| Literature DB >> 31115857 |
Pierre Chelle1, Cindy H T Yeung2, Santiago Bonanad3, Juan Cristóbal Morales Muñoz4, Margareth C Ozelo5, Juan Eduardo Megías Vericat3, Alfonso Iorio2,6, Jeffrey Spears7, Roser Mir8, Andrea Edginton9.
Abstract
Fanhdi/Alphanate is a plasma derived factor VIII concentrate used for treating hemophilia A, for which there has not been any dedicated model describing its pharmacokinetics (PK). A population PK model was developed using data extracted from the Web-Accessible Population Pharmacokinetic Service-Hemophilia (WAPPS-Hemo) project. WAPPS-Hemo provided individual PK profiles for hemophilia patients using sparse observations as provided in routine clinical care by hemophilia centers. Plasma factor activity measurements and covariate data from hemophilia A patients on Fanhdi/Alphanate were extracted from the WAPPS-Hemo database. A population PK model was developed using NONMEM and evaluated for suitability for Bayesian forecasting using prediction-corrected visual predictive check (pcVPC), cross validation, limited sampling analysis and external evaluation against a population PK model developed on rich sampling data. Plasma factor activity measurements from 92 patients from 12 centers were used to derive the model. The PK was best described by a 2-compartment model including between subject variability on clearance and central volume, fat free mass as a covariate on clearance, central and peripheral volumes, and age as covariate on clearance. Evaluations showed that the developed population PK model could predict the PK parameters of new individuals based on limited sampling analysis and cross and external evaluations with acceptable precision and bias. This study shows the feasibility of using real-world data for the development of a population PK model. Evaluation and comparison of the model for Bayesian forecasting resulted in similar results as a model developed using rich sampling data.Entities:
Keywords: Bayesian forecasting; Factor VIII; Hemophilia A; Population PK
Mesh:
Substances:
Year: 2019 PMID: 31115857 PMCID: PMC6820598 DOI: 10.1007/s10928-019-09637-4
Source DB: PubMed Journal: J Pharmacokinet Pharmacodyn ISSN: 1567-567X Impact factor: 2.745
Summary of subject demographics for derivation and evaluation populations
| Age (years) | Height (cm) | Body weight (kg) | BMI (kg/m2) | Fat free mass (kg) | Sex | Endogenous FVIII level (IU/mL) | Samples/patient | |
|---|---|---|---|---|---|---|---|---|
| Derivation population | ||||||||
| N | 92 | 87 | 92 | 87 | 87 | 92 males | 92 | |
| Mean | 26.1 | 155.4 | 59.9 | 23.4 | 45.3 | – | Severe patients (< 0.01 IU/mL) N = 80 (87.0%) | 4.2 |
| SD | 18.3 | 26.6 | 25.9 | 5.5 | 18.0 | – | 1.5 | |
| CV% | 70.2% | 17.1% | 43.3% | 23.4% | 39.7% | – | 35.7% | |
| Median | 25 | 167 | 63.5 | 23.9 | 50.5 | – | 5 | |
| Min | 1 | 73.8 | 9.68 | 11.1 | 7.5 | – | < 0.010 | 1 |
| Max | 72 | 188 | 119 | 39.3 | 73.0 | – | 0.169 | 8 |
| Evaluation population | ||||||||
| N | 49 | 49 | 49 | 49 | 49 | 49 males | 48 | |
| Mean | 27.1 | 158.9 | 59.7 | 22.2 | 46.2 | – | Severe patients (< 0.01 IU/mL) N = 46 (95.8%) | 2.9 |
| SD | 17.3 | 28.9 | 24.8 | 5.0 | 18.0 | – | 1.3 | |
| CV% | 63.8% | 18.2% | 41.6% | 22.3% | 39.0% | – | 46.9% | |
| Median | 31 | 169 | 65 | 22.1 | 53.9 | – | 3 | |
| Min | 0.92 | 76 | 10.59 | 13.4 | 8.1 | – | < 0.010 | 1 |
| Max | 60 | 197 | 112.5 | 34.7 | 73.5 | – | 0.012 | 6 |
Fig. 1Observations versus time after dose in linear scale (left) and log scale (right)
Fig. 2Individual values of CL and V1 versus available covariates
Population PK model parameters and confidence intervals
| Parameter (unit) | Estimate | % RSE | 95% CI bootstrap lower bound | 95% CI bootstrap upper bound | Definitions RSE: root of standard error |
|---|---|---|---|---|---|
| Structural model | |||||
| | 0.195 | 5.69% | 0.176 | 0.217 | CL: clearance |
| | 2.30 | 7.45% | 1.95 | 2.62 | V1: central volume |
| | 0.078 | 21.3% | 0.047 | 0.120 | Q: inter-compartmental clearance |
| | 0.449 | 27.1% | 0.279 | 0.776 | V2: peripheral volume |
| Covariate effects | |||||
| FFM effect on CL | 0.701 | 12.0% | 0.527 | 0.872 | FFM: fat free mass |
| FFM effect on V1 | 0.726 | 13.0% | 0.542 | 0.903 | |
| FFM effect on V2 | 0.842 | 72.7% | 0.365 | 3.976 | |
| AGE effect on CL | − 0.302 | 19.1% | − 0.407 | − 0.167 | |
| Between subject variability | |||||
| CV of CL | 0.456 | 9.22% | 0.365 | 0.529 | CV: coefficient of variation (defined as standard deviation of η) |
| CV of V1 | 0.542 | 11.3% | 0.421 | 0.660 | |
| | 0.797 | 7.50% | 0.669 | 0.895 | Corr: correlation between η |
| Residual variability | |||||
| CV of proportional RUV | 0.205 | 8.23% | 0.169 | 0.232 | RUV: residual unexplained variability |
Fig. 3Prediction-corrected visual predictive check of the final model. The dashed lines represent the 5th, 50th, and 95th of the observed data. The solid lines and shaded areas are respectively the corresponding simulated data and their 90% confidence intervals. 500 simulations were performed
Fig. 4Comparison of CL, V1, half-life and time spent above a 0.02 IU/mL threshold (TAT2) estimated in the evaluation dataset by Fanhdi/Alphanate PopPK model and generic plasma-derived (pd) FVIII model
Summary of FVIII PopPK models available in literature
| References | FVIII concentrate | Number of subjects | Age (years) | BW (kg) | CL | V1 | Q | V2 | RUV |
|---|---|---|---|---|---|---|---|---|---|
| Fanhdi/Alphanate | 92 | 25 (1–72) | 63.5 (9.7–119) | 0.195a—45.6% FFM, Age | 2.30a—54.2% FFM | 0.078 | 0.449 | P: 20.5% | |
| Abrantes [ | Refacto/ Xyntha | 754 | 23 (0.003–73) | 69 (3–134) | 0.276b—30.5% inhibitors, age, study | 2.45b—0% BW | 2.51 | 0.923 | P: 19.2% |
| Garmann [ | Kovaltry | 183 | 22 (1–61) | 60 (11–124) | 0.188c—37% LBW | 3.00c—11.2% LBW | 0.190 | 0.637 | P: 26.7% A: 0.011 |
| Shah [ | Kovaltry (joint with Advate) | 18 | 36 (19–64) | 80 (55–99) | 0.151—27.2% | 2.36—7.93% | 0.159 | 0.535 | P: 5.73% |
| Zhang [ | Afstyla | 106 | 23 (1–60) | 60.8 (10–106) | 0.212d—24.1% BW, VWF | 3.36d—19.7% BW | 0.134 | 0.265 | P: 10.9% A: 0.011 |
| Bjorkman [ | Advate | 152 | 22 (1.1–66) | 56 (11–108) | 0.193e—30% BW, age | 2.22e- 21% BW | 0.147 | 0.73 | A: 0.089 |
| Bolon-Larger [ | Multiple plasma derived and recombinant | 51 | 39.5 (7–77) | 68 (21–120) | 0.177f—45.4% | 2.82f—21.1% BSA | 0.152 | 1.54 | Not specified |
| Hazendonk [ | Multiple plasma derived and recombinant | 119 | 40 (0.2–78) | 75 (5–111) | 0.160g—36% BW, age, Blood group O, surgery | 2.81g—26% BW, age | 0.170 | 1.89 | P: 18-23% A: 0.05-0.14 |
| Nestorov [ | rFVIII-Fc Advate | 180 118 | 30 30 | 73 73 | 0.173 h—25.1% VWF 0.253 h—30.4% | 3.68 h—13.4% BW, HCT 3.46 h—16.2% BW | 0.0279 0.0548 | 0.409 0.494 | P: 15.4% A: 0.0024 P:16.8% A: 0.0011 |
| Karafoulidou [ | Refacto | 28 | 34 (18–70) | 75 (54–104) | 0.393i—38.9% BW | 4.86i—13.0% BW, viral status | _l | _ | 15.2% |
| Jimenez [ | Novo8 | 76 | 20 (1–60) | 75 (12–107) | 0.302j—32.0% BW, age | 3.46j—22.0% BW | _ | _ | Not specified |
| McEneny-King [ | Multiple plasma derived and recombinant | 400 | 22.5 (1–67) | 67.1 (10.6–140) | 0.275k—40.9% FFM, age, concentrate | 3.18k—30.7% FFM, concentrate | 0.153 | 0.559 | P: 16.2% A: 0.0095 |
TV typical value, BSV between subject variability, P proportional, A additive, LBW lean body weight, VWF Von Willebrand factor, BSA body surface area, HCT hematocrit
aTypical value for a 25 year old—50.5 kg FFM subject
bTypical value for a 20 year old—70 kg BW subject
cTypical value for a 51.1 kg LBW subject
dTypical value for a 113% VWF activity—68 kg BW subject
eTypical value for a 22 year old—56 kg BW subject
fTypical value for a 1.80 m2 BSA and 68 kg BW subject
gTypical value for a 20 year old—68 kg BW subject
hTypical value for a 45 of HCT—118 VWF—73 kg BW subject
iTypical value for a 75 kg BW subject
jTypical value for a 20 year old—75 kg BW subject
kTypical value for a 22 year old—53 kg FFM subject
lWas used to indicate a 1 compartment model (in which neither Q nor V2 are defined)