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BEL networks derived from qualitative translations of BioNLP Shared Task annotations

机译:BEL网络源自BioNLP共享任务注释的定性翻译

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Interpreting the rapidly increasing amount of experimental data requires the availability and representation of biological knowledge in a computable form. The Biological expression language (BEL) encodes the data in form of causal relationships, which describe the association between biological events. BEL can successfully be applied to large data and support causal reasoning and hypothesis generation. With the rapid growth of biomedical literature, automated methods are a crucial prerequisite for handling and encoding the available knowledge. The BioNLP shared tasks support the development of such tools and provide a linguistically motivated format for the annotation of relations. On the other hand, BEL statements and the corresponding evidence sentences might be a valuable resource for future BioNLP shared task training data generation. In this paper, we briefly introduce BEL and investigate how far BioNLP-shared task annotations could be converted to BEL statements and in such a way directly support BEL statement generation. We present the first results of the automatic BEL statement generation and emphasize the need for more training data that captures the underlying biological meaning.
机译:解释迅速增长的实验数据量需要以可计算的形式获得和表示生物学知识。生物表达语言(BEL)以因果关系的形式对数据进行编码,这些因果关系描述了生物事件之间的关联。 BEL可以成功地应用于大数据并支持因果推理和假设生成。随着生物医学文献的迅速增长,自动化方法是处理和编码可用知识的关键前提。 BioNLP共享任务支持此类工具的开发,并为注释关系提供了语言动机的格式。另一方面,BEL语句和相应的证据句子可能是将来BioNLP共享任务训练数据生成的宝贵资源。在本文中,我们简要介绍BEL,并研究可以将BioNLP共享的任务注释转换为BEL语句的程度,并以此方式直接支持BEL语句的生成。我们介绍了自动BEL语句生成的第一个结果,并强调了需要更多捕获潜在生物学意义的训练数据的需求。

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