Autostrata: Improved Automatic Stratification for Coarsened Exact Matching
Sammendrag
We commonly adjust for confounding factors in analytical observational epidemiologyto reduce biases that distort the results. Stratification and matching are standard methods for reducing confounder bias. Coarsened exact matching (CEM) is a recent method using stratification to coarsen variables into categorical variables to enable exact matching of exposed and nonexposed subjects. CEM’s standard approach to stratifying variables is histogram binning. However, histogram binning creates strata of uniformwidths and does not distinguish between exposed and nonexposed. We present Autostrata, a novel algorithmic approach to stratification producing improved results in CEM and providing more control to the researcher.
Er en del av
Arnes, J.I. (2024). Toward a Collaborative Platform for Hybrid Designs Sharing a Common Cohort. (Doctoral thesis). https://hdl.handle.net/10037/32243.Forlag
Linköping University Electronic Press, SwedenSitering
Arnes JI, Hapfelmeier A, Horsch A: Autostrata: Improved Automatic Stratification for Coarsened Exact Matching. In: Henriksen A, Gabarron E, Vimarlund V. Proceedings of the 18th Scandinavian Conference on Health Informatics, 2022. Linköping Electronic Conference Proceedings p. 179-186Metadata
Vis full innførselSamlinger
Copyright 2022 The Author(s)