Conditional Relationship Extraction for Diseases and Symptoms by a Web Search-Based Approach

Yi-Hui Lee, Jia-Ling Koh
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引用次数: 2

Abstract

This paper studies the strategies of automatically extracting the conditional relationships between diseases and symptoms from a Chinese encyclopedia site and the disease-related web pages searched from the Internet. At first, the seed symptoms of a disease are extracted from an online medical encyclopedia automatically. These seed symptoms are utilized as query keywords to automatically find more symptoms of a disease from the unstructured documents of the disease-related search results. Next, a jointly learning method is used to construct the embedded representations of the conditional terms and pattern terms. Besides, the semantic similarity matrix of conditional terms is computed through the co-clustering algorithm to discover the representative conditional terms of the clusters. The result of experiments shows that the proposed method, which discovers the semantically related symptoms of a disease associated with conditionals, achieves high accuracy. Besides, many unusually known symptoms considered by the medical experts are discovered, which may be noticeable symptoms needing further verification in the future.
基于Web搜索的疾病和症状条件关系提取方法
本文研究了从中文百科网站和互联网上搜索到的疾病相关网页中自动提取疾病与症状条件关系的策略。首先,从在线医学百科全书中自动提取疾病的种子症状。将这些种子症状用作查询关键字,从疾病相关搜索结果的非结构化文档中自动查找疾病的更多症状。其次,采用联合学习的方法构建条件项和模式项的嵌入表示。此外,通过共聚类算法计算条件项的语义相似度矩阵,发现聚类的代表性条件项。实验结果表明,该方法能够发现与条件句相关的疾病的语义相关症状,达到了较高的准确率。此外,发现了许多医学专家认为不寻常的已知症状,这些症状可能是值得注意的症状,需要在未来进一步验证。
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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