Predicting childhood obesity using electronic health records and publicly available data.
Robert HammondRodoniki AthanasiadouSilvia CuradoYindalon AphinyanaphongsCourtney AbramsMary Jo MessitoRachel GrossMichelle Weiss KatzowMelanie JayNarges RazavianBrian D ElbelPublished in: PloS one (2019)
We were able to predict obesity at age five using EHR data with an AUC comparable to cohort-based studies, reducing the need for investment in additional data collection. Our results suggest that machine learning approaches for predicting future childhood obesity using EHR data could improve the ability of clinicians and researchers to drive future policy, intervention design, and the decision-making process in a clinical setting.
Keyphrases
- electronic health record
- clinical decision support
- machine learning
- adverse drug
- big data
- decision making
- randomized controlled trial
- healthcare
- metabolic syndrome
- type diabetes
- mental health
- insulin resistance
- current status
- palliative care
- adipose tissue
- weight loss
- artificial intelligence
- physical activity
- body mass index
- skeletal muscle
- weight gain
- high fat diet induced