Temporality-driven covariate classification had limited impact on: the specification of directed acyclic graphs (DAGs) by 85 novice analysts (medical undergraduates); or the risk of bias in DAG-informed multivariable models designed to generate causal inference from observational data. Only 71 students (83.5%) managed to complete the “Temporality-driven Covariate Classification” task, and fewer still completed the “DAG Specification” task (77.6%) or both tasks in succession (68.2%). Most students who completed the first task misclassified at least one covariate (84.5%), and misclassification rates were even higher among students who specified a DAG (92.4%). Nonetheless, across the 512 and 517 covariates considered by each of these tasks, “confounders” were far less likely to be misclassified (11/252, 4.4% and 8/261, 3.1%) than “mediators” (70/123, 56.9% and 56/115, 48.7%) or “competing exposures” (93/137, 67.9% and 86/138, 62.3%), respectively. Since estimates of total causal effects are biased in multivariable models that: fail to adjust for “confounders”; or adjust for “mediators” (or “consequences of the outcome”) misclassified as “confounders” or “competing exposures,” a substantial proportion of any models informed by the present study’s DAGs would have generated biased estimates of total causal effects (50/66, 76.8%); and this would have only been slightly lower for models informed by temporality-driven covariate classification alone (47/71, 66.2%). Supplementary materials for this article are available online.
CITATION STYLE
Ellison, G. T. H. (2021). Might Temporal Logic Improve the Specification of Directed Acyclic Graphs (DAGs)? Journal of Statistics and Data Science Education, 29(2), 202–213. https://doi.org/10.1080/26939169.2021.1936311
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