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HCNN: Heterogeneous Convolutional Neural Networks for Comorbid Risk Prediction with Electronic Health Records

机译:HCNN:用于电子病历的共病风险预测的异构卷积神经网络

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The increasing adoption of electronic health record (EHR) systems has brought tremendous opportunities in medicine enabling more personalized prognostic models. However, most work to date has investigated the binary classification problem for predicting the onset of one chronic disease, but little attention has been given to assessing risk of developing comorbidities that are major causes of morbidity and mortality. For example, type 2 diabetes and chronic kidney disease frequently accompany congestive heart failure. This paper is motivated by the problem of predicting comorbid diseases and aims to answer the following question: can we predict the comorbid risk using a patient's medical history? We propose a new predictive learning framework, Heterogeneous Convolutional Neural Network (HCNN), that represents EHRs as graphs with heterogeneous attributes (e.g. diagnoses, procedures, and medication), and then develop a novel deep learning methodology for risk prediction of multiple comorbid diseases. The main innovation of the framework is that it defines the distance between the heterogeneous attributes of the graph representation extracted from the EHR and develops an appropriate learning infrastructure that is a composition of sparse convolutional layers and local pooling steps that match with the local structure of the space of the heterogeneous attributes. As a result, the new method is capable of capturing features about the relationships between heterogeneous attributes of the graphs. Through a comparative study on patient EHR data, HCNN achieves better performance than traditional convolutional neural networks on the risk prediction of comorbid diseases.
机译:电子健康记录(EHR)系统的采用日趋广泛,为医学界带来了巨大的机遇,从而可以实现更加个性化的预后模型。然而,迄今为止,大多数工作已经研究了用于预测一种慢性疾病发作的二元分类问题,但很少注意评估发展为合并症的发病率和死亡率的合并症的风险。例如,2型糖尿病和慢性肾脏疾病经常伴随充血性心力衰竭。本文是基于预测合并症的问题,旨在回答以下问题:我们可以利用患者的病史来预测合并症的风险吗?我们提出了一种新的预测学习框架-异构卷积神经网络(HCNN),该EHR以具有不同属性(例如诊断,程序和药物)的图形表示EHR,然后开发一种新颖的深度学习方法来预测多种合并症。该框架的主要创新之处在于,它定义了从EHR中提取的图形表示形式的异构属性之间的距离,并开发了一种适当的学习基础结构,该结构由稀疏卷积层和与该局部结构相匹配的局部合并步骤组成。异构属性的空间。结果,新方法能够捕获关于图形的异构属性之间的关系的特征。通过对患者EHR数据的比较研究,HCNN在合并症的风险预测方面取得了优于传统卷积神经网络的性能。

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