OntG-Bart:本体论注入临床摘要

Sajad Sotudeh, Nazli Goharian
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引用次数: 0

摘要

临床文本摘要的自动化过程可以节省临床医生的阅读时间,减少他们的疲劳,承认人类专业人员在循环中的必要性。本文研究临床文本摘要,旨在通过图神经网络(GNN)将本体概念关系纳入摘要过程。具体来说,我们提出了一个模型,用GNN编码器和解码器的多头注意层扩展Bart的编码器-解码器框架,产生本体感知摘要。这个GNN与文本编码器交互,影响它们的相互表示。在两个真实的放射学数据集上验证了该模型的有效性。我们还提出了一项消融研究,以阐明不同图形配置的影响,并进行了误差分析,旨在确定未来改进的潜在领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OntG-Bart: Ontology-Infused Clinical Abstractive Summarization
Automating the process of clinical text summarization could save clinicians' reading time and reduce their fatigue, acknowledging the necessity of human professionals in the loop. This paper addresses clinical text summarization, aiming to incorporate ontology concept relationships via a Graph Neural Network (GNN) into the summarization process. Specifically, we propose a model, extending Bart's encoder-decoder framework with GNN encoder and multi-head attentional layers for decoder, producing ontology-aware summaries. This GNN interacts with the textual encoder, influencing their mutual representations. The model's effectiveness is validated on two real-world radiology datasets. We also present an ablation study to elucidate the impact of varied graph configurations and an error analysis aimed at pinpointing potential areas for future improvements.
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