Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses

In clinical studies, multiple comparisons of several treatments to a control with ordered categorical responses are often encountered. A popular statistical approach to analyzing the data is to use the logistic regression model with the proportional odds assumption. As discussed in several recent re...

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Main Authors: LIN, Yueqiong, KWONG, Koon Shing, CHEUNG, Siu Hung, POON, Wai Yin
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Language:English
Published: Institutional Knowledge at Singapore Management University 2014
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Online Access:https://ink.library.smu.edu.sg/soe_research/1652
https://doi.org/10.1002/sim.6190
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spelling sg-smu-ink.soe_research-26512020-01-27T08:59:45Z Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses LIN, Yueqiong KWONG, Koon Shing CHEUNG, Siu Hung POON, Wai Yin In clinical studies, multiple comparisons of several treatments to a control with ordered categorical responses are often encountered. A popular statistical approach to analyzing the data is to use the logistic regression model with the proportional odds assumption. As discussed in several recent research papers, if the proportional odds assumption fails to hold, the undesirable consequence of an inflated familywise type I error rate may affect the validity of the clinical findings. To remedy the problem, a more flexible approach that uses the latent normal model with single‐step and stepwise testing procedures has been recently proposed. In this paper, we introduce a step‐up procedure that uses the correlation structure of test statistics under the latent normal model. A simulation study demonstrates the superiority of the proposed procedure to all existing testing procedures. Based on the proposed step‐up procedure, we derive an algorithm that enables the determination of the total sample size and the sample size allocation scheme with a pre‐determined level of test power before the onset of a clinical trial. A clinical example is presented to illustrate our proposed method. 2014-09-01T07:00:00Z text https://ink.library.smu.edu.sg/soe_research/1652 info:doi/10.1002/sim.6190 https://doi.org/10.1002/sim.6190 Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University familywise error rate latent normal variable model ordered categorical response sample size determination Econometrics Economics Medicine and Health Sciences
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic familywise error rate
latent normal variable model
ordered categorical response
sample size determination
Econometrics
Economics
Medicine and Health Sciences
spellingShingle familywise error rate
latent normal variable model
ordered categorical response
sample size determination
Econometrics
Economics
Medicine and Health Sciences
LIN, Yueqiong
KWONG, Koon Shing
CHEUNG, Siu Hung
POON, Wai Yin
Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
description In clinical studies, multiple comparisons of several treatments to a control with ordered categorical responses are often encountered. A popular statistical approach to analyzing the data is to use the logistic regression model with the proportional odds assumption. As discussed in several recent research papers, if the proportional odds assumption fails to hold, the undesirable consequence of an inflated familywise type I error rate may affect the validity of the clinical findings. To remedy the problem, a more flexible approach that uses the latent normal model with single‐step and stepwise testing procedures has been recently proposed. In this paper, we introduce a step‐up procedure that uses the correlation structure of test statistics under the latent normal model. A simulation study demonstrates the superiority of the proposed procedure to all existing testing procedures. Based on the proposed step‐up procedure, we derive an algorithm that enables the determination of the total sample size and the sample size allocation scheme with a pre‐determined level of test power before the onset of a clinical trial. A clinical example is presented to illustrate our proposed method.
format text
author LIN, Yueqiong
KWONG, Koon Shing
CHEUNG, Siu Hung
POON, Wai Yin
author_facet LIN, Yueqiong
KWONG, Koon Shing
CHEUNG, Siu Hung
POON, Wai Yin
author_sort LIN, Yueqiong
title Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
title_short Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
title_full Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
title_fullStr Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
title_full_unstemmed Step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
title_sort step-up testing procedure for multiple comparisons with a control for a latent variable model with ordered categorical responses
publisher Institutional Knowledge at Singapore Management University
publishDate 2014
url https://ink.library.smu.edu.sg/soe_research/1652
https://doi.org/10.1002/sim.6190
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