Comparison of deep learning models for natural language processing-based classification of non-English head CT reports
Autor: | Eyal Klang, Noam Tau, Eyal Zimlichman, Gennadiy Guralnik, Tal J. Levy, Yiftach Barash, Orit Shimon, Shelly Soffer, Eli Konen |
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Rok vydání: | 2020 |
Předmět: |
Word embedding
computer.software_genre 030218 nuclear medicine & medical imaging 03 medical and health sciences Deep Learning 0302 clinical medicine Humans Medicine Radiology Nuclear Medicine and imaging Word2vec Natural Language Processing Retrospective Studies Neuroradiology Adult patients business.industry Deep learning Large cohort Tomography x ray computed Neurology (clinical) Artificial intelligence Emergency Service Hospital Tomography X-Ray Computed Cardiology and Cardiovascular Medicine business Head computer 030217 neurology & neurosurgery Natural language processing |
Zdroj: | Neuroradiology. 62:1247-1256 |
ISSN: | 1432-1920 0028-3940 |
DOI: | 10.1007/s00234-020-02420-0 |
Popis: | Natural language processing (NLP) can be used for automatic flagging of radiology reports. We assessed deep learning models for classifying non-English head CT reports. We retrospectively collected head CT reports (2011–2018). Reports were signed in Hebrew. Emergency department (ED) reports of adult patients from January to February for each year (2013–2018) were manually labeled. All other reports were used to pre-train an embedding layer. We explored two use cases: (1) general labeling use case, in which reports were labeled as normal vs. pathological; (2) specific labeling use case, in which reports were labeled as with and without intra-cranial hemorrhage. We tested long short-term memory (LSTM) and LSTM-attention (LSTM-ATN) networks for classifying reports. We also evaluated the improvement of adding Word2Vec word embedding. Deep learning models were compared with a bag-of-words (BOW) model. We retrieved 176,988 head CT reports for pre-training. We manually labeled 7784 reports as normal (46.3%) or pathological (53.7%), and 7.1% with intra-cranial hemorrhage. For the general labeling, LSTM-ATN-Word2Vec showed the best results (AUC = 0.967 ± 0.006, accuracy 90.8% ± 0.01). For the specific labeling, all methods showed similar accuracies between 95.0 and 95.9%. Both LSTM-ATN-Word2Vec and BOW had the highest AUC (0.970). For a general use case, word embedding using a large cohort of non-English head CT reports and ATN improves NLP performance. For a more specific task, BOW and deep learning showed similar results. Models should be explored and tailored to the NLP task. |
Databáze: | OpenAIRE |
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