| Literature DB >> 28224315 |
Robert Andersson1,2, Tobias Kroon3,4, Joachim Almquist5,6, Mats Jirstrand5, Nicholas D Oakes3, Neil D Evans7, Michael J Chappel7, Johan Gabrielsson8.
Abstract
Nicotinic acid (NiAc) is a potent inhibitor of adipose tissue lipolysis. Acute administration results in a rapid reduction of plasma free fatty acid (FFA) concentrations. Sustained NiAc exposure is associated with tolerance development (drug resistance) and complete adaptation (FFA returning to pretreatment levels). We conducted a meta-analysis on a rich pre-clinical data set of the NiAc-FFA interaction to establish the acute and chronic exposure-response relations from a macro perspective. The data were analyzed using a nonlinear mixed-effects framework. We also developed a new turnover model that describes the adaptation seen in plasma FFA concentrations in lean Sprague-Dawley and obese Zucker rats following acute and chronic NiAc exposure. The adaptive mechanisms within the system were described using integral control systems and dynamic efficacies in the traditional [Formula: see text] model. Insulin was incorporated in parallel with NiAc as the main endogenous co-variate of FFA dynamics. The model captured profound insulin resistance and complete drug resistance in obese rats. The efficacy of NiAc as an inhibitor of FFA release went from 1 to approximately 0 during sustained exposure in obese rats. The potency of NiAc as an inhibitor of insulin and of FFA release was estimated to be 0.338 and 0.436 [Formula: see text], respectively, in obese rats. A range of dosing regimens was analyzed and predictions made for optimizing NiAc delivery to minimize FFA exposure. Given the exposure levels of the experiments, the importance of washout periods in-between NiAc infusions was illustrated. The washout periods should be [Formula: see text]2 h longer than the infusions in order to optimize 24 h lowering of FFA in rats. However, the predicted concentration-response relationships suggests that higher AUC reductions might be attained at lower NiAc exposures.Entities:
Keywords: Disease modeling; Dosing regimen; Meta-analysis; Nonlinear mixed-effects (NLME); Tolerance; Turnover models
Mesh:
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Year: 2017 PMID: 28224315 PMCID: PMC5424002 DOI: 10.1007/s10928-017-9512-6
Source DB: PubMed Journal: J Pharmacokinet Pharmacodyn ISSN: 1567-567X Impact factor: 2.745
Summary of experimental protocols—including conscious or anesthetized state, route of administration, duration of experiment, protocol name, and the number of lean and obese rats within each experiment (the number of saline infused controls is given in parenthesis)
| Admin. route | Pre-treat. (h) | Acute exp. (h) | Protocol | Number of rats | ||
|---|---|---|---|---|---|---|
| Lean rats | Obese rats | |||||
| Conscious animals | Subcutaneous inf. | 0 | 5 | NiAc Naïve | 7 (2) | 7 (5) |
| 120 | 5 | Cont. NiAc | 6 (2) | 8 (2) | ||
| 120 | 5 | Inter. NiAc | 6 (2) | 8 (3) | ||
| Anaesthetized animals | Intravenous inf. | 0 | 1 | NiAc Off 1 h | 4 (3) | 5 (3) |
| 0 | 1 | NiAc Stp-Dwn 1 h | 5 (2) | 5 (2) | ||
| Subcutaneous inf. | 0 | 12 | NiAc Off 12 h | 5 (2) | 4 (2) | |
| 0 | 12 | NiAc Stp-Dwn 12 h | 5 (3) | 4 (3) | ||
Fig. 1Schematic illustration of how the dependency between NiAc and FFA has been modeled in previous studies (a) and how the dependencies between NiAc, insulin, and FFA were modeled in this study (b). Solid lines represent fluxes while dashed lines represent control. NiAc inhibits the turnover of insulin (1). Insulin, in turn, has feedback mechanisms that inhibits its turnover (2) and stimulates its fractional turnover (3). Both NiAc (4) and insulin (5) inhibit the turnover of FFA. In this study, FFA has a single feedback mechanism which inhibits its turnover (6), while in previous studies, FFA was modeled using an additional feedback mechanism which stimulates its fractional turnover (7)
Fig. 2NiAc disposition models for lean Sprague-Dawley (a) and obese Zucker rats (b). NiAc is either infused directly into the central compartment (intravenous administration) or absorbed via a subcutaneous compartment (subcutaneous administration via an implanted mini-pump)
Fig. 7Visual predictive checks for lean Sprague-Dawley rats. The first column shows the PK fit, the second column the insulin, and the third column the FFA. The rows represent the different protocols of NiAc (as described in the Experimental protocols section). The dots represent the data, with colors indicating separate individuals, the black line the estimated median individual, and the grey area the 90% population prediction interval
Fig. 3Exploration of insulin-time course data for acute NiAc dosing (a) and (c), and chronic NiAc dosing (continuous infusion) (b) and (d) for lean and obese rats, respectively. The data is presented as the mean response ± the standard error of the mean. The blue lines represent the NiAc treated animals, the red lines vehicle control group, and the thick black line represent the NiAc infusion period (Color figure online)
Fig. 4Mechanisms of insulin dynamics. The parameters and represent the turnover rate and fractional turnover rate, respectively. The turnover of insulin is inhibited by the NiAc action function . Tolerance and rebound is captured by the moderator compartments and , which act on the turnover rate and fractional turnover rate of insulin, respectively. The regulator , representing an integral feedback controller, acts on the turnover rate of insulin, in that it strives to maintain insulin baseline, , despite persistent external effects on the turnover
Fig. 5Mechanisms of FFA dynamics. The parameters and represent the turnover rate and fractional turnover, respectively. The turnover of FFA is inhibited by the NiAc action function . Tolerance and rebound are captured by the moderator compartment , which acts on the turnover rate of FFA. The regulator compartment R acts on the turnover rate of FFA and the fractional turnover rate of R is affected by insulin
Fig. 6Exploration of FFA-time course data for acute NiAc dosing (a) and (c), and chronic NiAc dosing (continuous infusion) (b) and (d) for lean and obese rats, respectively. The data is presented as the mean response ± the standard error of the mean. The blue lines represent the NiAc treated animals, the red lines vehicle control group, and the thick black line represent the NiAc infusion period (Color figure online)
Fig. 9Model simulations of acute and chronic action of NiAc exposure (a), insulin-driven integral control (b), and moderator feedback (c) on the FFA turnover. Acute and chronic FFA response (d). Red lines show lean rats and black lines obese rats. The dashed lines show the baseline FFA response (Color figure online)
Estimates of parameter median values and between-subject variabilities with corresponding relative standard errors (RSE%) for normal Sprague-Dawley rats and obese Zucker rats. Estimates highlighted in blue were taken from the literature (Tapani et al. [23]) while the remaining parameters were estimated in this study
| Normal Sprague-Dawley rats | Obese Zucker rats | ||||
|---|---|---|---|---|---|
| Parameter | Definition | Estimate (RSE | BSV | Estimate (RSE | BSV |
| Pharmacokinetic model parameters | |||||
| | First order absorption rate | 4.27 (13) | 80.1 (51) | 5.54 (16) | 80.2 (47) |
| | Lumped diffusion coeff. catheter | 77.4 (15) | – | 62.4 (17) | – |
| | Max. elimination - pathway 1 | 2.64 (12) | 93.5 (51) | 164 (5.1) | 22.4 (13) |
| | Michaelis constant - pathway 1 | 0.235 (29.2) | – | 18.9 (21.5) | – |
| | Max. elimination - pathway 2 | 425 (39.6) | – | – | – |
| | Michaelis constant - pathway 2 | 74.5 (43.4) | – | – | – |
| | Volume of distribution - plasma | 0.393 (5.29) | – | 0.323 (12.4) | – |
| | Volume of distribution - tissue | 0.172 (35.2) | – | – | – |
| | Inter-compartmental distribution | 0.0511 (27.8) | – | – | – |
| | Endogenous NiAc synthesis | 0.213 (23.3) | 66.7 (57) | 0.168 (10.1) | 95 (110) |
| | Residual proportional error | 0.313 (5.1) | – | 0.483 (5.3) | – |
| Insulin model parameters | |||||
| | Baseline insulin conc. | 0.188 (9.7) | 49.3 (5.5) | 3.26 (12) | 10.3 (21) |
| | Fractional turnover rate insulin | 6.58 (14) | – | 10.8 (17) | – |
| | Efficacy - NiAc on insulin | 0.793 (11) | – | 1 | – |
|
| Potency - NiAc on insulin | 0.338 (15) | 111 (67) | 0.175 (27) | 190 (160) |
| | Hill coefficient - NiAc on insulin | 3.54 (6.6) | – | 0.840 (6.0) | – |
|
| Turnover rate moderator | 0.646 (28) | 93.9 (20) | 0.125 (48) | 310 (9.4) |
| | Integral gain parameter | 3.94 (17) | – | 0.0612 (27) | – |
| | Turnover rate NiAc action comp. | – | – | 0.0242 (35) | – |
| | Potency NiAc action compartment | – | – | 0.897 (4.9) | – |
| | Hill coefficient | – | – | 18.9 (44) | – |
|
| Long-term NiAc effect loss | – | – | 1 | – |
| | Residual additive error | 0.0699 (3.3) | – | 0.748 (3.0) | – |
| Free fatty acid model parameters | |||||
| | Baseline FFA conc. | 0.707 (5.0) | 17.8 (26) | 1.14 (3.1) | 0.874 (25) |
| | Fractional turnover rate FFA | 428 (140) | – | 173 (120) | – |
| | Efficacy - NiAc on FFA | 1 | – | 1 | – |
| | Potency - NiAc on FFA | 0.436 (12) | 41.8 (28) | 0.456 (14) | 41.8 (26) |
| | Hill coefficient - NiAc on FFA | 1.24 (11) | – | 0.731 (9.0) | – |
|
| Turnover rate moderator | 1.21 (67) | 58.4 (9.6) | 0.708 (24) | 34.2 (15) |
| | Integral gain parameter | 0.965 (29) | – | 0.0165 (38) | – |
| | Turnover rate NiAc action comp. | 0.00654 (65) | – | 0.0377 (14) | – |
| | Potency NiAc action compartment | 3.05 (160) | – | 0.854 (4.5) | – |
| | Hill coefficient | 1 | – | 8.83 (33) | – |
|
| Long-term NiAc effect loss | 0.807 (190) | – | 1 | – |
| | Residual additive error | 0.130 (3.5) | – | 0.135 (3.0) | – |
Between-subject variability expressed in CV%, calculated as .
Fixed in the estimations.
Fig. 8Visual predictive checks for obese Zucker rats. The first column shows the PK fit, the second column the insulin, and the third column the FFA. The rows represent the different protocols of NiAc (as described in the Experimental protocols section). The dots represent the data, with colors indicating separate individuals, the black line the estimated median individual, and the grey area the 90% population prediction interval. No exposure data were available from the Cont. protocol (g).
Turnover half-lives (expressed in hours) in the insulin and FFA model for lean and obese rats of the biomarkers (insulin or FFA—corresponding rate constant ), the moderator (rate constant ), the integral controller (rate constants ), and the NiAc action (rate constant )
| Half-lives (h) | ||||
|---|---|---|---|---|
| Lean rats | Obese rats | |||
| Turnover | Insulin | FFA | Insulin | FFA |
| Biomarker | 0.105 | 0.00162 | 0.0643 | 0.00401 |
| Moderator | 1.07 | 0.570 | 5.53 | 0.979 |
| Controller | 0.176 | 0.719 | 11.3 | 42.0 |
| NiAc action | – | 106 | 28.7 | 18.4 |
Fig. 10Model predicted reduction in FFA exposure in a median obese rat at steady-state (i.e., after multiple dosing). (a) illustrates the predicted average reduction in 24 h FFA area under the curve and (b) illustrates the proportional reduction, in comparison to the baseline level. The predictions are made for a range of infusion protocols with 0.25–12 h of NiAc exposure followed by 0–12 h washout period. The x-axis represents the infusion time and the y-axis represents the washout time. The model predicts an optimal infusion regimen of 2-h longer washout period than the infusion. The maximal AUC reduction is 5.60 mM h
Fig. 11Predicted steady-state concentration-response (left-hand y-axis) and concentration-action (right-hand y-axis) relationships for obese rats. The black line represents the FFA response, the blue line the inhibitory action of NiAc on FFA turnover, the red line the insulin action on FFA turnover, and the purple line the moderator action on the FFA turnover. The and the concentrations are given by the black vertical lines (Color figure online)