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Not a cute stroke: Analysis of Rule- and Neural Network-Based Information Extraction Systems for Brain Radiology Reports

机译:不是一种可爱的中风:分析脑放射学报告的规则和神经网络信息提取系统

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We present an in-depth comparison of three clinical information extraction (IE) systems designed to perform entity recognition and negation detection on brain imaging reports: EdlE-R, a bespoke rule-based system, and two neural network models, EdIE-BiLSTM and EdlE-BERT, both multi-task learning models with a BiLSTM and BERT encoder respectively. We compare our models both on an in-sample and an out-of-sample dataset containing mentions of stroke findings and draw on our error analysis to suggest improvements for effective annotation when building clinical NLP models for a new domain. Our analysis finds that our rule-based system outperforms the neural models on both datasets and seems to generalise to the out-of-sample dataset. On the other hand, the neural models do not generalise negation to the out-of-sample dataset, despite metrics on the in-sample dataset suggesting otherwise.
机译:我们介绍了三种临床信息提取(IE)系统的深入比较,旨在对脑成像报告执行实体识别和否定检测的系统:Edle-R,基于定制的规则的系统和两个神经网络模型,Edie-Bilstm和Edle-Bert分别使用Bilstm和BERT编码器进行多任务学习模型。我们将模型与样本内和样本数据集进行比较,其中包含笔触调查结果的提到,并借鉴我们的错误分析,以建议在为新域构建临床NLP模型时的有效注释的改进。我们的分析发现,基于规则的系统优于两个数据集上的神经模型,似乎概括到了样本数据集。另一方面,尽管在样本数据集上呈现出否则的样本数据集上,但神经模型不会概括到采样外部数据集。

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