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BRONCO: Biomedical entity Relation ONcology COrpus for extracting gene-variant-disease-drug relations

机译:BRONCO:用于提取基因-变异-疾病-药物关系的生物医学实体关系肿瘤科

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摘要

Comprehensive knowledge of genomic variants in a biological context is key for precision medicine. As next-generation sequencing technologies improve, the amount of literature containing genomic variant data, such as new functions or related phenotypes, rapidly increases. Because numerous articles are published every day, it is almost impossible to manually curate all the variant information from the literature. Many researchers focus on creating an improved automated biomedical natural language processing (BioNLP) method that extracts useful variants and their functional information from the literature. However, there is no gold-standard data set that contains texts annotated with variants and their related functions. To overcome these limitations, we introduce a Biomedical entity Relation ONcology COrpus (BRONCO) that contains more than 400 variants and their relations with genes, diseases, drugs and cell lines in the context of cancer and anti-tumor drug screening research. The variants and their relations were manually extracted from 108 full-text articles. BRONCO can be utilized to evaluate and train new methods used for extracting biomedical entity relations from full-text publications, and thus be a valuable resource to the biomedical text mining research community. Using BRONCO, we quantitatively and qualitatively evaluated the performance of three state-of-the-art BioNLP methods. We also identified their shortcomings, and suggested remedies for each method. We implemented post-processing modules for the three BioNLP methods, which improved their performance.>Database URL:
机译:在生物学背景下对基因组变体的全面了解是精密医学的关键。随着下一代测序技术的进步,包含基因组变异数据(例如新功能或相关表型)的文献数量迅速增加。由于每天都会发表大量文章,因此几乎不可能手动整理文献中的所有变体信息。许多研究人员致力于创建一种改进的自动生物医学自然语言处理(BioNLP)方法,该方法从文献中提取有用的变体及其功能信息。但是,没有黄金标准的数据集包含带有变体及其相关功能的文本。为了克服这些限制,我们引入了生物医学实体关系肿瘤科(BRONCO),其中包含400多种变体,以及它们在癌症和抗肿瘤药物筛选研究的背景下与基因,疾病,药物和细胞系的关系。这些变体及其关系是从108篇全文文章中手动提取的。 BRONCO可用于评估和培训用于从全文出版物中提取生物医学实体关系的新方法,因此对于生物医学文本挖掘研究社区而言是宝贵的资源。使用BRONCO,我们定量和定性地评估了三种最新的BioNLP方法的性能。我们还找出了它们的缺点,并针对每种方法提出了补救措施。我们为三种BioNLP方法实现了后处理模块,从而提高了它们的性能。>数据库URL

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