Cross-Domain Learning Based Traditional Chinese Medicine Medical Record Classification

Yiming Li, Baogang Wei, Hui Chen, Licheng Jiang, Zherong Li
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引用次数: 3

Abstract

In Traditional Chinese Medicine(TCM) area, medical records are the objective record of a doctor's diagnosis and treatment and they are the basis of the TCM development. However, existing medical records of TCM are derived from books, medical cases, Web and most of them lack the categories information. In this paper, we propose a text classification method for the TCM medical record based on cross-domain topic model. First, we transform the physical books into the digital documents, then tokenize and filter the documents with domain lexicons to achieve the significative sequences of words which largely maintain the topics of original documents. Second, we use the cross domain topic model named Topic Relevance Weighting Model(TRWM) to generate the features. Finally, the generated features are leveraged for the medical records classification and compared with the baselines. The experimental results validate the effectiveness of our method.
基于跨领域学习的中医病案分类
在中医领域,病案是医生诊断和治疗的客观记录,是中医发展的基础。然而,现有的中医病案大多来源于书籍、病例、网络,大多缺乏分类信息。本文提出了一种基于跨领域主题模型的中医病案文本分类方法。首先,将实体图书转换为数字文档,然后用领域词汇对文档进行标记和过滤,得到在很大程度上保持原始文档主题的有意义的词序列。其次,利用跨域主题关联加权模型(TRWM)生成特征。最后,将生成的特征用于医疗记录分类,并与基线进行比较。实验结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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