Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials

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Standard

Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials. / Granholm, Anders; Lange, Theis; Harhay, Michael O; Jensen, Aksel Karl Georg; Perner, Anders; Møller, Morten Hylander; Kaas-Hansen, Benjamin Skov.

I: Pharmaceutical Statistics, Bind 23, Nr. 2, 2023, s. 138-150.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Granholm, A, Lange, T, Harhay, MO, Jensen, AKG, Perner, A, Møller, MH & Kaas-Hansen, BS 2023, 'Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials', Pharmaceutical Statistics, bind 23, nr. 2, s. 138-150. https://doi.org/10.1002/pst.2342

APA

Granholm, A., Lange, T., Harhay, M. O., Jensen, A. K. G., Perner, A., Møller, M. H., & Kaas-Hansen, B. S. (2023). Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials. Pharmaceutical Statistics, 23(2), 138-150. https://doi.org/10.1002/pst.2342

Vancouver

Granholm A, Lange T, Harhay MO, Jensen AKG, Perner A, Møller MH o.a. Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials. Pharmaceutical Statistics. 2023;23(2):138-150. https://doi.org/10.1002/pst.2342

Author

Granholm, Anders ; Lange, Theis ; Harhay, Michael O ; Jensen, Aksel Karl Georg ; Perner, Anders ; Møller, Morten Hylander ; Kaas-Hansen, Benjamin Skov. / Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials. I: Pharmaceutical Statistics. 2023 ; Bind 23, Nr. 2. s. 138-150.

Bibtex

@article{57a72bd7696042a087494bf72b53e31f,
title = "Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials",
abstract = "Different combined outcome-data lags (follow-up durations plus data-collection lags) may affect the performance of adaptive clinical trial designs. We assessed the influence of different outcome-data lags (0-105 days) on the performance of various multi-stage, adaptive trial designs (2/4 arms, with/without a common control, fixed/response-adaptive randomisation) with undesirable binary outcomes according to different inclusion rates (3.33/6.67/10 patients/day) under scenarios with no, small, and large differences. Simulations were conducted under a Bayesian framework, with constant stopping thresholds for superiority/inferiority calibrated to keep type-1 error rates at approximately 5%. We assessed multiple performance metrics, including mean sample sizes, event counts/probabilities, probabilities of conclusiveness, root mean squared errors (RMSEs) of the estimated effect in the selected arms, and RMSEs between the analyses at the time of stopping and the final analyses including data from all randomised patients. Performance metrics generally deteriorated when the proportions of randomised patients with available data were smaller due to longer outcome-data lags or faster inclusion, that is, mean sample sizes, event counts/probabilities, and RMSEs were larger, while the probabilities of conclusiveness were lower. Performance metric impairments with outcome-data lags ≤45 days were relatively smaller compared to those occurring with ≥60 days of lag. For most metrics, the effects of different outcome-data lags and lower proportions of randomised patients with available data were larger than those of different design choices, for example, the use of fixed versus response-adaptive randomisation. Increased outcome-data lag substantially affected the performance of adaptive trial designs. Trialists should consider the effects of outcome-data lags when planning adaptive trials.",
author = "Anders Granholm and Theis Lange and Harhay, {Michael O} and Jensen, {Aksel Karl Georg} and Anders Perner and M{\o}ller, {Morten Hylander} and Kaas-Hansen, {Benjamin Skov}",
note = "{\textcopyright} 2023 The Authors. Pharmaceutical Statistics published by John Wiley & Sons Ltd.",
year = "2023",
doi = "10.1002/pst.2342",
language = "English",
volume = "23",
pages = "138--150",
journal = "Pharmaceutical Statistics",
issn = "1539-1604",
publisher = "Wiley",
number = "2",

}

RIS

TY - JOUR

T1 - Effects of duration of follow-up and lag in data collection on the performance of adaptive clinical trials

AU - Granholm, Anders

AU - Lange, Theis

AU - Harhay, Michael O

AU - Jensen, Aksel Karl Georg

AU - Perner, Anders

AU - Møller, Morten Hylander

AU - Kaas-Hansen, Benjamin Skov

N1 - © 2023 The Authors. Pharmaceutical Statistics published by John Wiley & Sons Ltd.

PY - 2023

Y1 - 2023

N2 - Different combined outcome-data lags (follow-up durations plus data-collection lags) may affect the performance of adaptive clinical trial designs. We assessed the influence of different outcome-data lags (0-105 days) on the performance of various multi-stage, adaptive trial designs (2/4 arms, with/without a common control, fixed/response-adaptive randomisation) with undesirable binary outcomes according to different inclusion rates (3.33/6.67/10 patients/day) under scenarios with no, small, and large differences. Simulations were conducted under a Bayesian framework, with constant stopping thresholds for superiority/inferiority calibrated to keep type-1 error rates at approximately 5%. We assessed multiple performance metrics, including mean sample sizes, event counts/probabilities, probabilities of conclusiveness, root mean squared errors (RMSEs) of the estimated effect in the selected arms, and RMSEs between the analyses at the time of stopping and the final analyses including data from all randomised patients. Performance metrics generally deteriorated when the proportions of randomised patients with available data were smaller due to longer outcome-data lags or faster inclusion, that is, mean sample sizes, event counts/probabilities, and RMSEs were larger, while the probabilities of conclusiveness were lower. Performance metric impairments with outcome-data lags ≤45 days were relatively smaller compared to those occurring with ≥60 days of lag. For most metrics, the effects of different outcome-data lags and lower proportions of randomised patients with available data were larger than those of different design choices, for example, the use of fixed versus response-adaptive randomisation. Increased outcome-data lag substantially affected the performance of adaptive trial designs. Trialists should consider the effects of outcome-data lags when planning adaptive trials.

AB - Different combined outcome-data lags (follow-up durations plus data-collection lags) may affect the performance of adaptive clinical trial designs. We assessed the influence of different outcome-data lags (0-105 days) on the performance of various multi-stage, adaptive trial designs (2/4 arms, with/without a common control, fixed/response-adaptive randomisation) with undesirable binary outcomes according to different inclusion rates (3.33/6.67/10 patients/day) under scenarios with no, small, and large differences. Simulations were conducted under a Bayesian framework, with constant stopping thresholds for superiority/inferiority calibrated to keep type-1 error rates at approximately 5%. We assessed multiple performance metrics, including mean sample sizes, event counts/probabilities, probabilities of conclusiveness, root mean squared errors (RMSEs) of the estimated effect in the selected arms, and RMSEs between the analyses at the time of stopping and the final analyses including data from all randomised patients. Performance metrics generally deteriorated when the proportions of randomised patients with available data were smaller due to longer outcome-data lags or faster inclusion, that is, mean sample sizes, event counts/probabilities, and RMSEs were larger, while the probabilities of conclusiveness were lower. Performance metric impairments with outcome-data lags ≤45 days were relatively smaller compared to those occurring with ≥60 days of lag. For most metrics, the effects of different outcome-data lags and lower proportions of randomised patients with available data were larger than those of different design choices, for example, the use of fixed versus response-adaptive randomisation. Increased outcome-data lag substantially affected the performance of adaptive trial designs. Trialists should consider the effects of outcome-data lags when planning adaptive trials.

U2 - 10.1002/pst.2342

DO - 10.1002/pst.2342

M3 - Journal article

C2 - 37837271

VL - 23

SP - 138

EP - 150

JO - Pharmaceutical Statistics

JF - Pharmaceutical Statistics

SN - 1539-1604

IS - 2

ER -

ID: 370072551