0000000001157606

AUTHOR

Dongying Zheng

showing 1 related works from this author

Comparison of machine learning and logistic regression as predictive models for adverse maternal and neonatal outcomes of preeclampsia: A retrospecti…

2022

IntroductionPreeclampsia, one of the leading causes of maternal and fetal morbidity and mortality, demands accurate predictive models for the lack of effective treatment. Predictive models based on machine learning algorithms demonstrate promising potential, while there is a controversial discussion about whether machine learning methods should be recommended preferably, compared to traditional statistical models.MethodsWe employed both logistic regression and six machine learning methods as binary predictive models for a dataset containing 733 women diagnosed with preeclampsia. Participants were grouped by four different pregnancy outcomes. After the imputation of missing values, statistic…

mallintaminenlogistic regressionretrospective studyäitiyshuoltoadverse outcomesraskauspredictive modelsneonatalraskausmyrkytysmaternalregressioanalyysimachine learningkoneoppiminenpre-eklampsiapre-eclampsia (PE)ennustettavuussairaudetCardiology and Cardiovascular MedicineFrontiers in Cardiovascular Medicine
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