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AuDis: an automatic CRF-enhanced disease normalization in biomedical text

机译:AuDis:生物医学文本中自动增强CRF的疾病标准化

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摘要

Diseases play central roles in many areas of biomedical research and healthcare. Consequently, aggregating the disease knowledge and treatment research reports becomes an extremely critical issue, especially in rapid-growth knowledge bases (e.g. PubMed). We therefore developed a system, AuDis, for disease mention recognition and normalization in biomedical texts. Our system utilizes an order two conditional random fields model. To optimize the results, we customize several post-processing steps, including abbreviation resolution, consistency improvement and stopwords filtering. As the official evaluation on the CDR task in BioCreative V, AuDis obtained the best performance (86.46% of F-score) among 40 runs (16 unique teams) on disease normalization of the DNER sub task. These results suggest that AuDis is a high-performance recognition system for disease recognition and normalization from biomedical literature.>Database URL:
机译:疾病在生物医学研究和医疗保健的许多领域起着核心作用。因此,汇总疾病知识和治疗研究报告成为一个极其关键的问题,尤其是在快速增长的知识库(例如PubMed)中。因此,我们开发了一个系统AuDis,用于生物医学文本中的疾病提及识别和标准化。我们的系统利用了一个有序的两个条件随机场模型。为了优化结果,我们定制了几个后处理步骤,包括缩写解析,一致性改进和停用词过滤。作为对BioCreative V中CDR任务的官方评估,AuDis在DNER子任务的疾病归一化的40次运行(16个独立团队)中获得了最佳性能(F分数的86.46%)。这些结果表明AuDis是用于生物医学文献中疾病识别和标准化的高性能识别系统。>数据库URL:

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