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The obesity paradox in critically ill patients: a causal learning approach to a casual finding

59

Citations

21

References

2020

Year

Abstract

A causal inference approach that is robust to residual confounding bias due to model misspecification and selection bias due to missing (at random) data mitigates the obesity paradox observed in critically ill patients, whereas a traditional approach results in even more paradoxical findings. The robust approach does not provide evidence that the survival of non-obese critically ill patients would have been improved if they had been obese.

References

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