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  • Summary of "COVID-19 infection and death rates: the need to incorporate causal explanations for the data and avoid bias in testing"

  • How Causal model (Bayesian Network) can better explain CFR

  • Potential causes of the differences in death rates

Reference

Causal model for the COVID-19 infected and death rates

Figure 1. Causal Bayesian network model for learning population COVID-19 infected and death rates.

Image 0

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Updated 2020-04-28

Contributors are:

yuko lopez
yuko lopez
🏆 1

Who are from:

University of Michigan - Ann Arbor
University of Michigan - Ann Arbor
🏆 1

References


  • COVID-19 infection and death rates: the need to incorporate causal explanations for the data and avoid bias in testing

Tags

SARS-CoV-2 (COVID-19)

Biomedical Sciences

Related
  • CFR of COVID-19 may be misleading

  • Causal model for the COVID-19 infected and death rates

  • How Causal model (Bayesian Network) can better explain CFR

  • Potential causes of the differences in death rates

  • Causal model for the COVID-19 infected and death rates

  • Causal model for the COVID-19 infected and death rates

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