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Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments?: A Simulation Study

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Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments? A Simulation Study. / Mozgunov, Pavel; Knight, Rochelle; Barnett, Helen et al.
In: International Journal of Environmental Research and Public Health, Vol. 18, No. 1, 345, 05.01.2021.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

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Mozgunov P, Knight R, Barnett H, Jaki T. Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments? A Simulation Study. International Journal of Environmental Research and Public Health. 2021 Jan 5;18(1):345. doi: 10.3390/ijerph18010345

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Mozgunov, Pavel ; Knight, Rochelle ; Barnett, Helen et al. / Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments? A Simulation Study. In: International Journal of Environmental Research and Public Health. 2021 ; Vol. 18, No. 1.

Bibtex

@article{057c9699acb94c368a3dfbb596e85463,
title = "Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments?: A Simulation Study",
abstract = "There is growing interest in Phase I dose-finding studies studying several doses of more than one agent simultaneously. A number of combination dose-finding designs were recently proposed to guide escalation/de-escalation decisions during the trials. The majority of these proposals are model-based: a parametric combination-toxicity relationship is fitted as data accumulates. Various parameter shapes were considered but the unifying theme for many of these is that typically between 4 and 6 parameters are to be estimated. While more parameters allow for more flexible modelling of the combination-toxicity relationship, this is a challenging estimation problem given the typically small sample size in Phase I trials of between 20 and 60 patients. These concerns gave raise to an ongoing debate whether including more parameters into combination-toxicity model leads to more accurate combination selection. In this work, we extensively study two variants of a 4-parameter logistic model with reduced number of parameters to investigate the effect of modelling assumptions. A framework to calibrate the prior distributions for a given parametric model is proposed to allow for fair comparisons. Via a comprehensive simulation study, we have found that the inclusion of the interaction parameter between two compounds does not provide any benefit in terms of the accuracy of selection, on average, but is found to result in fewer patients allocated to the target combination during the trial.",
keywords = "dose-escalation;, combination study, modelling assumption, interaction",
author = "Pavel Mozgunov and Rochelle Knight and Helen Barnett and Thomas Jaki",
year = "2021",
month = jan,
day = "5",
doi = "10.3390/ijerph18010345",
language = "English",
volume = "18",
journal = "International Journal of Environmental Research and Public Health",
issn = "1660-4601",
publisher = "Multidisciplinary Digital Publishing Institute (MDPI)",
number = "1",

}

RIS

TY - JOUR

T1 - Using an Interaction Parameter in Model-Based Phase I Trials for Combination Treatments?

T2 - A Simulation Study

AU - Mozgunov, Pavel

AU - Knight, Rochelle

AU - Barnett, Helen

AU - Jaki, Thomas

PY - 2021/1/5

Y1 - 2021/1/5

N2 - There is growing interest in Phase I dose-finding studies studying several doses of more than one agent simultaneously. A number of combination dose-finding designs were recently proposed to guide escalation/de-escalation decisions during the trials. The majority of these proposals are model-based: a parametric combination-toxicity relationship is fitted as data accumulates. Various parameter shapes were considered but the unifying theme for many of these is that typically between 4 and 6 parameters are to be estimated. While more parameters allow for more flexible modelling of the combination-toxicity relationship, this is a challenging estimation problem given the typically small sample size in Phase I trials of between 20 and 60 patients. These concerns gave raise to an ongoing debate whether including more parameters into combination-toxicity model leads to more accurate combination selection. In this work, we extensively study two variants of a 4-parameter logistic model with reduced number of parameters to investigate the effect of modelling assumptions. A framework to calibrate the prior distributions for a given parametric model is proposed to allow for fair comparisons. Via a comprehensive simulation study, we have found that the inclusion of the interaction parameter between two compounds does not provide any benefit in terms of the accuracy of selection, on average, but is found to result in fewer patients allocated to the target combination during the trial.

AB - There is growing interest in Phase I dose-finding studies studying several doses of more than one agent simultaneously. A number of combination dose-finding designs were recently proposed to guide escalation/de-escalation decisions during the trials. The majority of these proposals are model-based: a parametric combination-toxicity relationship is fitted as data accumulates. Various parameter shapes were considered but the unifying theme for many of these is that typically between 4 and 6 parameters are to be estimated. While more parameters allow for more flexible modelling of the combination-toxicity relationship, this is a challenging estimation problem given the typically small sample size in Phase I trials of between 20 and 60 patients. These concerns gave raise to an ongoing debate whether including more parameters into combination-toxicity model leads to more accurate combination selection. In this work, we extensively study two variants of a 4-parameter logistic model with reduced number of parameters to investigate the effect of modelling assumptions. A framework to calibrate the prior distributions for a given parametric model is proposed to allow for fair comparisons. Via a comprehensive simulation study, we have found that the inclusion of the interaction parameter between two compounds does not provide any benefit in terms of the accuracy of selection, on average, but is found to result in fewer patients allocated to the target combination during the trial.

KW - dose-escalation;

KW - combination study

KW - modelling assumption

KW - interaction

U2 - 10.3390/ijerph18010345

DO - 10.3390/ijerph18010345

M3 - Journal article

VL - 18

JO - International Journal of Environmental Research and Public Health

JF - International Journal of Environmental Research and Public Health

SN - 1660-4601

IS - 1

M1 - 345

ER -