Literature DB >> 16279288

The effect of correlation structure on treatment contrasts estimated from incomplete clinical trial data with likelihood-based repeated measures compared with last observation carried forward ANOVA.

Craig H Mallinckrodt1, Christopher J Kaiser, John G Watkin, Geert Molenberghs, Raymond J Carroll.   

Abstract

Valid analyses of longitudinal data can be problematic, particularly when subjects dropout prior to completing the trial for reasons related to the outcome. Regulatory agencies often favor the last observation carried forward (LOCF) approach for imputing missing values in the primary analysis of clinical trials. However, recent evidence suggests that likelihood-based analyses developed under the missing at random framework provide viable alternatives. The within-subject error correlation structure is often the means by which such methods account for the bias from missing data. The objective of this study was to extend previous work that used only one correlation structure by including several common correlation structures in order to assess the effect of the correlation structure in the data, and how it is modeled, on Type I error rates and power from a likelihood-based repeated measures analysis (MMRM), using LOCF for comparison. Data from four realistic clinical trial scenarios were simulated using autoregressive, compound symmetric and unstructured correlation structures. When the correct correlation structure was fit, MMRM provided better control of Type I error and power than LOCF. Although misfitting the correlation structure in MMRM inflated Type I error and altered power, misfitting the structure was typically less deleterious than using LOCF. In fact, simply specifying an unstructured matrix for use in MMRM, regardless of the true correlation structure, yielded superior control of Type I error than LOCF in every scenario. The present and previous investigations have shown that the bias in LOCF is influenced by several factors and interactions between them. Hence, it is difficult to precisely anticipate the direction and magnitude of bias from LOCF in practical situations. However, in scenarios where the overall tendency is for patient improvement, LOCF tends to: 1) overestimate a drug's advantage when dropout is higher in the comparator and underestimate the advantage when dropout is lower in the comparator; 2) overestimate a drug's advantage when the advantage is maximum at intermediate time points and underestimate the advantage when the advantage increases over time; and 3) have a greater likelihood of overestimating a drug's advantage when the advantage is small. In scenarios in which the overall tendency is for patient worsening, the above biases are reversed. In the simulation scenarios considered in this study, which were patterned after acute phase neuropsychiatric clinical trials, the likelihood-based repeated measures approach, implemented with standard software, was more robust to the bias from missing data than LOCF, and choice of correlation structure was not an impediment to its implementation.

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Year:  2004        PMID: 16279288     DOI: 10.1191/1740774504cn049oa

Source DB:  PubMed          Journal:  Clin Trials        ISSN: 1740-7745            Impact factor:   2.486


  27 in total

1.  Structural models describing placebo treatment effects in schizophrenia and other neuropsychiatric disorders.

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Review 2.  Modelling and simulation of placebo effect: application to drug development in schizophrenia.

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3.  The Illness Density Index (IDI): A longitudinal measure of treatment efficacy.

Authors:  Mary E Kelley; Alexandre R Franco; Helen S Mayberg; Paul E Holtzheimer
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5.  Impact of a community-based lifestyle intervention program on health-related quality of life.

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6.  The efficacy of duloxetine: a comprehensive summary of results from MMRM and LOCF_ANCOVA in eight clinical trials.

Authors:  Craig H Mallinckrodt; Joel Raskin; Madelaine M Wohlreich; John G Watkin; Michael J Detke
Journal:  BMC Psychiatry       Date:  2004-09-08       Impact factor: 3.630

7.  Effectiveness of the Stepping Stones Triple P Group Parenting Program as an Additional Intervention in the Treatment of Autism Spectrum Disorders: Effects on Parenting Variables.

Authors:  Bastian Schrott; Daria Kasperzack; Linda Weber; Katja Becker; Roland Burghardt; Inge Kamp-Becker
Journal:  J Autism Dev Disord       Date:  2019-03

8.  Antidepressant medication and executive dysfunction: a deleterious interaction in late-life depression.

Authors:  Joel R Sneed; Michelle E Culang; John G Keilp; Bret R Rutherford; Davangere P Devanand; Steven P Roose
Journal:  Am J Geriatr Psychiatry       Date:  2010-02       Impact factor: 4.105

9.  Efficacy of duloxetine for the treatment of generalized anxiety disorder: implications for primary care physicians.

Authors:  Hannu Koponen; Christer Allgulander; Janelle Erickson; Eduardo Dunayevich; Yili Pritchett; Michael J Detke; Susan G Ball; James M Russell
Journal:  Prim Care Companion J Clin Psychiatry       Date:  2007

10.  The impact of analytic method on interpretation of outcomes in longitudinal clinical trials.

Authors:  A Prakash; R C Risser; C H Mallinckrodt
Journal:  Int J Clin Pract       Date:  2008-06-28       Impact factor: 2.503

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