concentration in the central compartment (ng/ml)
|
| CL |
Clearance of the drug from the body (ml/min)
|
| CL2, CL3 |
Intercompartmental clearance (ml/min)
|
|
Residual error
|
|
Interindividual variation
|
|
Amplification of the set-point signal
|
| I |
Identity matrix
|
| kin |
Zeroth-order rate constant associated with the production of body
heat (°C/min)
|
| kout |
First-order rate constant associated with the cooling of the body
(min 1)
|
|
Eigenvalue
|
| M |
Jacobian matrix
|
| n |
Slope factor
|
| P |
Population parameter
|
| Pi |
Individual's parameter
|
| R-7-OH-DPAT |
R-(+)-7-hydroxy-2-(di-n-propylamino) tetralin
|
| R-8-OH-DPAT |
R-(+)-8-hydroxy-2-(di-n-propylamino) tetralin
|
| S-8-OH-DPAT |
S-( )-8-hydroxy-2-(di-n-propylamino) tetralin
|
| SC50 |
Concentration at 50% of maximum stimulation
|
| Smax |
Maximum stimulation the drug can produce
|
| T |
Core body temperature (°C)
|
|
Fixed effect
|
min |
Population-averaged minimal temperature (°C)
|
| TSP |
Individual's set-point temperature (°C)
|
| V1 |
Volume of distribution of the central compartment (ml)
|
| V2, V3 |
Volume of distribution of the peripheral compartments (ml)
|
| WAY-100,635 |
N-[2-[4-(2-methoxyphenyl)-1-piperazinyl] ethyl]-N-2-pyridinyl-cyclohexanecarboxamide
|
| X |
Set-point signal
|
 |
SET-POINT MODEL FOR 5-HT1A AGONIST-INDUCED HYPOTHERMIA |
The proposed set-point model for the effect of 5-HT1A
agonists on body temperature is shown in Fig.
1. As the agonist binds to its receptor,
a stimulus is generated. This stimulus in turn drives physiological
processes that lower the temperature. This stimulus, which is
determined by the drug-receptor interaction and hence the drug's
affinity and efficacy, can be described by a sigmoidal function
f(C)
|
(1)
|
where Smax represents the maximum
stimulus the drug can produce, C is the drug concentration,
SC50 is the concentration required to produce 50% of the
maximum stimulus, and n is a slope factor, which determines
the steepness of the curve. As the drug concentration changes with
time, the stimulus changes as well. As the stimulus S is
assumed to be inhibitory, it is defined as S = 1
f(C). The behavior of the concentration C and the
corresponding stimulus S is shown in Fig.
2, A and B. This
stimulus induces the hypothermic response. The changing drug
concentrations therefore govern the first time scale of the model.

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Fig. 1.
Proposed full model for describing
5-HT1A-receptor mediated hypothermia. The model is based on
the concepts of the indirect physiological response model
(15) and takes into account rate constants associated with
the warming of the body (kin) and cooling of the
body (kout). The indirect physiological response
model is combined with the thermostat-like regulation of body
temperature, in which body temperature (T) is compared with a fixed
reference or set-point temperature (TSP) at rate
a, generating a set-point signal X. The extent to
which the set-point value decreases is a function of drug concentration
f(C), which decreases X by the amplification
factor .
|
|

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Fig. 2.
Graphic representation of the behavior of the models applied for a
low dose (solid line) and a high dose (dashed line). A:
profile of the 3-compartment pharmacokinetic model (Eq. 1).
B: behavior of the stimulus equation in time [1 f(C); Eq. 1] for the concentration vs. time
profiles as shown in A. C: phase plot of the
set-point model, clearly showing an oscillation for the low dose and
not for the high dose. D: time-effect profiles of the
set-point model (Eq. 6) following the input from
C. Note that the temperature has been rescaled. The inputs
used were CL, 22.8 ml/min; CL2, 13.9 ml/min,
CL3, 69.2 ml/min, V1, 126 ml; V2,
2,090 ml; V3, 603 ml; kin,
0.5°C/min; TSP, 38°C; A, 0.01 min 1; , 10; SC50, 25 ng/ml;
Smax, 1; n, 1. For other definitions, see
Glossary.
|
|
The second time scale on which the model operates is governed by
physiological principles. The model that describes the hypothermic response utilizes the concepts of the indirect physiological response model as proposed by Dayneka et al. (15) and Gabrielsson
et al. (19). In this model the change in
temperature (T) is described as an indirect response to either the
inhibition of the production of body heat or the stimulation of its
loss (Eq. 2)
|
(2)
|
Here kin represents the zeroth-order rate
constant associated with the warming of the body and
kout represents a first-order rate constant
associated with the cooling of the body.
The indirect physiological response model is combined with the
thermostat-like regulation of body temperature. This regulation is
implemented as a continuous process in which the body temperature is
compared with a reference or set-point temperature (TSP)
(Fig. 1). It is accepted that 5-HT1A agonists elicit
hypothermia by decreasing the value of TSP, and hence
TSP depends on the drug concentration C:
TSP = TSP(C). It is assumed that
TSP is controlled by the drug concentration C through
Eq. 3
|
(3)
|
where T0 is the set-point value in the absence of any
drug: T0 = TSP(0). Combining
the indirect physiological response model with the thermostat-like
regulation therefore yields
|
(4)
|
in which X denotes the thermostat signal. In the model
as described in Eq. 4, the change in X is driven
by the difference between the body temperature T and TSP on
a time scale that is governed by a. Hence, when the
set-point value is lowered, the body temperature is perceived as too
high and X is lowered. To relate this decreasing signal to
the drop in body temperature, an effector function
X
was designed, in which
determines the
amplification. Raising this function to the loss term
kout · T therefore facilitates the loss
of heat. In Eq. 4, body temperature and set-point
temperature are interdependent, and a feedback loop is created that can
give rise to oscillatory behavior, as will be shown later. When the body temperature is at its initial set point, the no-drug situation, the equilibrium set-point signal X0 can be
defined in terms of kin,
kout,
, and T0 (see
APPENDIX).
With four system parameters to be estimated, the degree of
parameterization in Eq. 4 is high and thus may lead to
parameter unidentifiability. It can be shown that one parameter can be
eliminated by combining parameters into dimensionless quantities. Thus,
we set
|
(5)
|
where X0 is the reference signal of
X when no drug is present and T0 has
been defined in Eq. 3. For these dimensionless variables, we
obtain the system
|
(6)
|
where
|
(7)
|
are the new dimensionless parameters. For the derivation of
the new system, refer to APPENDIX. After
reparameterization, the number of physiological parameters has been
reduced from four (a, kin,
kout, and
) in Eq. 4 to three
(A, B, and
) in Eq. 6, and as a
result, parameter unidentifiability has been abolished.
Under certain conditions, Eqs. 4 and 6
produce damped oscillations, around the equilibrium point
(
,
), defined by
|
(8)
|
The local behavior near this point can be characterized by the
eigenvalues of the Jacobian matrix M, fromwhich the discriminant D can be determined (see APPENDIX).
For Eq. 6 the discriminant becomes
|
(9)
|
When D < 0, the eigenvalues are complex,
and the system of differential equations will exhibit oscillatory
behavior. When D
0, which is the case for a relatively
large stimulus, the eigenvalues are real and the system of differential
equations will be "overdamped." In both cases the eigenvalues have
a negative real part, so that (
,
)
is asymptotically stable. The behavior of the model is depicted in a
phase plot (Fig. 2C) for low and high doses. In this
picture, as the temperature starts to drop, the curves are transversed
from the point (x, y) = (1,1)
in a clockwise fashion to the slowly moving equilibrium points
(
,
). This behavior results in
temperature-time profiles as depicted in Fig. 2D. The
complex behavior of the model is further depicted in a
three-dimensional graph in Fig. 3.

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Fig. 3.
Three-dimensional representation of the behavior of the
models applied for a low dose (solid line) and a high dose (dashed
line) in the temperature-set point-time scene. Inputs used were the
same as for Fig. 2. The drop lines or curtain is added for clarity. The
model predicts oscillatory behavior particularly for the low-dose
administrations.
|
|
As the drug concentrations will be known as time progresses,
substituting the expressions of Eq. 8 into
Eq. 6 gives a relationship that predicts the qualitative
behavior of the model at different parameter combinations. Initial
estimates of the model were further obtained with the use of
simulations using different parameter values, an overview of which can
be found in Fig. 4. It turns out that the
model predicts the behavior as described above when Smax approaches or equals 1, whereas it predicts
an oscillation at all doses for Smax between 0 and 1, i.e., partial agonist. This concept was implemented in Eq. 6 by defining the ranges of Smax and the
dependent variable y. In the model the
Smax value of a full agonist equals 1 and that
of an antagonist equals 0. The procedure for calculating the redefined
y values on the basis of the observed temperatures is
represented in Eq. 10
|
(10)
|
In Eq. 10, T is the temperature at time t,
TSP is the average temperature from the hour before drug
administration, and
min is the average minimal
temperature of the individuals receiving a high dose of the full
agonists.

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Fig. 4.
Behavior of the model for different values of the model parameters.
The middle line is simulated with the same pharmacokinetics as the low
dose in Fig. 1 and kin = 1°C/min,
A = 0.02 min 1, = 2, SC50 = 50 ng/ml, Smax = 1, and n = 1. The lines beside the middle line
are simulated with the values as represented in the graph, where the
greatest decrease is caused by the greatest value, except for
kin, where it is the lowest value.
|
|
 |
EXPERIMENTAL METHODS |
Experiments were preformed on male Wistar rats (Broekman BV,
Someren, The Netherlands) weighing 297 ± 3.4 g (mean ± SE, n = 68) and were approved by the Leiden University
Ethics Committee. The animals were housed in standard plastic cages (6 per cage before surgery and individually after surgery). They were kept in a room with a normal 12:12-h light-dark cycle (lights on at 7:00 AM
and lights off at 7:00 PM) and a temperature of 21°C. During
the light period, a radio was on for background noise. Acidified water
and food (laboratory chow, Hope Farms, Woerden, The Netherlands) was
provided ad libitum before the experiment.
Surgical Procedure
Eight days before the experiment, the rats were operated on. The
animals were anesthetized with an intramuscular injection of 0.1 ml/kg
Domitor (1 mg/ml medetomidine hydrochloride, Pfizer, Capelle a/d IJsel,
The Netherlands) and 1 ml/kg Ketalar (50 mg/ml ketamine base,
Parke-Davis, Hoofddorp, The Netherlands). Indwelling pyrogen-free
cannulas were implanted into the right jugular vein (Polythene, 14 cm,
0.52-mm ID, 0.96-mm OD) for drug administration and into the left
femoral artery (Polythene, 4 cm of 0.28-mm OD, 0.61-mm OD plus 20 cm of
0.58-mm ID, 0.96-mm OD) for blood sampling. Cannulas were
tunneled subcutaneously to the back of the neck and exteriorized. To
prevent coagulation of blood, the cannulas were filled with a 25%
(wt/vol) solution of polyvinylpyrrolidone (PVP) (Brocacef, Maarssen,
The Netherlands) in a 0.9% (wt/vol) pyrogen-free sodium chloride
solution (NPBI, Emmer-Compascuum, The Netherlands) that contained 50 IU/ml of heparin (Leiden University Medical Center, Leiden, The
Netherlands). Just before the experiment, the PVP solution was removed,
and the cannulas were flushed with saline containing 20 IU/ml of
heparin. The skin in the neck was stitched with normal sutures, and the
skin in the groin was closed with wound clips. Furthermore, a
telemetric transmitter [Physiotel implant TA10TA-F40 system, Data
Sciences Internationals (DSI), St. Paul, MN], with a weight of ~7
g, which had been made pyrogen free with CIDEX (22 g/l
glutaraldehyde, Johnson and Johnson Medical, Gargrave, Skipton, United
Kingdom) for at least 2 h, was implanted into the abdominal cavity
for the measurement of core body temperature. After surgery, an
injection of the antibiotic ampicillin (0.6 ml/kg of a 200 mg/ml
solution, AUV, Cuijk, The Netherlands) was administered to aid recovery.
Experimental Protocol
Dosage regimen.
Eight days after surgery, the experiments were performed. Rats received
different doses in different infusion rates of R-8-OH-DPAT or S-8-OH-DPAT. For R-8-OH-DPAT, bolus infusions
of 1 mg/kg in 15 min (n = 7), 3 mg/kg in 5 min
(n = 7), 3 mg/kg in 15 min (n = 5), and
3 mg/kg in 30 min (n = 6) were given. In addition, a computer-controlled infusion was administered over 6 h, by which a
stable concentration of 160 ng/ml was maintained in blood
(n = 6). For S-8-OH-DPAT, infusions of 5 mg/kg (n = 6) and 15 mg/kg (n = 6) in
15 min were administered. Twenty-four rats received vehicle treatments,
in which an equivalent amount of saline was infused.
For the bolus infusions, an external cannula was filled with a solution
of the drug in an amount of saline calculated according to the weight
of the rat, and the cannula was connected to the infusion pump
(BAS beehive, Bioanalytical Systems). For the computer-controlled infusions, STANPUMP software (42) was used running on an
IBM-compatible computer (486 processor) and connected to a Harvard
22-syringe pump (Harvard Apparatus, South Natick, MA) through an RS232
interface. The concentration was clamped using population
pharmacokinetic parameters obtained in the bolus infusion experiments.
All experiments started between 9:00 AM and 9:30 AM.
Blood sampling.
Approximately 15-18 serial blood samples of 50 µl were taken
according to a fixed time schedule to determine the concentration vs.
time profile of the drug. The exact amount was measured with a
capillary (Servoprax, Wesel, Germany) and transferred into a glass
centrifuge tube containing 400 µl of purified water for hemolysis.
During the experiment the samples were kept on ice. After the
experiment, samples were stored at
20°C pending analysis.
Data Acquisition
Temperature measurements.
To measure the body temperature of the rat, a telemetric system
(Physiotel Telemetry System, DSI) was used. The transmitter measured
the body temperature every 30 s for a 2-s period and signaled it
to a receiver (Physiotel Receiver, model RPC-1, DSI). The receiver was
connected to the computer through a BCM 100 consolidation matrix (DSI).
The computer processed the data and visualized the temperature profiles
[Dataquest LabPro software (DSI) running under OS/2 Warp, IBM] as it
did for room temperature (C10T temperature adapter, DSI).
HPLC analysis of R- and S-8-OH-DPAT.
The blood concentrations of R- and S-8-OH-DPAT
were assayed by an enantioselective HPLC method as described previously
(55). Briefly, detection with the HPLC system was obtained
using an electrochemical detector (DECADE, Antec Leyden, Zoeterwoude,
The Netherlands) operating in DC mode at 0.63 V, at a temperature of
30°C. Chromatography was performed on a Chiralcel OD-R (Diacel Chemical Industries, Tokyo, Japan). The mobile phase was a mixture of
50 mM phosphate buffer (pH 5.5)-acetonitrile (80/20, vol/vol) and
contained a total concentration of 5 mM KCl and 20 mg/l of EDTA. The
analytes were extracted from blood using a liquid-liquid cleanup step
and isolated on Bakerbond solid phase extraction NARC-2 columns (Baker,
Phillipsburg, NJ). Calibration curves in the concentration range of
0.1-5000 ng/ml were analyzed with each run, and peak area ratios
of analyte over internal standard
[R-(+)-7-hydroxy-2-(di-n-propylamino)tetralin (R-7-OH-DPAT)] were calculated. Using 50 µl of blood, the
limit of detection was 0.5 ng/ml.
Chemicals.
R-8-OH-DPAT, S-8-OH-DPAT, and
R-7-OH-DPAT were purchased from Research Biochemicals
International. All other chemicals used were of analytical grade
(Baker, Deventer, The Netherlands).
Data Analysis
A nonlinear mixed-effects modeling approach was used to quantify
both the pharmacokinetics and pharmacodynamics of R- and S-8-OH-DPAT sequentially. With this approach, the population
is taken as the unit of analysis while taking into account both
intraindividual variability in the model parameters, as well as
interindividual residual error (39). Modeling was
performed using the nonlinear mixed-effects modeling software NONMEM
developed by Sheiner and colleagues (10) (version V1.1,
NONMEM Project Group, University of California, San Francisco, CA).
Individual predictions were obtained in a Bayesian post hoc step. The
concentration-time profiles of R-8-OH-DPAT as well as
S-8-OH-DPAT were best described using a standard
three-compartment pharmacokinetic model, such as implemented in NONMEM
ADVAN11, TRANS4. With this routine, the pharmacokinetics were described
in terms of the compartment volumes of distribution (V1,
V2, and V3), clearance (CL), and the
intercompartmental clearances (CL2 and CL3).
The set-point model (Eq. 6) was implemented in NONMEM using
ADVAN6. Parameterization was different from Eq. 6, where
B is purely phenomenological. However, as the individual TSP values were known, the parameter B could be
calculated from kin (see APPENDIX,
Eq. A9). Therefore, the estimated physiological parameters
were kin, A, and
. The
Smax was fixed to 1 for R-8-OH-DPAT. The observed dependent variable temperature measurements were redefined
as described in Eq. 10. Interindividual variability on the
parameters was modeled by an exponential equation
|
(11)
|
where
is the population value for parameter P,
Pi is the individual value, and
i is the random deviation of
Pi from P. The values of
i are assumed to be independently normally
distributed with mean zero and variance
2. The
covariance structure of the variability parameters was assumed to be
diagonal. For the pharmacokinetics, residual error was characterized by
an exponential error model
|
(12)
|
where Cp,ij is the jth
plasma concentration for the ith individual predicted by the
model, Cm,ij is the measured
concentration, and
accounts for the residual deviance of the
model-predicted value from the observed concentration. For the
pharmacodynamics, residual error was characterized by a proportional
error model
|
(13)
|
where yp,ij is the
jth prediction for the ith individual predicted
by the model, ym,ij is the
measurement, and
accounts for the residual deviance of the
model-predicted value from the observed value. The values for
are
assumed to be independently normally distributed with mean zero and
variance
2. Population pharmacokinetic values of
,
2, and
2 are estimated using the
first-order method in NONMEM. The values for the population
pharmacodynamic
,
2, and
2 are
estimated using the centering first-order conditional estimation method
with the first-order model in NONMEM. A conditional estimation method
is used because of the high degree of nonlinearity of the model and the
high density of the data. The centering option gives the average
estimate of each element of
together with a P value that
can be used to assess whether this value is sufficiently close to zero.
The occurrence of an average
that is significantly different from
zero indicates an uncentered or a biased fit. This method was chosen to
greatly decrease computing time as required with just the conditional
estimation method (10, 33). To further decrease computing
time, only 1/16th of the temperature data set was used for modeling,
reducing the temperature measurements from over 900 measurements per
individual to ~60. The implication of this reduction is that there is
a data point every 8 min, as opposed to every 0.5 min. This reduction
did not void the integrity of the data profiles. Model selection was
based on the Akaike Information Criterion (AIC; Ref. 2)
and assessment of parameter estimates and correlations. Goodness-of-fit
was analyzed using the objective function and various diagnostic
methods as present in Xpose version 3.04 (S-plus-based model building
aid; Ref. 29).
 |
RESULTS |
The average effect-time profiles for the hypothermic response
after administration of vehicle, R-8-OH-DPAT, and
S-8-OH-DPAT are represented in Fig.
5. In the control group (Fig.
5A), rats received the amount of saline equivalent to the
drug infusions used and were subjected to blood sampling. They showed
no hypothermic response. The administration of R-8-OH-DPAT
resulted in a maximum decrease in temperature of 4 ± 0.3°C at
40 to 60 min (Fig. 5, B and D). After an infusion
of R-8-OH-DPAT of 1 mg/kg in 5 min, a complex effect vs.
time profile was observed. The body temperature quickly rose after
reaching its minimum; subsequently, a plateau phase was observed, after
which temperature returned to baseline. For the higher doses (3 mg/kg
in 5, 15, and 30 min) the plateau phase was not observed, and the body
temperature returned to baseline more gradually. In the experiments in
which the R-8-OH-DPAT concentration was maintained at a
concentration of 160 ng/ml for 6 h, a similar plateau phase was
observed, and as the infusion was turned off, the body temperature
returned to baseline in a similar fashion.

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Fig. 5.
Average temperature-time profiles (±SE) for vehicle treatments
(A; n = 24); for R-8-OH-DPAT
regular infusions [B: infusion 1, 1 mg/kg in 5 min (n = 7); infusion 2, 3 mg/kg
in 5 min (n = 7); infusion 3, 3 mg/kg in 15 min (n = 5), and infusion 4, 3 mg/kg in 30 min (n = 6)]; for S-8-OH-DPAT infusions
[C: infusion 1, 5 mg/kg in 15 min
(n = 6) and infusion 2, 15 mg/kg in 15 min
(n = 6)]; and for computer-controlled infusions
of R-8-OH-DPAT (D), where the concentration was
clamped at 160 ng/ml in blood (n = 6). All infusions
started at t = 0; horizontal bars represent duration of
the infusion.
|
|
On administration of S-8-OH-DPAT, a maximum decrease in body
temperature of 3.2 ± 0.2°C was observed within 40-60 min
(Fig. 5C). For S-8-OH-DPAT a plateau phase was
observed, such as with the low dose of R-8-OH-DPAT, before
returning to baseline for both infusions (5 and 15 mg/kg in 15 min).
Pharmacokinetics
During the experiments, blood samples were taken to construct
individual concentration-time profiles. After the regular infusions of
both R- and S-8-OH-DPAT, a distribution phase and
an elimination phase were observed (Fig.
6). On the basis of predicted
concentration curves, goodness-of-fit plots, and the AIC, the
three-compartment model was selected over a two-compartment model in
the pharmacokinetic analysis. The individual concentration-time
profiles for R-8-OH-DPAT for both the regular infusions and
the computer-controlled infusion are depicted in Fig. 6. The population
prediction for the regular infusions and for the computer-controlled
infusion as well as the individually predicted curves is represented.
The individual concentration-time profiles for S-8-OH-DPAT
are depicted in Fig. 7. The values of the
pharmacokinetic parameter estimates are represented in Table
1. No statistically significant
correlation between the parameters was detected. Table 1
further displays the interindividual variation and the intraindividual
variation for both R- and S-8-OH-DPAT.

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Fig. 6.
Pharmacokinetic profiles for R-8-OH-DPAT regular
infusions [1 mg/kg in 5 min (n = 7), 3 mg/kg in 5 min
(n = 7), 3 mg/kg in 15 min (n = 5), and
3 mg/kg in 30 min (n = 6)] and the profiles
(n = 6) of the computer-controlled infusion (160 ng/ml
for 6 h). Both the individually measured profiles (dashed lines
with markers) and the population prediction (thick line) are
represented. Horizontal bars represent duration of
infusion.
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Fig. 7.
Pharmacokinetic profiles for S-8-OH-DPAT
regular infusions: 15 mg/kg in 15 min (A; n = 6) and 5 mg/kg in 15 min (B; n = 6). Both
the individually measured profiles (thin lines with markers) and the
population prediction (thick line) are represented.
|
|
Fitting the Set-Point Model
The effect-time profiles for R- and
S-8-OH-DPAT were described by fitting the set-point model to
the data. Parameters were estimated using the centering first-order
conditional estimation method with the first-order model. The average
values for all
s were not significantly different from 0. The
population parameter estimates are shown in Table
2. Individual post hoc predictions of the
parameters were found to be unbiased with respect to the different doses and infusions administered. Figure
8 depicts some typical individual and
population predictions for different doses and infusions. Table 2
displays the interindividual variation and the intraindividual
variation, which were both found to be reasonable for both
R- and S-8-OH-DPAT. The precision with which the
parameters were predicted was reasonable for both R- and
S-8-OH-DPAT.
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Table 2.
Population pharmacodynamic parameter estimates and inter- and
intraindividual variabilities of R- and S-8-OH-DPAT
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Fig. 8.
Selected representative fits of different doses and infusions of
R- and S-8-OH-DPAT. Open circles represent
measured body temperature, solid line represents individual prediction,
and dashed line represents population prediction. Infusions started at
t = 60.
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|
 |
DISCUSSION |
Development of the Set-Point Model
It is well established that temperature regulation in the rat
takes place in the anterior hypothalamus (8, 25, 26, 47).
Furthermore, it has been recognized that serotonin plays an active role
in temperature regulation and in particular in the maintenance of the
body's set point (9, 28, 32, 40, 53, 54). More recently,
numerous pharmacological studies have suggested that homeostasis is
achieved through an interplay between the 5-HT1A and
5-HT2A/C receptor systems (1, 23, 38, 40, 41).
This is further supported by the fact that both receptors are located
in the hypothalamus (3, 37) amongst other regions in the
brain. Administration of a 5-HT1A-receptor agonist induces a hypothermic response both in humans and rats. This is considered to
be mediated by postsynaptic 5-HT1A receptor sites in this
region (6, 20, 27, 34, 35).
To characterize 5-HT1A-agonist-induced hypothermia, we have
developed a mathematical model that describes the hypothermic effect on
the basis of the concept of a set point (8, 12, 54) and a
general physiological response model (15, 19, 30). The
model developed is able to reproduce the observed complex effect vs.
time profile with regard to both the delay relative to the maximal drug
concentration and the plateau phase. It appears that the plateau phase
originates from damped oscillations that occur around the equilibrium
point on returning to baseline, when the model is not fully
"pushed" into the maximal effect. When the model is fully pushed
into its maximal effect, such as is the case for a relatively high dose
of a full agonist, the system becomes overdamped, thereby losing its
oscillatory behavior. Hence, the observed plateau phase is an intrinsic
part of the regulatory mechanism related to the oscillatory behavior
found in many regulatory systems (22, 31).
Because the model as represented by Eq. 4 is
overparameterized, the model was simplified by introducing
dimensionless quantities. Such operation does not change the behavior
of the model but merely reduces the parameters that are correlated. One
major drawback of this approach is, however, that the parameters become
difficult to interpret. On the other hand, a major advantage is that it becomes possible to estimate the parameters with a higher degree of
certainty. To fully utilize the properties of the model, the temperature data were rescaled as well. This was done under the assumption that R-8-OH-DPAT is the fullest agonist and that
the maximal temperature decrease observed was indeed the maximum. Despite the fact that it is well known that temperature is regulated within a narrow range, it has been shown that when the body temperature does drop below approximately 4-4.5°C below its homeostatic
temperature, either very long recovery times are observed (>10 h) or
the animals die. Examples of such experiments include administration of
the adenosine agonist 5'-(N-ethylcarboxamido)adenosine and
high but nonlethal doses of pentobarbital or clozapine (unpublished
results). It is therefore reasonable to assume that the absolute drop
as observed with R-8-OH-DPAT is the absolute maximum for the
range in which the set-point system operates.
Because it is known from both in vitro and in vivo data that
R- and S-8-OH-DPAT are, respectively, full and
partial agonists for the hypothalamic 5-HT1A receptor
(14) and behave as such for the hypothermic response
(24), we were interested in estimating the intrinsic
activity and potency of these compounds on the basis of our model.
Despite the fact that it has been suggested that the hypothermic effect
of S-8-OH-DPAT is mediated via the dopamine D2
receptor (52), we have not been able to reproduce this
result and were able to block the S-8-OH-DPAT-mediated
hypothermic effect using the selective 5-HT1A receptor
antagonist WAY-100,635 (results not shown). Furthermore, we could not
block the S-8-OH-DPAT-mediated response using the
a-selective dopamine receptor antagonist haloperidol (results
not shown). Finally, we were unable to block an effective dose of the
selective dopamine D3 receptor agonist
R-7-OH-DPAT, which does induce a hypothermic response in our
studies (results not shown). These findings show that the observed
hypothermic response after S-8-OH-DPAT is mediated
exclusively through the 5-HT1A receptor.
Fitting the Set-Point Model
To construct a concentration-effect relationship for
R- and S-8-OH-DPAT, it was necessary to study the
pharmacokinetics of both compounds. Both concentration-time
profiles were estimated using a population-based three-compartment
pharmacokinetic model. The pharmacokinetics of R-8-OH-DPAT
could be estimated with a high degree of precision, whereas the
precision of the estimation of S-8-OH-DPAT pharmacokinetics
was somewhat poorer. The reason for this may be the large half-life of
S-8-OH-DPAT (~15 h) relative to the duration of the
study. In this respect, it is interesting to note that the
difference in pharmacokinetics between R-8-OH-DPAT (half-life of 86 min) and S-8-OH-DPAT indicate a highly
stereoselective metabolism. In the analysis of the effect on body
temperature, the individual post hoc pharmacokinetic parameters were
used for interpolation to estimate the drug concentration at every
measurement of body temperature. The proposed physiological PK-PD model
was able to describe the plateau phase observed for the low dose of R-8-OH-DPAT and not for the high dose in a single analysis.
Additionally, the computer-controlled infusions in which an
R-8-OH-DPAT concentration of 160 ng/ml is maintained in
blood for 6 h follow a behavior that is also fitted by the model.
Furthermore, it predicts a plateau phase for both doses of the partial
agonist S-8-OH-DPAT. Overall, the individual predictions
describe the shape of the observed responses well, and the parameters
obtained are independent of dose or infusion. The parameters obtained
show reasonable interindividual variances and intraindividual variance.
Despite the fact that a number of parameters associated with the
physiological part of the model are different between R- and
S-8-OH-DPAT, they are within a physiological range of each
other, whereas the Smax and SC50 are
markedly different.
General Conclusions
The parameters obtained from describing both the
pharmacokinetics and the pharmacodynamics of both R- and
S-8-OH-DPAT clearly indicate a stereoselective metabolism, a
difference in potency, and a marked difference in intrinsic activity
(Fig. 9) for the hypothermic effect.
These findings comply with in vitro data, where affinity for both
compounds is very similar (5, 36) and an efficacy of
~50% is found for S-8-OH-DPAT in functional assays
(13). The model that was developed incorporates the
set-point hypothesis in temperature regulation to explain the
hypothermic response to the 5-HT1A receptor in terms of its
oscillatory behavior.

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Fig. 9.
Concentration-effect curve for R-8-OH-DPAT (full
agonist; A) and S-8-OH-DPAT (partial agonist;
B). The curves are based on the pharmacodynamic parameters
obtained (thin lines represent individually predicted curves).
Error bars refer to the interindividual variance,
±[(%interindividual variation/100) × SC50 or
Smax.
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Perspectives
This study shows that it is possible to predict the time course of
drug effects in vivo in situations where complex homeostatic control
mechanisms are operative. As such, it forms the basis for the
development of an entirely new class of PK-PD models. These models are
important for the development of new drugs and the application of such
drugs in clinical practice. For example, on the basis of this kind of
model, it becomes possible to predict whether withdrawal symptoms will
occur on cessation of (chronic) drug treatment. Hence, these models may
provide a scientific basis either for the selection of alternate drug
candidates or the design of dosing regimens that show less pronounced
withdrawal phenomena. It is further anticipated that such models will
provide a basis for PK-PD modeling with disease progression.
Through the action of the drug on the receptor, the set-point
temperature is determined by the concentration C of the drug
We thank J. Gabrielsson for useful discussions on physiological
response modeling and E. Tukker for technical assistance in the animal experiments.
Present address for K. P. Zuideveld: Pharsight Corporation,
Argentum, 2 Queen Caroline St., Hammersmith, W6 9DT London, United Kingdom.
Present address for P. H. van der Graaf: Pfizer Global Research
and Development, Discovery Biology, Ramsgate Rd., Sandwich, Kent CT13
9NJ, United Kingdom.
Address for reprint requests and other correspondence: M. Danhof, Leiden/Amsterdam Center for Drug Research, Division of
Pharmacology, Sylvius Laboratory, P.O. Box 9503, 2300 RA Leiden, The
Netherlands (E-mail: m.danhof{at}lacdr.leidenuniv.nl).
The costs of publication of this
article were defrayed in part by the
payment of page charges. The article
must therefore be hereby marked
"advertisement"
in accordance with 18 U.S.C. Section 1734 solely to indicate this fact.
Received 26 February 2001; accepted in final form 9 August 2001.