基于混合神经结构的临床事件检测

A. Maharana, Meliha Yetisgen-Yildiz
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引用次数: 4

摘要

传统上,临床记录中的事件检测是通过基于规则和统计的自然语言处理(NLP)方法来解决的,这些方法需要广泛的领域知识和特征工程。在本文中,我们探索了用递归神经网络、临床词嵌入来完成这项任务的可行性,并引入了一种混合架构来改进对数据集中具有较小代表性的实体的检测。通过对比分析,揭示了神经网络与条件随机场在临床实体检测中的互补行为。
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Clinical Event Detection with Hybrid Neural Architecture
Event detection from clinical notes has been traditionally solved with rule based and statistical natural language processing (NLP) approaches that require extensive domain knowledge and feature engineering. In this paper, we have explored the feasibility of approaching this task with recurrent neural networks, clinical word embeddings and introduced a hybrid architecture to improve detection for entities with smaller representation in the dataset. A comparative analysis is also done which reveals the complementary behavior of neural networks and conditional random fields in clinical entity detection.
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