| Literature DB >> 31587090 |
Basma Zuheir Al-Metwali1,2,3, Peter Rivers1, Larry Goodyer1, Linda O'Hare4, Sanfui Young4, Hussain Mulla5,6.
Abstract
Warfarin dosing is challenging due to a multitude of factors affecting its pharmacokinetics (PK) and pharmacodynamics (PD). A novel personalised dosing algorithm predicated on a warfarin PK/PD model and incorporating CYP2C9 and VKORC1 genotype information has been developed for children. The present prospective, observational study aimed to compare the model with conventional weight-based dosing. The study involved two groups of children post-cardiac surgery: Group 1 were warfarin naïve, in whom loading and maintenance doses were estimated using the model over a 6-month duration and compared to historical case-matched controls. Group 2 were already established on maintenance therapy and randomised into a crossover study comparing the model with conventional maintenance dosing, over a 12-month period. Five patients enrolled in Group 1. Compared to the control group, the median time to achieve the first therapeutic INR was longer (5 vs. 2 days), to stable anticoagulation was shorter (29.0 vs. 96.5 days), to over-anticoagulation was longer (15.0 vs. 4.0 days). In addition, median percentage of INRs within the target range (%ITR) and percentage of time in therapeutic range (%TTR) was higher; 70% versus 47.4% and 83.4% versus 62.3%, respectively. Group 2 included 26 patients. No significant differences in INR control were found between model and conventional dosing phases; mean %ITR was 68.82% versus 67.9% (p = 0.84) and mean %TTR was 85.47% versus 80.2% (p = 0.09), respectively. The results suggest model-based dosing can improve anticoagulation control, particularly when initiating and stabilising warfarin dosing. Larger studies are needed to confirm these findings.Entities:
Keywords: Personalised dosing; Pharmacodynamics; Pharmacokinetics; Warfarin
Mesh:
Substances:
Year: 2019 PMID: 31587090 PMCID: PMC6848240 DOI: 10.1007/s00246-019-02215-y
Source DB: PubMed Journal: Pediatr Cardiol ISSN: 0172-0643 Impact factor: 1.655
Characteristics of the study population
| Indicator | Model validation cohort | Prospective study cohorts | ||
|---|---|---|---|---|
| Group 1 | Group 2 | |||
| Case subjects | Control subjects | |||
| Agea (years), median (range) | 16.75 (8.4–66.6) | 6 (3.8–8.9) | 5.3 (3.4–9.3) | 9.0 ± 4.8 (1–17.3)b |
| Weight (kg), median (range) | 5.2 (1–15.9) | 16 (15.4–30.3) | 17 (16–36.5) | 24.9 (9.5–62.8) |
| Gender [ | ||||
| Male | 39 (65) | – | 3 (60) | 18 (69.2) |
| Female | 21 (35) | 5 (100) | 2 (40) | 8 (30.8) |
| Ethnicity [ | ||||
| White | 43 (71.7) | 2 (40) | 5 (100) | 20 (76.9) |
| Asian | 8 (13.3) | 3 (60) | – | 4 (15.4) |
| Otherc | 8 (13.3) | – | – | 2 (7.7) |
| Missed | 1 (1.7) | – | – | – |
| CYP2C9 genotype [ | ||||
| *1/*1 | NA | 5 (100) | NA | 16 (61.5) |
| *1/*2 | – | 6 (23.1) | ||
| *1/*3 | – | 3 (11.5) | ||
| Missing | – | 1 (3.8) | ||
| VKORC1 genotype [ | ||||
| G/G | NA | 3 (60) | NA | 12 (46.2) |
| G/A | 2 (40) | 14 (53.8) | ||
| Indication for warfarin [ | ||||
| Fontan | 41 (68.3) | 3 (60) | 3 (60) | 20 (76.9) |
| MVR | 6 (10) | 2 (40) | 2 (40) | 5 (19.2) |
| AVR | 10 (16.7) | – | – | 1 (3.8) |
| Otherd | 3 (5) | – | – | – |
| Target INR range [ | ||||
| 2.0–3.0 | 23 (38.3) | 3 (60) | 3 (60) | 12 (46.2) |
| 1.5–2.5 | 16 (26.7) | – | – | 7 (26.9) |
| 2.5–3.5 | 8 (13.3) | 2 (40) | 2 (40) | 4 (15.4) |
| 2.0–2.5 | 7 (11.7) | – | – | 1 (3.8) |
| Othere | 6 (10) | – | – | 2 (7.7) |
NA not available, MVR mitral valve replacement, AVR aortic valve replacement
aAge at enrolment
bMean ± SD (range)
cOther ethnicity: mixed White and Black, mixed White and Asian, Black, mixed White and Black Caribbean and Middle Eastern
dOther indications: Kawasaki disease and stroke
eOther target INR ranges 1.8–3.0, 1.5–3.0, 1.5–3.5, 2.0–3.5, 2.5–3.0, 3.0–3.5 and 3.0–4.0
Results of the study outcomes for Group 1 case and control subjects
| Outcome | Control ( | Case ( |
|---|---|---|
| Time to first therapeutic INR (days) | 2 (1–3) | 5 (2–6) |
| Time to stable anticoagulation (days) | 96.5 (24–138)a | 29 (9–87)b |
| Time to over-anticoagulation (INR ≥ 4.0) (days) | 4 (1–14) | 15 (4–17)b |
| %ITR | 47.4 (43.6–55.1) | 70 (53.2–76.9) |
| %TTR | 62.3 (38.2–71.3) | 83.4 (69–84.4) |
| Number of dose changes | 21 (12–36) | 20 (8–50) |
| Frequency of INR measurements (per month) | 6.3 (4–11.5) | 5 (3.8–13.2) |
| No. of INR values ≥ 4.0 | 2 (2–6) | 2 (0–11)b |
| No. of INR values ≥ 5.0 | 2 (1–3) | 0 (0–2)c |
Values are expressed as median (range)
an = 4
bn = 3
cn = 2
Fig. 1The percentage of measured INR in the target therapeutic range (%ITR) in Group 1 subjects (bar represents the median subject)
Fig. 2The percentage of time in the target therapeutic range (%TTR) in Group 1 subjects (bar represents the median subject)
Descriptive statistics and p values of the effect of genetic and non-genetic variables on daily warfarin dose, %ITR and %TTR in Group 2 patients
| mg/kg/day | %ITR | %TTR | |||||
|---|---|---|---|---|---|---|---|
| Age groups (years) | |||||||
| 1–5 | 10 | 0.2 (0.1–0.4) | 0.17a | 58.75 (36.4–78) | 0.1b | 83.2 (52.9–90.5) | 0.19a |
| 6–10 | 6 | 0.1 (0.1–0.2) | 72.63 (57.7–100) | 84.75 (75.7–100) | |||
| 11–18 | 10 | 0.1 (0.1–0.2) | 75.41 (43.8–100) | 90.98 (69.1–100) | |||
| Gender | |||||||
| Male | 18 | 0.2 (0.1–0.4) | 0.11d | 67.13 (36.4–100) | 0.62c | 86.15 (52.9–100) | 0.94d |
| Female | 8 | 0.1 (0.1–0.2) | 71.13 (43.8–100) | 86.1 (69.1–100) | |||
| Ethnicity | |||||||
| White | 20 | 0.1 (0.1–0.4) | 0.35a | 67.97 (36.4–100) | 0.98b | 86.15 (52.9–100) | 0.8a |
| Asian | 4 | 0.2 (0.1–0.2) | 68.93 (57.7–77.7) | 87.4 (77.8–95.6) | |||
| Other | 2 | 0.15 (0.1–0.2) | 71.05 (50–92.1) | 88.3 (82.2–94.5) | |||
| Indication | |||||||
| Fontan | 20 | 0.1 (0.1–0.2) | 0.16d | 72.30 (36.4–100) | 0.04c | 88.45 (59.3–100) | 0.04d |
| Mechanical valves | 6 | 0.2 (0.1–0.4) | 55.23 (44.1–82.3) | 65.55 (52.9–94.0) | |||
| Target INR range | |||||||
| 1.5–2.5 | 7 | 0.1 | 0.07a | 79.74 (63.4–100) | 0.17b | 88.95 (75.7–100) | 0.21a |
| 2.0–3.0 | 12 | 0.1 (0.1–0.2) | 67.45 (36.4–94.5) | 85.75 (59.3–99.8) | |||
| 2.5–3.5 | 4 | 0.2 (0.1–0.4) | 55.25 (44.1–82.3) | 63.28 (52.9–94.0) | |||
| Other | 3 | 0.2 (0.1–0.2) | 62.9 (45.4–85.7) | 77.75 (61.5–97.1) | |||
| CYP2C9 genotype | |||||||
| *1/*1 | 16 | 0.1 (0.1–0.2) | 0.56d | 72.15 (36.4–100) | 0.28c | 88.45 (57.0–100) | 0.36d |
| *1/x | 9 | 0.1 (0.1–0.4) | 63.66 (43.8–100) | 80.5 (52.9–100) | |||
| VKORC1 genotype | |||||||
| G/G | 12 | 0.2 (0.1–0.4) | 0.01d | 61.50 (44.1–85.7) | 0.08c | 83.25 (52.9–97.1) | 0.11d |
| G/A | 14 | 0.1 (0.1–0.2) | 74.23 (36.4–100) | 89.4 (59.3–100) |
aKruskal-Wallis test
bANOVA test
cIndependent sample t test
dMann–Whitney test