Yifan Peng, Sungwon Lee, D. Elton, Thomas C. Shen, Yuxing Tang, Qingyu Chen, Shuai Wang, Yingying Zhu, R. Summers, Zhiyong Lu
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引用次数: 6
摘要
淋巴结状态在癌症的治疗中起着关键作用。从放射学文本报告中提取淋巴结可以在MRI上进行大规模的淋巴结检测训练。在这项工作中,我们首先提出了一个具有层次关系的41种腹部淋巴结的本体。然后,我们介绍了一种基于规则和基于变压器的方法相结合的端到端方法来检测这些腹部淋巴结,并从MRI放射学报告中对其类型进行分类。我们展示了使用BlueBERT对MRI报告进行微调的模型的优越性能,称为MriBERT。我们发现MriBERT优于基于规则的标注器(微观加权f1分数0.957 vs 0.644)以及其他基于bert的变异(0.913 - 0.928)。我们在https://github.com/ncbi-nlp/bluebert上公开了代码和MriBERT,希望这种方法可以促进医学报告注释器的开发,以大规模地从零开始生成标签。
Automatic recognition of abdominal lymph nodes from clinical text
Lymph node status plays a pivotal role in the treatment of cancer. The extraction of lymph nodes from radiology text reports enables large-scale training of lymph node detection on MRI. In this work, we first propose an ontology of 41 types of abdominal lymph nodes with a hierarchical relationship. We then introduce an end-to-end approach based on the combination of rules and transformer-based methods to detect these abdominal lymph node mentions and classify their types from the MRI radiology reports. We demonstrate the superior performance of a model fine-tuned on MRI reports using BlueBERT, called MriBERT. We find that MriBERT outperforms the rule-based labeler (0.957 vs 0.644 in micro weighted F1-score) as well as other BERT-based variations (0.913 - 0.928). We make the code and MriBERT publicly available at https://github.com/ncbi-nlp/bluebert, with the hope that this method can facilitate the development of medical report annotators to produce labels from scratch at scale.