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Hierarchical Prescription Pattern Analysis with Symptom Labels

机译:带症状标签的分层处方模式分析

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Identifying the prescription patterns would be a useful and interesting goal from multiple perspectives. Firstly, the identified patterns could expand the horizon of the medical practice knowledge. Secondly, the identified prescription patterns can be evaluated by subject-matter experts to label some of the patterns as anomaly calling for further investigation, i.e., prescription costs for insurance companies. Recently, the Health Insurance Review & Assessment Service (HIRA), South Korea, released a dataset on about six millions prescriptions on sampled population over three years. This paper presents the statistical modeling details of Tag Hierarchical Topic Models (Tag-HTM) and the application of Tag-HTM to the HIRA dataset. The application of Tag-HTM revealed a hierarchical structure of medicine-symptom distributions, which would be a new information to medical practitioners given that previous disease classification was mainly done by the anatomical and the disease cause aspects. Also, Tag-HTM was able to isolate the prescription patterns with higher medical costs as a branch of hierarchical clustering, and this cluster would be a prescription collection of interests to subject-matter experts in the insurance companies.
机译:从多个角度来看,确定处方模式将是一个有用且有趣的目标。首先,确定的模式可以扩大医学实践知识的视野。其次,所确定的处方模式可以由主题专家评估,以将某些模式标记为异常,需要进一步调查,即保险公司的处方成本。最近,韩国的健康保险审查与评估服务(HIRA)发布了一个数据集,该数据集涉及三年内抽样人群约600万张处方。本文介绍了标签分层主题模型(Tag-HTM)的统计建模细节,以及Tag-HTM在HIRA数据集中的应用。 Tag-HTM的应用揭示了医学症状分布的分层结构,考虑到以前的疾病分类主要是从解剖学和疾病原因方面进行的,这对于医学从业者将是一个新的信息。此外,Tag-HTM能够将医疗费用较高的处方模式隔离为分层聚类的一个分支,并且该聚类将是保险公司的主题专家感兴趣的处方集合。

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