Testing for qualitative interaction of multiple sources of informative dropout in longitudinal data |
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Authors: | Sara B. Crawford John J. Hanfelt |
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Affiliation: | 1. Department of Mathematics and Computer Science , Valparaiso University , Valparaiso, IN, USA;2. Department of Biostatistics and Bioinformatics , Rollins School of Public Health, Emory University , Atlanta, GA, USA |
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Abstract: | Longitudinal studies suffer from patient dropout. The dropout process may be informative if there exists an association between dropout patterns and the rate of change in the response over time. Multiple patterns are plausible in that different causes of dropout might contribute to different patterns. These multiple patterns can be dichotomized into two groups: quantitative and qualitative interaction. Quantitative interaction indicates that each of the multiple sources is biasing the estimate of the rate of change in the same direction, although with differing magnitudes. Alternatively, qualitative interaction results in the multiple sources biasing the estimate of the rate of change in opposing directions. Qualitative interaction is of special concern, since it is less likely to be detected by conventional methods and can lead to highly misleading slope estimates. We explore a test for qualitative interaction based on simultaneous confidence intervals. The test accommodates the realistic situation where reasons for dropout are not fully understood, or even entirely unknown. It allows for an additional level of clustering among participating subjects. We apply these methods to a study exploring tumor growth rates in mice as well as a longitudinal study exploring rates of change in cognitive functioning for Alzheimer's patients. |
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Keywords: | Alzheimer's disease clustered data qualitative interaction informative dropout integrated likelihood simultaneous confidence intervals finite mixture model |
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