Explainable clinical coding with in-domain adapted transformers.

Journal of biomedical informatics(2023)

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摘要
By separately addressing the MER and MEN tasks, as well as by following a context-aware text-classification approach to tackle the MEN task, the hierarchical-task approach effectively reduces the intrinsic complexity of explainable clinical-coding, leading the transformers to establish new SOTA performances for the predictive tasks considered in this study. In addition, the proposed methodology has the potential to be applied to other clinical tasks that require both the recognition and normalization of medical entities.
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关键词
Clinical Coding,Deep Learning,Explainable Artificial Intelligence,Medical Entity Normalization,Natural Language Processing,Transformers
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