Medical event prediction (MEP) is a fundamental task in the medical domain, which needs to predict medical events, including medications, diagnosis codes, laboratory tests, procedures, outcomes, and so on, according to historical medical records. The task is challenging as medical data is a type of complex time series data with heterogeneous and temporal irregular characteristics. Many machine learning methods that consider the two characteristics have been proposed for medical event prediction. However, most of them consider the two characteristics separately and ignore the correlations among different types of medical events, especially relations between historical medical events and target medical events. In this paper, we propose a novel neural network based on attention mechanism, called cross-event attention-based time-aware network (CATNet), for medical event prediction. It is a time-aware, event-aware and task-adaptive method with the following advantages: 1) modeling heterogeneous information and temporal information in a unified way and considering temporal irregular characteristics locally and globally respectively, 2) taking full advantage of correlations among different types of events via cross-event attention. Experiments on two public datasets (MIMIC-III and eICU) show CATNet can be adaptive with different MEP tasks and outperforms other state-of-the-art methods on various MEP tasks. The source code of CATNet will be released after this manuscript is accepted.
翻译:医疗事件预测(MEP)是医疗领域的一项基本任务,根据历史医疗记录,医疗领域需要预测医疗事件,包括药物、诊断代码、实验室测试、程序、结果等,这是一项艰巨的任务,因为医疗数据是一种复杂的时间序列数据,具有多种多样和时间上不规则的特点,许多考虑这两个特点的机器学习方法已经提出用于医疗事件预测,但是,大多数机器学习方法都分别考虑这两个特点,忽视了不同类型医疗事件之间的相互关系,特别是历史医疗事件与目标医疗事件之间的相互关系。在本文件中,我们提议根据关注机制建立一个新型神经网络,称为跨事件关注时间觉网络(CATNet),用于医学事件预测。这是一个时间觉悟、事件觉悟和任务适应方法,其优点如下:(1) 以统一的方式建模各种信息和时间信息,并分别考虑当地和全球的时间不规则特点;(2) 充分利用不同类型事件之间的相互联系,通过交叉关注。对两种公共数据集(MIMIC-III和eICU)进行实验,将跨事件识别时间网络(CAT-Net)称为跨事件的注意时间网络网络,用于医疗事件预测。