| Literature DB >> 27917367 |
Barbara Wiśniowska1, Sebastian Polak2.
Abstract
Computational modelling is a cornerstone of Comprehensive In Vitro Proarrhythmia Assay and is re-increasingly being used in drug development. Electrophysiological effects of drug-drug interactions can be predicted in silico, e.g. with the use of in vitro cardiac ion channel data, PK profiles and human ventricular cardiomyocyte models. There are, however, several approaches with different assumptions used to assess the combined effect of multiple drugs, and there is no agreed standard interaction model. The aim of this study was to assess whether the choice of the drug-drug interaction (DDI) model (Bliss independence, Loewe additivity, or simple sum) influences the results of QT interval simulation trial. The Simcyp Simulator version 12.1 (Simcyp Ltd. [part of Certara], Sheffield, UK) and Cardiac Safety Simulator 2.0 (Simcyp Ltd. [part of Certara], Sheffield, UK) were used to simulate results of 8 virtual trials mimicking clinical studies and generate individual QTc data. The combined effect of inhibitory actions of drugs which were given simultaneously was calculated with use of three different interaction models. The PD effect of DDI was assessed and the differences between mean observed and mean predicted ΔQTcB values for terfenadine interactions were not statistically significant in all but one cases. Differences between the three DDI models are not statistically significant, implying that the choice of the DDI model, in the case of lack of synergy or antagonism, is irrelevant to the average predicted effect at the clinical level. However, in some cases, it can influence the verdict on combinatorial therapy safety for individual patients.Entities:
Keywords: Bliss; Clinical trial simulations; Drug interactions; Loewe; PBPK models; QT interval
Year: 2016 PMID: 27917367 PMCID: PMC5114317 DOI: 10.1007/s40495-016-0075-9
Source DB: PubMed Journal: Curr Pharmacol Rep ISSN: 2198-641X
Fig. 1Resultant channel inhibition for 3 DDI models. Equal concentrations and potencies assumed; [DRUG A] = [DRUG B]; IC50 = 1 μM, n = 1. S—simple sum model; B—Bliss model; L—Loewe model
Comparison of the observed and simulated pharmacokinetic results of the clinical trials
| Studied inhibitor | Cmax [ng/ml] | AUCa [ng × h/ml] | |||
|---|---|---|---|---|---|
| Observed | Predicted | Observed | Predicted | ||
| Fluoxetine | T | 2 | 2.3 | 24.6 | 15.3 |
| T + I | 1.4 | 2.3 | 14.2 | 15.3 | |
| Erythromycine | T | <5 | 2.71 | NA | NA |
| T + I | 20.3b | 9.74 | NA | NA | |
| Fluconazole | T | <5 | 2.48 | NA | NA |
| T + I | <5 | 4.11 | NA | NA | |
| Itraconazole | T | 7.63c | 4.9 | NA | NA |
| T + I | 14.97c | 14.6 | NA | NA | |
| Ketoconazole | T | 7d | 2.23 | NA | NA |
| T + I | 49.3e | 19.67 | NA | NA | |
| Clarithromycin | T | <5 | 9f | NA | NA |
| T + I | 2.39 | 7.03 | NA | NA | |
| Erythromycine | T | <5 | 2.47 | NA | NA |
| T + I | 7.6g | 8.98 | NA | NA | |
| Paroxetine | T | 3.68 | 2.31 | 30.8 | 20.5 |
| T + I | 3.64 | 2.48 | 30.0 | 27.5 | |
T terfenadine only, T + I terfenadine + inhibitor, NA not available
aTime as in the clinical study
bFor 3 out of 9 subjects; remaining subjects <5 ng/ml
cFor 3 out of 6 subjects; remaining subjects <5 ng/ml
dFor 1 out of 6 subjects; remaining subjects <5 ng/ml
eEstimated from the graph for 5 out of 6 subjects; remaining subject <5 ng/ml
fFor 4 out of 6 subjects
gFor 3 out of 6 subjects
Observed vs. predicted average QT intervals
| QT interval [ms] | |||||
|---|---|---|---|---|---|
| Observed | Predicted suma | Predicted Blissa | Predicted Loewea | ||
| Fluoxetine [ | BL | 372.4 | 396.0 | ||
| T | 374.9 | 398.5 | |||
| I | – | 400.9 | |||
| T + I | 379 | 401.6 | 400.8 | 400.2 | |
| Distance |
| 2.59 | 3.34 | ||
| Erythromycin [ | BL | 392.8 | |||
| T2 | 8 | 398.5 | |||
| Ib | 21 | 403.7 | |||
| T + Ib | 39 | 418.2 | 413.6 | 411.4 | |
| Distance |
| 22.75 | 25.13 | ||
| Fluconazole [ | BL | 398.5 | 395.2 | ||
| T | 398.4 | 401.3 | |||
| I | 414.3 | ||||
| T + I | 411 | 422.6 | 418.6 | 416.8 | |
| Distance | 31.28 | 26.02 |
| ||
| Itraconazolec [ | BL | 376 | 430.5 | ||
| T | 390 | 438 | |||
| I | No effect | 486.9 | |||
| T + I | 417 | 452.2 | 448.9 | 447.3 | |
| Distance |
| 28.50 | 30.68 | ||
| Ketoconazole [ | BL | 408 | 394.5 | ||
| T | 416 | 395 | |||
| I | – | 415.4 | |||
| T + I | 490 | 439 | 427.9 | 423.6 | |
| Distance |
| 64.03 | 70.14 | ||
| Clarithromycin [ | BL | 409 | 395.5 | ||
| T | 410 | 401.4 | |||
| I | 407 | 393.9 | |||
| T + I | 430 | 404.4 | 403.8 | 402.7 | |
| Distance |
| 22.96 | 23.79 | ||
| Erythromycin [ | BL | 394 | 397.5 | ||
| T | 408 | 403.7 | |||
| I | 409 | 405.8 | |||
| T + I | 428 | 420.1 | 415.6 | 413.5 | |
| Distance |
| 19.46 | 22.17 | ||
| Paroxetine [ | BL | 381 | 392.0 | ||
| T | 387 | 394.5 | |||
| I | – | 393.5 | |||
| T + I | 386 | 396.6 | 393.6 | 396.8 | |
| Distance |
| 4.86 | 4.78 | ||
In bold - the best fitted model (the lowest distance value)
BL baseline, T terfenadine, I inhibitor
aDDI effect on ion channels calculation method
bOnly QT change reported in the study
cMaximal QT change
Fig. 2Baseline subtracted changes of QTcB interval—predicted vs. observed
Percentage of cases where DDI model choice changes conclusion on QT prolongation safety
| DDI study | Fluoxetine [ | Erythromycin [ | Fluconazole [ | Itraconazole [ | Ketoconazole [ | Clarithromycin [ | Erythromycin [ | Paroxetine [ |
|---|---|---|---|---|---|---|---|---|
| % of cases | 0.1 | 2.8 | 3.8 | 2.3 | 5.6 | 0.2 | 3.3 | 0 |