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Follow-up Recommendation Detection on Radiology Reports with Incidental Pulmonary Nodules
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2015
Year
EngineeringAdvanced Lung DiseasePrognosisDiagnosisFollow-up Recommendation DetectionCorpus LinguisticsText MiningNatural Language ProcessingBiomedical Text MiningRadiologyHealth InformaticsIncidental Pulmonary FindingsOutcomes ResearchPulmonary MedicineMedical Language ProcessingClinical DataLung CancerMultiple Pulmonary NodulePatient SafetyMedicineClinical Decision Support SystemRadiology ReportsEmergency Medicine
The management of follow-up recommendations is fundamental for the appropriate care of patients with incidental pulmonary findings. The lack of communication of these important findings can result in important actionable information being lost in healthcare provider electronic documents. This study aims to analyze follow-up recommendations in radiology reports containing pulmonary incidental findings by using Natural Language Processing and Regular Expressions. Our evaluation highlights the different follow-up recommendation rates for oncology and non-oncology patient cohorts. The results reveal the need for a context-sensitive approach to tracking different patient cohorts in an enterprise-wide assessment.