2 results match your criteria: "School of Business and Cox Associates[Affiliation]"
Glob Epidemiol
November 2021
University of Colorado School of Business and Cox Associates, 503 N. Franklin Street, Denver, CO 80218, USA.
Population attributable fraction (PAF), probability of causation, burden of disease, and related quantities derived from relative risk ratios are widely used in applied epidemiology and health risk analysis to quantify the extent to which reducing or eliminating exposures would reduce disease risks. This causal interpretation conflates association with causation. It has sometimes led to demonstrably mistaken predictions and ineffective risk management recommendations.
View Article and Find Full Text PDFGlob Epidemiol
November 2021
University of Colorado, School of Business and Cox Associates, 503 N. Franklin Street, Denver, CO 80218, USA.
We argue that population attributable fractions, probabilities of causation, burdens of disease, and similar association-based measures often do not provide valid estimates or surrogates for the fraction or number of disease cases that would be prevented by eliminating or reducing an exposure because their calculations do not include crucial mechanistic information. We use a thought experiment with a cascade of dominos to illustrate the need for mechanistic information when answering questions about how changing exposures changes risk. We suggest that modern methods of causal artificial intelligence (CAI) can fill this gap: they can complement and extend traditional epidemiological attribution calculations to provide information useful for risk management decisions.
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