Nested exposure case-control sampling: a sampling scheme to analyze rare time-dependent exposures |
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Authors: | Feifel Jan Gebauer Madlen Schumacher Martin Beyersmann Jan |
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Affiliation: | 1.Ulm University, Helmholtzstrasse 20, 89081, Ulm, Germany ;2.University Medical Center Freiburg, Stefan-Meier-Stra?e 26, 79104, Freiburg, Germany ; |
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Abstract: | For large cohort studies with rare outcomes, the nested case-control design only requires data collection of small subsets of the individuals at risk. These are typically randomly sampled at the observed event times and a weighted, stratified analysis takes over the role of the full cohort analysis. Motivated by observational studies on the impact of hospital-acquired infection on hospital stay outcome, we are interested in situations, where not necessarily the outcome is rare, but time-dependent exposure such as the occurrence of an adverse event or disease progression is. Using the counting process formulation of general nested case-control designs, we propose three sampling schemes where not all commonly observed outcomes need to be included in the analysis. Rather, inclusion probabilities may be time-dependent and may even depend on the past sampling and exposure history. A bootstrap analysis of a full cohort data set from hospital epidemiology allows us to investigate the practical utility of the proposed sampling schemes in comparison to a full cohort analysis and a too simple application of the nested case-control design, if the outcome is not rare. |
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