基于电子病历数据的医学概念和词语表示的联合学习。

Tian Bai, Ashis Kumar Chanda, Brian L Egleston, Slobodan Vucetic
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引用次数: 17

摘要

人们对从电子健康记录(EHRs)中学习医学概念的低维向量表示越来越感兴趣。虽然电子病历包含结构化数据,如诊断代码和实验室测试,但它们也包含非结构化的临床记录,提供有关患者健康状况的更细致的细节。在这项工作中,我们提出了一种医学概念和单词表征共同学习的方法。特别地,我们专注于通过使用一种新的word2vec模型学习方案来捕获医学代码和单词之间的关系。我们的方法利用了同一次访问中电子病历不同部分之间的关系,并将代码和单词嵌入到相同的连续向量空间中。最后,我们能够得出反映不同疾病和治疗模式的集群。在我们的实验中,我们定性地展示了我们为给定诊断代码分组单词的方法与主题建模方法的比较。我们还测试了我们的表征在预测下次就诊的疾病模式方面的效果。结果表明,我们的方法优于几种常用方法。
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Joint Learning of Representations of Medical Concepts and Words from EHR Data.

There has been an increasing interest in learning low-dimensional vector representations of medical concepts from electronic health records (EHRs). While EHRs contain structured data such as diagnostic codes and laboratory tests, they also contain unstructured clinical notes, which provide more nuanced details on a patient's health status. In this work, we propose a method that jointly learns medical concept and word representations. In particular, we focus on capturing the relationship between medical codes and words by using a novel learning scheme for word2vec model. Our method exploits relationships between different parts of EHRs in the same visit and embeds both codes and words in the same continuous vector space. In the end, we are able to derive clusters which reflect distinct disease and treatment patterns. In our experiments, we qualitatively show how our methods of grouping words for given diagnostic codes compares with a topic modeling approach. We also test how well our representations can be used to predict disease patterns of the next visit. The results show that our approach outperforms several common methods.

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