Urban living in modern large cities has significant adverse effects on health, increasing the risk of several chronic diseases. We focus on the two leading clusters of chronic disease, heart disease and diabetes, and develop data-driven methods to predict hospitalizations due to these conditions. We base these predictions on the patients' medical history, recent and more distant, as described in their Electronic Health Records (EHR). We formulate the prediction problem as a binary classification problem and consider a variety of machine learning methods, including kernelized and sparse Support Vector Machines (SVM), sparse logistic regression, and random forests. To strike a balance between accuracy and interpretability of the prediction, which is important in a medical setting, we propose two novel methods: K-LRT, a likelihood ratio test-based method, and a Joint Clustering and Classification (JCC) method which identifies hidden patient clusters and adapts classifiers to each cluster. We develop theoretical out-of-sample guarantees for the latter method. We validate our algorithms on large datasets from the Boston Medical Center, the largest safety-net hospital system in New England.
Keyphrases
- electronic health record
- machine learning
- deep learning
- adverse drug
- healthcare
- clinical decision support
- artificial intelligence
- end stage renal disease
- big data
- public health
- type diabetes
- newly diagnosed
- chronic kidney disease
- ejection fraction
- cardiovascular disease
- case report
- neural network
- peritoneal dialysis
- mental health
- gene expression
- metabolic syndrome
- lymph node
- pulmonary hypertension
- acute care
- glycemic control
- adipose tissue