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Linking genes to literature: text mining information extraction and retrieval applications for biology

机译:将基因链接到文献:文本挖掘信息提取和生物学检索应用

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摘要

Efficient access to information contained in online scientific literature collections is essential for life science research, playing a crucial role from the initial stage of experiment planning to the final interpretation and communication of the results. The biological literature also constitutes the main information source for manual literature curation used by expert-curated databases. Following the increasing popularity of web-based applications for analyzing biological data, new text-mining and information extraction strategies are being implemented. These systems exploit existing regularities in natural language to extract biologically relevant information from electronic texts automatically. The aim of the BioCreative challenge is to promote the development of such tools and to provide insight into their performance. This review presents a general introduction to the main characteristics and applications of currently available text-mining systems for life sciences in terms of the following: the type of biological information demands being addressed; the level of information granularity of both user queries and results; and the features and methods commonly exploited by these applications. The current trend in biomedical text mining points toward an increasing diversification in terms of application types and techniques, together with integration of domain-specific resources such as ontologies. Additional descriptions of some of the systems discussed here are available on the internet .
机译:有效地访问在线科学文献资料中包含的信息对于生命科学研究至关重要,在从实验计划的最初阶段到最终的结果解释和交流中都起着至关重要的作用。生物文献还构成了专家文献数据库使用的人工文献文献的主要信息来源。随着基于网络的用于分析生物数据的应用程序日益普及,正在实施新的文本挖掘和信息提取策略。这些系统利用自然语言中的现有规则来自动从电子文本中提取生物学相关的信息。 BioCreative挑战的目的是促进此类工具的开发并提供其性能的见解。本文从以下方面对生命科学当前可用的文本挖掘系统的主要特征和应用进行了一般性介绍:解决的生物信息需求类型;用户查询和结果的信息粒度级别;以及这些应用程序通常利用的功能和方法。生物医学文本挖掘的当前趋势表明,在应用程序类型和技术以及与特定领域资源(例如本体)的集成方面,多样化程度将不断提高。此处讨论的某些系统的其他描述可从Internet上获得。

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