Prediction of early childhood obesity with machine learning and electronic health record data

被引:24
|
作者
Pang, Xueqin [1 ]
Forrest, Christopher B. [2 ,3 ]
Le-Scherban, Felice [4 ,5 ]
Masino, Aaron J. [1 ,3 ]
机构
[1] Childrens Hosp Philadelphia, Dept Biomed & Hlth Informat, 2716 South St, Philadelphia, PA 19104 USA
[2] Childrens Hosp Philadelphia, Appl Clin Res Ctr, Philadelphia, PA 19104 USA
[3] Univ Penn, Perelman Sch Med, Dept Anesthesiol & Crit Care Med, Philadelphia, PA 19104 USA
[4] Drexel Univ, Dornsife Sch Publ Hlth, Dept Epidemiol & Biostat, Philadelphia, PA USA
[5] Drexel Univ, Drexel Urban Hlth Collaborat, Philadelphia, PA USA
关键词
Data quality control; Early childhood obesity; Electronic health record; Machine learning; Prediction; RACIAL/ETHNIC DISPARITIES; MULTIVARIATE DATA; ENVIRONMENT; OVERWEIGHT; ADULTHOOD; WEIGHT; VALUES; NHANES; CARE;
D O I
10.1016/j.ijmedinf.2021.104454
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objective: This study compares seven machine learning models developed to predict childhood obesity from age > 2 to <= 7 years using Electronic Healthcare Record (EHR) data up to age 2 years. Materials and methods: EHR data from of 860,510 patients with 11,194,579 healthcare encounters were obtained from the Children's Hospital of Philadelphia. After applying stringent quality control to remove implausible growth values and including only individuals with all recommended wellness visits by age 7 years, 27,203 (50.78 % male) patients remained for model development. Seven machine learning models were developed to predict obesity incidence as defined by the Centers for Disease Control and Prevention (age/sex adjusted BMI>95th percentile). Model performance was evaluated by multiple standard classifier metrics and the differences among seven models were compared using the Cochran's Q test and post-hoc pairwise testing. Results: XGBoost yielded 0.81 (0.001) AUC, which outperformed all other models. It also achieved statistically significant better performance than all other models on standard classifier metrics (sensitivity fixed at 80 %): precision 30.90 % (0.22 %), F1-socre 44.60 % (0.26 %), accuracy 66.14 % (0.41 %), and specificity 63.27 % (0.41 %). Discussion and conclusion: Early childhood obesity prediction models were developed from the largest cohort reported to date. Relative to prior research, our models generalize to include males and females in a single model and extend the time frame for obesity incidence prediction to 7 years of age. The presented machine learning model development workflow can be adapted to various EHR-based studies and may be valuable for developing other clinical prediction models.
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页数:8
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