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Building a better machine learning model of extubation for neurocritical care patients

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A Correspondence to this article was published on 07 December 2022

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References

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Correspondence to Shohei Ono.

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Ono, S. Building a better machine learning model of extubation for neurocritical care patients. Intensive Care Med 49, 119–120 (2023). https://doi.org/10.1007/s00134-022-06922-8

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