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Improving accessibility and distinction between negative results in biomedical relation extraction

机译:在生物医学关系提取中改善可访问性和负面结果之间的区别

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摘要

Accessible negative results are relevant for researchers and clinicians not only to limit their search space but also to prevent the costly re-exploration of research hypotheses. However, most biomedical relation extraction datasets do not seek to distinguish between a false and a negative relation among two biomedical entities. Furthermore, datasets created using distant supervision techniques also have some false negative relations that constitute undocumented/unknown relations (missing from a knowledge base). We propose to improve the distinction between these concepts, by revising a subset of the relations marked as false on the phenotype-gene relations corpus and give the first steps to automatically distinguish between the false (F), negative (N), and unknown (U) results. Our work resulted in a sample of 127 manually annotated FNU relations and a weighted-F1 of 0.5609 for their automatic distinction. This work was developed during the 6th Biomedical Linked Annotation Hackathon (BLAH6).
机译:可获得的负面结果不仅对研究人员和临床医生具有重要意义,不仅限制了他们的搜索空间,而且还防止了昂贵的研究假设的重新探索。但是,大多数生物医学关系提取数据集都不会试图在两个生物医学实体之间区分虚假关系和负面关系。此外,使用远程监管技术创建的数据集还具有一些假负关系,这些假负关系构成了未记录的/未知的关系(缺少知识库)。我们建议通过修改表型-基因关系语料库上标记为假的关系的子集来改善这些概念之间的区别,并提出第一步以自动区分假(F),否定(N)和未知( U)结果。我们的工作得到了127个手动注释的FNU关系的样本,以及它们自动区分的加权F1为0.5609。这项工作是在第六届生物医学链接注释黑客马拉松(BLAH6)期间开发的。

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