生物医学文献挖掘智能代理系统

M. T. Islam, Durgaprasad Bollina, Abhaya C. Nayak, Shoba Ranganathan
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引用次数: 3

摘要

随着万维网技术的发展以及生物信息学和系统生物学领域研究的深入,对从科学文献数据库中提取信息的自动信息提取系统的需求日益突出。提取生物医学文章中的科学信息是支持生物标志物发现工作的中心任务。本文提出了一种能够从文本中提取基因、基因组、疾病、等位基因、细胞等生物标志物科学信息的算法,该算法通过找出文档的焦点主题,提取该主题最相关的属性。主题及其属性表示为语义网络,然后存储在数据库中。该算法将通过统计和模式匹配NLP技术提取最重要的生物术语和关系。该IE工具旨在帮助研究人员获得生物标志物发现及其其他生物医学研究进展的最新信息。我们展示了初步结果,表明该方法具有很强的生物标志物发现方法潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Agent System for Bio-medical Literature Mining
With the advances of World Wide Web technology and advanced research in bioinformatics and systems biology domain has highlighted the increasing need for automatic information extraction [IE] system to extract information from scientific literature databases. Extraction of scientific information in biomedical articles is a central task for supporting biomarker discovery efforts. In this paper, we propose an algorithm that is capable of extracting scientific information on biomarker like gene, genome, disease, allele, cell etc from the text by finding out the focal topic of the document and extracting the most relevant properties of that topic. The topic and its properties are represented as semantic networks and then stored in a database. This IE algorithm will extract the most important biological terms and relation by statistical and pattern matching NLP techniques. This IE tool expected to help the researchers to get the latest information on biomarker discovery and its other biomedical research advances. We show preliminary results, demonstrating that the method has a strong potential to biomarker discovery methods.
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