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基于电子病历的医学知识网络及其应用研究。

A study of EMR-based medical knowledge network and its applications.

作者信息

Zhao Chao, Jiang Jingchi, Xu Zhiming, Guan Yi

机构信息

School of Computer Science and Technology, Harbin Institute of Technology, Harbin, Heilongjiang 150001, China.

出版信息

Comput Methods Programs Biomed. 2017 May;143:13-23. doi: 10.1016/j.cmpb.2017.02.016. Epub 2017 Feb 23.

Abstract

BACKGROUND AND OBJECTIVE

Electronic medical records (EMRs) contain an amount of medical knowledge which can be used for clinical decision support. We attempt to integrate this medical knowledge into a complex network, and then implement a diagnosis model based on this network.

METHODS

The dataset of our study contains 992 records which are uniformly sampled from different departments of the hospital. In order to integrate the knowledge of these records, an EMR-based medical knowledge network (EMKN) is constructed. This network takes medical entities as nodes, and co-occurrence relationships between the two entities as edges. Selected properties of this network are analyzed. To make use of this network, a basic diagnosis model is implemented. Seven hundred records are randomly selected to re-construct the network, and the remaining 292 records are used as test records. The vector space model is applied to illustrate the relationships between diseases and symptoms. Because there may exist more than one actual disease in a record, the recall rate of the first ten results, and the average precision are adopted as evaluation measures.

RESULTS

Compared with a random network of the same size, this network has a similar average length but a much higher clustering coefficient. Additionally, it can be observed that there are direct correlations between the community structure and the real department classes in the hospital. For the diagnosis model, the vector space model using disease as a base obtains the best result. At least one accurate disease can be obtained in 73.27% of the records in the first ten results.

CONCLUSION

We constructed an EMR-based medical knowledge network by extracting the medical entities. This network has the small-world and scale-free properties. Moreover, the community structure showed that entities in the same department have a tendency to be self-aggregated. Based on this network, a diagnosis model was proposed. This model uses only the symptoms as inputs and is not restricted to a specific disease. The experiments conducted demonstrated that EMKN is a simple and universal technique to integrate different medical knowledge from EMRs, and can be used for clinical decision support.

摘要

背景与目的

电子病历(EMR)包含大量可用于临床决策支持的医学知识。我们试图将这些医学知识整合到一个复杂网络中,然后基于该网络实现一个诊断模型。

方法

我们研究的数据集包含从医院不同科室统一采样的992条记录。为了整合这些记录中的知识,构建了一个基于电子病历的医学知识网络(EMKN)。该网络以医学实体为节点,两个实体之间的共现关系为边。分析了该网络的选定属性。为了利用这个网络,实现了一个基本诊断模型。随机选择700条记录来重建网络,其余292条记录用作测试记录。应用向量空间模型来说明疾病与症状之间的关系。由于一条记录中可能存在多种实际疾病,因此采用前十结果的召回率和平均精度作为评估指标。

结果

与相同规模的随机网络相比,该网络平均长度相似,但聚类系数高得多。此外,可以观察到社区结构与医院实际科室类别之间存在直接相关性。对于诊断模型,以疾病为基础的向量空间模型获得了最佳结果。在前十结果中,73.27%的记录至少能得到一种准确的疾病。

结论

我们通过提取医学实体构建了一个基于电子病历的医学知识网络。该网络具有小世界和无标度特性。此外,社区结构表明同一科室的实体有自我聚集的趋势。基于此网络,提出了一个诊断模型。该模型仅以症状为输入,不受特定疾病限制。所进行的实验表明,EMKN是一种简单通用的技术,可整合来自电子病历的不同医学知识,并可用于临床决策支持。

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