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Identifying patterns of associated-conditions through topic models of Electronic Medical Records

机译:通过电子医疗记录的主题模型识别相关条件的模式

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Multiple adverse health conditions co-occurring in a patient are typically associated with poor prognosis and increased office or hospital visits. Developing methods to identify patterns of co-occurring conditions can assist in diagnosis. Thus, identifying patterns of association among co-occurring conditions is of growing interest. In this paper, we report preliminary results from a data-driven study, in which we apply a machine learning method, namely, topic modeling, to Electronic Medical Records (EMRs), aiming to identify patterns of associated conditions. Specifically, we use the well-established Latent Dirichlet Allocation (LDA), a method based on the idea that documents can be modeled as a mixture of latent topics, where each topic is a distribution over words. In our study, we adapt the LDA model to identify latent topics in patients' EMRs. We evaluate the performance of our method both qualitatively and quantitatively, and show that the obtained topics indeed align well with distinct medical phenomena characterized by co-occurring conditions.
机译:在患者中共同发生的多种不良健康状况通常与预后差和额外的办公室或医院访问有关。开发识别共同发生条件模式的方法可以有助于诊断。因此,识别共同发生条件之间的关联模式是越来越感兴趣的。在本文中,我们向数据驱动的研究报告初步结果,其中我们应用机器学习方法,即主题建模,电子医疗记录(EMRS),旨在识别相关条件的模式。具体而言,我们使用良好的潜在Dirichlet分配(LDA),一种基于思想的方法,即文档可以被建模为潜在主题的混合,其中每个主题是单词的分布。在我们的研究中,我们调整LDA模型以识别患者EMR的潜在主题。我们评估了定性和定量的方法的性能,并表明所获得的主题实际上与具有共同发生条件的不同的医疗现象很好。

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