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arxiv: 1912.02703 · v1 · pith:SOOPVQMWnew · submitted 2019-12-05 · 💻 cs.LG · cs.CL· stat.ML

Self-Supervised Contextual Language Representation of Radiology Reports to Improve the Identification of Communication Urgency

classification 💻 cs.LG cs.CLstat.ML
keywords communicationmodelradiologyreportscontextuallargeself-supervisedtext
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Machine learning methods have recently achieved high-performance in biomedical text analysis. However, a major bottleneck in the widespread application of these methods is obtaining the required large amounts of annotated training data, which is resource intensive and time consuming. Recent progress in self-supervised learning has shown promise in leveraging large text corpora without explicit annotations. In this work, we built a self-supervised contextual language representation model using BERT, a deep bidirectional transformer architecture, to identify radiology reports requiring prompt communication to the referring physicians. We pre-trained the BERT model on a large unlabeled corpus of radiology reports and used the resulting contextual representations in a final text classifier for communication urgency. Our model achieved a precision of 97.0%, recall of 93.3%, and F-measure of 95.1% on an independent test set in identifying radiology reports for prompt communication, and significantly outperformed the previous state-of-the-art model based on word2vec representations.

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