论文标题

使用主动转移学习的临床文本中因果关系采矿的实用方法

A Practical Approach towards Causality Mining in Clinical Text using Active Transfer Learning

论文作者

Hussain, Musarrat, Satti, Fahad Ahmed, Hussain, Jamil, Ali, Taqdir, Ali, Syed Imran, Bilal, Hafiz Syed Muhammad, Park, Gwang Hoon, Lee, Sungyoung

论文摘要

目的:因果开采是一个活跃的研究领域,它需要应用最先进的自然语言处理技术。在医疗领域,医学专家创建了临床文本,以克服定义明确和模式驱动的信息系统的局限性。这项研究工作的目的是创建一个框架,该框架可以将临床文本转换为因果知识。方法:一种基于术语扩展,短语产生,基于BERT的短语嵌入和语义匹配,语义丰富,专家验证和模型演化的实用方法已用于构建全面的因果挖掘框架。这种积极的基于转移学习的框架及其补充服务能够从临床文本中提取和丰富因果关系及其相应的实体。结果:多模型转移学习技术在多次迭代中应用时,在保持精确度恒定的同时,从其准确性和召回方面提高了性能。我们还对所提出的技术及其共同选择进行了比较分析,这证明了我们的方法的正确性及其捕获大多数因果关系的能力。结论:提出的框架为医疗保健领域提供了尖端的结果。但是,也可以调整该框架以在其他领域提供因果关系检测。意义:提出的框架足够通用,可以在任何领域中使用,由于其数据的庞大和各种性质,医疗服务可以获得巨大的收益。该因果知识提取框架可用于总结临床文本,创建角色,发现医学知识并为临床决策提供证据。

Objective: Causality mining is an active research area, which requires the application of state-of-the-art natural language processing techniques. In the healthcare domain, medical experts create clinical text to overcome the limitation of well-defined and schema driven information systems. The objective of this research work is to create a framework, which can convert clinical text into causal knowledge. Methods: A practical approach based on term expansion, phrase generation, BERT based phrase embedding and semantic matching, semantic enrichment, expert verification, and model evolution has been used to construct a comprehensive causality mining framework. This active transfer learning based framework along with its supplementary services, is able to extract and enrich, causal relationships and their corresponding entities from clinical text. Results: The multi-model transfer learning technique when applied over multiple iterations, gains performance improvements in terms of its accuracy and recall while keeping the precision constant. We also present a comparative analysis of the presented techniques with their common alternatives, which demonstrate the correctness of our approach and its ability to capture most causal relationships. Conclusion: The presented framework has provided cutting-edge results in the healthcare domain. However, the framework can be tweaked to provide causality detection in other domains, as well. Significance: The presented framework is generic enough to be utilized in any domain, healthcare services can gain massive benefits due to the voluminous and various nature of its data. This causal knowledge extraction framework can be used to summarize clinical text, create personas, discover medical knowledge, and provide evidence to clinical decision making.

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