Extracting principal diagnosis, co-morbidity and smoking status for asthma research: evaluation of a natural language processing system 论文

2006BMC Medical Informatics and Decision Making引用 379顶会
Biomedical Text Mining and OntologiesTopic ModelingMachine Learning in Healthcare

摘要

BACKGROUND: The text descriptions in electronic medical records are a rich source of information. We have developed a Health Information Text Extraction (HITEx) tool and used it to extract key findings for a research study on airways disease. METHODS: The principal diagnosis, co-morbidity and smoking status extracted by HITEx from a set of 150 discharge summaries were compared to an expert-generated gold standard. RESULTS: The accuracy of HITEx was 82% for principal diagnosis, 87% for co-morbidity, and 90% for smoking status extraction, when cases labeled "Insufficient Data" by the gold standard were excluded. CONCLUSION: We consider the results promising, given the complexity of the discharge summaries and the extraction tasks.