2017
DOI: 10.1002/pst.1799
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Analyzing multiple endpoints in a confirmatory randomized clinical trial—an approach that addresses stratification, missing values, baseline imbalance and multiplicity for strictly ordinal outcomes

Abstract: Confirmatory randomized clinical trials with a stratified design may have ordinal response outcomes, ie, either ordered categories or continuous determinations that are not compatible with an interval scale. Also, multiple endpoints are often collected when 1 single endpoint does not represent the overall efficacy of the treatment. In addition, random baseline imbalances and missing values can add another layer of difficulty in the analysis plan. Therefore, the development of an approach that provides a consol… Show more

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Cited by 3 publications
(2 citation statements)
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References 19 publications
(44 reference statements)
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“…Please note here the difference of the two means is tested. One may also consider testing the probability of better outcome for one treatment than the other, 12 or fitting a logistic regression to compare the binary variable of the SHS change being less than or equal to 0. el , H el , and H s at the interim and final, respectively. Table 1 shows possible sets of nominal significance levels at the interim and final safety tests.…”
Section: Designmentioning
confidence: 99%
See 1 more Smart Citation
“…Please note here the difference of the two means is tested. One may also consider testing the probability of better outcome for one treatment than the other, 12 or fitting a logistic regression to compare the binary variable of the SHS change being less than or equal to 0. el , H el , and H s at the interim and final, respectively. Table 1 shows possible sets of nominal significance levels at the interim and final safety tests.…”
Section: Designmentioning
confidence: 99%
“…Please note here the difference of the two means is tested. One may also consider testing the probability of better outcome for one treatment than the other, 12 or fitting a logistic regression to compare the binary variable of the SHS change being less than or equal to 0.…”
Section: Example/applicationmentioning
confidence: 99%