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Knowledge Base Completion for Constructing Problem-Oriented Medical Records

机译:建立面向问题的医疗记录的知识库完成

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Both electronic health records and personal health records are typically organized by data type, with medical problems, medications, procedures, and laboratory results chronologically sorted in separate areas of the chart. As a result, it can be difficult to find all of the relevant information for answering a clinical question about a given medical problem. A promising alternative is to instead organize by problems, with related medications, procedures, and other pertinent information all grouped together. A recent effort by Buchanan (2017) manually defined, through expert consensus, 11 medical problems and the relevant labs and medications for each. We show how to use machine learning on electronic health records to instead automatically construct these problem-based groupings of relevant medications, procedures, and laboratory tests. We formulate the learning task as one of knowledge base completion, and annotate a dataset that expands the set of problems from 11 to 32. We develop a model architecture that exploits both pre-trained concept embeddings and usage data relating the concepts contained in a longitudinal dataset from a large health system. We evaluate our algorithms’ ability to suggest relevant medications, procedures, and lab tests, and find that the approach provides feasible suggestions even for problems that are hidden during training. The dataset, along with code to reproduce our results, is available at https://github.com/asappresearch/kbc-pomr.
机译:电子健康记录和个人健康记录通常是通过数据类型组织的,具有时间问题,药物,程序和实验室结果,按时间顺序排序在图表的单独区域。结果,很难找到对给定医疗问题的临床问题回答的所有相关信息。有希望的替代方案是通过问题,相关药物,程序和其他相关信息组织在一起组织。通过专家共识,11个医疗问题和各自的相关实验室和药物,最近的努力通过Buchanan(2017年)。我们展示如何在电子健康记录上使用机器学习,而是自动构建基于问题的相关药物,程序和实验室测试的基于问题的分组。我们将学习任务制定为知识库完成之一,并注释一个数据集,该数据集扩展了11到32的问题。我们开发了一种模型架构,用于利用训练预先训练的概念嵌入和使用数据,与纵向中包含的概念相关的概念来自大型健康系统的数据集。我们评估了我们的算法,提出了相关药物,程序和实验室测试的能力,并发现即使在培训期间隐藏的问题也提供了可行的建议。数据集以及代码重现我们的结果,可在https://github.com/aSappresearch/kbc-pomr上获得。

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