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Self-Attention-Based Models for the Extraction of Molecular Interactions from Biological Texts

机译:基于自注意力的模型,用于从生物文本中提取分子相互作用

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摘要

For any molecule, network, or process of interest, keeping up with new publications on these is becoming increasingly difficult. For many cellular processes, the amount molecules and their interactions that need to be considered can be very large. Automated mining of publications can support large-scale molecular interaction maps and database curation. Text mining and Natural-Language-Processing (NLP)-based techniques are finding their applications in mining the biological literature, handling problems such as Named Entity Recognition (NER) and Relationship Extraction (RE). Both rule-based and Machine-Learning (ML)-based NLP approaches have been popular in this context, with multiple research and review articles examining the scope of such models in Biological Literature Mining (BLM). In this review article, we explore self-attention-based models, a special type of Neural-Network (NN)-based architecture that has recently revitalized the field of NLP, applied to biological texts. We cover self-attention models operating either at the sentence level or an abstract level, in the context of molecular interaction extraction, published from 2019 onwards. We conducted a comparative study of the models in terms of their architecture. Moreover, we also discuss some limitations in the field of BLM that identifies opportunities for the extraction of molecular interactions from biological text.
机译:对于任何感兴趣的分子、网络或过程,跟上这些新出版物变得越来越困难。对于许多细胞过程,需要考虑的分子数量及其相互作用可能非常大。出版物的自动挖掘可以支持大规模的分子相互作用图谱和数据库管理。文本挖掘和基于自然语言处理(NLP)的技术在挖掘生物文献、处理命名实体识别(NER)和关系提取(RE)等问题方面得到了应用。在这种情况下,基于规则和基于机器学习 (ML) 的 NLP 方法都很受欢迎,有多篇研究和评论文章研究了此类模型在生物文献挖掘 (BLM) 中的范围。在这篇综述文章中,我们探讨了基于自我注意力的模型,这是一种特殊类型的基于神经网络(NN)的架构,最近振兴了NLP领域,应用于生物文本。我们涵盖了从2019年开始发布的在分子相互作用提取的背景下,在句子或抽象级别操作的自我注意力模型。我们从架构方面对模型进行了比较研究。此外,我们还讨论了BLM领域的一些局限性,这些局限性确定了从生物文本中提取分子相互作用的机会。

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