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DeepVar: An End-to-End Deep Learning Approach for Genomic Variant Recognition in Biomedical Literature

机译:Deepvar:生物医学文献中基因组变异识别的端到端深度学习方法

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摘要

We consider the problem of Named Entity Recognition (NER) on biomedical scientific literature, and more specifically the genomic variants recognition in this work. Significant success has been achieved for NER on canonical tasks in recent years where large data sets are generally available. However, it remains a challenging problem on many domain-specific areas, especially the domains where only small gold annotations can be obtained. In addition, genomic variant entities exhibit diverse linguistic heterogeneity, differing much from those that have been characterized in existing canonical NER tasks. The state-of-the-art machine learning approaches heavily rely on arduous feature engineering to characterize those unique patterns. In this work, we present the first successful end-to-end deep learning approach to bridge the gap between generic NER algorithms and low-resource applications through genomic variants recognition. Our proposed model can result in promising performance without any handcrafted features or post-processing rules. Our extensive experiments and results may shed light on other similar low-resource NER applications.
机译:我们考虑了在生物医学科学文献中指定实体识别(NER)的问题,更具体地说是在这项工作中的基因组变体识别。在近年来大型数据集通常可用的情况下,在规范任务方面已经实现了重大成功。然而,在许多域特定领域仍然是一个具有挑战性的问题,尤其是只能获得小金注释的域。此外,基因组变体实体表现出不同的语言异质性,与现有的规范网任务的特征有多不同。最先进的机器学习方法严重依赖于艰苦的特征工程来表征这些独特的模式。在这项工作中,我们通过基因组变体识别,提出了第一种成功的端到端深入学习方法来弥合通用NER算法和低资源应用之间的差距。我们所提出的模型可能导致无需任何手工特征或后处理规则的表现。我们的广泛实验和结果可能会在其他类似的低资源网上应用揭示。

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