基于语义充实的病案知识自动提取

C. R. Valêncio, Rodrigo Dulizio Martins, Matheus Henrique Marioto, P. L. Corrêa, Maurizio Babini
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引用次数: 4

摘要

在过去的二十年中,数字信息的数量正在大幅增长,目前人们非常关注如何快速有效地获取这些内容。在卫生部门也是如此,检索医疗记录,获取有关治疗和临床病情进展的相关信息,可能会加快对新患者的诊断。本文描述了一个基于语义和文本挖掘技术的信息自动索引框架。这项工作应与将数据插入电子记录同时进行。原始贡献归结为搜索引擎的文本组织,以增强所获得的结果的数量,如所进行的实验所证明的。存储的信息被自动分割成单词,这些单词有一个基于框架的语义字典,该框架支持通过语义检索信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Knowledge Extraction Supported by Semantic Enrichment in Medical Records
The volume of digital information is growing considerably in the last two decades and there is currently a huge concern about obtaining this content quickly and effectively. In the health sector it is not different, to retrieve medical records that obtain relevant information about treatments and progresses of clinical conditions may speed up new patients' diagnosis. In this work it is described a framework proposed for automatically indexing information based on semantics and on text mining techniques. This task should work in parallel with the insertion of data into electronic records. The original contributions come down to search engine in texts organized so as to potentiate the amount of results obtained, as evidenced by the experiments carried out. The stored information is automatically fragmented into words, which have a semantic dictionary based on a framework that enables the information retrieval through semantics.
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