Publication | Open Access
Classifying relations in clinical narratives using segment graph convolutional and recurrent neural networks (Seg-GCRNs)
62
Citations
18
References
2018
Year
Family MedicineEngineeringSentence Syntactic DependenciesNarrative SummarizationCorpus LinguisticsText MiningWord EmbeddingsNatural Language ProcessingWord EmbeddingComputational LinguisticsRecurrent Neural NetworksLanguage StudiesBiomedical Text MiningMachine TranslationSequence ModellingClinical LanguageNarrative ExtractionNlp TaskDeep LearningMedical Language ProcessingClinical DataClinical NarrativesNursingSegment Graph ConvolutionalRelationship ExtractionLinguisticsHealth Informatics
We propose to use segment graph convolutional and recurrent neural networks (Seg-GCRNs), which use only word embedding and sentence syntactic dependencies, to classify relations from clinical notes without manual feature engineering. In this study, the relations between 2 medical concepts are classified by simultaneously learning representations of text segments in the context of sentence syntactic dependency: preceding, concept1, middle, concept2, and succeeding segments. Seg-GCRN was systematically evaluated on the i2b2/VA relation classification challenge datasets. Experiments show that Seg-GCRN attains state-of-the-art micro-averaged F-measure for all 3 relation categories: 0.692 for classifying medical treatment-problem relations, 0.827 for medical test-problem relations, and 0.741 for medical problem-medical problem relations. Comparison with the previous state-of-the-art segment convolutional neural network (Seg-CNN) suggests that adding syntactic dependency information helps refine medical word embedding and improves concept relation classification without manual feature engineering. Seg-GCRN can be trained efficiently for the i2b2/VA dataset on a GPU platform.
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