| Literature DB >> 35551616 |
Jordi Minnema1, Sven Even F Borgos2, Neill Liptrott3, Rob Vandebriel4, Christiaan Delmaar4.
Abstract
The use of nanobiomaterials (NBMs) is becoming increasingly popular in the field of medicine. To improve the understanding on the biodistribution of NBMs, the present study aimed to implement and parametrize a physiologically based pharmacokinetic (PBPK) model. This model was used to describe the biodistribution of two NBMs after intravenous administration in rats, namely, poly(alkyl cyanoacrylate) (PACA) loaded with cabazitaxel (PACA-Cbz), and LipImage™ 815. A Bayesian parameter estimation approach was applied to parametrize the PBPK model using the biodistribution data. Parametrization was performed for two distinct dose groups of PACA-Cbz. Furthermore, parametrizations were performed three distinct dose groups of LipImage™ 815, resulting in a total of five different parametrizations. The results of this study indicate that the PBPK model can be adequately parametrized using biodistribution data. The PBPK parameters estimated for PACA-Cbz, specifically the vascular permeability, the partition coefficient, and the renal clearance rate, substantially differed from those of LipImage™ 815. This emphasizes the presence of kinetic differences between the different formulations and substances and the need of tailoring the parametrization of PBPK models to the NBMs of interest. The kinetic parameters estimated in this study may help to establish a foundation for a more comprehensive database on NBM-specific kinetic information, which is a first, necessary step towards predictive biodistribution modeling. This effort should be supported by the development of robust in vitro methods to quantify kinetic parameters.Entities:
Keywords: Bayesian parameter estimation; Biodistribution; Nanobiomaterials (NBMs); Physiologically based pharmacokinetic modeling
Mesh:
Year: 2022 PMID: 35551616 PMCID: PMC9360077 DOI: 10.1007/s13346-022-01159-w
Source DB: PubMed Journal: Drug Deliv Transl Res ISSN: 2190-393X Impact factor: 5.671
Summary of the biodistribution datasets used to parametrize the PBPK models in the present study
| Dataset | Loaded substance concentration (μg/g bw) | Time points of sacrifice (h) |
|---|---|---|
| PACA-Cbz | 0.5 | 1 h, 1d, 2d, 4d, and 14d |
| PACA-Cbz | 3.5 | 1 h, 1d, 2d, 4d, and 14d |
| 0.046 | 1 h, 1d, 2d, 4d, and 14d | |
| 0.15 | 1 h, 1d, 2d, 4d, and 14d | |
| 0.46 | 1 h, 1d, 2d, 4d, and 14d |
Fig. 1Schematic overview of the PBPK model used in the present study. This PBPK model was adapted from Li et al. [26]
Model parameter chosen to be optimized, as well as their upper and lower limits used in the MCMC method
| Parameter (unit) | Upper/lower limits | Upper/lower limits (LipImage™ 815 | Description |
|---|---|---|---|
| χrich (-) | 1.67 × 10−2–15 | 1.67 × 10−1–150 | Permeability of richly perfused organs |
| P (-) | 3.3 × 10−2–30 | 1.67 × 10−3–1.5 | Tissue-blood partition coefficient |
| kkidneyEl (h−1) | 1–900 | 3.3 × 10−2–30 | Renal elimination rate |
| kab0 (h−1) | 1.16 × 10−2–10.5 | 3.3 × 10−2–30 | The maximum uptake rate of phagocytizing cells in organs except for the spleen |
| ksab0 (h−1) | 1.67 × 10−2–15 | 3.3 × 10−2–30 | The maximum uptake rate of phagocytizing cells in the spleen |
| kde (h−1) | 3.3 × 10−5–0.03 | 3.3 × 10−5–0.03 | The release rate of phagocytizing cells |
Fig. 2Probability density plots of the sampled posterior distributions of the six estimated parameters (i.e., χrich, P, kab0, ksab0, kkidneyEl, and kde) for the five in vivo biodistribution datasets
Parameter estimates (median) and the corresponding credible interval (in parentheses) resulting from applying the Bayesian parameter estimation method using the five biodistribution datasets. χ, vascular permeability coefficient; P, partition coefficient; k, renal clearance rate; k, uptake rate by macrophages (excluding those in the spleen); k, uptake rate by macrophages in the spleen; k, release rate by macrophages
| Dataset | χrich | P | kkidneyEl | kab0 | ksabo | kde |
|---|---|---|---|---|---|---|
(1.6 | (2.4–5.4) | (1.9 | (1.2 | (5.4 | (1.2 | |
(1.7 | (1.7–4.0) | (1.7 | (1.2 | (1.4 | (1.3 | |
(2.4 | (5.0 | (2.1–3.4) | (8.3 | (1.0 | (7.6 | |
(2.4 | (8.4 | (3.3–5.4) | (9.3 | (1.7 | (5.5 | |
(2.3 | (1.6 | (6.2–10) | (1.1 | (2.2 | (7.0 |
Fig. 3PBPK model simulation results (red) compared with measured cabazitaxel (black dots) in blood plasma, liver, spleen, lung, brain, heart, and kidney for two different doses. The difference between simulated and measured cabazitaxel levels, which is expressed with the AAFE, is shown in the right-upper corner of every plot. A larger AAFE corresponds with a larger difference, and an AAFE of 1 represents a perfect fit
Fig. 4PBPK model simulation results (red) compared with measured IR780 (black) in blood plasma, liver, spleen, lung, brain, heart, and kidney for three different LipImage™ 815 doses. The difference between simulated and measured IR780 levels, which is expressed with the AAFE, is shown in the right-upper corner of every plot. A larger AAFE corresponds with a larger difference, and an AAFE of 1 represents a perfect fit