| Literature DB >> 26573827 |
Annabel Allison1,2, Tansy Edwards3, Raymond Omollo4,5, Fabiana Alves6, Dominic Magirr7,8, Neal D E Alexander9.
Abstract
BACKGROUND: Visceral leishmaniasis (VL) is a parasitic disease transmitted by sandflies and is fatal if left untreated. Phase II trials of new treatment regimens for VL are primarily carried out to evaluate safety and efficacy, while pharmacokinetic data are also important to inform future combination treatment regimens. The efficacy of VL treatments is evaluated at two time points, initial cure, when treatment is completed and definitive cure, commonly 6 months post end of treatment, to allow for slow response to treatment and detection of relapses. This paper investigates a generalization of the triangular design to impose a minimum sample size for pharmacokinetic or other analyses, and methods to estimate efficacy at extended follow-up accounting for the sequential design and changes in cure status during extended follow-up.Entities:
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Year: 2015 PMID: 26573827 PMCID: PMC4647805 DOI: 10.1186/s13063-015-1018-1
Source DB: PubMed Journal: Trials ISSN: 1745-6215 Impact factor: 2.279
Fig. 1Flowchart outlining the assessments in a visceral leishmaniasis trial. A diagram showing the different clinical and parasitological assessment time points carried out and possible outcomes in a VL trial
Fig. 2Illustration of the triangular group-sequential design. Boundaries for plotting the efficient score (B ) versus Fisher’s information (V ) for k analyses. The sample path shows one possible route the analysis could take. Here, the trial would be stopped for inefficacy at the third interim analysis
Fig. 3Three flexible triangular design boundaries. Boundaries for plotting the efficient score (B ) versus Fisher’s information (V ) for the three potential designs for the motivating example with a two-sided Type I error rate of α=0.05 and power of 0.95 when θ R=1.10
Parameter estimates for the three potential designs for the motivating example. A simulation was performed to calculate expected sample size, Type I error and power
| Estimate | Design 1 | Design 2 | Design 3 |
|---|---|---|---|
| (3 analyses) | (4 analyses) | (7 analyses) | |
| Maximum sample size | 62 | 62 | 66 |
| Expected sample size under | 36 | 31 | 30 |
| Expected sample size under | 40 | 40 | 39 |
| Type I error | 0.0479 | 0.0482 | 0.0484 |
| Power | 0.893 | 0.889 | 0.894 |
Parameter estimates for the three potential designs for the motivating example under the maximum sample size required to satisfy power. A simulation was performed to calculate expected sample size, Type I error and power
| Estimate | Design 1 | Design 2 | Design 3 |
|---|---|---|---|
| (3 analyses) | (4 analyses) | (7 analyses) | |
| Maximum sample size | 86 | 86 | 102 |
| Expected sample size under | 46 | 44 | 43 |
| Expected sample size under | 49 | 49 | 48 |
| Type I error | 0.0471 | 0.0453 | 0.044 |
| Power | 0.962 | 0.964 | 0.976 |
Fig. 4Plot showing the bias and RMSE of the three estimators. A plot of bias and RMSE for the SHE, PTE and MLE calculated under each true success probability and change in patient status combination
Fig. 5Plot showing the length of 95 % CIs and coverage probability of the three estimators. A plot of the length of 95 % CIs and coverage probability for the SHE, PTE and MLE calculated under each true success probability and change in patient status combination