编码混合临床文本粗粒度去识别的少射跨语转移

Saadullah Amin, Noon Pokaratsiri Goldstein, M. Wixted, Alejandro Garc'ia-Rudolph, Catalina Mart'inez-Costa, G. Neumann
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引用次数: 4

摘要

尽管数字医疗保健系统提供了精心编排的结构化知识,但许多关键信息仍然存在于大量未标记和非结构化的临床文本中。这些文本通常包含受保护的健康信息(PHI),它们暴露给下游应用程序的信息提取工具,可能导致患者身份识别。现有的去识别工作依赖于使用大规模的带注释的英语语料库,这通常不适合现实世界的多语言环境。预训练语言模型(LM)在低资源环境下的跨语言迁移中显示出巨大的潜力。在这项工作中,我们通过经验展示了命名实体识别(NER)的LMs的少射跨语言迁移特性,并将其应用于解决代码混合(西班牙语-加泰罗尼亚语)临床笔记在中风领域去识别的低资源和现实挑战。我们注释了一个黄金评估数据集来评估少量的设置性能,其中我们只使用几百个标记的示例进行训练。当我们的模型将MEDDOCAN (CITATION)语料库中的Multilingual BERT (mBERT) (CITATION)与我们的少镜头跨语言目标语料库相结合时,我们的模型将黄金评价集上的零镜头f1得分从73.7%提高到91.2%。当推广到样本外测试集时,最佳模型的人类评价f1得分为97.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Few-Shot Cross-lingual Transfer for Coarse-grained De-identification of Code-Mixed Clinical Texts
Despite the advances in digital healthcare systems offering curated structured knowledge, much of the critical information still lies in large volumes of unlabeled and unstructured clinical texts. These texts, which often contain protected health information (PHI), are exposed to information extraction tools for downstream applications, risking patient identification. Existing works in de-identification rely on using large-scale annotated corpora in English, which often are not suitable in real-world multilingual settings. Pre-trained language models (LM) have shown great potential for cross-lingual transfer in low-resource settings. In this work, we empirically show the few-shot cross-lingual transfer property of LMs for named entity recognition (NER) and apply it to solve a low-resource and real-world challenge of code-mixed (Spanish-Catalan) clinical notes de-identification in the stroke domain. We annotate a gold evaluation dataset to assess few-shot setting performance where we only use a few hundred labeled examples for training. Our model improves the zero-shot F1-score from 73.7% to 91.2% on the gold evaluation set when adapting Multilingual BERT (mBERT) (CITATION) from the MEDDOCAN (CITATION) corpus with our few-shot cross-lingual target corpus. When generalized to an out-of-sample test set, the best model achieves a human-evaluation F1-score of 97.2%.
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