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Main Authors: Bell, James, Drury, Thomas, Mütze, Tobias, Pipper, Christian Bressen, Guizzaro, Lorenzo, Mitroiu, Marian, Rantell, Khadija Rerhou, Wolbers, Marcel, Wright, David
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.12850
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author Bell, James
Drury, Thomas
Mütze, Tobias
Pipper, Christian Bressen
Guizzaro, Lorenzo
Mitroiu, Marian
Rantell, Khadija Rerhou
Wolbers, Marcel
Wright, David
author_facet Bell, James
Drury, Thomas
Mütze, Tobias
Pipper, Christian Bressen
Guizzaro, Lorenzo
Mitroiu, Marian
Rantell, Khadija Rerhou
Wolbers, Marcel
Wright, David
contents Estimands using the treatment policy strategy for addressing intercurrent events are common in Phase III clinical trials. One estimation approach for this strategy is retrieved dropout whereby observed data following an intercurrent event are used to multiply impute missing data. However, such methods have had issues with variance inflation and model fitting due to data sparsity. This paper introduces likelihood-based versions of these approaches, investigating and comparing their statistical properties to the existing retrieved dropout approaches, simpler analysis models and reference-based multiple imputation. We use a simulation based upon the data from the PIONEER 1 Phase III clinical trial in Type II diabetics to present complex and relevant estimation challenges. The likelihood-based methods display similar statistical properties to their multiple imputation equivalents, but all retrieved dropout approaches suffer from high variance. Retrieved dropout approaches appear less biased than reference-based approaches, resulting in a bias-variance trade-off, but we conclude that the large degree of variance inflation is often more problematic than the bias. Therefore, only the simpler retrieved dropout models appear appropriate as a primary analysis in a clinical trial, and only where it is believed most data following intercurrent events will be observed. The jump-to-reference approach may represent a more promising estimation approach for symptomatic treatments due to its relatively high power and ability to fit in the presence of much missing data, despite its strong assumptions and tendency towards conservative bias. More research is needed to further develop how to estimate the treatment effect for a treatment policy strategy.
format Preprint
id arxiv_https___arxiv_org_abs_2402_12850
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Estimation methods for estimands using the treatment policy strategy; a simulation study based on the PIONEER 1 Trial
Bell, James
Drury, Thomas
Mütze, Tobias
Pipper, Christian Bressen
Guizzaro, Lorenzo
Mitroiu, Marian
Rantell, Khadija Rerhou
Wolbers, Marcel
Wright, David
Applications
Estimands using the treatment policy strategy for addressing intercurrent events are common in Phase III clinical trials. One estimation approach for this strategy is retrieved dropout whereby observed data following an intercurrent event are used to multiply impute missing data. However, such methods have had issues with variance inflation and model fitting due to data sparsity. This paper introduces likelihood-based versions of these approaches, investigating and comparing their statistical properties to the existing retrieved dropout approaches, simpler analysis models and reference-based multiple imputation. We use a simulation based upon the data from the PIONEER 1 Phase III clinical trial in Type II diabetics to present complex and relevant estimation challenges. The likelihood-based methods display similar statistical properties to their multiple imputation equivalents, but all retrieved dropout approaches suffer from high variance. Retrieved dropout approaches appear less biased than reference-based approaches, resulting in a bias-variance trade-off, but we conclude that the large degree of variance inflation is often more problematic than the bias. Therefore, only the simpler retrieved dropout models appear appropriate as a primary analysis in a clinical trial, and only where it is believed most data following intercurrent events will be observed. The jump-to-reference approach may represent a more promising estimation approach for symptomatic treatments due to its relatively high power and ability to fit in the presence of much missing data, despite its strong assumptions and tendency towards conservative bias. More research is needed to further develop how to estimate the treatment effect for a treatment policy strategy.
title Estimation methods for estimands using the treatment policy strategy; a simulation study based on the PIONEER 1 Trial
topic Applications
url https://arxiv.org/abs/2402.12850