Using machine learning to identify quality-of-care predictors for emergency caesarean sections: A retrospective cohort study

Betina Ristorp Andersen, Ida Ammitzbøll, Jesper Hinrich, Sune Lehmann, Charlotte Vibeke Ringsted, Ellen Christine Leth Løkkegaard*, Martin G. Tolsgaard

*Corresponding author for this work

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Computer Science

Psychology

Medicine and Dentistry

Nursing and Health Professions

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