Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches

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Standard

Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches. / Juul, Rasmus Vestergaard; Nyberg, Joakim; Kreilgaard, Mads; Christrup, Lona Louring; Simonsson, Ulrika S. H.; Lund, Trine Meldgaard.

In: Journal of Pharmacokinetics and Pharmacodynamics, Vol. 44, No. 4, 08.2017, p. 325-333.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Juul, RV, Nyberg, J, Kreilgaard, M, Christrup, LL, Simonsson, USH & Lund, TM 2017, 'Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches', Journal of Pharmacokinetics and Pharmacodynamics, vol. 44, no. 4, pp. 325-333. https://doi.org/10.1007/s10928-017-9522-4

APA

Juul, R. V., Nyberg, J., Kreilgaard, M., Christrup, L. L., Simonsson, U. S. H., & Lund, T. M. (2017). Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches. Journal of Pharmacokinetics and Pharmacodynamics, 44(4), 325-333. https://doi.org/10.1007/s10928-017-9522-4

Vancouver

Juul RV, Nyberg J, Kreilgaard M, Christrup LL, Simonsson USH, Lund TM. Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches. Journal of Pharmacokinetics and Pharmacodynamics. 2017 Aug;44(4):325-333. https://doi.org/10.1007/s10928-017-9522-4

Author

Juul, Rasmus Vestergaard ; Nyberg, Joakim ; Kreilgaard, Mads ; Christrup, Lona Louring ; Simonsson, Ulrika S. H. ; Lund, Trine Meldgaard. / Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches. In: Journal of Pharmacokinetics and Pharmacodynamics. 2017 ; Vol. 44, No. 4. pp. 325-333.

Bibtex

@article{bf789d501c87464fa911f61f1234b0ca,
title = "Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches",
abstract = "Inconsistent trial design and analysis is a key reason that few advances in postoperative pain management have been made from clinical trials analyzing opioid consumption data. This study aimed to compare four different approaches to analyze opioid consumption data. A repeated time-to-event (RTTE) model in NONMEM was used to simulate clinical trials of morphine consumption with and without a hypothetical adjuvant analgesic in doses equivalent to 15-62% reduction in morphine consumption. Trials were simulated with duration of 24-96 h. Monte Carlo simulation and re-estimation were performed to determine sample size required to demonstrate efficacy with 80% power using t test, Mann-Whitney rank sum test, time-to-event (TTE) modeling and RTTE modeling. Precision of efficacy estimates for RTTE models were evaluated in 500 simulations. A sample size of 50 patients was required to detect 37% morphine sparing effect with at least 80% power in a 24 h trial with RTTE modeling whereas the required sample size was 200 for Mann-Whitney, 180 for t-test and 76 for TTE models. Extending the trial duration from 24 to 96 h reduced the required sample size by 3.1 fold with RTTE modeling. Precise estimate of potency was obtained with a RTTE model accounting for both morphine effects and time-varying covariates on opioid consumption. An RTTE analysis approach proved better suited for demonstrating efficacy of opioid sparing analgesics than traditional statistical tests as a lower sample size was required due the ability to account for time-varying factors including PK.",
keywords = "Postoperative pain, Analgesics, Repeated time-to-event modeling, Clinical trial simulation, Monte Carlo Mapped Power",
author = "Juul, {Rasmus Vestergaard} and Joakim Nyberg and Mads Kreilgaard and Christrup, {Lona Louring} and Simonsson, {Ulrika S. H.} and Lund, {Trine Meldgaard}",
year = "2017",
month = aug,
doi = "10.1007/s10928-017-9522-4",
language = "English",
volume = "44",
pages = "325--333",
journal = "Journal of Pharmacokinetics and Pharmacodynamics",
issn = "1567-567X",
publisher = "Springer",
number = "4",

}

RIS

TY - JOUR

T1 - Analysis of opioid consumption in clinical trials: a simulation based analysis of power of four approaches

AU - Juul, Rasmus Vestergaard

AU - Nyberg, Joakim

AU - Kreilgaard, Mads

AU - Christrup, Lona Louring

AU - Simonsson, Ulrika S. H.

AU - Lund, Trine Meldgaard

PY - 2017/8

Y1 - 2017/8

N2 - Inconsistent trial design and analysis is a key reason that few advances in postoperative pain management have been made from clinical trials analyzing opioid consumption data. This study aimed to compare four different approaches to analyze opioid consumption data. A repeated time-to-event (RTTE) model in NONMEM was used to simulate clinical trials of morphine consumption with and without a hypothetical adjuvant analgesic in doses equivalent to 15-62% reduction in morphine consumption. Trials were simulated with duration of 24-96 h. Monte Carlo simulation and re-estimation were performed to determine sample size required to demonstrate efficacy with 80% power using t test, Mann-Whitney rank sum test, time-to-event (TTE) modeling and RTTE modeling. Precision of efficacy estimates for RTTE models were evaluated in 500 simulations. A sample size of 50 patients was required to detect 37% morphine sparing effect with at least 80% power in a 24 h trial with RTTE modeling whereas the required sample size was 200 for Mann-Whitney, 180 for t-test and 76 for TTE models. Extending the trial duration from 24 to 96 h reduced the required sample size by 3.1 fold with RTTE modeling. Precise estimate of potency was obtained with a RTTE model accounting for both morphine effects and time-varying covariates on opioid consumption. An RTTE analysis approach proved better suited for demonstrating efficacy of opioid sparing analgesics than traditional statistical tests as a lower sample size was required due the ability to account for time-varying factors including PK.

AB - Inconsistent trial design and analysis is a key reason that few advances in postoperative pain management have been made from clinical trials analyzing opioid consumption data. This study aimed to compare four different approaches to analyze opioid consumption data. A repeated time-to-event (RTTE) model in NONMEM was used to simulate clinical trials of morphine consumption with and without a hypothetical adjuvant analgesic in doses equivalent to 15-62% reduction in morphine consumption. Trials were simulated with duration of 24-96 h. Monte Carlo simulation and re-estimation were performed to determine sample size required to demonstrate efficacy with 80% power using t test, Mann-Whitney rank sum test, time-to-event (TTE) modeling and RTTE modeling. Precision of efficacy estimates for RTTE models were evaluated in 500 simulations. A sample size of 50 patients was required to detect 37% morphine sparing effect with at least 80% power in a 24 h trial with RTTE modeling whereas the required sample size was 200 for Mann-Whitney, 180 for t-test and 76 for TTE models. Extending the trial duration from 24 to 96 h reduced the required sample size by 3.1 fold with RTTE modeling. Precise estimate of potency was obtained with a RTTE model accounting for both morphine effects and time-varying covariates on opioid consumption. An RTTE analysis approach proved better suited for demonstrating efficacy of opioid sparing analgesics than traditional statistical tests as a lower sample size was required due the ability to account for time-varying factors including PK.

KW - Postoperative pain

KW - Analgesics

KW - Repeated time-to-event modeling

KW - Clinical trial simulation

KW - Monte Carlo Mapped Power

U2 - 10.1007/s10928-017-9522-4

DO - 10.1007/s10928-017-9522-4

M3 - Journal article

C2 - 28389762

VL - 44

SP - 325

EP - 333

JO - Journal of Pharmacokinetics and Pharmacodynamics

JF - Journal of Pharmacokinetics and Pharmacodynamics

SN - 1567-567X

IS - 4

ER -

ID: 184286578