GRAM: Graph-based Attention Model for Healthcare Representation Learning.

Edward Choi, Mohammad Taha Bahadori, Le Song, Walter F Stewart, Jimeng Sun
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Abstract

Deep learning methods exhibit promising performance for predictive modeling in healthcare, but two important challenges remain: Data insufficiency: Often in healthcare predictive modeling, the sample size is insufficient for deep learning methods to achieve satisfactory results.Interpretation: The representations learned by deep learning methods should align with medical knowledge. To address these challenges, we propose GRaph-based Attention Model (GRAM) that supplements electronic health records (EHR) with hierarchical information inherent to medical ontologies. Based on the data volume and the ontology structure, GRAM represents a medical concept as a combination of its ancestors in the ontology via an attention mechanism. We compared predictive performance (i.e. accuracy, data needs, interpretability) of GRAM to various methods including the recurrent neural network (RNN) in two sequential diagnoses prediction tasks and one heart failure prediction task. Compared to the basic RNN, GRAM achieved 10% higher accuracy for predicting diseases rarely observed in the training data and 3% improved area under the ROC curve for predicting heart failure using an order of magnitude less training data. Additionally, unlike other methods, the medical concept representations learned by GRAM are well aligned with the medical ontology. Finally, GRAM exhibits intuitive attention behaviors by adaptively generalizing to higher level concepts when facing data insufficiency at the lower level concepts.

Abstract Image

Abstract Image

基于图的医疗表征学习注意模型。
深度学习方法在医疗保健预测建模方面表现出良好的性能,但仍然存在两个重要的挑战:数据不足:通常在医疗保健预测建模中,样本量不足以使深度学习方法获得令人满意的结果。解释:通过深度学习方法学习的表征应该与医学知识保持一致。为了解决这些挑战,我们提出了基于图的注意力模型(GRAM),该模型用医学本体固有的分层信息补充电子健康记录(EHR)。GRAM基于数据量和本体结构,通过注意机制将医学概念表示为其祖先在本体中的组合。我们在两个顺序诊断预测任务和一个心力衰竭预测任务中比较了GRAM与包括循环神经网络(RNN)在内的各种方法的预测性能(即准确性,数据需求,可解释性)。与基本RNN相比,GRAM在预测训练数据中很少观察到的疾病方面的准确率提高了10%,在使用更少的训练数据预测心力衰竭时,ROC曲线下的面积提高了3%。此外,与其他方法不同,GRAM学习的医学概念表示与医学本体很好地对齐。最后,GRAM在面对较低层次概念的数据不足时,通过自适应泛化到更高层次的概念,表现出直观的注意行为。
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