2021
From Tokenization to Self-Supervision: Building a High-Performance Information Extraction System for Chemical Reactions in Patents
Wang J, Ren Y, Zhang Z, Xu H, Zhang Y. From Tokenization to Self-Supervision: Building a High-Performance Information Extraction System for Chemical Reactions in Patents. Frontiers In Research Metrics And Analytics 2021, 6: 691105. PMID: 35005421, PMCID: PMC8727901, DOI: 10.3389/frma.2021.691105.Peer-Reviewed Original ResearchEvent extractionEntity recognitionNatural language processing techniquesAccurate information extractionInformation extraction systemLanguage processing techniquesKnowledge-based rulesInformation extractionAutomatic toolEnd systemArt resultsSemantic rolesLanguage modelSelf-SupervisionFree textChemical patentsSubtask 1Reaction extractionDifferent semantic rolesHybrid approachEvent triggersProcessing techniquesSubtasksTokenizationHigh performance
2019
A study of deep learning approaches for medication and adverse drug event extraction from clinical text
Wei Q, Ji Z, Li Z, Du J, Wang J, Xu J, Xiang Y, Tiryaki F, Wu S, Zhang Y, Tao C, Xu H. A study of deep learning approaches for medication and adverse drug event extraction from clinical text. Journal Of The American Medical Informatics Association 2019, 27: 13-21. PMID: 31135882, PMCID: PMC6913210, DOI: 10.1093/jamia/ocz063.Peer-Reviewed Original ResearchConceptsDeep learning-based approachDeep learning approachLearning-based approachTraditional machineLearning approachNational NLP Clinical ChallengesAdverse drug event extractionOutperform traditional machineDifferent ensemble approachesConditional Random FieldsSequence labeling approachMIMIC-III databaseEvent extractionMedical domainEntity recognitionClassification componentF1 scoreClinical textRelation extractionClinical documentsVector machineEnd evaluationEnsemble approachClinical corpusMachine