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1.
JMIR Med Inform ; 12: e49007, 2024 Jan 17.
Artigo em Inglês | MEDLINE | ID: mdl-38231569

RESUMO

BACKGROUND: Physicians are hesitant to forgo the opportunity of entering unstructured clinical notes for structured data entry in electronic health records. Does free text increase informational value in comparison with structured data? OBJECTIVE: This study aims to compare information from unstructured text-based chief complaints harvested and processed by a natural language processing (NLP) algorithm with clinician-entered structured diagnoses in terms of their potential utility for automated improvement of patient workflows. METHODS: Electronic health records of 293,298 patient visits at the emergency department of a Swiss university hospital from January 2014 to October 2021 were analyzed. Using emergency department overcrowding as a case in point, we compared supervised NLP-based keyword dictionaries of symptom clusters from unstructured clinical notes and clinician-entered chief complaints from a structured drop-down menu with the following 2 outcomes: hospitalization and high Emergency Severity Index (ESI) score. RESULTS: Of 12 symptom clusters, the NLP cluster was substantial in predicting hospitalization in 11 (92%) clusters; 8 (67%) clusters remained significant even after controlling for the cluster of clinician-determined chief complaints in the model. All 12 NLP symptom clusters were significant in predicting a low ESI score, of which 9 (75%) remained significant when controlling for clinician-determined chief complaints. The correlation between NLP clusters and chief complaints was low (r=-0.04 to 0.6), indicating complementarity of information. CONCLUSIONS: The NLP-derived features and clinicians' knowledge were complementary in explaining patient outcome heterogeneity. They can provide an efficient approach to patient flow management, for example, in an emergency medicine setting. We further demonstrated the feasibility of creating extensive and precise keyword dictionaries with NLP by medical experts without requiring programming knowledge. Using the dictionary, we could classify short and unstructured clinical texts into diagnostic categories defined by the clinician.

2.
Emerg Med J ; 35(9): 576, 2018 Sep.
Artigo em Inglês | MEDLINE | ID: mdl-30115780

RESUMO

CLINICAL INTRODUCTION: An 89-year-old female patient presented to the ED with mild abdominal pain and a history of vomiting for 3 days. Because of dementia, further history was unclear. Vital signs were normal. Clinical examination revealed mild abdominal pain without defence or signs of peritonism. Bowel sounds were normal. Lab results showed a white cell count of 16x109/L, otherwise normal. There was no episode of vomiting during the ED consultation. A supine AXR was performed (figure 1).emermed;35/9/576/F1F1F1Figure 1Supine AXR. WHAT IS THE DIAGNOSIS?: Foreign bodyGallstone ileusColon obstructionIntestinal volvulus.


Assuntos
Dor Abdominal/etiologia , Volvo Intestinal/diagnóstico , Vômito/etiologia , Dor Abdominal/diagnóstico por imagem , Idoso de 80 Anos ou mais , Demência/complicações , Feminino , Humanos , Volvo Intestinal/diagnóstico por imagem , Radiografia/métodos
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