KerPrint: Local-Global Knowledge Graph Enhanced Diagnosis Prediction for Retrospective and Prospective Interpretations

Kai Yang, Yongxin Xu, Peinie Zou, Hongxin Ding, Junfeng Zhao, Yasha Wang, Bing Xie
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引用次数: 1

Abstract

While recent developments of deep learning models have led to record-breaking achievements in many areas, the lack of sufficient interpretation remains a problem for many specific applications, such as the diagnosis prediction task in healthcare. The previous knowledge graph(KG) enhanced approaches mainly focus on learning clinically meaningful representations, the importance of medical concepts, and even the knowledge paths from inputs to labels. However, it is infeasible to interpret the diagnosis prediction, which needs to consider different medical concepts, various medical relationships, and the time-effectiveness of knowledge triples in different patient contexts. More importantly, the retrospective and prospective interpretations of disease processes are valuable to clinicians for the patients' confounding diseases. We propose KerPrint, a novel KG enhanced approach for retrospective and prospective interpretations to tackle these problems. Specifically, we propose a time-aware KG attention method to solve the problem of knowledge decay over time for trustworthy retrospective interpretation. We also propose a novel element-wise attention method to select candidate global knowledge using comprehensive representations from the local KG for prospective interpretation. We validate the effectiveness of our KerPrint through an extensive experimental study on a real-world dataset and a public dataset. The results show that our proposed approach not only achieves significant improvement over knowledge-enhanced methods but also gives the interpretability of diagnosis prediction in both retrospective and prospective views.
KerPrint:局部-全局知识图增强的回顾性和前瞻性解释诊断预测
虽然深度学习模型的最新发展在许多领域取得了破纪录的成就,但缺乏足够的解释仍然是许多特定应用的问题,例如医疗保健中的诊断预测任务。以往的知识图(KG)增强方法主要集中在学习临床有意义的表示,医学概念的重要性,甚至从输入到标签的知识路径。然而,对诊断预测进行解释是不可实现的,这需要考虑不同的医学概念、各种医学关系以及不同患者情境下知识三元组的时效性。更重要的是,对疾病过程的回顾性和前瞻性解释对临床医生对患者的混杂疾病是有价值的。我们提出KerPrint,一种新的KG增强方法,用于回顾性和前瞻性解释来解决这些问题。具体来说,我们提出了一种时间感知的KG注意方法来解决知识随时间衰减的问题,以实现可信的回顾性解释。我们还提出了一种新的元素智能关注方法,利用局部KG的综合表示来选择候选全局知识进行前瞻性解释。我们通过对真实数据集和公共数据集的广泛实验研究验证了KerPrint的有效性。结果表明,我们提出的方法不仅比知识增强的方法有了显著的改进,而且在回顾性和前瞻性方面都具有诊断预测的可解释性。
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