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Modulators of systemic inflammatory response syndrome presence in patients admitted to intensive care units with acute infection: a Bayesian network approach

Fernando G. Zampieri| Fernanda J. Aguiar| Fernando A. Bozza| Jorge I. F. Salluh| Marcio Soares
Letter
Online First ™ - March , 2019

Pages 1 - 3

No abstract available.

References

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  3. Scutari M (2010) Learning Bayesian Networks with the bnlearn R Package. J Stat Softw 35(3):1–22
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