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Interim recruitment prediction for multi-centre clinical trials

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Interim recruitment prediction for multi-centre clinical trials. / Urbas, Szymon; Sherlock, Christopher.
In: Biostatistics, Vol. 23, No. 2, 30.04.2022, p. 485-506.

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Urbas S, Sherlock C. Interim recruitment prediction for multi-centre clinical trials. Biostatistics. 2022 Apr 30;23(2):485-506. Epub 2020 Sept 25. doi: 10.1093/biostatistics/kxaa036

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Bibtex

@article{d4c24bc6605a4d80bb07f81fda469d10,
title = "Interim recruitment prediction for multi-centre clinical trials",
abstract = "We introduce a general framework for monitoring, modeling, and predicting the recruitment to multi-center clinical trials. The work is motivated by overly optimistic and narrow prediction intervals produced by existing time-homogeneous recruitment models for multi-center recruitment. We first present two tests for detection of decay in recruitment rates, together with a power study. We then introduce a model based on the inhomogeneous Poisson process with monotonically decaying intensity, motivated by recruitment trends observed in oncology trials. The general form of the model permits adaptation to any parametric curve-shape. A general method for constructing sensible parameter priors is provided and Bayesian model averaging is used for making predictions which account for the uncertainty in both the parameters and the model. The validity of the method and its robustness to misspecification are tested using simulated datasets. The new methodology is then applied to oncology trial data, where we make interim accrual predictions, comparing them to those obtained by existing methods, and indicate where unexpected changes in the accrual pattern occur.",
author = "Szymon Urbas and Christopher Sherlock",
year = "2022",
month = apr,
day = "30",
doi = "10.1093/biostatistics/kxaa036",
language = "English",
volume = "23",
pages = "485--506",
journal = "Biostatistics",
issn = "1465-4644",
publisher = "Oxford University Press",
number = "2",

}

RIS

TY - JOUR

T1 - Interim recruitment prediction for multi-centre clinical trials

AU - Urbas, Szymon

AU - Sherlock, Christopher

PY - 2022/4/30

Y1 - 2022/4/30

N2 - We introduce a general framework for monitoring, modeling, and predicting the recruitment to multi-center clinical trials. The work is motivated by overly optimistic and narrow prediction intervals produced by existing time-homogeneous recruitment models for multi-center recruitment. We first present two tests for detection of decay in recruitment rates, together with a power study. We then introduce a model based on the inhomogeneous Poisson process with monotonically decaying intensity, motivated by recruitment trends observed in oncology trials. The general form of the model permits adaptation to any parametric curve-shape. A general method for constructing sensible parameter priors is provided and Bayesian model averaging is used for making predictions which account for the uncertainty in both the parameters and the model. The validity of the method and its robustness to misspecification are tested using simulated datasets. The new methodology is then applied to oncology trial data, where we make interim accrual predictions, comparing them to those obtained by existing methods, and indicate where unexpected changes in the accrual pattern occur.

AB - We introduce a general framework for monitoring, modeling, and predicting the recruitment to multi-center clinical trials. The work is motivated by overly optimistic and narrow prediction intervals produced by existing time-homogeneous recruitment models for multi-center recruitment. We first present two tests for detection of decay in recruitment rates, together with a power study. We then introduce a model based on the inhomogeneous Poisson process with monotonically decaying intensity, motivated by recruitment trends observed in oncology trials. The general form of the model permits adaptation to any parametric curve-shape. A general method for constructing sensible parameter priors is provided and Bayesian model averaging is used for making predictions which account for the uncertainty in both the parameters and the model. The validity of the method and its robustness to misspecification are tested using simulated datasets. The new methodology is then applied to oncology trial data, where we make interim accrual predictions, comparing them to those obtained by existing methods, and indicate where unexpected changes in the accrual pattern occur.

U2 - 10.1093/biostatistics/kxaa036

DO - 10.1093/biostatistics/kxaa036

M3 - Journal article

VL - 23

SP - 485

EP - 506

JO - Biostatistics

JF - Biostatistics

SN - 1465-4644

IS - 2

ER -