Quantile regression in the presence of monotone missingness with sensitivity analysis

Models, Statistical Data Interpretation, Statistical Weight Loss Humans Regression Analysis 0101 mathematics 01 natural sciences Randomized Controlled Trials as Topic
DOI: 10.1093/biostatistics/kxv023 Publication Date: 2015-06-04T04:17:21Z
ABSTRACT
AbstractIn this paper, we develop methods for longitudinal quantile regression when there is monotone missingness. In particular, we propose pattern mixture models with a constraint that provides a straightforward interpretation of the marginal quantile regression parameters. Our approach allows sensitivity analysis which is an essential component in inference for incomplete data. To facilitate computation of the likelihood, we propose a novel way to obtain analytic forms for the required integrals. We conduct simulations to examine the robustness of our approach to modeling assumptions and compare its performance to competing approaches. The model is applied to data from a recent clinical trial on weight management.
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