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Application and evaluation of automated methods to extract neuroanatomical connectivity statements from free text

机译:从自由文本中提取神经解剖学连接性语句的自动化方法的应用和评估

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摘要

>Motivation: Automated annotation of neuroanatomical connectivity statements from the neuroscience literature would enable accessible and large-scale connectivity resources. Unfortunately, the connectivity findings are not formally encoded and occur as natural language text. This hinders aggregation, indexing, searching and integration of the reports. We annotated a set of 1377 abstracts for connectivity relations to facilitate automated extraction of connectivity relationships from neuroscience literature. We tested several baseline measures based on co-occurrence and lexical rules. We compare results from seven machine learning methods adapted from the protein interaction extraction domain that employ part-of-speech, dependency and syntax features.>Results: Co-occurrence based methods provided high recall with weak precision. The shallow linguistic kernel recalled 70.1% of the sentence-level connectivity statements at 50.3% precision. Owing to its speed and simplicity, we applied the shallow linguistic kernel to a large set of new abstracts. To evaluate the results, we compared 2688 extracted connections with the Brain Architecture Management System (an existing database of rat connectivity). The extracted connections were connected in the Brain Architecture Management System at a rate of 63.5%, compared with 51.1% for co-occurring brain region pairs. We found that precision increases with the recency and frequency of the extracted relationships.>Availability and implementation: The source code, evaluations, documentation and other supplementary materials are available at .>Contact: >Supplementary information: are available at Bioinformatics Online.
机译:>动机:来自神经科学文献的神经解剖学连接性声明的自动注释将启用可访问的大规模连接性资源。不幸的是,连接发现没有被正式编码,并且以自然语言文字出现。这阻碍了报告的汇总,索引编制,搜索和集成。我们为连接关系注释了一组1377个摘要,以促进从神经科学文献中自动提取连接关系。我们基于同现和词汇规则测试了几种基准量度。我们比较了来自7种机器学习方法的结果,这些方法采用了蛋白质相互作用提取域,这些方法利用了词性,依赖性和语法功能。>结果:基于共现的方法具有较高的查全率,但精度较弱。浅层语言内核以50.3%的精度调用了70.1%的句子级连接性语句。由于其速度和简便性,我们将浅层语言内核应用于大量新摘要。为了评估结果,我们将2688个提取的连接与Brain Architecture Management System(现有的大鼠连接数据库)进行了比较。提取的连接在“大脑体系结构管理系统”中的连接率为63.5%,而同时出现的大脑区域对的连接率为51.1%。我们发现,精度随着提取关系的近期性和频率而增加。>可用性和实现:源代码,评估,文档和其他补充材料可在。>联系人: >补充信息:可从在线生物信息学获得。

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