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BELMiner: adapting a rule-based relation extraction system to extract biological expression language statements from bio-medical literature evidence sentences

机译:BELMiner:调整基于规则的关系提取系统以从生物医学文献证据句中提取生物表达语言陈述

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摘要

Extracting meaningful relationships with semantic significance from biomedical literature is often a challenging task. BioCreative V track4 challenge for the first time has organized a comprehensive shared task to test the robustness of the text-mining algorithms in extracting semantically meaningful assertions from the evidence statement in biomedical text. In this work, we tested the ability of a rule-based semantic parser to extract Biological Expression Language (BEL) statements from evidence sentences culled out of biomedical literature as part of BioCreative V Track4 challenge. The system achieved an overall best F-measure of 21.29% in extracting the complete BEL statement. For relation extraction, the system achieved an F-measure of 65.13% on test data set. Our system achieved the best performance in five of the six criteria that was adopted for evaluation by the task organizers. Lack of ability to derive semantic inferences, limitation in the rule sets to map the textual extractions to BEL function were some of the reasons for low performance in extracting the complete BEL statement. Post shared task we also evaluated the impact of differential NER components on the ability to extract BEL statements on the test data sets besides making a single change in the rule sets that translate relation extractions into a BEL statement. There is a marked improvement by over 20% in the overall performance of the BELMiner’s capability to extract BEL statement on the test set. The system is available as a REST-API at >Database URL:
机译:从生物医学文献中提取具有语义重要性的有意义的关系通常是一项艰巨的任务。 BioCreative V track4挑战首次组织了一项全面的共享任务,以测试文本挖掘算法从生物医学文本中的证据陈述中提取语义上有意义的断言时的鲁棒性。在这项工作中,我们测试了基于规则的语义解析器从作为BioCreative V Track4挑战的一部分从生物医学文献中剔除的证据句子中提取生物表达语言(BEL)语句的能力。该系统在提取完整的BEL语句时实现了21.29%的总体最佳F度量。对于关系提取,系统在测试数据集上实现了65.13%的F度量。我们的系统在任务组织者用于评估的六个标准中的五个中取得了最佳性能。缺乏派生语义推断的能力,将文本提取映射到BEL函数的规则集的限制是提取完整BEL语句性能低下的一些原因。在共享任务之后,我们还评估了差异NER组件对在测试数据集上提取BEL语句的能力的影响,除了对规则集进行了一次单独更改(将关系提取转换为BEL语句)之外。 BELMiner提取测试集上的BEL语句的能力的整体性能显着提高了20%以上。该系统可通过>数据库URL:作为REST-API使用。

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