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Predicting Chronic Disease Hospitalizations from Electronic Health Records: An Interpretable Classification Approach

机译:从电子病历预测慢性病住院:一种可解释的分类方法

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摘要

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.
机译:现代大城市中的城市生活对健康产生重大不利影响,增加了几种慢性疾病的风险。我们专注于慢性病,心脏病和糖尿病这两个主要方面,并开发数据驱动的方法来预测由于这些情况而导致的住院治疗。我们根据患者的电子病历(EHR)中的描述,根据近期和更远的病史对这些预测做出预测。我们将预测问题表述为二进制分类问题,并考虑各种机器学习方法,包括核化和稀疏支持向量机(SVM),稀疏逻辑回归和随机森林。为了在准确度和可解释性之间取得平衡,这在医疗环境中很重要,我们提出了两种新颖的方法:K-LRT,一种基于似然比检验的方法以及一种联合聚类和分类(JCC)方法,用于识别隐藏的患者群,并使分类器适应每个群。我们为后一种方法开发了理论上的样本外保证。我们在来自新英格兰最大的安全网医院系统波士顿医学中心的大型数据集上验证了我们的算法。

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