Publication | Open Access
Extracting Concepts Related to Homelessness from the Free Text of VA Electronic Medical Records.
23
Citations
14
References
2014
Year
EngineeringSemanticsCorpus LinguisticsText MiningNatural Language ProcessingApplied LinguisticsInformation RetrievalComputational LinguisticsLanguage StudiesPublic HealthFree TextNamed-entity RecognitionVulnerable Patient PopulationConcepts RelatedNlp TaskTerminology ExtractionElectronic Health RecordInformation ExtractionNursingMedical RecordsHealth DataNlp TrainingKeyword ExtractionLinguisticsHealth InformaticsHomelessness
Mining the free text of electronic medical records (EMR) using natural language processing (NLP) is an effective method of extracting information not always captured in administrative data. We sought to determine if concepts related to homelessness, a non-medical condition, were amenable to extraction from the EMR of Veterans Affairs (VA) medical records. As there were no off-the-shelf products, a lexicon of terms related to homelessness was created. A corpus of free text documents from outpatient encounters was reviewed to create the reference standard for NLP training and testing. V3NLP Framework was used to detect instances of lexical terms and was compared to the reference standard. With a positive predictive value of 77% for extracting relevant concepts, this study demonstrates the feasibility of extracting positively asserted concepts related to homelessness from the free text of medical records.
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