作者
Tamara M Dugan, S Mukhopadhyay, Aaron Carroll, Stephen Downs
发表日期
2015
期刊
Applied clinical informatics
卷号
6
期号
03
页码范围
506-520
出版商
Schattauer GmbH
简介
Objectives: This paper aims to predict childhood obesity after age two, using only data collected prior to the second birthday by a clinical decision support system called CHICA.
Methods: Analyses of six different machine learning methods: RandomTree, RandomForest, J48, ID3, Naïve Bayes, and Bayes trained on CHICA data show that an accurate, sensitive model can be created.
Results: Of the methods analyzed, the ID3 model trained on the CHICA dataset proved the best overall performance with accuracy of 85% and sensitivity of 89%. Additionally, the ID3 model had a positive predictive value of 84% and a negative predictive value of 88%. The structure of the tree also gives insight into the strongest predictors of future obesity in children. Many of the strongest predictors seen in the ID3 modeling of the CHICA dataset have been independently validated in the literature as correlated with obesity, thereby …
引用总数
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学术搜索中的文章
TM Dugan, S Mukhopadhyay, A Carroll, S Downs - Applied clinical informatics, 2015