1. Question Answering based Clinical Text Structuring Using Pre-trained Language Model
- Author
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Qiu, Jiahui, Zhou, Yangming, Ma, Zhiyuan, Ruan, Tong, Liu, Jinlin, and Sun, Jing
- Subjects
Computer Science - Computation and Language - Abstract
Clinical text structuring is a critical and fundamental task for clinical research. Traditional methods such as taskspecific end-to-end models and pipeline models usually suffer from the lack of dataset and error propagation. In this paper, we present a question answering based clinical text structuring (QA-CTS) task to unify different specific tasks and make dataset shareable. A novel model that aims to introduce domain-specific features (e.g., clinical named entity information) into pre-trained language model is also proposed for QA-CTS task. Experimental results on Chinese pathology reports collected from Ruijing Hospital demonstrate our presented QA-CTS task is very effective to improve the performance on specific tasks. Our proposed model also competes favorably with strong baseline models in specific tasks.
- Published
- 2019