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Progress Notes Classification and Keyword Extraction using Attention-based Deep Learning Models with BERT

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arxiv 1910.05786 v2 pith:GRCN7GO7 submitted 2019-10-13 cs.CL

Progress Notes Classification and Keyword Extraction using Attention-based Deep Learning Models with BERT

classification cs.CL
keywords clinicalmodelsclassificationattention-basednotesdeeplearningprogress
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Various deep learning algorithms have been developed to analyze different types of clinical data including clinical text classification and extracting information from 'free text' and so on. However, automate the keyword extraction from the clinical notes is still challenging. The challenges include dealing with noisy clinical notes which contain various abbreviations, possible typos, and unstructured sentences. The objective of this research is to investigate the attention-based deep learning models to classify the de-identified clinical progress notes extracted from a real-world EHR system. The attention-based deep learning models can be used to interpret the models and understand the critical words that drive the correct or incorrect classification of the clinical progress notes. The attention-based models in this research are capable of presenting the human interpretable text classification models. The results show that the fine-tuned BERT with the attention layer can achieve a high classification accuracy of 97.6%, which is higher than the baseline fine-tuned BERT classification model. In this research, we also demonstrate that the attention-based models can identify relevant keywords that are strongly related to the clinical progress note categories.

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