KGDAL: Knowledge Graph Guided Double Attention LSTM for Rolling Mortality Prediction for AKI-D Patients.

Lucas Jing Liu, Victor Ortiz-Soriano, Javier A Neyra, Jin Chen
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引用次数: 3

Abstract

With the rapid accumulation of electronic health record (EHR) data, deep learning (DL) models have exhibited promising performance on patient risk prediction. Recent advances have also demonstrated the effectiveness of knowledge graphs (KG) in providing valuable prior knowledge for further improving DL model performance. However, it is still unclear how KG can be utilized to encode high-order relations among clinical concepts and how DL models can make full use of the encoded concept relations to solve real-world healthcare problems and to interpret the outcomes. We propose a novel knowledge graph guided double attention LSTM model named KGDAL for rolling mortality prediction for critically ill patients with acute kidney injury requiring dialysis (AKI-D). KGDAL constructs a KG-based two-dimension attention in both time and feature spaces. In the experiment with two large healthcare datasets, we compared KGDAL with a variety of rolling mortality prediction models and conducted an ablation study to test the effectiveness, efficacy, and contribution of different attention mechanisms. The results showed that KGDAL clearly outperformed all the compared models. Also, KGDAL-derived patient risk trajectories may assist healthcare providers to make timely decisions and actions. The source code, sample data, and manual of KGDAL are available at https://github.com/lucasliu0928/KGDAL.

Abstract Image

KGDAL:知识图谱引导双注意LSTM用于AKI-D患者滚动死亡率预测。
随着电子病历(EHR)数据的快速积累,深度学习(DL)模型在患者风险预测方面表现出了良好的性能。最近的进展也证明了知识图(KG)在为进一步提高深度学习模型性能提供有价值的先验知识方面的有效性。然而,KG如何用于编码临床概念之间的高阶关系,以及DL模型如何充分利用编码的概念关系来解决现实世界的医疗问题并解释结果,目前尚不清楚。我们提出了一种新的知识图谱引导的双注意LSTM模型KGDAL,用于预测急性肾损伤需要透析的危重患者(AKI-D)的滚动死亡率。KGDAL在时间和特征空间上构建了基于kg的二维注意力。在两个大型医疗数据集的实验中,我们将KGDAL与各种滚动死亡率预测模型进行了比较,并进行了消融研究,以测试不同注意机制的有效性、疗效和贡献。结果表明,KGDAL明显优于所有比较模型。此外,kgdal衍生的患者风险轨迹可以帮助医疗保健提供者及时做出决策和采取行动。KGDAL的源代码、样例数据和手册可在https://github.com/lucasliu0928/KGDAL上获得。
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